Description
The eight-volume set LNCS 12901, 12902, 12903, 12904, 12905, 12906, 12907, and 12908 constitutes the refereed proceedings of the 24th International Conference on Medical Image Computing and Computer-Assisted Intervention, MICCAI 2021, held in Strasbourg, France, in September/October 2021.* The 531 revised full papers presented were carefully reviewed and selected from 1630 submissions in a double-blind review process. The papers are organized in the following topical sections: Part I: image segmentation Part II: machine learning – self-supervised learning; machine learning – semi-supervised learning; and machine learning – weakly supervised learning Part III: machine learning – advances in machine learning theory; machine learning – attention models; machine learning – domain adaptation; machine learning – federated learning; machine learning – interpretability / explainability; and machine learning – uncertainty Part IV: image registration; image-guided interventions and surgery; surgical data science; surgical planning and simulation; surgical skill and work flow analysis; and surgical visualization and mixed, augmented and virtual reality Part V: computer aided diagnosis; integration of imaging with non-imaging biomarkers; and outcome/disease prediction Part VI: image reconstruction; clinical applications – cardiac; and clinical applications – vascular Part VII: clinical applications – abdomen; clinical applications – breast; clinical applications – dermatology; clinical applications – fetal imaging; clinical applications – lung; clinical applications – neuroimaging – brain development; clinical applications – neuroimaging – DWI and tractography; clinical applications – neuroimaging – functional brain networks; clinical applications – neuroimaging – others; and clinical applications – oncology Part VIII: clinical applications – ophthalmology; computational (integrative) pathology; modalities – microscopy; modalities – histopathology; and modalities – ultrasound *The conference was held virtually. Machine Learning – Self-Supervised Learning.- SSLP: Spatial Guided Self-supervised Learning on Pathological Images.- Segmentation of Left Atrial MR Images via Self-supervised Semi-supervised Meta-learning.- Deformed2Self: Self-Supervised Denoising for Dynamic Medical Imaging.- Imbalance-Aware Self-Supervised Learning for 3D Radiomic Representations.- Self-supervised visual representation learning for histopathological images.- Contrastive Learning with Continuous Proxy Meta-Data For 3D MRI Classification.- Sli2Vol: Annotate a 3D Volume from a Single Slice with Self-Supervised Learning.- Self-Supervised Longitudinal Neighbourhood Embedding.- Self-Supervised Multi-Modal Alignment For Whole Body Medical Imaging.- SimTriplet: Simple Triplet Representation Learning with a Single GPU.- Lesion-based Contrastive Learning for Diabetic Retinopathy Grading from Fundus Images.- SAR: Scale-Aware Restoration Learning for 3D Tumor Segmentation.- Self-Supervised Correction Learning for Semi-Supervised Biomedical Image Segmentation.- SpineGEM: A Hybrid-Supervised Model Generation Strategy Enabling Accurate Spine Disease Classification with a Small Training Dataset.- Contrastive Learning of Relative Position Regression for One-Shot Object Localization in 3D Medical Images.- Topological Learning and Its Application to Multimodal Brain Network Integration.- One-Shot Medical Landmark Detection.- Implicit field learning for unsupervised anomaly detection in medical images.- Dual-Consistency Semi-Supervised Learning with Uncertainty Quantification for COVID-19 Lesion Segmentation from CT Images.- Contrastive Pre-training and Representation Distillation for Medical Visual Question Answering Based on Radiology Images.- Positional Contrastive Learning for Volumetric Medical Image Segmentation.- Longitudinal self-supervision to disentangle inter-patient variability from disease progression.- Self-Supervised Vessel Enhancement Using Flow-Based Consistencies.- Unsupervised Contrastive Learning of Radiomics and Deep Features for Label-Efficient Tumor Classification.- Learning 4D Infant Cortical Surface Atlas with Unsupervised Spherical Networks.- Multimodal Representation Learning via Maximization of Local Mutual Information.- Inter-Regional High-level Relation Learning from Functional Connectivity via Self-Supervision.- Machine Learning – Semi-Supervised Learning.- Semi-supervised Left Atrium Segmentation with Mutual Consistency Training.- Semi-supervised Meta-learning with Disentanglement for Domain-generalised Medical Image Segmentation.- Efficient Semi-Supervised Gross Target Volume of Nasopharyngeal Carcinoma Segmentation via Uncertainty Rectified Pyramid Consistency.- Few-Shot Domain Adaptation with Polymorphic Transformers.- Lesion Segmentation and RECIST Diameter Prediction via Click-driven Attention and Dual-path Connection.- Reciprocal Learning for Semi-supervised Segmentation.- Disentangled Sequential Graph Autoencoder for Preclinical Alzheimer’s Disease Characterizations from ADNI Study.- POPCORN: Progressive Pseudo-labeling with Consistency Regularization and Neighboring.- 3D Semantic Mapping from Arthroscopy using Out-of-distribution Pose and Depth and In-distribution Segmentation Training.- Semi-Supervised Unpaired Multi-Modal Learning for Label-Efficient Medical Image Segmentation.- Implicit Neural Distance Representation for Unsupervised and Supervised Classification of Complex Anatomies.- 3D Graph-S2Net: Shape-Aware Self-Ensembling Network for Semi-Supervised Segmentation with Bilateral Graph Convolution.- Duo-SegNet: Adversarial Dual-Views for Semi-Supervised Medical Image Segmentation.- Neighbor Matching for Semi-supervised Learning.- Tripled-uncertainty Guided Mean Teacher model for Semi-supervised Medical Image Segmentation.- Learning with Noise: Mask-guided Attention Model for Weakly Supervised Nuclei Segmentation.- Order-Guided Disentangled Representation Learning for Ulcerative Colitis Classification with Limited Labels.- Semi-supervised Contrastive Learning for Label-efficient Medical Image Segmentation.- Functional Magnetic Resonance Imaging data augmentation through conditional ICA.- Scalable joint detection and segmentation of surgical instruments with weak supervision.- Machine Learning – Weakly Supervised Learning.- Weakly-Supervised Universal Lesion Segmentation with Regional Level Set Loss.- Bounding Box Tightness Prior for Weakly Supervised Image Segmentation.- OXnet: Deep Omni-supervised Thoracic Disease Detection from Chest X-rays.- Adapting Off-the-Shelf Source Segmenter for Target Medical Image Segmentation.- Quality-Aware Memory Network for Interactive Volumetric Image Segmentation.- Improving Pneumonia Localization via Cross-Attention on Medical Images and Reports.- Combining Attention-based Multiple Instance Learning and Gaussian Processes for CT Hemorrhage Detection.- CPNet: Cycle Prototype Network for Weakly-supervised 3D Renal Chamber Segmentation.- Observational Supervision for Medical Image Classification using Gaze Data.- Inter Extreme Points Geodesics for End-to-End Weakly Supervised Image Segmentation.- Efficient and Generic Interactive Segmentation Framework to Correct Mispredictions during Clinical Evaluation of Medical Images.- Learning Whole-Slide Segmentation from Inexact and Incomplete Labels using Tissue Graphs.- Labels-set Loss Functions for Partial Supervision: Application to Fetal Brain 3D MRI Parcellation.




