Preoperative prediction of perineural invasion and KRAS mutation in colon cancer using machine learning
Autor: | Zhuoli Zhang, Jia Yang, Junjie Shangguan, Vahid Yaghmai, Yu Li, Al B. Benson, Aydin Eresen |
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Rok vydání: | 2020 |
Předmět: |
0301 basic medicine
Cancer Research Receiver operating characteristic Colorectal cancer business.industry Perineural invasion Retrospective cohort study General Medicine medicine.disease medicine.disease_cause Machine learning computer.software_genre 03 medical and health sciences 030104 developmental biology 0302 clinical medicine Oncology 030220 oncology & carcinogenesis Mutation (genetic algorithm) medicine Artificial intelligence KRAS Medical diagnosis Radiation treatment planning business computer |
Zdroj: | Journal of Cancer Research and Clinical Oncology. 146:3165-3174 |
ISSN: | 1432-1335 0171-5216 |
DOI: | 10.1007/s00432-020-03354-z |
Popis: | Preoperative prediction of perineural invasion (PNI) and Kirsten RAS (KRAS) mutation in colon cancer is critical for treatment planning and patient management. We developed machine learning models for diagnosis of PNI and KRAS mutation in colon cancer patients by interpreting preoperative CT. This retrospective study included 207 patients who received surgical resection in our institution. The underlying tumor characteristics were described by analyzing CT image texture quantitatively. The key radiomics features were determined with similarity analysis followed by RELIEFF method among 306 CT imaging features. Eight kernel-based support vector machines classifiers were constructed using individual (II, III, or IV) or multi-stage (II + III + IV) patient cohorts for predicting PNI and KRAS mutation. The model performances were evaluated using accuracy, receiver operating curve, and decision curve analyses. Multi-stage classifiers obtained AUC of 0.793 and 0.862 for detecting PNI and KRAS mutation for test cohort. Moreover, individual-stage classifiers demonstrated significantly improved diagnostic performance at all stages (IIAUC: [0.86; 0.99], IIIAUC: [0.99; 0.99], and IVAUC: [1.00; 1.00], respectively, for PNI and KRAS mutation in test cohort). Besides, stage II tumor is better described with coarse texture features while more detailed features are required for better characterization of advanced-stage tumors (III and IV) for diagnoses of PNI or KRAS mutation. Machine learning models developed using preoperative CT data can predict PNI and KRAS mutation in colon cancer patients with satisfactory performance. Individual-stage models better-characterized the relationship between CT features and PNI or KRAS mutation than multi-stage models and demonstrated good prediction scores. |
Databáze: | OpenAIRE |
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