[HTML][HTML] Clinical-grade detection of microsatellite instability in colorectal tumors by deep learning

A Echle, HI Grabsch, P Quirke, PA van den Brandt… - Gastroenterology, 2020 - Elsevier
A Echle, HI Grabsch, P Quirke, PA van den Brandt, NP West, GGA Hutchins, LR Heij, X Tan…
Gastroenterology, 2020Elsevier
Background & Aims Microsatellite instability (MSI) and mismatch-repair deficiency (dMMR)
in colorectal tumors are used to select treatment for patients. Deep learning can detect MSI
and dMMR in tumor samples on routine histology slides faster and less expensively than
molecular assays. However, clinical application of this technology requires high
performance and multisite validation, which have not yet been performed. Methods We
collected H&E-stained slides and findings from molecular analyses for MSI and dMMR from …
Background & Aims
Microsatellite instability (MSI) and mismatch-repair deficiency (dMMR) in colorectal tumors are used to select treatment for patients. Deep learning can detect MSI and dMMR in tumor samples on routine histology slides faster and less expensively than molecular assays. However, clinical application of this technology requires high performance and multisite validation, which have not yet been performed.
Methods
We collected H&E-stained slides and findings from molecular analyses for MSI and dMMR from 8836 colorectal tumors (of all stages) included in the MSIDETECT consortium study, from Germany, the Netherlands, the United Kingdom, and the United States. Specimens with dMMR were identified by immunohistochemistry analyses of tissue microarrays for loss of MLH1, MSH2, MSH6, and/or PMS2. Specimens with MSI were identified by genetic analyses. We trained a deep-learning detector to identify samples with MSI from these slides; performance was assessed by cross-validation (N = 6406 specimens) and validated in an external cohort (n = 771 specimens). Prespecified endpoints were area under the receiver operating characteristic (AUROC) curve and area under the precision-recall curve (AUPRC).
Results
The deep-learning detector identified specimens with dMMR or MSI with a mean AUROC curve of 0.92 (lower bound, 0.91; upper bound, 0.93) and an AUPRC of 0.63 (range, 0.59–0.65), or 67% specificity and 95% sensitivity, in the cross-validation development cohort. In the validation cohort, the classifier identified samples with dMMR with an AUROC of 0.95 (range, 0.92–0.96) without image preprocessing and an AUROC of 0.96 (range, 0.93–0.98) after color normalization.
Conclusions
We developed a deep-learning system that detects colorectal cancer specimens with dMMR or MSI using H&E-stained slides; it detected tissues with dMMR with an AUROC of 0.96 in a large, international validation cohort. This system might be used for high-throughput, low-cost evaluation of colorectal tissue specimens.
Elsevier