Multivariate Independent Component Analysis Identifies Patients in Newborn Screening Equally to Adjusted Reference Ranges.

IF 4 Q1 GENETICS & HEREDITY
Štěpán Kouřil, Julie de Sousa, Kamila Fačevicová, Alžběta Gardlo, Christoph Muehlmann, Klaus Nordhausen, David Friedecký, Tomáš Adam
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Abstract

Newborn screening (NBS) of inborn errors of metabolism (IEMs) is based on the reference ranges established on a healthy newborn population using quantile statistics of molar concentrations of biomarkers and their ratios. The aim of this paper is to investigate whether multivariate independent component analysis (ICA) is a useful tool for the analysis of NBS data, and also to address the structure of the calculated ICA scores. NBS data were obtained from a routine NBS program performed between 2013 and 2022. ICA was tested on 10,213/150 free-diseased controls and 77/20 patients (9/3 different IEMs) in the discovery/validation phases, respectively. The same model computed during the discovery phase was used in the validation phase to confirm its validity. The plots of ICA scores were constructed, and the results were evaluated based on 5sd levels. Patient samples from 7/3 different diseases were clearly identified as 5sd-outlying from control groups in both phases of the study. Two IEMs containing only one patient each were separated at the 3sd level in the discovery phase. Moreover, in one latent variable, the effect of neonatal birth weight was evident. The results strongly suggest that ICA, together with an interpretation derived from values of the "average member of the score structure", is generally applicable and has the potential to be included in the decision process in the NBS program.

多变量独立成分分析确定新生儿筛查中的患者与调整后的参考范围相同。
先天性代谢异常(IEM)的新生儿筛查(NBS)基于健康新生儿群体的参考范围,使用生物标志物摩尔浓度及其比率的分位数统计。本文的目的是研究多元独立成分分析(ICA)是否是分析NBS数据的有用工具,并解决计算出的ICA得分的结构问题。国家统计局的数据是从2013年至2022年间进行的国家统计局例行项目中获得的。在发现/验证阶段,分别对10213/150名无病对照和77/20名患者(9/3名不同的IEM)进行了ICA测试。在验证阶段使用了在发现阶段计算的相同模型来确认其有效性。构建ICA评分图,并根据5sd水平对结果进行评估。在研究的两个阶段,来自7/3种不同疾病的患者样本被明确确定为5sd,与对照组不同。在发现阶段,在第3天的水平上分离了两个IEM,每个IEM只包含一名患者。此外,在一个潜在变量中,新生儿出生体重的影响是明显的。结果有力地表明,ICA以及从“得分结构的平均成员”的值得出的解释通常适用,并有可能被纳入国家统计局计划的决策过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Neonatal Screening
International Journal of Neonatal Screening Medicine-Pediatrics, Perinatology and Child Health
CiteScore
6.70
自引率
20.00%
发文量
56
审稿时长
11 weeks
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