iSight: Towards expert-AI co-assessment for improved immunohistochemistry staining interpretation
Jacob S. Leiby, Jialu Yao, Pan Lu, George Hu, Anna Davidian, Shunsuke Koga, Olivia Leung, Pravin Patel, Isabella Tondi Resta, Rebecca Rojansky, Derek Sung, Eric Yang, Paul J. Zhang, Emma Lundberg, Dokyoon Kim, Serena Yeung-Levy, James Zou, Thomas Montine, Jeffrey Nirschl

TL;DR
This paper introduces iSight, a multi-task AI framework trained on a large IHC dataset, that improves staining assessment accuracy and assists pathologists, enhancing diagnostic consistency in immunohistochemistry interpretation.
Contribution
The paper presents iSight, a novel multi-task learning model that integrates visual and metadata features for IHC assessment, outperforming existing models and aiding pathologists.
Findings
iSight achieved over 85% accuracy in location prediction.
iSight outperformed foundation models by 2.5-10.2%.
AI assistance increased inter-pathologist agreement.
Abstract
Immunohistochemistry (IHC) provides information on protein expression in tissue sections and is commonly used to support pathology diagnosis and disease triage. While AI models for H\&E-stained slides show promise, their applicability to IHC is limited due to domain-specific variations. Here we introduce HPA10M, a dataset that contains 10,495,672 IHC images from the Human Protein Atlas with comprehensive metadata included, and encompasses 45 normal tissue types and 20 major cancer types. Based on HPA10M, we trained iSight, a multi-task learning framework for automated IHC staining assessment. iSight combines visual features from whole-slide images with tissue metadata through a token-level attention mechanism, simultaneously predicting staining intensity, location, quantity, tissue type, and malignancy status. On held-out data, iSight achieved 85.5\% accuracy for location, 76.6\% for…
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Taxonomy
TopicsAI in cancer detection · Cell Image Analysis Techniques · Radiomics and Machine Learning in Medical Imaging
