甲基丙二酸血症的机器学习诊断

Xin Li, Xiaoxing Yang, Wushao Wen
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引用次数: 0

摘要

甲基丙二酸血症(MMA)是一种常染色体隐性代谢疾病。传统诊断需要医生个人的专业医学知识水平和临床经验。在本文中,我们采用机器学习方法根据患者的实验室血液检查和实验室尿液检查来诊断MMA,以便及时诊断,减少对医生个人专业医学知识水平和临床经验的依赖。通过比较不同的机器学习算法对MMA的诊断,我们得到了以下结论:(a)机器学习方法可以很好地诊断MMA(所有建立的预测模型的准确率和AUC值在所有数据集上都大于0.85,有的结果甚至大于0.98);(b)随机森林算法在比较算法中表现最好;(c)一般情况下,基于尿检和血检数据的诊断优于单一检测的诊断。结果表明,将机器学习算法应用于MMA的诊断可以取得较好的效果。因此,在没有专业医学知识的情况下,建立机器学习模型进行初步诊断是可信的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosis of Methylmalonic Acidemia using Machine Learning Methods
Methylmalonic acidemia (MMA) is an autosomal recessive metabolic disorder. Traditional diagnosis needs physicians' personal level of professional medical knowledge and clinical experience. In this paper, we employ machine learning methods to diagnose MMA based on patients' laboratory blood tests and laboratory urine tests, in order to make a timely diagnosis and reduce dependence on physicians' personal level of professional medical knowledge and clinical experience. By comparing different machine learning algorithms for diagnosing MMA, we obtain the following conclusions: (a) machine learning methods can perform well for diagnosing MMA (all established predictive models obtain high accuracies and AUC values which are greater than 0.85 over all data sets, and some of these results are even more than 0.98); (b) random forest algorithm performs best among the compared algorithms; and (c) diagnosis based on the data combining both urine tests and blood tests is better than diagnosis based on single test alone in general. The conclusions show that applying machine learning algorithms to the diagnosis of MMA can achieve good performance. Thus, it is credible to build machine learning models to give an initial diagnosis without professional medical knowledge.
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