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Increase Trichomonas vaginalis detection based on urine routine analysis through a machine learning approach

机译:基于通过机器学习方法基于尿常规分析提高滴虫毒素检测

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Trichomonas vaginalis (T. vaginalis) detection remains an unsolved problem in using of automated instruments for urinalysis. The study proposes a machine learning (ML)-based strategy to increase the detection rate of T. vaginalis in urine. On the basis of urinalysis data from a teaching hospital during 2009-2013, individuals underwent at least one urinalysis test were included. Logistic regression, support vector machine, and random forest, were used to select specimens with a high risk of T. vaginalis infection for confirmation through microscopic examinations. A total of 410,952 and 428,203 specimens from men and women were tested, of which 91 (0.02%) and 517 (0.12%) T. vaginalis-positive specimens were reported, respectively. The prediction models of T. vaginalis infection attained an area under the receiver operating characteristic curve of more than 0.87 for women and 0.83 for men. The Lift values of the top 5% risky specimens were above eight. While the most risky vigintile was picked out by the models and confirmed by microscopic examination, the incremental cost-effectiveness ratios for T. vaginalis detection in men and women were USD$170.1 and USD$29.7, respectively. On the basis of urinalysis, the proposed strategy can significantly increase the detection rate of T. vaginalis in a cost-effective manner.
机译:滴虫菌(Trichomonas阴道(T.AvinAnaris)检测仍然是使用自动化仪器的自动化仪器的未解决问题。该研究提出了一种基于机器学习(ML)的策略,以提高尿液中的阴道检测率。在2009 - 2013年在教学医院的尿液分析数据的基础上,包括患有至少一个尿液分析试验的个体。 Logistic回归,支持向量机和随机森林用于选择具有高风险的样品,用于通过显微镜检查确认。测试了来自男性和女性的410,952和428,203个标本,分别报道了91(0.02%)和517(0.12%)T.阴道阳性标本。 T.阴道感染的预测模型达到了在接收器下的一个面积,操作特征曲线超过0.87,男性为0.83。前5%风险标本的升力值高于8。虽然模型挑选最大的危险性能并通过显微镜检查证实,但男性和妇女的阴道检测的增量成本效益比分别为170.1美元和29.7美元。在尿液分析的基础上,拟议的策略可以以成本效益的方式显着提高阴道的检测率。

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