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Published in: Abdominal Radiology 1/2021

01-01-2021 | Metastasis | Technical

Machine learning-based analysis of CT radiomics model for prediction of colorectal metachronous liver metastases

Authors: Marjaneh Taghavi, Stefano Trebeschi, Rita Simões, David B. Meek, Rianne C. J. Beckers, Doenja M. J. Lambregts, Cornelis Verhoef, Janneke B. Houwers, Uulke A. van der Heide, Regina G. H. Beets-Tan, Monique Maas

Published in: Abdominal Radiology | Issue 1/2021

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Abstract

Purpose

Early identification of patients at risk of developing colorectal liver metastases can help personalizing treatment and improve oncological outcome. The aim of this study was to investigate in patients with colorectal cancer (CRC) whether a machine learning-based radiomics model can predict the occurrence of metachronous metastases.

Methods

In this multicentre study, the primary staging portal venous phase CT of 91 CRC patients were retrospectively analysed. Two groups were assessed: patients without liver metastases at primary staging, or during follow-up of ≥ 24 months (n = 67) and patients without liver metastases at primary staging but developed metachronous liver metastases < 24 months after primary staging (n = 24). After liver parenchyma segmentation, 1767 radiomics features were extracted for each patient. Three predictive models were constructed based on (1) radiomics features, (2) clinical features and (3) a combination of clinical and radiomics features. Stability of features across hospitals was assessed by the Kruskal–Wallis test and inter-correlated features were removed if their correlation coefficient was higher than 0.9. Bayesian-optimized random forest with wrapper feature selection was used for prediction models.

Results

The three predictive models that included radiomics features, clinical features and a combination of radiomics with clinical features resulted in an AUC in the validation cohort of 86% (95%CI 85–87%), 71% (95%CI 69–72%) and 86% (95% CI 85–87%), respectively.

Conclusion

A machine learning-based radiomics analysis of routine clinical CT imaging at primary staging can provide valuable biomarkers to identify patients at high risk for developing colorectal liver metastases.
Appendix
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Metadata
Title
Machine learning-based analysis of CT radiomics model for prediction of colorectal metachronous liver metastases
Authors
Marjaneh Taghavi
Stefano Trebeschi
Rita Simões
David B. Meek
Rianne C. J. Beckers
Doenja M. J. Lambregts
Cornelis Verhoef
Janneke B. Houwers
Uulke A. van der Heide
Regina G. H. Beets-Tan
Monique Maas
Publication date
01-01-2021
Publisher
Springer US
Published in
Abdominal Radiology / Issue 1/2021
Print ISSN: 2366-004X
Electronic ISSN: 2366-0058
DOI
https://doi.org/10.1007/s00261-020-02624-1

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