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A Prediction Model for the Risk of Osteoporosis Fracture in the Elderly Based on a Neural Network

机译:基于神经网络的老年人骨质疏松骨折风险预测模型

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A prediction model for the risk of osteoporosis fractures in the aged people is proposed based on a neural network system. A back propagation (BP) neural network is used as the key component in the prediction model. In our prediction model, not only the bone mineral density (BMD), but also some conventional medical examination data from renal function test (RFT), routine blood test (RBT) and liver function test (LFT) are considered. About 5,000 sample data are extracted from more than 20,000 cases in the Seventh People's Hospital of Chongqing, China. The BP neural network is trained by a 10-fold cross validation method. Then, the well trained BP neural network is used to predict the risk of osteoporosis fractures. Moreover, we also test the performance of the proposed model in the condition of privacy preservation by hiding gender and age. The experiment results show that the prediction accuracy of the proposed model is more than 70%. Therefore, the model has the high potential to auxiliary diagnose the possibility of osteoporosis fractures.
机译:基于神经网络系统,提出了老年人骨质疏松骨折风险的预测模型。后传播(BP)神经网络用作预测模型中的关键组件。在我们的预测模型中,不仅骨矿物密度(BMD),而且还考虑了来自肾功能试验(RFT)的常规体检数据,常规血液测试(RBT)和肝功能试验(LFT)。大约5,000个样本数据从中国重庆市第七人民医院提取了20,000件案例。 BP神经网络受到10倍交叉验证方法的培训。然后,训练有素的BP神经网络用于预测骨质疏松骨折骨折的风险。此外,我们还通过隐藏性别和年龄来测试拟议模型的拟议模型的性能。实验结果表明,拟议模型的预测精度超过70%。因此,该模型具有辅助诊断骨质疏松骨折骨折的可能性的高潜力。

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