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Web-Based Newborn Screening System for Metabolic Diseases: Machine Learning Versus Clinicians

机译:基于网络的代谢疾病新生儿筛查系统:机器学习与临床医生

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Background: A hospital information system (HIS) that integrates screening data and interpretation of the data is routinely requested by hospitals and parents. However, the accuracy of disease classification may be low because of the disease characteristics and the analytes used for classification.Objective: The objective of this study is to describe a system that enhanced the neonatal screening system of the Newborn Screening Center at the National Taiwan University Hospital. The system was designed and deployed according to a service-oriented architecture (SOA) framework under the Web services .NET environment. The system consists of sample collection, testing, diagnosis, evaluation, treatment, and follow-up services among collaborating hospitals. To improve the accuracy of newborn screening, machine learning and optimal feature selection mechanisms were investigated for screening newborns for inborn errors of metabolism.Methods: The framework of the Newborn Screening Hospital Information System (NSHIS) used the embedded Health Level Seven (HL7) standards for data exchanges among heterogeneous platforms integrated by Web services in the C# language. In this study, machine learning classification was used to predict phenylketonuria (PKU), hypermethioninemia, and 3-methylcrotonyl-CoA-carboxylase (3-MCC) deficiency. The classification methods used 347,312 newborn dried blood samples collected at the Center between 2006 and 2011. Of these, 220 newborns had values over the diagnostic cutoffs (positive cases) and 1557 had values that were over the screening cutoffs but did not meet the diagnostic cutoffs (suspected cases). The original 35 analytes and the manifested features were ranked based on F score, then combinations of the top 20 ranked features were selected as input features to support vector machine (SVM) classifiers to obtain optimal feature sets. These feature sets were tested using 5-fold cross-validation and optimal models were generated. The datasets collected in year 2011 were used as predicting cases.Results: The feature selection strategies were implemented and the optimal markers for PKU, hypermethioninemia, and 3-MCC deficiency were obtained. The results of the machine learning approach were compared with the cutoff scheme. The number of the false positive cases were reduced from 21 to 2 for PKU, from 30 to 10 for hypermethioninemia, and 209 to 46 for 3-MCC deficiency.Conclusions: This SOA Web service–based newborn screening system can accelerate screening procedures effectively and efficiently. An SVM learning methodology for PKU, hypermethioninemia, and 3-MCC deficiency metabolic diseases classification, including optimal feature selection strategies, is presented. By adopting the results of this study, the number of suspected cases could be reduced dramatically.
机译:背景:医院和父母通常要求将筛查数据和数据解释集成在一起的医院信息系统(HIS)。但是,由于疾病特征和用于分类的分析物,疾病分类的准确性可能较低。目的:本研究的目的是描述一种可增强国立台湾大学新生儿筛查中心新生儿筛查系统的系统医院。该系统是根据Web服务.NET环境下的面向服务的体系结构(SOA)框架设计和部署的。该系统包括合作医院之间的样本收集,测试,诊断,评估,治疗和后续服务。为了提高新生儿筛查的准确性,研究了机器学习和最佳特征选择机制,用于筛查新生儿的先天性代谢错误。方法:新生儿筛查医院信息系统(NSHIS)的框架使用嵌入式七级健康(HL7)标准用于以C#语言在Web服务集成的异构平台之间进行数据交换。在这项研究中,机器学习分类被用于预测苯丙酮尿症(PKU),高蛋氨酸血症和3-甲基巴豆酰基-CoA-羧化酶(3-MCC)缺乏症。分类方法使用2006年至2011年在中心收集的347,312份新生儿干血样本。其中,220例新生儿的诊断临界值(阳性病例)和1557例筛查临界值以上但不符合诊断临界值(可疑案件)。根据F评分对最初的35种分析物和表现出的特征进行排序,然后选择排名前20位的特征组合作为输入特征,以支持向量机(SVM)分类器以获得最佳特征集。这些功能集使用5倍交叉验证进行了测试,并生成了最佳模型。结果:采用特征选择策略,获得了PKU,高蛋氨酸血症和3-MCC缺乏症的最佳标记。将机器学习方法的结果与截止方案进行了比较。 PKU的假阳性病例数从21减少到2,高蛋氨酸血症从30减少到10,3-MCC缺乏从209减少到46。结论:这种基于SOA Web服务的新生儿筛查系统可以有效地加快筛查程序,并有效率的。提出了一种用于PKU,高蛋氨酸血症和3-MCC缺乏代谢疾病分类的SVM学习方法,包括最佳特征选择策略。通过采用这项研究的结果,可以大大减少可疑病例的数量。

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