4.7 Article

Time series radiomics for the prediction of prostate cancer progression in patients on active surveillance

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EUROPEAN RADIOLOGY
卷 -, 期 -, 页码 -

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SPRINGER
DOI: 10.1007/s00330-023-09438-x

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Prostatic neoplasms; Magnetic resonance imaging; Artificial intelligence

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In this study, a time series radiomics predictive model was developed using a long short-term memory recurrent neural network. The model analyzed longitudinal changes in tumor-derived radiomic features and serial PSA density to predict histopathological tumor progression in prostate cancer patients on active surveillance. The model outperformed conventional models and achieved comparable performance to expert-performed serial MRI analysis.
Serial MRI is an essential assessment tool in prostate cancer (PCa) patients enrolled on active surveillance (AS). However, it has only moderate sensitivity for predicting histopathological tumour progression at follow-up, which is in part due to the subjective nature of its clinical reporting and variation among centres and readers. In this study, we used a long short-term memory (LSTM) recurrent neural network (RNN) to develop a time series radiomics (TSR) predictive model that analysed longitudinal changes in tumour-derived radiomic features across 297 scans from 76 AS patients, 28 with histopathological PCa progression and 48 with stable disease. Using leave-one-out cross-validation (LOOCV), we found that an LSTM-based model combining TSR and serial PSA density (AUC 0.86 [95% CI: 0.78-0.94]) significantly outperformed a model combining conventional delta-radiomics and delta-PSA density (0.75 [0.64-0.87]; p = 0.048) and achieved comparable performance to expert-performed serial MRI analysis using the Prostate Cancer Radiologic Estimation of Change in Sequential Evaluation (PRECISE) scoring system (0.84 [0.76-0.93]; p = 0.710). The proposed TSR framework, therefore, offers a feasible quantitative tool for standardising serial MRI assessment in PCa AS. It also presents a novel methodological approach to serial image analysis that can be used to support clinical decision-making in multiple scenarios, from continuous disease monitoring to treatment response evaluation.

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