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Artificial intelligence to detect MYC translocation in slides of diffuse large B-cell lymphoma

Żaneta Świderska-Chadaj, Konnie M. Hebeda, Michiel van den Brand, Geert Litjens

2020Archiv für Pathologische Anatomie und Physiologie und für Klinische Medicin36 citationsDOIOpen Access PDF

Abstract

In patients with suspected lymphoma, the tissue biopsy provides lymphoma confirmation, classification, and prognostic factors, including genetic changes. We developed a deep learning algorithm to detect MYC rearrangement in scanned histological slides of diffuse large B-cell lymphoma. The H&E-stained slides of 287 cases from 11 hospitals were used for training and evaluation. The overall sensitivity to detect MYC rearrangement was 0.93 and the specificity 0.52, showing that prediction of MYC translocation based on morphology alone was possible in 93% of MYC-rearranged cases. This would allow a simple and fast prescreening, saving approximately 34% of genetic tests with the current algorithm.

Topics & Concepts

Chromosomal translocationLymphomaDiffuse large B-cell lymphomaBiopsyPathologyMedicineBiologyGeneGeneticsLymphoma Diagnosis and TreatmentGenetic factors in colorectal cancerCancer Genomics and Diagnostics
Artificial intelligence to detect MYC translocation in slides of diffuse large B-cell lymphoma | Litcius