作者
Jeremias Krause, Heike I Grabsch, Matthias Kloor, Michael Jendrusch, Amelie Echle, Roman David Buelow, Peter Boor, Tom Luedde, Titus J Brinker, Christian Trautwein, Alexander T Pearson, Philip Quirke, Josien Jenniskens, Kelly Offermans, Piet A van den Brandt, Jakob Nikolas Kather
发表日期
2021/5
期刊
The Journal of pathology
卷号
254
期号
1
页码范围
70-79
出版商
John Wiley & Sons, Ltd
简介
Deep learning can detect microsatellite instability (MSI) from routine histology images in colorectal cancer (CRC). However, ethical and legal barriers impede sharing of images and genetic data, hampering development of new algorithms for detection of MSI and other biomarkers. We hypothesized that histology images synthesized by conditional generative adversarial networks (CGANs) retain information about genetic alterations. To test this, we developed a ‘histology CGAN’ which was trained on 256 patients (training cohort 1) and 1457 patients (training cohort 2). The CGAN synthesized 10 000 synthetic MSI and non‐MSI images which contained a range of tissue types and were deemed realistic by trained observers in a blinded study. Subsequently, we trained a deep learning detector of MSI on real or synthetic images and evaluated the performance of MSI detection in a held‐out set of 142 patients. When …
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