数字层策略改善新生儿戊二酸尿1型筛查。

IF 4 Q1 GENETICS & HEREDITY
Elaine Zaunseder, Julian Teinert, Nikolas Boy, Sven F Garbade, Saskia Haupt, Patrik Feyh, Georg F Hoffmann, Stefan Kölker, Ulrike Mütze, Vincent Heuveline
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引用次数: 0

摘要

戊二酸尿1型(GA1)是一种罕见的遗传性代谢性疾病,越来越多地被纳入新生儿筛查(NBS)项目。由于GA1患者具有广泛的生化谱,并且缺乏可靠的二级策略,因此GA1的NBS仍然面临着很高的假阳性率。在本研究中,我们的目标是提高NBS对GA1的特异性,从而通过机器学习方法降低误报率。因此,我们研究了2014年至2023年在德国海德堡NBS实验室筛查的1,025,953名新生儿的NBS资料。我们发现了显著的性别差异,导致男婴的假阳性是女婴的两倍。此外,所提出的基于逻辑回归分析、岭回归和支持向量机的数字层策略与常规NBS相比,将假阳性率降低了90%以上,同时正确识别了所有确诊的GA1个体。对资料的深入分析表明,特别是伴随高后续费用的假阳性结果可以显著减少。总之,了解NBS假阳性的起源,并实施数字层策略来提高GA1检测的特异性,可能会显著减轻新生儿及其家庭因NBS假阳性结果所带来的负担。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital-Tier Strategy Improves Newborn Screening for Glutaric Aciduria Type 1.

Glutaric aciduria type 1 (GA1) is a rare inherited metabolic disease increasingly included in newborn screening (NBS) programs worldwide. Because of the broad biochemical spectrum of individuals with GA1 and the lack of reliable second-tier strategies, NBS for GA1 is still confronted with a high rate of false positives. In this study, we aim to increase the specificity of NBS for GA1 and, hence, to reduce the rate of false positives through machine learning methods. Therefore, we studied NBS profiles from 1,025,953 newborns screened between 2014 and 2023 at the Heidelberg NBS Laboratory, Germany. We identified a significant sex difference, resulting in twice as many false-positives male than female newborns. Moreover, the proposed digital-tier strategy based on logistic regression analysis, ridge regression, and support vector machine reduced the false-positive rate by over 90% compared to regular NBS while identifying all confirmed individuals with GA1 correctly. An in-depth analysis of the profiles revealed that in particular false-positive results with high associated follow-up costs could be reduced significantly. In conclusion, understanding the origin of false-positive NBS and implementing a digital-tier strategy to enhance the specificity of GA1 testing may significantly reduce the burden on newborns and their families from false-positive NBS results.

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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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