Application of machine learning tools and integrated OMICS for screening and diagnosis of inborn errors of metabolism

被引:2
|
作者
Usha Rani, Ganni [1 ]
Kadali, Srilatha [1 ]
Reddy, Banka Kurma [1 ]
Shaheena, Dudekula [1 ]
Naushad, Shaik Mohammad [1 ]
机构
[1] YODA Lifeline Diagnost Pvt Ltd, Dept Biochem Genet, Hyderabad 500016, India
关键词
Inborn errors of metabolism; Newborn screening; Tandem mass spectrometry; Machine learning; Integrated OMICS; Cut-off values; TANDEM MASS-SPECTROMETRY; CLASSIFICATION; ACIDS;
D O I
10.1007/s11306-023-02013-x
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
IntroductionTandem mass spectrometry (TMS) has emerged an important screening tool for various metabolic disorders in newborns. However, there is inherent risk of false positive outcomes. Objective To establish analyte-specific cutoffs in TMS by integrating metabolomics and genomics data to avoid false positivity and false negativity and improve its clinical utility.MethodsTMS was performed on 572 healthy and 3000 referred newborns. Urine organic acid analysis identified 23 types of inborn errors in 99 referred newborns. Whole exome sequencing was performed in 30 positive cases. The impact of physiological changes such as age, gender, and birthweight on various analytes was explored in healthy newborns. Machine learning tools were used to integrate demographic data with metabolomics and genomics data to establish disease-specific cut-offs; identify primary and secondary markers; build classification and regression trees (CART) for better differential diagnosis; for pathway modeling.ResultsThis integration helped in differentiating B12 deficiency from methylmalonic acidemia (MMA) and propionic acidemia (Phi coefficient=0.93); differentiating transient tyrosinemia from tyrosinemia type 1 (Phi coefficient=1.00); getting clues about the possible molecular defect in MMA to initiate appropriate intervention (Phi coefficient=1.00); to link pathogenicity scores with metabolomics profile in tyrosinemia (r2=0.92). CART model helped in establishing differential diagnosis of urea cycle disorders (Phi coefficient=1.00).ConclusionCalibrated cut-offs of different analytes in TMS and machine learning-based establishment of disease-specific thresholds of these markers through integrated OMICS have helped in improved differential diagnosis with significant reduction of the false positivity and false negativity rates.
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页数:10
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