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Computer aided quantification of intratumoral stroma yields an independent prognosticator in rectal cancer

Authors :
Geessink, Oscar G. F.
Baidoshvili, Alexi
Klaase, Joost M.
Bejnordi, Babak Ehteshami
Litjens, Geert J. S.
van Pelt, Gabi W.
Mesker, Wilma E.
Nagtegaal, Iris D.
Ciompi, Francesco
van der Laak, Jeroen
Geessink, Oscar G. F.
Baidoshvili, Alexi
Klaase, Joost M.
Bejnordi, Babak Ehteshami
Litjens, Geert J. S.
van Pelt, Gabi W.
Mesker, Wilma E.
Nagtegaal, Iris D.
Ciompi, Francesco
van der Laak, Jeroen
Publication Year :
2019

Abstract

PurposeTumor-stroma ratio (TSR) serves as an independent prognostic factor in colorectal cancer and other solid malignancies. The recent introduction of digital pathology in routine tissue diagnostics holds opportunities for automated TSR analysis. We investigated the potential of computer-aided quantification of intratumoral stroma in rectal cancer whole-slide images.MethodsHistological slides from 129 rectal adenocarcinoma patients were analyzed by two experts who selected a suitable stroma hot-spot and visually assessed TSR. A semi-automatic method based on deep learning was trained to segment all relevant tissue types in rectal cancer histology and subsequently applied to the hot-spots provided by the experts. Patients were assigned to a stroma-high or stroma-low group by both TSR methods (visual and automated). This allowed for prognostic comparison between the two methods in terms of disease-specific and disease-free survival times.ResultsWith stroma-low as baseline, automated TSR was found to be prognostic independent of age, gender, pT-stage, lymph node status, tumor grade, and whether adjuvant therapy was given, both for disease-specific survival (hazard ratio=2.48 (95% confidence interval 1.29-4.78)) and for disease-free survival (hazard ratio=2.05 (95% confidence interval 1.11-3.78)). Visually assessed TSR did not serve as an independent prognostic factor in multivariate analysis.ConclusionsThis work shows that TSR is an independent prognosticator in rectal cancer when assessed automatically in user-provided stroma hot-spots. The deep learning-based technology presented here may be a significant aid to pathologists in routine diagnostics.<br />Funding Agencies|Dutch Cancer Society (KWF) / Alpe dHuZes fund [KUN 2014-7032]

Details

Database :
OAIster
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1234670600
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1007.s13402-019-00429-z