Radiogenomic and deep learning network approaches to predict kras mutation from radiotherapy plan ct

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Abstract

Background/Aim: We aimed to investigate the role of radiogenomic and deep learning approaches in predicting the KRAS mutation status of a tumor using radiotherapy planning computed tomography (CT) images in patients with locally advanced rectal cancer. Patients and Methods: After surgical resection, 30 (27.3%) of 110 patients were found to carry a KRAS mutation. For the radiogenomic model, a total of 378 texture features were extracted from the boost clinical target volume (CTV) in the radiotherapy planning CT images. For the deep learning model, we constructed a simple deep learning network that received a three-dimensional input from the CTV. Results: The predictive ability of the radiogenomic score model revealed an AUC of 0.73 for KRAS mutation, whereas the deep learning model demonstrated worse performance, with an AUC of 0.63. Conclusion: The radiogenomic score model was a more feasible approach to predict KRAS status than the deep learning model.

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APA

JANG, B. S., SONG, C., KANG, S. B., & KIM, J. S. (2021). Radiogenomic and deep learning network approaches to predict kras mutation from radiotherapy plan ct. Anticancer Research, 41(8), 3969–3976. https://doi.org/10.21873/anticanres.15193

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