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Estimation of TP53 mutations for endometrial cancer based on diffusion-weighted imaging deep learning and radiomics features

Lei Shen, Bo Dai, Shewei Dou, Fengshan Yan, Tianyun Yang, Yaping Wu

2025BMC Cancer12 citationsDOIOpen Access PDF

Abstract

To construct a prediction model based on deep learning (DL) and radiomics features of diffusion weighted imaging (DWI), and clinical variables for evaluating TP53 mutations in endometrial cancer (EC). DWI and clinical data from 155 EC patients were included in this study, consisting of 80 in the training set, 35 in the test set, and 40 in the external validation set. Radiomics features, convolutional neural network-based DL features, and clinical variables were analyzed. Feature selection was performed using Mann-Whitney U test, LASSO regression, and SelectKBest. Prediction models were established by gaussian process (GP) and decision tree (DT) algorithms and evaluated by the area under the receiver operating characteristic curve (AUC), net reclassification index (NRI), calibration curves, and decision curve analysis (DCA). Compared to the DL (AUC training = 0.830, AUC test = 0.779, and AUC validation = 0.711), radiomics (AUC training = 0.810, AUC test = 0.710, and AUC validation = 0.839), and clinical (AUC training = 0.780, AUC test = 0.685, and AUC validation = 0.695) models, the combined model based on the GP algorithm, which consisted of four DL features, five radiomics features, and two clinical variables, not only demonstrated the highest diagnostic efficacy (AUC training = 0.949, AUC test = 0.877, and AUC validation = 0.914) but also led to an improvement in risk reclassification of the TP53 mutation (NIR training = 66.38%, 56.98%, and 83.48%, NIR test = 50.72%, 80.43%, and 89.49%, and NIR validation = 64.58%, 87.50%, and 120.83%, respectively). In addition, the combined model exhibited good agreement and clinical utility in calibration curves and DCA analyses, respectively. A prediction model based on the GP algorithm and consisting of DL and radiomics features of DWI as well as clinical variables can effectively assess TP53 mutation in EC.

Topics & Concepts

Artificial intelligenceReceiver operating characteristicMedicineLasso (programming language)Feature selectionDecision treeRadiomicsConvolutional neural networkMachine learningInternal medicineComputer scienceWorld Wide WebEndometrial and Cervical Cancer TreatmentsRadiomics and Machine Learning in Medical ImagingCancer Genomics and Diagnostics
Estimation of TP53 mutations for endometrial cancer based on diffusion-weighted imaging deep learning and radiomics features | Litcius