A novel MRI-based habitat analysis and deep learning for predicting perineural invasion in prostate cancer: a two-center study

Abstract Background To explore the efficacy of a deep learning (DL) model in predicting perineural invasion (PNI) in prostate cancer (PCa) by conducting multiparametric MRI (mpMRI)-based tumor heterogeneity analysis. Methods This retrospective study included 397 patients with PCa from two medical ce...

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Main Authors: Shuitang Deng, Danjiang Huang, Xiaoyu Han, He Zhang, Hui Wang, Guoqun Mao, Weiqun Ao
Format: Article
Language:English
Published: BMC 2025-08-01
Series:BMC Cancer
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Online Access:https://doi.org/10.1186/s12885-025-14759-9
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Summary:Abstract Background To explore the efficacy of a deep learning (DL) model in predicting perineural invasion (PNI) in prostate cancer (PCa) by conducting multiparametric MRI (mpMRI)-based tumor heterogeneity analysis. Methods This retrospective study included 397 patients with PCa from two medical centers. The patients were divided into training, internal validation (in-vad), and independent external validation (ex-vad) cohorts (n = 173, 74, and 150, respectively). mpMRI-based habitat analysis, comprising T2-weighted imaging, diffusion-weighted imaging, and apparent diffusion coefficient sequences, was performed followed by DL, deep feature selection, and filtration to compute a radscore. Subsequently, six models were constructed: one clinical model, four habitat models (habitats 1, 2, 3, and whole-tumor), and one combined model. Receiver operating characteristic curve analysis was performed to evaluate the models’ ability to predict PNI. Results The four habitat models exhibited robust performance in predicting PNI, with area under the curve (AUC) values of 0.862–0.935, 0.802–0.957, and 0.859–0.939 in the training, in-vad, and ex-vad cohorts, respectively. The clinical model had AUC values of 0.832, 0.818, and 0.789 in the training, in-vad, and ex-vad cohorts, respectively. The combined model outperformed the clinical and habitat models, with AUC, sensitivity, and specificity values of 0.999, 1, and 0.955 for the training cohort. Decision curve analysis and clinical impact curve analysis indicated favorable clinical applicability and utility of the combined model. Conclusion DL models constructed through mpMRI-based habitat analysis accurately predict the PNI status of PCa.
ISSN:1471-2407