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Deep Learning Prediction of Metastasis in Locally Advanced Colon Cancer Using Binary Histologic Tumor Images

Authors :
Stefan Schiele
Benedikt Martin
Gerhard Schenkirsch
Tim Tobias Arndt
Silvia Miller
Eva-Maria Brendel
Matthias Anthuber
Ralf Huss
Bruno Märkl
Gernot Müller
Svenja Bauer
Bettina Monika Banner
Source :
Cancers, Volume 13, Issue 9, Cancers, Vol 13, Iss 2074, p 2074 (2021)
Publication Year :
2021
Publisher :
Multidisciplinary Digital Publishing Institute, 2021.

Abstract

In this study, we developed the Binary ImaGe Colon Metastasis classifier (BIg-CoMet), a semi-guided approach for the stratification of colon cancer patients into two risk groups for the occurrence of distant metastasis, using an InceptionResNetV2-based deep learning model trained on binary images. We enrolled 291 colon cancer patients with pT3 and pT4 adenocarcinomas and converted one cytokeratin-stained representative tumor section per case into a binary image. Image augmentation and dropout layers were incorporated to avoid overfitting. In a validation collective (n = 128), BIg-CoMet was able to discriminate well between patients with and without metastasis (AUC: 0.842, 95% CI: 0.774–0.911). Further, the Kaplan–Meier curves of the metastasis-free survival showed a highly significant worse clinical course for the high-risk group (log-rank test: p &lt<br />0.001), and we demonstrated superiority over other established risk factors. A multivariable Cox regression analysis adjusted for confounders supported the use of risk groups as a prognostic factor for the occurrence of metastasis (hazard ratio (HR): 5.4, 95% CI: 2.5–11.7, p &lt<br />0.001). BIg-CoMet achieved good performance for both UICC subgroups, especially for UICC III (n = 53), with a positive predictive value of 80%. Our study demonstrates the ability to stratify colon cancer patients via a semi-guided process on images that primarily reflect tumor architecture.

Details

Language :
English
ISSN :
20726694
Database :
OpenAIRE
Journal :
Cancers
Accession number :
edsair.doi.dedup.....e886389097c2e57410908bd82ae52030
Full Text :
https://doi.org/10.3390/cancers13092074