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人工智能算法模型在先天性代谢缺陷筛查中的应用。

Application of the Artificial Intelligence Algorithm Model for Screening of Inborn Errors of Metabolism.

作者信息

Zhou Muping, Deng Liyuan, Huang Yan, Xiao Ying, Wen Jun, Liu Na, Zeng Yingchao, Zhang Hua

机构信息

Neonatal Disease Screening Center, The Maternal and Child Health Hospital of Shaoyang City, Shaoyang, China.

出版信息

Front Pediatr. 2022 May 19;10:855943. doi: 10.3389/fped.2022.855943. eCollection 2022.

Abstract

Inborn errors of metabolism (IEMs) are strongly related to abnormal growth and development in newborns and can even result in death. In total, 94,648 newborns were enrolled for expanded newborn screening using tandem mass spectrometry (MS/MS) from 2016 to 2020 at the Neonatal Disease Screening Center of the Maternal and Child Health Hospital in Shaoyang City, China. A total of 23 confirmed cases were detected in our study with an incidence rate of 1:4,115. A total of 10 types of IEM were identified, and the most common IEMs were phenylalanine hydroxylase deficiency (PAHD; 1:15,775) and primary carnitine deficiency (PCD; 1:18,930). Mutations in phenylalanine hydroxylase (PAH) and SLC22A5 were the leading causes of IEMs. To evaluate the application effect of artificial intelligence (AI) in newborn screening, we used AI to retrospectively analyze the screening results and found that the false-positive rate could be decreased by more than 24.9% after using AI. Meanwhile, a missed case with neonatal intrahepatic cholestasis citrin deficiency (NICCD) was found, the infant had a normal citrulline level (31 μmol/L; cutoff value of 6-32 μmol/L), indicating that citrulline may not be the best biomarker of intrahepatic cholestasis citrin deficiency. Our results indicated that the use of AI in newborn screening could improve efficiency significantly. Hence, we propose a novel strategy that combines expanded neonatal IEM screening with AI to reduce the occurrence of false positives and false negatives.

摘要

先天性代谢缺陷(IEMs)与新生儿的异常生长发育密切相关,甚至可能导致死亡。2016年至2020年期间,中国邵阳市妇幼保健院新生儿疾病筛查中心共94648名新生儿接受了串联质谱(MS/MS)扩大新生儿筛查。本研究共检测出23例确诊病例,发病率为1:4115。共鉴定出10种IEMs,最常见的IEMs是苯丙氨酸羟化酶缺乏症(PAHD;1:15775)和原发性肉碱缺乏症(PCD;1:18930)。苯丙氨酸羟化酶(PAH)和SLC22A5的突变是IEMs的主要原因。为了评估人工智能(AI)在新生儿筛查中的应用效果,我们使用AI对筛查结果进行回顾性分析,发现使用AI后假阳性率可降低超过24.9%。同时,发现1例新生儿肝内胆汁淤积症瓜氨酸缺乏症(NICCD)漏诊病例,该婴儿瓜氨酸水平正常(31μmol/L;临界值为6 - 32μmol/L),表明瓜氨酸可能不是肝内胆汁淤积症瓜氨酸缺乏症的最佳生物标志物。我们的结果表明,在新生儿筛查中使用AI可以显著提高效率。因此,我们提出了一种将扩大新生儿IEM筛查与AI相结合的新策略,以减少假阳性和假阴性的发生。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/478d/9160361/2b7a430451be/fped-10-855943-g001.jpg

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