Multistain deep learning for prediction of prognosis and therapy response in colorectal cancer

被引:0
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作者
Sebastian Foersch
Christina Glasner
Ann-Christin Woerl
Markus Eckstein
Daniel-Christoph Wagner
Stefan Schulz
Franziska Kellers
Aurélie Fernandez
Konstantina Tserea
Michael Kloth
Arndt Hartmann
Achim Heintz
Wilko Weichert
Wilfried Roth
Carol Geppert
Jakob Nikolas Kather
Moritz Jesinghaus
机构
[1] University Medical Center Mainz,Institute of Pathology
[2] Johannes Gutenberg University Mainz,Institute of Computer Science
[3] University Hospital Erlangen,Institute of Pathology and Comprehensive Cancer Center EMN
[4] Friedrich-Alexander-Universität Erlangen-Nürnberg,Department of Pathology
[5] University Hospital Schleswig-Holstein,Department of General Visceral and Vascular Surgery
[6] Marien Hospital Mainz,Institute of Pathology
[7] Technical University Munich,Department of Medicine III
[8] University Hospital RWTH Aachen,Pathology and Data Analytics, Leeds Institute of Medical Research at St James’s
[9] University of Leeds,Else Kroener Fresenius Center for Digital Health, Medical Faculty Carl Gustav Carus
[10] Technical University Dresden,Institute of Pathology
[11] University Hospital Marburg,undefined
来源
Nature Medicine | 2023年 / 29卷
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摘要
Although it has long been known that the immune cell composition has a strong prognostic and predictive value in colorectal cancer (CRC), scoring systems such as the immunoscore (IS) or quantification of intraepithelial lymphocytes are only slowly being adopted into clinical routine use and have their limitations. To address this we established and evaluated a multistain deep learning model (MSDLM) utilizing artificial intelligence (AI) to determine the AImmunoscore (AIS) in more than 1,000 patients with CRC. Our model had high prognostic capabilities and outperformed other clinical, molecular and immune cell-based parameters. It could also be used to predict the response to neoadjuvant therapy in patients with rectal cancer. Using an explainable AI approach, we confirmed that the MSDLM’s decisions were based on established cellular patterns of anti-tumor immunity. Hence, the AIS could provide clinicians with a valuable decision-making tool based on the tumor immune microenvironment.
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页码:430 / 439
页数:9
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