在基于机器的学习模型中加入氨基酸和酰基肉毒碱,优化荷兰新生儿先天性甲状腺功能减退症筛查。

IF 3.5 2区 医学 Q2 ENDOCRINOLOGY & METABOLISM European Thyroid Journal Pub Date : 2023-11-03 Print Date: 2023-12-01 DOI:10.1530/ETJ-23-0141
Heleen I Jansen, Marije van Haeringen, Marelle J Bouva, Wendy P J den Elzen, Eveline Bruinstroop, Catharina P B van der Ploeg, A S Paul van Trotsenburg, Nitash Zwaveling-Soonawala, Annemieke C Heijboer, Annet M Bosch, Robert de Jonge, Mark Hoogendoorn, Anita Boelen
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An artificial PPV of 26% was yielded when using a machine learning-based model on the adjusted dataset described based on the Dutch CH NBS. Recently, amino acids (AAs) and acylcarnitines (ACs) have been shown to be associated with TH concentration. We therefore aimed to investigate whether AAs and ACs measured during NBS can contribute to better performance of the CH screening in the Netherlands by using a revised machine learning-based model.</p><p><strong>Methods: </strong>Dutch NBS data between 2007 and 2017 (CH screening results, AAs and ACs) from 1079 FPRs, 515 newborns with primary (431) and central CH (84) and data from 1842 healthy controls were used. A random forest model including these data was developed.</p><p><strong>Results: </strong>The random forest model with an artificial sensitivity of 100% yielded a PPV of 48% and AUROC of 0.99. 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引用次数: 0

摘要

目的先天性甲状腺功能减退(CH)是一种先天性甲状腺激素(TH)缺乏症,主要由甲状腺(原发性CH)或下丘脑/垂体(中枢性CH)紊乱引起。大多数CH新生儿筛查(NBS)项目都是以促甲状腺激素(TSH)为基础的,因此只检测原发性CH。荷兰NBS基于测量干血点的总甲状腺素(T4),旨在以更多假阳性转诊(FPR)为代价检测原发和中心CH(2007-2017年阳性预测值(PPV)为21%)。当在下面描述的基于荷兰CH NBS的调整数据集(方法)上使用基于机器的学习模型时,产生了26%的人工PPV。最近,氨基酸(AAs)和酰基肉毒碱(ACs)被证明与TH浓度有关。因此,我们旨在通过使用修订的基于机器的学习模型,研究在NBS期间测量的AAs和AC是否有助于荷兰CH筛查的更好性能。方法使用荷兰国家统计局2007-2017年的数据(CH筛查结果、AAs和ACs),来自1079名FPR、515名原发性和中心性CH新生儿(431名)和1842名健康对照。开发了一个包含这些数据的随机森林模型。结果人工灵敏度为100%的随机森林模型的PPV为48%,AUROC为0.99。除T4和TSH外,酪氨酸和琥珀酰丙酮是影响模型性能的主要参数。结论通过在我们的基于机器的学习模型中添加几个AA和AC,PPV显著提高(26%至48%),这表明添加这些参数有利于当前的算法。
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Optimizing the Dutch newborn screening for congenital hypothyroidism by incorporating amino acids and acylcarnitines in a machine learning-based model.

Objective: Congenital hypothyroidism (CH) is an inborn thyroid hormone (TH) deficiency mostly caused by thyroidal (primary CH) or hypothalamic/pituitary (central CH) disturbances. Most CH newborn screening (NBS) programs are thyroid-stimulating-hormone (TSH) based, thereby only detecting primary CH. The Dutch NBS is based on measuring total thyroxine (T4) from dried blood spots, aiming to detect primary and central CH at the cost of more false-positive referrals (FPRs) (positive predictive value (PPV) of 21% in 2007-2017). An artificial PPV of 26% was yielded when using a machine learning-based model on the adjusted dataset described based on the Dutch CH NBS. Recently, amino acids (AAs) and acylcarnitines (ACs) have been shown to be associated with TH concentration. We therefore aimed to investigate whether AAs and ACs measured during NBS can contribute to better performance of the CH screening in the Netherlands by using a revised machine learning-based model.

Methods: Dutch NBS data between 2007 and 2017 (CH screening results, AAs and ACs) from 1079 FPRs, 515 newborns with primary (431) and central CH (84) and data from 1842 healthy controls were used. A random forest model including these data was developed.

Results: The random forest model with an artificial sensitivity of 100% yielded a PPV of 48% and AUROC of 0.99. Besides T4 and TSH, tyrosine, and succinylacetone were the main parameters contributing to the model's performance.

Conclusions: The PPV improved significantly (26-48%) by adding several AAs and ACs to our machine learning-based model, suggesting that adding these parameters benefits the current algorithm.

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来源期刊
European Thyroid Journal
European Thyroid Journal Medicine-Endocrinology, Diabetes and Metabolism
CiteScore
6.70
自引率
2.10%
发文量
156
期刊介绍: The ''European Thyroid Journal'' publishes papers reporting original research in basic, translational and clinical thyroidology. Original contributions cover all aspects of the field, from molecular and cellular biology to immunology and biochemistry, from physiology to pathology, and from pediatric to adult thyroid diseases with a special focus on thyroid cancer. Readers also benefit from reviews by noted experts, which highlight especially active areas of current research. The journal will further publish formal guidelines in the field, produced and endorsed by the European Thyroid Association.
期刊最新文献
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