2023
DOI: 10.3389/fonc.2023.1036734
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Incremental value of radiomics with machine learning to the existing prognostic models for predicting outcome in renal cell carcinoma

Abstract: PurposeTo systematically evaluate the potential of radiomics coupled with machine-learning algorithms to improve the predictive power for overall survival (OS) of renal cell carcinoma (RCC).MethodsA total of 689 RCC patients (281 in the training cohort, 225 in the validation cohort 1 and 183 in the validation cohort 2) who underwent preoperative contrast-enhanced CT and surgical treatment were recruited from three independent databases and one institution. 851 radiomics features were screened using machine-lea… Show more

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