TL;DR
This paper introduces TOAD, a deep learning algorithm that analyzes histology slides to predict cancer origins, aiding diagnosis of cancers of unknown primary and potentially reducing reliance on genomic testing.
Contribution
The study presents a novel deep learning model trained on large histology datasets to identify primary tumor sites, demonstrating high accuracy and clinical utility for CUP diagnosis.
Findings
Achieved 84% top-1 accuracy on internal test set
Achieved 79% top-1 accuracy on external test set
50% concordance with expert diagnosis in CUP cases
Abstract
Cancer of unknown primary (CUP) is an enigmatic group of diagnoses where the primary anatomical site of tumor origin cannot be determined. This poses a significant challenge since modern therapeutics such as chemotherapy regimen and immune checkpoint inhibitors are specific to the primary tumor. Recent work has focused on using genomics and transcriptomics for identification of tumor origins. However, genomic testing is not conducted for every patient and lacks clinical penetration in low resource settings. Herein, to overcome these challenges, we present a deep learning-based computational pathology algorithm-TOAD-that can provide a differential diagnosis for CUP using routinely acquired histology slides. We used 17,486 gigapixel whole slide images with known primaries spread over 18 common origins to train a multi-task deep model to simultaneously identify the tumor as primary or…
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