Skip to content

A collection of papers published in MICCAI 2024 with their code.

License

Notifications You must be signed in to change notification settings

Erfandarzi/Awesome-MICCAI-2024

Folders and files

NameName
Last commit message
Last commit date

Latest commit

Β 

History

31 Commits
Β 
Β 
Β 
Β 
Β 
Β 
Β 
Β 
Β 
Β 

Repository files navigation

πŸ“£πŸ“£Awesome MICCAI 2024 Papers

Maintenance PR's Welcome Awesome

A curated list of awesome MICCAI 2024 accepted papers with available code implementations.

Distribution of Categories in AI Papers Organs in the papers

Table of Contents

⭐ Classification

Affinity Learning Based Brain Function Representation for Disease Diagnosis | Task: Diagnosis | πŸ“„ Paper | πŸ’» Code

BrainSCK: Brain Structure and Cognition Alignment for Diagnosing Brain Disorders | Task: Classification | πŸ“„ Paper | πŸ’» Code

BrainWaveNet: Wavelet-Based Transformer for Autism Spectrum Disorder Diagnosis | Task: Diagnosis | πŸ“„ Paper | πŸ’» Code

Customized Relationship Graph Neural Network for Brain Disorder Identification | Task: Classification | πŸ“„ Paper | πŸ’» Code

DTCA: Dual-Branch Transformer with Cross-Attention for EEG and Eye Movement Data Fusion | Task: Classification | πŸ“„ Paper | πŸ’» Code

Exploring Spatio-temporal Interpretable Dynamic Brain Function with Transformer | Task: Classification | πŸ“„ Paper | πŸ’» Code

Representing Functional Connectivity with Structural Detour | Task: Cognitive state classification and early diagnosis of Alzheimer’s disease | πŸ“„ Paper | πŸ’» Code

Quality-Aware Fuzzy Min-Max Neural Networks for Dynamic Brain Network Analysis | Task: Classification | πŸ“„ Paper | πŸ’» Code

Self-guided Knowledge-Injected GNN for Alzheimer's Diseases | Task: Classification | πŸ“„ Paper

Graph Neural Networks with Domain-Generalizable Explainability for Brain Disorder Diagnosis | Task: Classification | πŸ“„ Paper | πŸ’» Code

Multi-level Contrastive Learning Method for Disease Diagnosis | Task: Classification | πŸ“„ Paper | πŸ’» Code

CP-CLIP for Zero-Shot Medical Image Analysis | Task: Zero-shot classification | πŸ“„ Paper | πŸ’» Code

Cross-Modality Cardiac Insight Transfer | Task: classification, regression | πŸ“„ Paper | πŸ’» Code

Decoding the Visual Attention of Pathologists | Task: Classification | πŸ“„ Paper

DiRecT: Diagnosis and Reconstruction Transformer for Mandibular Deformity | Task: Diagnosis of mandibular deformity | πŸ“„ Paper | πŸ’» Code

Boosting Medical Image Analysis via Motion-Informed Generative Videos | Task: Classification | πŸ“„ Paper | πŸ’» Code

Genomics-Guided Representation Learning for Pathologic Pan-Cancer Tumor Microenvironment Subtype Prediction | Task: classification | πŸ“„ Paper | πŸ’» Code

MoRA: LoRA Guided Multi-modal Disease Diagnosis | Task: Disease diagnosis | πŸ“„ Paper | πŸ’» Code

Prior Activation Map Guided Cervical OCT Image Classification | Task: Classification | πŸ“„ Paper | πŸ’» Code

The MRI Scanner as a Diagnostic | Task: classification | πŸ“„ Paper | πŸ’» Code

New Dataset and Baseline Model for Rectal Cancer Risk Assessment | Task: Classification | πŸ“„ Paper | πŸ’» Code

Analyzing Cross-Population Domain Shift in Chest X-Ray Image Classification | Task: Classification | πŸ“„ Paper | πŸ’» Code

FedMRL: Data Heterogeneity Aware Federated Multi-agent Deep Reinforcement Learning for Medical Imaging | Task: Classification | πŸ“„ Paper | πŸ’» Code

Learning a Clinically-Relevant Concept Bottleneck for Lesion Detection in Breast Ultrasound | Task: lesion detection, classification | πŸ“„ Paper | πŸ’» Code

Neural Cellular Automata for White Blood Cell Image Classification | Task: Classification | πŸ“„ Paper | πŸ’» Code

PASSION for Dermatology | Task: Classification | πŸ“„ Paper | πŸ’» Code

Multilevel Causality Learning for Multi-label Gastric Atrophy Diagnosis | Task: Multi-label Classification | πŸ“„ Paper | πŸ’» Code

Patch-Slide Discriminative Joint Learning | Task: Classification | πŸ“„ Paper | πŸ’» Code

A Domain Adaption Approach for EEG-Based Automated Seizure Classification | Task: classification | πŸ“„ Paper | πŸ’» Code

Region-Based Approach to Diabetic Retinopathy Classification | Task: classification | πŸ“„ Paper | πŸ’» Code

ACLNet: A Deep Learning Model for ACL Rupture Classification | Task: Classification | πŸ“„ Paper

A Scanning Laser Ophthalmoscopy Image Database and Trustworthy Retinal Disease Detection Method | Task: classification | πŸ“„ Paper | πŸ’» Code

Adapting Pre-trained Generative Model to Medical Image for Data Augmentation | Task: classification, data augmentation | πŸ“„ Paper | πŸ’» Code

Anatomy-Aware Gating Network for Explainable Alzheimer’s Disease Diagnosis | Task: Classification | πŸ“„ Paper | πŸ’» Code

Automated Spinal MRI Labelling | Task: Classification | πŸ“„ Paper | πŸ’» Code

Active Label Refinement for Robust Medical Image Classification | Task: Classification | πŸ“„ Paper | πŸ’» Code

Cardiovascular Disease Detection from Multi-view Chest X-Rays with BI-Mamba | Task: Classification | πŸ“„ Paper | πŸ’» Code

Adaptive Curriculum Query Strategy for Active Learning | Task: classification | πŸ“„ Paper | πŸ’» Code

Advancing Brain Imaging Analysis | Task: Classification | πŸ“„ Paper | πŸ’» Code

Correlation-Adaptive Multi-view CEUS Fusion for Liver Cancer Diagnosis | Task: Diagnosis | πŸ“„ Paper | πŸ’» Code

Assessing Risk of Stealing Proprietary Models | Task: Classification | πŸ“„ Paper | πŸ’» Code

Dual-Modality Watershed Fusion Network | Task: Classification | πŸ“„ Paper | πŸ’» Code

Graph Vision Mamba for Pediatric Bone Age Assessment | Task: classification | πŸ“„ Paper | πŸ’» Code

Enhancing Gait Video Analysis in Neurodegenerative Diseases by Knowledge Augmentation in Vision Language Model | Task: Classification | πŸ“„ Paper | πŸ’» Code

Gait Patterns as Biomarkers | Task: Classification | πŸ“„ Paper | πŸ’» Code

Disease-Informed Adaptation of Vision-Language Models | Task: Binary classification, multi-class classification | πŸ“„ Paper | πŸ’» Code

Improved Learning from Imbalanced Multi-label Datasets of Inflamed Joints | Task: Classification | πŸ“„ Paper | πŸ’» Code

Improved Esophageal Varices Assessment | Task: Classification | πŸ“„ Paper | πŸ’» Code

Iterative Online Image Synthesis for Imbalanced Classification | Task: classification | πŸ“„ Paper | πŸ’» Code

Incorporating Clinical Guidelines Through Adapting Multi-modal Large Language Model for Prostate Cancer | Task: Classification | πŸ“„ Paper | πŸ’» Code

Feature Fusion Based on Mutual-Cross-Attention Mechanism for EEG Emotion Recognition | Task: classification | πŸ“„ Paper | πŸ’» Code

Generating Progressive Images from Pathological Transitions Via Diffusion Model | Task: Image generation, Classification | πŸ“„ Paper | πŸ’» Code

MMFusion: Multi-modality Model for Lymph Node Metastasis Diagnosis in Esophageal Cancer | Task: Diagnosis | πŸ“„ Paper | πŸ’» Code

Multi-order Simplex-Based Graph Neural Network for Brain Network Analysis | Task: Classification | πŸ“„ Paper | πŸ’» Code

Location Embedding Based Pairwise Distance Learning for Diagnosis of Urinary Stones | Task: Classification | πŸ“„ Paper | πŸ’» Code

Loose Lesion Location Self-supervision Enhanced Colorectal Cancer Diagnosis | Task: Classification | πŸ“„ Paper | πŸ’» Code

Poisson Ordinal Network for Gleason Group Estimation | Task: Ordinal classification | πŸ’» Code

RDD-Net | Task: classification | πŸ“„ Paper | πŸ’» Code

Semantics-Aware Attention Guidance for Diagnosing WSIs | Task: Classification | πŸ“„ Paper | πŸ’» Code

Open-Set Semi-supervised Medical Image Classification | Task: Classification | πŸ“„ Paper | πŸ’» Code

ScaPT: Scaffold Prompt Tuning for Efficient Adaptation of fMRI Pre-trained Model | Task: prediction, neurodegenerative disease diagnosis/prognosis | πŸ“„ Paper | πŸ’» Code

Semi-supervised Medical Image Classification | Task: Classification | πŸ“„ Paper | πŸ’» Code

Reprogramming Distillation for Medical Foundation Models | Task: classification | πŸ“„ Paper | πŸ’» Code

Self-supervised Contrastive Graph Views for Learning Neuron-Level Circuit Network | Task: Neuron classification, Connection prediction | πŸ“„ Paper | πŸ’» Code

Towards Multi-modality Fusion | Task: classification | πŸ“„ Paper | πŸ’» Code

Self-supervised Learning with Adaptive Graph Structure and Function Representation for Cross-Dataset Brain Disorder Diagnosis | Task: Diagnosis | πŸ“„ Paper | πŸ’» Code

VDPF: Enhancing DVT Staging Performance Using a Global-Local Feature Fusion Network | Task: Classification | πŸ“„ Paper | πŸ’» Code

Semi-supervised Lymph Node Metastasis Classification | Task: Classification | πŸ“„ Paper

Spatio-Temporal Contrast Network for Data-Efficient Learning of Coronary Artery Disease in Coronary CT Angiography | Task: Diagnosis | πŸ“„ Paper | πŸ’» Code

Tail-Enhanced Representation Learning | Task: Multi-label classification | πŸ“„ Paper | πŸ’» Code

TARDRL:Task-Aware Reconstruction | Task: Disease diagnosis | πŸ“„ Paper | πŸ’» Code

Subject-Adaptive Transfer Learning Using Resting State EEG Signals | Task: classification | πŸ“„ Paper | πŸ’» Code

Topological Cycle Graph Attention Network for Brain Functional Connectivity | Task: Classification | πŸ“„ Paper | πŸ’» Code

Graph-SLC for AD Diagnosis | Task: Diagnosis | πŸ“„ Paper | πŸ’» Code

A Framework for Assessing Joint Human-AI Systems | Task: Classification | πŸ“„ Paper | πŸ’» Code

Privacy Protection in MRI Scans Using 3D Masked Autoencoders | Task: de-identification | πŸ“„ Paper | πŸ’» Code

Achieving Fairness Through Channel Pruning for Dermatological Disease Diagnosis | Task: Classification | πŸ“„ Paper | πŸ’» Code

AdaCBM: An Adaptive Concept Bottleneck Model for Explainable and Accurate Diagnosis | Task: classification | πŸ“„ Paper | πŸ’» Code

Aligning Human Knowledge with Visual Concepts | Task: classification | πŸ“„ Paper | πŸ’» Code

BiasPruner : Debiased Continual Learning for Medical Image Classification | Task: classification | πŸ“„ Paper | πŸ’» Code

CAR-MFL: Cross-Modal Augmentation by Retrieval for Multimodal Federated Learning | Task: Classification | πŸ“„ Paper | πŸ’» Code

Confidence Matters: Enhancing Medical Image Classification | Task: Classification | πŸ“„ Paper | πŸ’» Code

Controllable Counterfactual Generation | Task: classification | πŸ“„ Paper | πŸ’» Code

Data-Algorithm-Architecture Co-Optimization for Fair Neural Networks | Task: Classification | πŸ“„ Paper | πŸ’» Code

Debiased Noise Editing on Foundation Models for Fair Medical Image Classification | Task: Classification | πŸ“„ Paper | πŸ’» Code

Effective Confidence Estimation for Image Classification | Task: Misclassification Detection, Confidence Estimation | πŸ“„ Paper | πŸ’» Code

DiffExplainer | Task: Classification | πŸ“„ Paper | πŸ’» Code

Disentangled Attention Graph Neural Network for Alzheimer’s Disease Diagnosis | Task: Diagnosis | πŸ“„ Paper | πŸ’» Code

Federated Client Unlearning in Medical Imaging | Task: Classification | πŸ“„ Paper | πŸ’» Code

Enhancing Federated Learning Performance Fairness | Task: classification | πŸ“„ Paper

Fairness of Neural Collapse in Medical Image Classification | Task: classification | πŸ“„ Paper | πŸ’» Code

Evidential Concept Embedding Models | Task: diagnosis | πŸ“„ Paper | πŸ’» Code

FairQuantize | Task: Classification | πŸ“„ Paper | πŸ’» Code

Explainable Vertebral Fracture Analysis | Task: classification | πŸ“„ Paper | πŸ’» Code

Feature Selection Gates with Gradient Routing | Task: Classification | πŸ“„ Paper | πŸ’» Code

FedMedICL: Towards Holistic Evaluation of Distribution Shifts in Federated Medical Imaging | Task: classification | πŸ“„ Paper | πŸ’» Code

FedMLP | Task: Multi-label classification | πŸ“„ Paper | πŸ’» Code

Generalizing to Unseen Domains in Diabetic Retinopathy with Disentangled Representations | Task: Classification | πŸ“„ Paper | πŸ’» Code

Image Distillation for Safe Data Sharing | Task: Classification | πŸ“„ Paper | πŸ’» Code

IMG-GCN: Interpretable Modularity-Guided Structure-Function Interactions Learning for Brain Cognition and Disorder Analysis | Task: Classification | πŸ“„ Paper | πŸ’» Code

Interpretable Phenotypic Profiling of 3D Cellular Morphodynamics | Task: Classification | πŸ“„ Paper | πŸ’» Code

LS+: Informed Label Smoothing for Improving Calibration in Medical Image Classification | Task: Classification | πŸ“„ Paper | πŸ’» Code

Modeling and Understanding Uncertainty in Medical Image Classification | Task: classification | πŸ“„ Paper | πŸ’» Code

SiFT: A Serial Framework with Textual Guidance for Federated Learning | Task: classification | πŸ“„ Paper | πŸ’» Code

Stealing Knowledge from Pre-trained Language Models | Task: Classification | πŸ“„ Paper | πŸ’» Code

Tackling Data Hheterogeneity in Federated Learning | Task: classification | πŸ“„ Paper | πŸ’» Code

Proto-BagNets for Interpretability | Task: Classification | πŸ“„ Paper | πŸ’» Code

Uncertainty-Aware Multi-view Learning for Prostate Cancer Grading with DWI | Task: Classification | πŸ“„ Paper | πŸ’» Code

XTranPrune: eXplainability-Aware Transformer Pruning for Bias Mitigation in Dermatological Disease Classification | Task: Classification | πŸ“„ Paper | πŸ’» Code

SkinCON: Consensus for Skin Cancer Sub-typing with DRAPS | Task: Classification | πŸ“„ Paper | πŸ’» Code

Coarse-Grained Mask Regularization for Microvascular Obstruction Identification | Task: identification | πŸ“„ Paper | πŸ’» Code

BPaCo: Balanced Parametric Contrastive Learning for Long-Tailed Medical Image Classification | Task: classification | πŸ“„ Paper | πŸ’» Code

Neural Cellular Diffusion for High-Resolution Image Synthesis | Task: Image Synthesis, Classification | πŸ“„ Paper | πŸ’» Code

MPMNet: Modal Prior Mutual-Support Network for AMD Classification | Task: Classification | πŸ“„ Paper

Hierarchical Multiple Instance Learning for COPD Grading | Task: Classification | πŸ“„ Paper | πŸ’» Code

Multi-disease Detection in Retinal Images | Task: Classification | πŸ“„ Paper | πŸ’» Code

COVID19 to Pneumonia: Multi Region Lung Severity Classification Using CNN | Task: Classification | πŸ“„ Paper | πŸ’» Code

Gaze-Directed Vision GNN for Mitigating Shortcut Learning in Medical Image | Task: classification | πŸ“„ Paper | πŸ’» Code

Diff3Dformer: Leveraging Slice Sequence Diffusion for Enhanced 3D CT Classification | Task: classification | πŸ“„ Paper | πŸ’» Code

Algorithmic Fairness in Lesion Classification | Task: classification | πŸ“„ Paper | πŸ’» Code

EchoFM | Task: classification | πŸ“„ Paper | πŸ’» Code

Multimodal Variational Autoencoder for Cardiac Hemodynamics Instability Detection | Task: Classification | πŸ“„ Paper | πŸ’» Code

Robustly Optimized Network for Fatty Liver Detection | Task: Classification | πŸ“„ Paper | πŸ’» Code

Fair and Accurate Skin Disease Image Classification | Task: Classification | πŸ“„ Paper | πŸ’» Code

Insight: A Multi-modal Diagnostic Pipeline Using LLMs | Task: Diagnosis | πŸ“„ Paper | πŸ’» Code

Adjusting CNN Model for Diagnosing Gout from MSK Ultrasound | Task: Classification | πŸ“„ Paper | πŸ’» Code

Enhancing Model Generalisability Through Sampling | Task: Classification | πŸ“„ Paper | πŸ’» Code

CLIP-DR: Textual Knowledge-Guided Diabetic Retinopathy Grading | Task: classification | πŸ“„ Paper | πŸ’» Code

Reliable Multi-view Learning with Conformal Prediction for Aortic Stenosis Classification | Task: classification | πŸ“„ Paper | πŸ’» Code

⭐ Data Analysis

HDilemma: Open-Source Hausdorff Distance Implementations | Task: Performance evaluation | πŸ“„ Paper | πŸ’» Code

Surface-Based and Shape-Informed U-Fiber Atlasing | Task: connectivity analysis | πŸ“„ Paper | πŸ’» Code

NeuroConText | Task: Meta-analysis | πŸ“„ Paper | πŸ’» Code

SpeChrOmics: A Biomarker Characterization Framework for Medical Hyperspectral Imaging | Task: Biomarker characterization | πŸ“„ Paper | [πŸ’» Code](https://(link)

Backdoor in Medical Image Analysis | Task: Security analysis | πŸ“„ Paper | πŸ’» Code

⭐ Detection

BGF-YOLO: Enhanced YOLOv8 with Multiscale Attentional Feature Fusion for Brain Tumor Detection | Task: Detection | πŸ“„ Paper | πŸ’» Code

Cross-Slice Attention and Evidential Critical Loss for Uncertainty-Aware Prostate Cancer Detection | Task: Detection | πŸ“„ Paper | πŸ’» Code

Multi-Domain Leukemia Dataset for WBC Detection | Task: Detection | πŸ“„ Paper | πŸ’» Code

Analyzing Adjacent B-Scans to Localize Sickle Cell Retinopathy In OCTs | Task: Object detection | πŸ“„ Paper | πŸ’» Code

FD-SOS | Task: detection | πŸ“„ Paper | πŸ’» Code

Hybrid CNN-Transformer Feature Pyramid Network for Granular AAC Detection | Task: detection | πŸ“„ Paper | πŸ’» Code

Cephalometric Landmark Detection Across Ages | Task: Landmark Detection | πŸ“„ Paper | πŸ’» Code

Binary Noise for Binary Tasks | Task: Unsupervised Anomaly Detection | πŸ“„ Paper | πŸ’» Code

D-MASTER: Mask Annealed Transformer for Unsupervised Domain Adaptation in Breast Cancer Detection | Task: Unsupervised Domain Adaptation for breast cancer detection | πŸ“„ Paper | πŸ’» Code

Ensembled Cold-Diffusion Restorations for Anomaly Detection | Task: Unsupervised Anomaly Detection | πŸ“„ Paper | πŸ’» Code

Epileptic Seizure Detection in SEEG Signals Using a Unified Multi-Scale Temporal-Spatial-Spectral Transformer Model | Task: detection | πŸ“„ Paper | πŸ’» Code

Language-Enhanced Local-Global Aggregation Network for Multi-organ Trauma Detection | Task: Multi-organ trauma detection | πŸ“„ Paper | πŸ’» Code

FM-OSD: Foundation Model-Enabled One-Shot Detection | Task: Anatomical Landmark Detection | πŸ“„ Paper | πŸ’» Code

Leveraging the Mahalanobis Distance for Unsupervised Brain MRI Anomaly Detection | Task: Anomaly Detection | πŸ“„ Paper | πŸ’» Code

MediCLIP: Adapting CLIP for Few-Shot Medical Image Anomaly Detection | Task: anomaly detection | πŸ“„ Paper | πŸ’» Code

Slice-Consistent Lymph Nodes Detection Transformer in CT Scans | Task: Detection | πŸ“„ Paper | πŸ’» Code

Spatial-Aware Attention Generative Adversarial Network for Semi-supervised Anomaly Detection in Medical Image | Task: Anomaly Detection | πŸ“„ Paper | πŸ’» Code

Autoencoders for Medical Anomaly Detection | Task: Anomaly Detection | πŸ“„ Paper | πŸ’» Code

Deeper Insight Into Face Detection in Neonatal Wards | Task: Detection | πŸ“„ Paper | πŸ’» Code

Vessel-Aware Aneurysm Detection Using Multi-scale Deformable 3D Attention | Task: detection | πŸ“„ Paper | πŸ’» Code

Topological SLAM in Colonoscopies | Task: Simultaneous Localization and Mapping (SLAM) | πŸ“„ Paper | πŸ’» Code

WSSADN: A Weakly Supervised Spherical Age-Disentanglement Network for Detecting Developmental Disorders with Structural MRI | Task: disease detection | πŸ“„ Paper | πŸ’» Code

Physical-Priors-Guided Aortic Dissection Detection Using NCE-CT | Task: Detection | πŸ“„ Paper | πŸ’» Code

Anatomical Positional Embeddings | Task: Representation learning, few-shot localization | πŸ“„ Paper | πŸ’» Code

Out-of-Distribution Detection in Digital Pathology | Task: out-of-distribution detection | πŸ“„ Paper | πŸ’» Code

DeepRepViz: Identifying Potential Confounders | Task: confounder detection | πŸ“„ Paper | πŸ’» Code

Detecting Noisy Labels with Repeated Cross-Validations | Task: Label noise detection | πŸ“„ Paper | πŸ’» Code

Clinically Relevant Multi-view Cues for Breast Cancer Detection from Mammograms | Task: Detection | πŸ“„ Paper | πŸ’» Code

Representation Learning with a Transformer-Based Model for Localized Chest X-Ray Disease Detection | Task: Disease Detection and Progression Monitoring | πŸ“„ Paper | πŸ’» Code

Geometric Transformation Uncertainty for Improving 3D Fetal Brain Pose Prediction | Task: Localization | πŸ“„ Paper | πŸ’» Code

Confidence-Guided Semi-supervised Learning for Lesion Localization in X-Ray Images | Task: Localization | πŸ“„ Paper | πŸ’» Code

Position-Guided Prompt Learning for Anomaly Detection in Chest X-Rays | Task: Anomaly Detection | πŸ“„ Paper | πŸ’» Code

MMBCD: Multimodal Breast Cancer Detection | Task: Detection | πŸ“„ Paper | πŸ’» Code

⭐ Image Enhancement

A Clinical-Oriented Lightweight Network for High-Resolution Medical Image Enhancement | Task: Image Enhancement | πŸ“„ Paper | πŸ’» Code

Cross-Modal Diffusion Modelling for Super-Resolved Spatial Transcriptomics | Task: Super-resolution | πŸ“„ Paper | πŸ’» Code

Enhanced-QuickDWI: Achieving Equivalent Clinical Quality by Denoising Sub-sampled Diffusion-Weighted Imaging Data | Task: Image Denoising | πŸ“„ Paper | πŸ’» Code

Self-supervised Denoising and Bulk Motion Artifact Removal of 3D Optical Coherence Tomography Angiography | Task: denoising and artifact removal | πŸ“„ Paper | πŸ’» Code

7T MRI Synthesization from 3T Acquisitions | Task: Image Enhancement | πŸ“„ Paper | πŸ’» Code

Baikal: Unpaired Denoising of Fluorescence Microscopy Images Using Diffusion Models | Task: Denoising | πŸ“„ Paper | πŸ’» Code

CAPTURE-GAN | Task: Artifact removal | πŸ“„ Paper | πŸ’» Code

Deform-Mamba Network for MRI Super-Resolution | Task: Super-Resolution | πŸ“„ Paper | πŸ’» Code

EndoUIC: Promptable Diffusion Transformer for Unified Illumination Correction in Capsule Endoscopy | Task: Image enhancement | πŸ“„ Paper | πŸ’» Code

PET Image Denoising Based on 3D Denoising Model | Task: Image Denoising | πŸ“„ Paper | πŸ’» Code

Reference-Free Axial Super-Resolution of 3D Microscopy Images Using Implicit Neural Representation with a 2D Diffusion Prior | Task: super-resolution | πŸ“„ Paper | πŸ’» Code

Simultaneous Tri-Modal Medical Image Fusion and Super-Resolution | Task: fusion, super-resolution | πŸ“„ Paper | πŸ’» Code

SinoSynth for Generalizable CBCT Image Enhancement | Task: Image Enhancement | πŸ“„ Paper | πŸ’» Code

Volumetric Conditional Score-Based Residual Diffusion Model for PET/MR Denoising | Task: denoising | πŸ“„ Paper | πŸ’» Code

WIA-LD2ND: Wavelet-Based Image Alignment for Self-supervised Low-Dose CT Denoising | Task: Denoising | πŸ“„ Paper | πŸ’» Code

Zero-Shot Low-Field MRI Enhancement | Task: Enhancement | πŸ“„ Paper

Multi-frequency and Smoke Attention-Aware Learning Based Diffusion Model | Task: Image enhancement | πŸ“„ Paper | πŸ’» Code

Myocardial Scar Enhancement with Local Diffusion | Task: Image Enhancement | πŸ“„ Paper | πŸ’» Code

⭐ Image Generation

Masked Residual Diffusion Probabilistic Model | Task: image synthesis | πŸ“„ Paper | πŸ’» Code

Advancing Text-Driven Chest X-Ray Generation with Policy-Based Reinforcement Learning | Task: Image Generation | πŸ“„ Paper | πŸ’» Code

Structural Entities Extraction and Patient Indications Incorporation for Chest X-Ray Report Generation | Task: report generation | πŸ“„ Paper | πŸ’» Code

Super-Field MRI Synthesis for Infant Brains | Task: Image synthesis | πŸ“„ Paper | πŸ’» Code

RadiomicsFill-Mammo: Synthetic Mammogram Mass Manipulation with Radiomics Features | Task: Synthetic Tumor Generation | πŸ“„ Paper | πŸ’» Code

3D Vessel Graph Generation Using Denoising Diffusion | Task: Graph generation | πŸ“„ Paper | πŸ’» Code

Continually Tuning a Large Language Model for Multi-domain Radiology Report Generation | Task: Report generation | πŸ“„ Paper | πŸ’» Code

Energy-Based Controllable Radiology Report Generation | Task: Report Generation | πŸ“„ Paper | πŸ’» Code

GMoD: Graph-Driven Momentum Distillation | Task: report generation | πŸ“„ Paper | πŸ’» Code

KARGEN | Task: Report Generation | πŸ“„ Paper | πŸ’» Code

Non-adversarial Learning: Vector-Quantized Latent Space for Multi-sequence MRI | Task: synthesis | πŸ“„ Paper | πŸ’» Code

Textual Inversion and Self-supervised Refinement for Radiology Report Generation | Task: Radiology report generation | πŸ“„ Paper | πŸ’» Code

Towards Learning Contrast Kinetics with Multi-condition Latent Diffusion Models | Task: Image synthesis | πŸ“„ Paper | πŸ’» Code

Anatomically-Controllable Medical Image Generation | Task: Image Generation | πŸ“„ Paper | πŸ’» Code

CA VM: Conditional Autoregressive Vision Model for Contrast-Enhanced Brain Tumor MRI Synthesis | Task: synthesis | πŸ“„ Paper | πŸ’» Code

Contrast Representation Learning for MRI Synthesis | Task: Image synthesis | πŸ“„ Paper | πŸ’» Code

EchoNet-Synthetic | Task: Synthetic data generation | πŸ“„ Paper | πŸ’» Code

HeartBeat | Task: Video Synthesis | πŸ“„ Paper | πŸ’» Code

Memory-Efficient High-Resolution OCT Volume Synthesis | Task: synthesis | πŸ“„ Paper | πŸ’» Code

Structural Attention: Rethinking Transformer for Unpaired Medical Image Synthesis | Task: unpaired medical image synthesis | πŸ“„ Paper | πŸ’» Code

Tagged-to-Cine MRI Sequence Synthesis | Task: synthesis | πŸ“„ Paper

Evaluating the Quality of Brain MRI Generators | Task: generation | πŸ“„ Paper | πŸ’» Code

Mitigating Attribute Amplification in Counterfactual Image Generation | Task: counterfactual image generation | πŸ“„ Paper | πŸ’» Code

⭐ Motion Analysis

Groupwise Deformable Registration of Diffusion Tensor Cardiovascular Magnetic Resonance | Task: Motion Correction | πŸ“„ Paper | πŸ’» Code

CardioSpectrum: Comprehensive Myocardium Motion Analysis with 3D Deep Learning and Geometric Insights | Task: Myocardial motion analysis | πŸ“„ Paper | πŸ’» Code

Trexplorer: Recurrent DETR for Tree Centerline Tracking | Task: centerline tracking | πŸ“„ Paper | πŸ’» Code

Differentiable Score-Based Likelihoods: Learning CT Motion Compensation from Clean Images | Task: Motion Compensation | πŸ“„ Paper | πŸ’» Code

IM-MoCo: Self-supervised MRI Motion Correction | Task: motion correction | πŸ“„ Paper | πŸ’» Code

Physics-Informed Deep Learning for Motion-Corrected Reconstruction of Quantitative Brain MRI | Task: Motion Correction | πŸ“„ Paper | πŸ’» Code

Resolving Variable Respiratory Motion From Unsorted 4D Computed Tomography | Task: motion model optimization | πŸ“„ Paper | πŸ’» Code

⭐ Natural Language Processing

MRScore | Task: Radiology report evaluation | πŸ“„ Paper | πŸ’» Code

LLMs’ Tuning Methods in Medical Multimodal Domain | Task: Visual Question Answering | πŸ“„ Paper | πŸ’» Code

DermaVQA | Task: Question Answering | πŸ“„ Paper | πŸ’» Code

BIMCV-R | Task: text-image retrieval | πŸ“„ Paper | πŸ’» Code

Coarse-to-Fine Grained Representations in Contrastive Learning for Medical VQA | Task: Visual Question Answering | πŸ“„ Paper | πŸ’» Code

MMQL: Multi-Question Learning | Task: Medical Visual Question Answering (Med-VQA) | πŸ“„ Paper | πŸ’» Code

Region-Specific Retrieval Augmentation | Task: Visual Question Answering (VQA) | πŸ“„ Paper | πŸ’» Code

Spot the Difference: Difference Visual Question Answering with Residual Alignment | Task: visual question answering | πŸ“„ Paper | πŸ’» Code

⭐ Prediction

Conditional Score-Based Diffusion Model for Cortical Thickness Trajectory Prediction | Task: Prediction | πŸ“„ Paper | πŸ’» Code

In Vivo Deep Learning Estimation of Nanoparticle Diffusion | Task: Estimation of diffusion coefficients | πŸ“„ Paper | πŸ’» Code

MARVEL: MR Fingerprinting with micRoVascular Estimates Using BiLSTMs | Task: Parameter estimation | πŸ“„ Paper | πŸ’» Code

MGDR | Task: Prediction | πŸ“„ Paper

SOM2LM: Self-Organized Multi-Modal Longitudinal Maps | Task: cross-modality prediction, joint-modality prediction | πŸ“„ Paper | πŸ’» Code

TADM: Temporally-Aware Diffusion Model for Neurodegenerative Progression | Task: Prediction of neurodegenerative progression | πŸ“„ Paper | πŸ’» Code

tDCS Digital Twins Using Deep Learning | Task: Estimation | πŸ“„ Paper | πŸ’» Code

Disease Progression Prediction Incorporating Genotype-Environment Interactions | Task: Prediction | πŸ“„ Paper | πŸ’» Code

DRIM: Learning Disentangled Representations from Incomplete Multimodal Healthcare Data | Task: Prognosis prediction | πŸ“„ Paper | πŸ’» Code

LLM-Guided Multi-modal Multiple Instance Learning for 5-Year Overall Survival Prediction of Lung Cancer | Task: Survival Prediction | πŸ“„ Paper | πŸ’» Code

Predicting 3D Bone Locations | Task: prediction | πŸ“„ Paper | πŸ’» Code

PG-MLIF: Multimodal Low-Rank Interaction Fusion Framework for Cancer Prognosis | Task: Prognosis prediction | πŸ“„ Paper | πŸ’» Code

Prediction of Disease-Related Femur Shape Changes Using Geometric Encoding and Clinical Context on a Hip Disease CT Database | Task: Prediction of Disease-Related Femur Shape Changes | πŸ“„ Paper | πŸ’» Code

Probabilistic Temporal Prediction of Continuous Disease Trajectories and Treatment Effects Using Neural SDEs | Task: Prediction of disease progression and treatment response | πŸ“„ Paper | πŸ’» Code

Vestibular Schwannoma Growth Prediction | Task: growth prediction | πŸ“„ Paper | πŸ’» Code

3D Spine Shape Estimation from Single 2D DXA | Task: Shape estimation | πŸ“„ Paper | πŸ’» Code

ccRCC Metastasis Prediction via Exploring High-Order Correlations on Multiple WSIs | Task: Metastasis prediction | πŸ“„ Paper | πŸ’» Code

Ensemble of Prior-guided Expert Graph Models for Survival Prediction in Digital Pathology | Task: Survival Prediction | πŸ“„ Paper | πŸ’» Code

Forecasting Disease Progression with Parallel Hyperplanes | Task: Disease progression forecasting | πŸ“„ Paper | πŸ’» Code

Hierarchical Graph Learning with Small-World Brain Connectomes | Task: Cognitive prediction | πŸ“„ Paper | πŸ’» Code

HoG-Net: Hierarchical Multi-organ Graph Network for Cancer Prediction | Task: recurrence prediction | πŸ“„ Paper | πŸ’» Code

HuLP: Human-in-the-Loop for Prognosis | Task: Prognosis | πŸ“„ Paper | πŸ’» Code

F2TNet: FMRI to T1w MRI Knowledge Transfer Network for Brain Multi-phenotype Prediction | Task: Prediction | πŸ“„ Paper | πŸ’» Code

LOMIA-T: A Transformer-Based Framework for Predicting Treatment Response | Task: prediction | πŸ“„ Paper | πŸ’» Code

Longitudinal Mammogram Risk Prediction | Task: Risk Prediction | πŸ“„ Paper | πŸ’» Code

Longitudinally Consistent Individual Prediction | Task: Prediction | πŸ“„ Paper | πŸ’» Code

M2Fusion | Task: prediction of pathological complete response | πŸ“„ Paper | πŸ’» Code

Latent Spaces Enable Transformer-Based Dose Prediction | Task: Dose prediction | πŸ“„ Paper | πŸ’» Code

Multimodal Learning for Embryo Viability Prediction | Task: viability prediction | πŸ“„ Paper | πŸ’» Code

ORCGT: Ollivier-Ricci Curvature-Based Graph Model for Lung STAS Prediction | Task: Prediction | πŸ“„ Paper | πŸ’» Code

Physics Informed Neural Networks for Estimation of Tissue Properties from Multi-echo MRI | Task: parameter estimation | πŸ“„ Paper | πŸ’» Code

SurvRNC: Learning Ordered Representations for Survival Prediction Using Rank-N-Contrast | Task: Survival Prediction | πŸ“„ Paper | πŸ’» Code

TabMixer: Noninvasive Estimation of the Mean Pulmonary Artery Pressure via Imaging and Tabular Data Mixing | Task: mPAP estimation | πŸ“„ Paper | πŸ’» Code

Structure-Preserving Image Translation for Depth Estimation in Colonoscopy | Task: Depth estimation | πŸ“„ Paper | πŸ’» Code

Spatiotemporal Representation Learning for Short and Long Medical Image Time Series | Task: Prognosis, Estimation | πŸ“„ Paper | πŸ’» Code

AutoSkull: Learning-Based Skull Estimation for Automated Pipelines | Task: Skull shape estimation | πŸ“„ Paper | πŸ’» Code

Estimating Neural Orientation Distribution Fields on High Resolution Diffusion MRI Scans | Task: Estimation of Orientation Distribution Function (ODF) | πŸ“„ Paper | πŸ’» Code

Ordinal Learning: Longitudinal Attention Alignment Model for Predicting Time to Breast Cancer Events | Task: Risk prediction, Time-to-event prediction | πŸ“„ Paper | πŸ’» Code

Refining IOL Power Calculation Using Cross-Layer Attention and ECA | Task: prediction | πŸ“„ Paper | πŸ’» Code

Generalized Robust Fundus Photography-Based Vision Loss Estimation for High Myopia | Task: Estimation of visual field | πŸ“„ Paper | πŸ’» Code

Double-Tier Attention Based Multi-label Learning Network | Task: Biomarker prediction | πŸ“„ Paper | πŸ’» Code

Context-Aware Gaze Estimation | Task: Estimation | πŸ“„ Paper | πŸ’» Code

Improving Therapy Response Prediction | Task: Prediction | πŸ“„ Paper | πŸ’» Code

HUP-3D: 3D Multi-view Synthetic Dataset for Hand-Ultrasound-Probe Pose Estimation | Task: pose estimation | πŸ“„ Paper | πŸ’» Code

Temporal Neighboring Multi-modal Transformer with Missingness-Aware Prompt for Hepatocellular Carcinoma Prediction | Task: prediction | πŸ“„ Paper | πŸ’» Code

⭐ Quality Assessment

Unsupervised Ultrasound Image Quality Assessment | Task: Image Quality Assessment | πŸ“„ Paper | πŸ’» Code

HAMIL-QA: Hierarchical Approach | Task: Quality Assessment | πŸ“„ Paper | πŸ’» Code

⭐ Reconstruction

Conditional Diffusion Model for Versatile Temporal Inpainting in 4D Cerebral CT Perfusion Imaging | Task: Temporal Inpainting | πŸ“„ Paper | πŸ’» Code

Cortical Surface Reconstruction from 2D MRI with Segmentation-Constrained Super-Resolution and Representation Learning | Task: Surface Reconstruction | πŸ“„ Paper | πŸ’» Code

PX2Tooth: Reconstructing the 3D Point Cloud Teeth from a Single Panoramic X-Ray | Task: 3D reconstruction | πŸ“„ Paper | πŸ’» Code

LGS: A Light-Weight 4D Gaussian Splatting for Efficient Surgical Scene Reconstruction | Task: 3D Reconstruction | πŸ“„ Paper | πŸ’» Code

Self-supervised 3D Skeleton Completion | Task: skeleton completion | πŸ“„ Paper | πŸ’» Code

Weakly Supervised Learning of Cortical Surface Reconstruction | Task: Cortical Surface Reconstruction | πŸ“„ Paper | πŸ’» Code

3DDX Bone Surface Reconstruction from Single Radiograph | Task: Reconstruction | πŸ“„ Paper | πŸ’» Code

3DGR-CAR: Coronary Artery Reconstruction from Ultra-sparse 2D X-Ray Views | Task: Reconstruction | πŸ“„ Paper | πŸ’» Code

3DPX: Progressive 2D-to-3D Oral Image Reconstruction | Task: reconstruction | πŸ“„ Paper | πŸ’» Code

All-In-One Medical Image Restoration | Task: All-In-One Medical Image Restoration | πŸ’» Code

Accelerated Multi-contrast MRI | Task: Reconstruction | πŸ“„ Paper | πŸ’» Code

Evaluation of State-of-the-Art Projectors with Noise and Nonlinearity | Task: Image Reconstruction | πŸ“„ Paper | πŸ’» Code

APS-USCT | Task: Image Reconstruction | πŸ“„ Paper | πŸ’» Code

Blind Proximal Diffusion Model for Joint Image and Sensitivity Estimation in Parallel MRI | Task: reconstruction | πŸ“„ Paper

Convolutional Implicit Neural Representation of Pathology Whole-Slide Images | Task: Image Reconstruction | πŸ“„ Paper | πŸ’» Code

Cycle-Consistent Learning for Fetal Cortical Surface Reconstruction | Task: Cortical surface reconstruction | πŸ“„ Paper

Dynamic Hybrid Unrolled Multi-scale Network for Accelerated MRI Reconstruction | Task: Reconstruction | πŸ“„ Paper | πŸ’» Code

Explanation-Driven Cyclic Learning for Brain MRI Reconstruction | Task: Reconstruction | πŸ“„ Paper

Fine-Grained Context and Multi-modal Alignment for Freehand 3D Ultrasound Reconstruction | Task: 3D freehand ultrasound reconstruction | πŸ“„ Paper | πŸ’» Code

Free-SurGS: SfM-Free 3D Gaussian Splatting for Surgical Scene Reconstruction | Task: 3D Reconstruction | πŸ“„ Paper | πŸ’» Code

k-t Self-consistency Diffusion: A Physics-Informed Model for Dynamic MR Imaging | Task: Reconstruction | πŸ“„ Paper | πŸ’» Code

Learning 3D Gaussians for Sparse CBCT Reconstruction | Task: Reconstruction | πŸ“„ Paper | πŸ’» Code

LiverUSRecon | Task: 3D reconstruction and volumetry | πŸ“„ Paper | πŸ’» Code

Noise Level Adaptive Diffusion Model | Task: Reconstruction | πŸ“„ Paper | πŸ’» Code

Instabilities of Unsupervised Denoising Diffusion Models in MRI | Task: Image Reconstruction | πŸ“„ Paper | πŸ’» Code

Parameter Efficient Fine Tuning for Multi-scanner PET to PET Reconstruction | Task: Reconstruction | πŸ“„ Paper | πŸ’» Code

Region Attention Transformer | Task: Image Restoration | πŸ“„ Paper | πŸ’» Code

Self-supervised k-Space Regularization for Motion-Resolved Abdominal MRI Using Neural Implicit k-Space Representations | Task: Reconstruction | πŸ“„ Paper | πŸ’» Code

Bone Shape Reconstruction from Biplanar X-Rays | Task: Bone Reconstruction | πŸ“„ Paper | πŸ’» Code

SRE-CNN: A Spatiotemporal Rotation-Equivariant CNN for Cardiac Cine MR Imaging | Task: Image reconstruction | πŸ“„ Paper | πŸ’» Code

TeethDreamer: 3D Teeth Reconstruction | Task: 3D reconstruction | πŸ“„ Paper | πŸ’» Code

Two Projections Suffice for Cerebral Vascular Reconstruction | Task: 3D Reconstruction | πŸ“„ Paper | πŸ’» Code

VolumeNeRF: CT Volume Reconstruction from a Single Projection View | Task: Reconstruction | πŸ“„ Paper | πŸ’» Code

Hallucination Index: An Image Quality Metric for Generative Reconstruction Models | Task: Image reconstruction | πŸ“„ Paper | πŸ’» Code

Interpretable Representation Learning of Cardiac MRI via Attribute Regularization | Task: Reconstruction | πŸ“„ Paper | πŸ’» Code

Algebraic Sphere Surface Fitting for Accurate and Efficient Mesh Reconstruction from Cine CMR Images | Task: Mesh reconstruction | πŸ“„ Paper | πŸ’» Code

⭐ Registration

Deep-Learning-Based Groupwise Registration for Motion Correction of Cardiac T1Mapping | Task: Registration | πŸ“„ Paper | πŸ’» Code

DiffuseReg: Denoising Diffusion Model for Deformation Fields in Image Registration | Task: Image Registration | πŸ“„ Paper | πŸ’» Code

DINO-Reg: General Purpose Image Encoder for Training-Free Deformable Registration | Task: Image Registration | πŸ“„ Paper | πŸ’» Code

Epicardium Prompt-Guided Real-Time Cardiac Ultrasound Frame-to-Volume Registration | Task: Registration | πŸ“„ Paper | πŸ’» Code

Heteroscedastic Uncertainty Estimation Framework for Unsupervised Registration | Task: image registration | πŸ“„ Paper | πŸ’» Code

Hierarchical Symmetric Normalization Registration Using Deformation-Inverse Network | Task: registration | πŸ“„ Paper | πŸ’» Code

On-the-Fly Guidance Training for Medical Image Registration | Task: Registration | πŸ“„ Paper | πŸ’» Code

Online Learning in Motion Modeling | Task: image registration, motion modeling | πŸ“„ Paper | πŸ’» Code

PULPo | Task: Registration | πŸ“„ Paper | πŸ’» Code

uniGradICON: A Foundation Model for Medical Image Registration | Task: Medical Image Registration | πŸ“„ Paper | πŸ’» Code

WiNet: Wavelet-Based Incremental Learning for Efficient Medical Image Registration | Task: Image Registration | πŸ“„ Paper | πŸ’» Code

MemWarp: Discontinuity-Preserving Cardiac Registration | Task: Deformable image registration | πŸ“„ Paper | πŸ’» Code

⭐ Segmentation

3D-SAutoMed: Automatic Segment | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Adaptive Hypergraph Neural Network for Image Segmentation | Task: segmentation | πŸ“„ Paper | πŸ’» Code

Mixture-of-Experts Model for Missing Modality Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Weakly-Supervised Multi-lesion Segmentation Framework | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Adaptive Smooth Activation Function for Improved Organ Segmentation and Disease Diagnosis | Task: Segmentation, Classification | πŸ“„ Paper | πŸ’» Code

UWF-SLO Vessel Segmentation with Source-Free Active Domain Adaptation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Uncertainty-Guided Tiered Self-training Framework for Active Source-Free Domain Adaptation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

AMONuSeg: Histological Dataset for African Multi-organ Nuclei Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

ASPS: Augmented Segment Anything Model for Polyp Segmentation | Task: segmentation | πŸ“„ Paper | πŸ’» Code

Average Calibration Error: A Differentiable Loss for Improved Reliability in Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

BGDiffSeg | Task: segmentation | πŸ“„ Paper | πŸ’» Code

Causal Intervention for Brain Tumor Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

CINA: Conditional Implicit Neural Atlas | Task: Atlas generation, Segmentation, Age Prediction | πŸ“„ Paper | πŸ’» Code

Conditional Diffusion Model for Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Deformation-Aware Segmentation Network | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

DES-SAM: Distillation-Enhanced Semantic SAM for Segmentation with Box Annotation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Domain Adaptation of Echocardiography Segmentation Via Reinforcement Learning | Task: segmentation | πŸ“„ Paper | πŸ’» Code

DPMNet: Dual-Path MLP-Based Network for Aneurysm Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

EM-Net: Efficient Channel and Frequency Learning with Mamba for 3D Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Efficient In-Context Medical Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Few-Shot 3D Volumetric Segmentation with Multi-surrogate Fusion | Task: segmentation | πŸ“„ Paper | πŸ’» Code

Fuzzy Attention-Based Border Rendering Network for Lung Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Hemodynamic-Driven Multi-prototypes Learning for One-Shot Segmentation | Task: segmentation | πŸ“„ Paper | πŸ’» Code

HyperSpace: Hypernetworks for Spacing-Adaptive Image Segmentation | Task: segmentation | πŸ“„ Paper | πŸ’» Code

HRDecoder: High-Resolution Decoder Network for Fundus Image Lesion Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Learning to Segment Multiple Organs from Multimodal Partially Labeled Datasets | Task: segmentation | πŸ“„ Paper | πŸ’» Code

Osteocytes Teach SR-MicroCT Bone Lacunae Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

LB-UNet: A Lightweight Boundary-Assisted UNet for Skin Lesion Segmentation | Task: Skin lesion segmentation | πŸ“„ Paper | πŸ’» Code

LM-UNet: Whole-Body PET-CT Lesion Segmentation with Dual-Modality-Based Annotations | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

LIDIA: Precise Liver Tumor Diagnosis | Task: Diagnosis, Segmentation | πŸ“„ Paper

MAdapter: Image and Language Medical Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Uncertainty-Guided Cardiac Cine MRI Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

MetaUNETR | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Medical Image Segmentation via Single-Source Domain Generalization with Random Amplitude Spectrum Synthesis | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Multi-Scale Region-Aware Implicit Neural Network | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

ModelMix: A New Model-Mixup Strategy for Few-Scribble Cardiac Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Perspective+ Unet: Enhancing Segmentation with Bi-Path Fusion and Efficient Non-Local Attention | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Progressive Growing of Patch Size | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

nnU-Net Revisited | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Rethinking Abdominal Organ Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

SAM Guided Enhanced Nuclei Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

SAM-Med3D-MoE: Towards a Non-Forgetting Segment Anything Model via Mixture of Experts for 3D Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Anatomically-Guided Segmentation of Cerebral Microbleeds | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

SANGRE: a Shallow Attention Network Guided by Resolution Expansion for MR Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Self-paced Sample Selection for Barely-Supervised Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

SiNGR: Brain Tumor Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Simple Yet Effective Prior-Aware Pseudo-labeling | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Swin-UMamba | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

TinyU-Net | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Tri-Plane Mamba: Efficiently Adapting Segment Anything Model for 3D Medical Images | Task: segmentation | πŸ“„ Paper | πŸ’» Code

Efficient Cortical Surface Parcellation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Soft-Labeled Contrastive Learning for Cardiac Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Visual-Textual Matching Attention | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

VLSM-Adapter: Finetuning Vision-Language Segmentation Efficiently with Lightweight Blocks | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

WS-TIS | Task: Instance Segmentation | πŸ’» Code

mQSM: Multitask Learning-Based Quantitative Susceptibility Mapping | Task: QSM reconstruction and brain region segmentation | πŸ“„ Paper | πŸ’» Code

Anatomy-Guided Pathology Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Synchronous Image-Label Diffusion | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Beyond Adapting SAM: Towards End-to-End Ultrasound Image Segmentation via Auto Prompting | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Centerline Boundary Dice Loss for Vascular Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Network Calibration | Task: segmentation | πŸ“„ Paper | πŸ’» Code

Class-Aware Mutual Mixup for Semi-supervised Cross-Domain Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Comprehensive Generative Replay for TIL Segmentation | Task: segmentation | πŸ“„ Paper | πŸ’» Code

CriDiff: Criss-Cross Injection Diffusion Framework for Prostate Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Voxel Scene Graph for Intracranial Hemorrhage | Task: Segmentation and Detection | πŸ“„ Paper | πŸ’» Code

CryoSAM | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

CT-Based Brain Ventricle Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Cut to the Mix | Task: segmentation | πŸ“„ Paper | πŸ’» Code

CUTS: A Deep Learning and Topological Framework for Multigranular Unsupervised Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Differentiable Soft Morphological Filters for Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Dynamic Position Transformation and Boundary Refinement Network for Left Atrial Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Dynamic Pseudo Label Optimization in Nuclei Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Text-Free Inference via Self-guidance | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Enhancing Label-Efficient Medical Image Segmentation with Text-Guided Diffusion Models | Task: Segmentation | πŸ’» Code

MS Lesion Segmentation with Self-supervised Pre-training and Synthetic Lesion Integration | Task: segmentation | πŸ“„ Paper | πŸ’» Code

FedFMS: Exploring Federated Foundation Models for Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

FM-ABS: Promptable Foundation Model | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

FRCNet | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

H2ASeg | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

I2Net: Exploiting Misaligned Contexts Orthogonally for Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

IterMask2: Iterative Unsupervised Anomaly Segmentation for Brain Lesions | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Laplacian Segmentation Networks Improve Epistemic Uncertainty Quantification | Task: segmentation | πŸ“„ Paper | πŸ’» Code

A New Cine-MRI Segmentation Method | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

LKM-UNet: Large Kernel Vision Mamba UNet for Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Low-Rank Continual Pyramid Vision Transformer | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Low-Rank Mixture-of-Experts for Continual Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

LUCIDA: Low-Dose Universal-Tissue CT Image Domain Adaptation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Mask-Enhanced Segment Anything Model | Task: Semantic Segmentation | πŸ“„ Paper | πŸ’» Code

Weakly Supervised Histological Tissue Segmentation with ARML | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

MoreStyle: Relax Low-Frequency Constraint of Fourier-Based Image Reconstruction in Generalizable Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

CausalCLIPSeg: Unlocking CLIP’s Potential in Referring Medical Image Segmentation with Causal Intervention | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Multi-stage Multi-granularity Focus-Tuned Learning Paradigm for Medical HSI Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

NeuroLink: Bridging Weak Signals in Neuronal Imaging with Morphology Learning | Task: segmentation | πŸ“„ Paper | πŸ’» Code

Pair Shuffle Consistency for Semi-supervised Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

PathMamba: Weakly Supervised State Space Model for Multi-class Segmentation of Pathology Images | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Prompt-Based Segmentation Model | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Prompting Segment Anything Model with Domain-Adaptive Prototype | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

QueryNet: A Unified Framework for Accurate Polyp Segmentation and Detection | Task: Segmentation, Detection | πŸ“„ Paper | πŸ’» Code

Let Me DeCode You | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Test-Time Domain Adaptation for Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

SDCL: Students Discrepancy-Informed Correction for Semi-supervised Medical Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

SegMamba: Long-Range Sequential Modeling Mamba for 3D Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

SegNeuron: 3D Neuron Instance Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

SelfReg-UNet for Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Shortcut Learning in Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Semi-supervised Tubular Structure Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

SimTxtSeg: Weakly-Supervised Medical Image Segmentation with Simple Text Cues | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Simulation-Based Segmentation of Blood Vessels in Cerebral 3D OCTA Images | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Stable Diffusion Segmentation for Biomedical Images | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

PRISM: A Promptable and Robust Interactive Segmentation Model | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Swin SMT: Global Sequential Modeling for 3D Medical Image Segmentation | Task: segmentation | πŸ“„ Paper | πŸ’» Code

Centerline-Cross Entropy Loss for Vessel-Like Structure Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Topologically Faithful Multi-class Segmentation in Medical Images | Task: Multiclass Segmentation | πŸ“„ Paper | πŸ’» Code

Benchmark for Colorectal Cancer Segmentation in Endorectal Ultrasound Videos | Task: segmentation | πŸ“„ Paper | πŸ’» Code

TP-DRSeg: Improving Diabetic Retinopathy Lesion Segmentation with Explicit Text-Prompts Assisted SAM | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Unsupervised Training of Neural Cellular Automata on Edge Devices | Task: segmentation | πŸ“„ Paper | πŸ’» Code

Weakly-Supervised Medical Image Segmentation with Gaze Annotations | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

FairDiff: Fair Segmentation with Point-Image Diffusion | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

CS3: Cascade SAM for Sperm Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

S-SYNTH: Knowledge-Based, Synthetic Generation of Skin Images | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

AcneAI | Task: Classification and Segmentation | πŸ“„ Paper | πŸ’» Code

Anatomic-Constrained Medical Image Synthesis via Physiological Density Sampling | Task: Segmentation, Image Reconstruction | πŸ“„ Paper | πŸ’» Code

ASA: Learning Anatomical Consistency, Sub-volume Spatial Relationships and Fine-Grained Appearance | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Cache-Driven Spatial Test-Time Adaptation for Cross-Modality Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Cross Prompting Consistency with Segment Anything Model for Semi-supervised Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Deep Spectral Methods for Unsupervised Ultrasound Image Interpretation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Diffusion Models with Implicit Guidance for Medical Anomaly Detection | Task: Anomaly detection, segmentation | πŸ“„ Paper | πŸ’» Code

Diffusion-Enhanced Consistency Learning for Retinal Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Few Slices Suffice | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

HySparK | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

IPLC: Iterative Pseudo Label Correction Guided by SAM for Source-Free Domain Adaptation in Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Learning from Partial Label Proportions | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Learning Representations by Maximizing Mutual Information Across Views for Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Masks and Manuscripts: Advancing Medical Pre-training | Task: Classification and segmentation | πŸ“„ Paper

MOST: Multi-formation Soft Masking for Semi-supervised Medical Image Segmentation | Task: segmentation | πŸ“„ Paper | πŸ’» Code

SaSaMIM: Synthetic Anatomical Semantics-Aware Masked Image Modeling for Colon Tumor Segmentation in NCCT | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Semi-supervised Segmentation in Diabetic Retinopathy | Task: segmentation | πŸ“„ Paper | πŸ’» Code

3D Partial Points Meets SAM | Task: segmentation | πŸ“„ Paper | πŸ’» Code

Brain Cortical Functional Gradients Predict Cortical Folding Patterns | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

EM Image Denoising and Segmentation | Task: Joint Denoising and Segmentation | πŸ“„ Paper | πŸ’» Code

LSSNet | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

MiHATP: A Multi-hybrid Attention Super-Resolution Network for Pathological Image | Task: Super-resolution, Segmentation | πŸ“„ Paper | πŸ’» Code

Boost Performance Fairness in Medical Federated Learning | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Confidence Intervals Uncovered | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Federated Multi-centric Image Segmentation with Uneven Label Distribution | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

FedEvi: Improving Federated Medical Image Segmentation via Evidential Weight Aggregation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

FedIA: Federated Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

FUNAvg: Federated Uncertainty Weighted Averaging for Datasets with Diverse Labels | Task: multi-label segmentation | πŸ“„ Paper | πŸ’» Code

MH-pFLGB: Model Heterogeneous Personalized Federated Learning via Global Bypass for Medical Image Analysis | Task: Classification, Segmentation | πŸ“„ Paper | πŸ’» Code

Overlay Mantle-Free for Semi-supervised Medical Image Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Progressive Knowledge Distillation for Automatic Perfusion Parameter Maps Generation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

pFLFE: Cross-silo Personalized Federated Learning | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Robust Conformal Volume Estimation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Reliable Source Approximation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Sparse Bayesian Networks | Task: classification and segmentation | πŸ“„ Paper | πŸ’» Code

Single-source Domain Generalization via Lipschitz Regularization | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Cross-Graph Interaction and Diffusion Probability Models for Lung Nodule Segmentation | Task: segmentation | πŸ“„ Paper | πŸ’» Code

Characterizing the Left Ventricular Ultrasound Dynamics in the Frequency Domain | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Robust Semi-supervised Multimodal Image Segmentation | Task: segmentation | πŸ“„ Paper | πŸ’» Code

Intrapartum Ultrasound Image Segmentation of Pubic Symphysis and Fetal Head | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

IOSSAM | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

From Pixel to Cancer | Task: tumor segmentation | πŸ“„ Paper | πŸ’» Code

A Hyperreflective Foci Segmentation Network for OCT Images | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Instance-Aware Representation for CAC Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Hybrid-Structure-Oriented Transformer for Arm Musculoskeletal Ultrasound Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Implicit Representation Embrces Airway Structures | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

Improving Cross-Domain Brain Tissue Segmentation in Fetal MRI with Synthetic Data | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

RIP-A V: Joint Representative Instance Pre-training for Retinal Artery/Vein Segmentation | Task: Segmentation | πŸ“„ Paper | πŸ’» Code

⭐ Miscellaneous

Brain-Shift | Task: Biomarker Extraction | πŸ“„ Paper | πŸ’» Code

D-CoRP: Differentiable Connectivity Refinement for Functional Brain Networks | Task: refinement | πŸ“„ Paper | πŸ’» Code

Eddeep: Fast Eddy-Current Distortion Correction | Task: Distortion correction | πŸ“„ Paper | πŸ’» Code

ESPA: An Unsupervised Harmonization Framework | Task: Harmonization | πŸ“„ Paper | πŸ’» Code

Enhancing Spatiotemporal Disease Progression Models via Latent Diffusion and Prior Knowledge | Task: disease progression modeling | πŸ“„ Paper | πŸ’» Code

TractOracle | Task: Tractography | πŸ“„ Paper | πŸ’» Code

Fusing CBCT and Intraoral Scan Data Into a Single Tooth Image | Task: Data Fusion | πŸ“„ Paper | πŸ’» Code

NODER: Image Sequence Regression Based on Neural Ordinary Differential Equations | Task: Regression | πŸ“„ Paper | πŸ’» Code

Across-Subject Ensemble-Learning Alleviates the Need for Large Samples for fMRI Decoding | Task: decoding | πŸ“„ Paper | πŸ’» Code

Adaptive Subtype and Stage Inference for Alzheimer’s Disease | Task: Subtype and Stage Inference | πŸ“„ Paper

Boosting FFPE-to-HE Virtual Staining | Task: Virtual staining | πŸ“„ Paper | πŸ’» Code

Large-Scale 3D Infant Face Model | Task: 3D model development | πŸ“„ Paper | πŸ’» Code

Medical Cross-Modal Prompt Hashing | Task: Cross-Modal Hashing | πŸ“„ Paper | πŸ’» Code

PhenDiff | Task: Image-to-image translation | πŸ“„ Paper | πŸ’» Code

Spatio-Temporal Neural Distance Fields for Conditional Generative Modeling of the Heart | Task: conditional generative modeling | πŸ“„ Paper | πŸ’» Code

Volume-Optimal Persistence Homological Scaffolds of Hemodynamic Networks Covary with MEG Theta-Alpha Aperiodic Dynamics | Task: topological learning | πŸ“„ Paper | πŸ’» Code

Deep Learning for MRS Voxel Placement in Brain Tumors | Task: Voxel Placement | πŸ“„ Paper

DomainAdapt: Leveraging Multitask Learning | Task: Nutritional status assessment | πŸ“„ Paper

Framework for Unsupervised Statistical Shape Model Learning | Task: Model Learning | πŸ“„ Paper | πŸ’» Code

Anatomical Structure-Guided Medical Vision-Language Pre-training | Task: Representation Learning | πŸ“„ Paper | πŸ’» Code

Multi-modality 3D CNN Transformer for Assisting Clinical Decision in Intracerebral Hemorrhage | Task: clinical decision support | πŸ“„ Paper | πŸ’» Code

Cross-conditioned Diffusion Model for Medical Image to Image Translation | Task: image-to-image translation | πŸ“„ Paper | πŸ’» Code

Material Decomposition in Photon-Counting CT | Task: Material Decomposition | πŸ“„ Paper

PASTA: Pathology-Aware MRI to PET Translation with Diffusion Models | Task: Cross-modal image translation | πŸ“„ Paper | πŸ’» Code

Pixel2Mechanics: Automated Biomechanical Simulations of High-Resolution Intervertebral Discs from Anisotropic MRIs | Task: Simulation | πŸ“„ Paper

3D Volumetric Brain CT-to-MRI Translation | Task: Image-to-image translation (I2I) | πŸ“„ Paper | πŸ’» Code

GCAN: Generative Counterfactual Attention-Guided Network | Task: Diagnostics | πŸ“„ Paper | πŸ’» Code

Interpretable-by-Design Deep Survival Analysis | Task: Disease progression modeling | πŸ“„ Paper | πŸ’» Code

Mask-Free Neuron Concept Annotation for Interpreting Neural Networks | Task: Interpretability | πŸ“„ Paper | πŸ’» Code

Overcoming Atlas Heterogeneity in Federated Learning for Connectome Modeling | Task: predictive modeling | πŸ“„ Paper | πŸ’» Code

Subgroup-Specific Risk-Controlled Dose Estimation in Radiotherapy | Task: regression | πŸ“„ Paper | πŸ’» Code

Generative Image Outpainting for FOV-Truncated CT Recovery | Task: Image Outpainting | πŸ“„ Paper | πŸ’» Code

Improving Cone-Beam CT Image Quality | Task: image-to-image translation | πŸ“„ Paper | πŸ’» Code

MM-Retinal: Knowledge-Enhanced Foundational Pretraining with Fundus Image-Text Expertise | Task: Foundational pretraining | πŸ“„ Paper | πŸ’» Code

CheXtriev | Task: Retrieval | πŸ“„ Paper | πŸ’» Code

Symptom Disentanglement in Chest X-Ray Images | Task: Disease Progression Monitoring | πŸ“„ Paper | πŸ’» Code

Generating Anatomically Accurate Heart Structures via Neural Implicit Fields | Task: Shape modeling | πŸ“„ Paper

Whole Heart 3D+T Representation Learning Through Sparse 2D Cardiac MR Images | Task: Representation learning | πŸ“„ Paper | πŸ’» Code

Real-World Visual Navigation for Cardiac Ultrasound View Planning | Task: Navigation | πŸ“„ Paper | πŸ’» Code

Contributing

We welcome contributions to this awesome list! Please feel free to submit a pull request with your suggestions for awesome AI medical imaging papers.

How to Contribute

  1. Fork the repository
  2. Create a new branch (git checkout -b add-new-paper)
  3. Make your changes
  4. Commit your changes (git commit -am 'Add new paper')
  5. Push to the branch (git push origin add-new-paper)
  6. Create a new Pull Request

Please ensure your pull request adheres to the following guidelines:

  • Make sure the paper is related to AI in medical imaging
  • Provide a link to the paper and, if available, a link to the code implementation
  • Use the format: [Paper Title](link) - A short description
  • Add the paper to the relevant category or create a new one if needed
  • Check your spelling and grammar

License

This project is licensed under the MIT License - see the LICENSE.md file for details.

Acknowledgments

  • All the researchers and developers who have contributed to the field of AI in medical imaging
  • The open-source community for making their implementations available