Feasibility of deep learning‐based fully automated classification of microsatellite instability in tissue slides of colorectal cancer

High levels of microsatellite instability (MSI‐H) occurs in about 15% of sporadic colorectal cancer (CRC) and is an important predictive marker for response to immune checkpoint inhibitors. To test the feasibility of a deep learning (DL)‐based classifier as a screening tool for MSI status, we built...

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Veröffentlicht in:International journal of cancer 2021-08, Vol.149 (3), p.728-740
Hauptverfasser: Lee, Sung Hak, Song, In Hye, Jang, Hyun‐Jong
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container_title International journal of cancer
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creator Lee, Sung Hak
Song, In Hye
Jang, Hyun‐Jong
description High levels of microsatellite instability (MSI‐H) occurs in about 15% of sporadic colorectal cancer (CRC) and is an important predictive marker for response to immune checkpoint inhibitors. To test the feasibility of a deep learning (DL)‐based classifier as a screening tool for MSI status, we built a fully automated DL‐based MSI classifier using pathology whole‐slide images (WSIs) of CRCs. On small image patches of The Cancer Genome Atlas (TCGA) CRC WSI dataset, tissue/non‐tissue, normal/tumor and MSS/MSI‐H classifiers were applied sequentially for the fully automated prediction of the MSI status. The classifiers were also tested on an independent cohort. Furthermore, to test how the expansion of the training data affects the performance of the DL‐based classifier, additional classifier trained on both TCGA and external datasets was tested. The areas under the receiver operating characteristic curves were 0.892 and 0.972 for the TCGA and external datasets, respectively, by a classifier trained on both datasets. The performance of the DL‐based classifier was much better than that of previously reported histomorphology‐based methods. We speculated that about 40% of CRC slides could be screened for MSI status without molecular testing by the DL‐based classifier. These results demonstrated that the DL‐based method has potential as a screening tool to discriminate molecular alteration in tissue slides. What's new? Microsatellite instability (MSI) levels are an important predictive biomarker for response to immune checkpoint inhibitors in colorectal cancer. To test the feasibility of a deep learning (DL)‐based classifier as a screening tool for MSI status, here the authors built a fully‐automated DL‐based MSI classifier using pathology whole‐slide images of hematoxylin and eosin‐stained tissue slides of colorectal cancer. By automatically removing artefacts and selecting tumour patches with high tumour probability, the DL‐based system could screen out a considerable number of tissue slides for their MSI status, demonstrating its potential as a screening tool for molecular alterations in tissue slides.
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To test the feasibility of a deep learning (DL)‐based classifier as a screening tool for MSI status, we built a fully automated DL‐based MSI classifier using pathology whole‐slide images (WSIs) of CRCs. On small image patches of The Cancer Genome Atlas (TCGA) CRC WSI dataset, tissue/non‐tissue, normal/tumor and MSS/MSI‐H classifiers were applied sequentially for the fully automated prediction of the MSI status. The classifiers were also tested on an independent cohort. Furthermore, to test how the expansion of the training data affects the performance of the DL‐based classifier, additional classifier trained on both TCGA and external datasets was tested. The areas under the receiver operating characteristic curves were 0.892 and 0.972 for the TCGA and external datasets, respectively, by a classifier trained on both datasets. The performance of the DL‐based classifier was much better than that of previously reported histomorphology‐based methods. We speculated that about 40% of CRC slides could be screened for MSI status without molecular testing by the DL‐based classifier. These results demonstrated that the DL‐based method has potential as a screening tool to discriminate molecular alteration in tissue slides. What's new? Microsatellite instability (MSI) levels are an important predictive biomarker for response to immune checkpoint inhibitors in colorectal cancer. To test the feasibility of a deep learning (DL)‐based classifier as a screening tool for MSI status, here the authors built a fully‐automated DL‐based MSI classifier using pathology whole‐slide images of hematoxylin and eosin‐stained tissue slides of colorectal cancer. 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To test the feasibility of a deep learning (DL)‐based classifier as a screening tool for MSI status, we built a fully automated DL‐based MSI classifier using pathology whole‐slide images (WSIs) of CRCs. On small image patches of The Cancer Genome Atlas (TCGA) CRC WSI dataset, tissue/non‐tissue, normal/tumor and MSS/MSI‐H classifiers were applied sequentially for the fully automated prediction of the MSI status. The classifiers were also tested on an independent cohort. Furthermore, to test how the expansion of the training data affects the performance of the DL‐based classifier, additional classifier trained on both TCGA and external datasets was tested. The areas under the receiver operating characteristic curves were 0.892 and 0.972 for the TCGA and external datasets, respectively, by a classifier trained on both datasets. The performance of the DL‐based classifier was much better than that of previously reported histomorphology‐based methods. 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To test the feasibility of a deep learning (DL)‐based classifier as a screening tool for MSI status, we built a fully automated DL‐based MSI classifier using pathology whole‐slide images (WSIs) of CRCs. On small image patches of The Cancer Genome Atlas (TCGA) CRC WSI dataset, tissue/non‐tissue, normal/tumor and MSS/MSI‐H classifiers were applied sequentially for the fully automated prediction of the MSI status. The classifiers were also tested on an independent cohort. Furthermore, to test how the expansion of the training data affects the performance of the DL‐based classifier, additional classifier trained on both TCGA and external datasets was tested. The areas under the receiver operating characteristic curves were 0.892 and 0.972 for the TCGA and external datasets, respectively, by a classifier trained on both datasets. The performance of the DL‐based classifier was much better than that of previously reported histomorphology‐based methods. We speculated that about 40% of CRC slides could be screened for MSI status without molecular testing by the DL‐based classifier. These results demonstrated that the DL‐based method has potential as a screening tool to discriminate molecular alteration in tissue slides. What's new? Microsatellite instability (MSI) levels are an important predictive biomarker for response to immune checkpoint inhibitors in colorectal cancer. To test the feasibility of a deep learning (DL)‐based classifier as a screening tool for MSI status, here the authors built a fully‐automated DL‐based MSI classifier using pathology whole‐slide images of hematoxylin and eosin‐stained tissue slides of colorectal cancer. 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source Wiley Online Library Journals Frontfile Complete; Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals
subjects Automation
Cancer
Colorectal cancer
Colorectal carcinoma
computational pathology
computer‐aided diagnosis
convolutional neural network
Datasets
Deep learning
digital pathology
Genomes
Immune checkpoint inhibitors
Medical research
Microsatellite instability
title Feasibility of deep learning‐based fully automated classification of microsatellite instability in tissue slides of colorectal cancer
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