1. Automatic prediction model of overall survival in prostate cancer patients with bone metastasis using deep neural networks.
- Author
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Wang, Zhongxiao, Xiong, Tianyu, Jiang, Mingxin, Cui, Yun, Qian, Xiaosong, Su, Yao, Zhang, Xiaolei, Xu, Shiqi, Wen, Dong, Dong, Xianling, Yang, Minfu, and Niu, Yinong
- Subjects
ARTIFICIAL neural networks ,PROSTATE cancer ,BONE metastasis ,CONVOLUTIONAL neural networks ,PROSTATE cancer patients ,OVERALL survival - Abstract
Bone is the most common site of metastasis in prostate cancer (PCa) patients and is correlated with poor prognosis and increasing economic burden. Few studies have analyzed the prognostic prediction for metastatic PCa patients with the assistance of neural networks. Four convolutional neural network (CNN) models are developed and evaluated to predict the overall survival (OS) of PCa patients with bone metastasis. All the CNN models are first trained with 64 samples and evaluated with 10 samples; two models use only bone scan images and two models use both bone scan images and clinical parameters (CPs). The predictions of the best models are compared with those by two urology surgeons on 20 test samples. Our best models can predict OS of PCa patients with bone metastasis with AUC=0.8022 by using only bone scan images and AUC=0.8132 by using both bone scan images and CPs on 20 test samples. The best Youden indexes of the two models are 0.6263 and 0.7142, respectively, which are 0.3077 and 0.3131 higher than that of the urologists' average Youden index, which indicate that CNN models exhibit significant advantages. CNN models are suitable to predict OS in PCa patients with bone metastasis using bone scan images and CPs. Our models show better performance in terms of accuracy and stability than urology surgeons. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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