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Predicting Metabolic Syndrome With Machine Learning Models Using a Decision Tree Algorithm: Retrospective Cohort Study

机译:使用决策树算法预测机器学习模型的代谢综合征:回顾性队列研究

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Background Metabolic syndrome is a cluster of disorders that significantly influence the development and deterioration of numerous diseases. FibroScan is an ultrasound device that was recently shown to predict metabolic syndrome with moderate accuracy. However, previous research regarding prediction of metabolic syndrome in subjects examined with FibroScan has been mainly based on conventional statistical models. Alternatively, machine learning, whereby a computer algorithm learns from prior experience, has better predictive performance over conventional statistical modeling. Objective We aimed to evaluate the accuracy of different decision tree machine learning algorithms to predict the state of metabolic syndrome in self-paid health examination subjects who were examined with FibroScan. Methods Multivariate logistic regression was conducted for every known risk factor of metabolic syndrome. Principal components analysis was used to visualize the distribution of metabolic syndrome patients. We further applied various statistical machine learning techniques to visualize and investigate the pattern and relationship between metabolic syndrome and several risk variables. Results Obesity, serum glutamic-oxalocetic transaminase, serum glutamic pyruvic transaminase, controlled attenuation parameter score, and glycated hemoglobin emerged as significant risk factors in multivariate logistic regression. The area under the receiver operating characteristic curve values for classification and regression trees and for the random forest were 0.831 and 0.904, respectively. Conclusions Machine learning technology facilitates the identification of metabolic syndrome in self-paid health examination subjects with high accuracy.
机译:背景技术代谢综合征是一种疾病,显着影响众多疾病的发展和恶化。 Fibroscan是一种超声装置,最近显示以中等精度预测代谢综合征。然而,以前基于常规统计模型,以前关于用纤维阶层检查的受试者的代谢综合征预测的研究。或者,机器学习,其中计算机算法从先前经验中学习,具有更好的传统统计建模的预测性能。目的我们旨在评估不同决策树机学习算法的准确性,以预测与纤维血管检查的自我偿还健康检查受试者中代谢综合征的状态。方法对代谢综合征的每种已知风险因素进行多变量逻辑回归。主要成分分析用于可视化代谢综合征患者的分布。我们进一步应用了各种统计机器学习技术来可视化和研究代谢综合征与几种风险变量之间的模式和关系。结果肥胖,血清谷氨酸 - 草灭转氨酶,血清谷氨酸丙氨酸转氨酶,受控衰减参数和糖化血红蛋白被出现为多元逻辑回归中的显着风险因素。接收器下的区域,用于分类和回归树和随机森林的特征曲线值分别为0.831和0.904。结论机器学习技术促进了高精度的自付健康检查科目中代谢综合征的鉴定。

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