Deep learning based tissue analysis predicts outcome in colorectal cancer

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作者
Dmitrii Bychkov
Nina Linder
Riku Turkki
Stig Nordling
Panu E. Kovanen
Clare Verrill
Margarita Walliander
Mikael Lundin
Caj Haglund
Johan Lundin
机构
[1] University of Helsinki,Institute for Molecular Medicine Finland FIMM, Helsinki Institute for Life Science HiLIFE
[2] Uppsala University,Department of Women’s and Children’s Health, International Maternal and Child Health (IMCH)
[3] University of Helsinki,Department of Pathology, Medicum
[4] University of Helsinki and HUSLAB,Department of Pathology
[5] Helsinki University Hospital,Nuffield Department of Surgical Sciences
[6] NIHR Oxford Biomedical Research Centre,Department of Surgery
[7] University of Oxford,Research Programs Unit, Translational Cancer Biology
[8] University of Helsinki and Helsinki University Hospital,Department of Public Health Sciences
[9] University of Helsinki,undefined
[10] Global Health/IHCAR,undefined
[11] Karolinska Institutet,undefined
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摘要
Image-based machine learning and deep learning in particular has recently shown expert-level accuracy in medical image classification. In this study, we combine convolutional and recurrent architectures to train a deep network to predict colorectal cancer outcome based on images of tumour tissue samples. The novelty of our approach is that we directly predict patient outcome, without any intermediate tissue classification. We evaluate a set of digitized haematoxylin-eosin-stained tumour tissue microarray (TMA) samples from 420 colorectal cancer patients with clinicopathological and outcome data available. The results show that deep learning-based outcome prediction with only small tissue areas as input outperforms (hazard ratio 2.3; CI 95% 1.79–3.03; AUC 0.69) visual histological assessment performed by human experts on both TMA spot (HR 1.67; CI 95% 1.28–2.19; AUC 0.58) and whole-slide level (HR 1.65; CI 95% 1.30–2.15; AUC 0.57) in the stratification into low- and high-risk patients. Our results suggest that state-of-the-art deep learning techniques can extract more prognostic information from the tissue morphology of colorectal cancer than an experienced human observer.
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