MUSTANG: Multi-Stain Self-Attention Graph Multiple Instance Learning Pipeline for Histopathology Whole Slide Images
Amaya Gallagher-Syed, Luca Rossi, Felice Rivellese, Costantino, Pitzalis, Myles Lewis, Michael Barnes, Gregory Slabaugh

TL;DR
MUSTANG introduces a novel self-attention graph-based multiple instance learning pipeline for classifying gigapixel histopathology WSIs at the patient level, achieving state-of-the-art performance without requiring detailed annotations.
Contribution
It presents a highly modular, end-to-end multi-stain self-attention graph pipeline that effectively handles heterogeneous WSIs with only patient-level labels, outperforming existing models.
Findings
Achieves state-of-the-art F1-score of 0.89 and AUC of 0.92.
Outperforms the widely used CLAM model.
Highly adaptable to different clinical datasets.
Abstract
Whole Slide Images (WSIs) present a challenging computer vision task due to their gigapixel size and presence of numerous artefacts. Yet they are a valuable resource for patient diagnosis and stratification, often representing the gold standard for diagnostic tasks. Real-world clinical datasets tend to come as sets of heterogeneous WSIs with labels present at the patient-level, with poor to no annotations. Weakly supervised attention-based multiple instance learning approaches have been developed in recent years to address these challenges, but can fail to resolve both long and short-range dependencies. Here we propose an end-to-end multi-stain self-attention graph (MUSTANG) multiple instance learning pipeline, which is designed to solve a weakly-supervised gigapixel multi-image classification task, where the label is assigned at the patient-level, but no slide-level labels or region…
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Taxonomy
TopicsAI in cancer detection · Digital Imaging for Blood Diseases · Image Retrieval and Classification Techniques
MethodsGraph Neural Network · fail
