首页> 外文期刊>Computers in Biology and Medicine >Prediction of metabolic syndrome using artificial neural network system based on clinical data including insulin resistance index and serum adiponectin.
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Prediction of metabolic syndrome using artificial neural network system based on clinical data including insulin resistance index and serum adiponectin.

机译:基于临床数据(包括胰岛素抵抗指数和血清脂联素)的人工神经网络系统对代谢综合征的预测。

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OBJECTIVE: This study aimed to predict the 6-year incidence of metabolic syndrome (MetS) using an artificial neural network (ANN) system and multiple logistic regression (MLR) analysis based on clinical factors, including the insulin resistance index calculated by homeostasis model assessment (HOMA-IR). DESIGN: Subjects were recruited from participants in annual health check-ups in both 2000 and 2006. A total of 410 Japanese male teachers and other workers at Keio University, 30-59 years of age at baseline, participated in this retrospective cohort study. MEASUREMENTS: Clinical parameters were randomly divided into a training dataset and a validation dataset, and the ANN system and MLR analysis were applied to predict individual incidences. The leave some out cross validation method was used for validation. RESULTS: The sensitivity of the prediction was 0.27 for the MLR model and 0.93 for the ANN system, while specificities were 0.95 and 0.91, respectively. Sensitivity analysis employing the ANN system identified BMI, age, diastolic blood pressure, HDL-cholesterol, LDL-cholesterol and HOMA-IR as important predictors, suggesting these factors to be non-linearly related to the outcome. CONCLUSION: We successfully predicted the 6-year incidence of MetS using an ANN system based on clinical data, including HOMA-IR and serum adiponectin, in Japanese male subjects.
机译:目的:本研究旨在使用人工神经网络(ANN)系统和基于临床因素(包括通过稳态模型评估计算出的胰岛素抵抗指数)的多元逻辑回归(MLR)分析来预测代谢综合征(MetS)的6年发病率(HOMA-IR)。设计:从2000年和2006年的年度健康检查参与者中招募受试者。基线研究年龄在30-59岁的庆应大学的410名日本男教师和其他工人参加了这项回顾性队列研究。测量:将临床参数随机分为训练数据集和验证数据集,并应用ANN系统和MLR分析来预测个体发生率。省略了一些交叉验证方法用于验证。结果:MLR模型的预测灵敏度为0.27,ANN系统的预测灵敏度为0.93,而特异性分别为0.95和0.91。使用ANN系统进行的敏感性分析确定了BMI,年龄,舒张压,HDL-胆固醇,LDL-胆固醇和HOMA-IR是重要的预测指标,表明这些因素与预后呈非线性关系。结论:我们基于临床数据,包括HOMA-IR和血清脂联素,在日本男性受试者中使用ANN系统成功预测了MetS的6年发病率。

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