Pan-Cancer Diagnostic Consensus Through Searching Archival Histopathology Images Using Artificial Intelligence
Shivam Kalra, H.R. Tizhoosh, Sultaan Shah, Charles Choi, Savvas, Damaskinos, Amir Safarpoor, Sobhan Shafiei, Morteza Babaie, Phedias, Diamandis, Clinton JV Campbell, and Liron Pantanowitz

TL;DR
This study demonstrates that large-scale image search in digital pathology can improve diagnostic accuracy by matching new cases with curated historical data, achieving high accuracy across multiple cancer types.
Contribution
It introduces a scalable AI-based image search system for histopathology, enabling consensus diagnosis by leveraging extensive public datasets and high-performance computing.
Findings
Achieved high accuracy in subtype diagnosis across various cancers.
Validated the feasibility of computational consensus for pathology diagnosis.
Processed and searched 30,000 slides from 11,000 patients.
Abstract
The emergence of digital pathology has opened new horizons for histopathology and cytology. Artificial-intelligence algorithms are able to operate on digitized slides to assist pathologists with diagnostic tasks. Whereas machine learning involving classification and segmentation methods have obvious benefits for image analysis in pathology, image search represents a fundamental shift in computational pathology. Matching the pathology of new patients with already diagnosed and curated cases offers pathologist a novel approach to improve diagnostic accuracy through visual inspection of similar cases and computational majority vote for consensus building. In this study, we report the results from searching the largest public repository (The Cancer Genome Atlas [TCGA] program by National Cancer Institute, USA) of whole slide images from almost 11,000 patients depicting different types of…
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