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Improving methylmalonic acidemia (MMA) screening and MMA genotype prediction using random forest classifier in two Chinese populations
by
Yin, Zhe
, Zhang, Chuan
, Zhou, Bingbo
, Gai, Zhongtao
, Wang, Shifan
, Dong, Rui
, Zhang, Xinyuan
, Hao, Shengju
, Hui, Ling
, Ma, Xu
, Liu, Yi
, Song, Yingnan
, Cao, Zongfu
, Xue, Huiqin
in
Amino Acid Metabolism, Inborn Errors - diagnosis
/ Amino Acid Metabolism, Inborn Errors - genetics
/ Amino acids
/ Asian People - genetics
/ Biomedicine
/ China - epidemiology
/ DNA sequencing
/ East Asian People
/ Female
/ Genotype
/ Humans
/ Infant, Newborn
/ Infants (Newborn)
/ Infectious Diseases
/ Internal Medicine
/ Machine Learning
/ Male
/ Medicine
/ Medicine & Public Health
/ Metabolites
/ Methylmalonic acidemia (MMA)
/ Neonatal Screening - methods
/ Newborn screening
/ Nucleotide sequencing
/ Oncology
/ Random Forest
/ Random forest classifier
/ Surgery
2024
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Improving methylmalonic acidemia (MMA) screening and MMA genotype prediction using random forest classifier in two Chinese populations
by
Yin, Zhe
, Zhang, Chuan
, Zhou, Bingbo
, Gai, Zhongtao
, Wang, Shifan
, Dong, Rui
, Zhang, Xinyuan
, Hao, Shengju
, Hui, Ling
, Ma, Xu
, Liu, Yi
, Song, Yingnan
, Cao, Zongfu
, Xue, Huiqin
in
Amino Acid Metabolism, Inborn Errors - diagnosis
/ Amino Acid Metabolism, Inborn Errors - genetics
/ Amino acids
/ Asian People - genetics
/ Biomedicine
/ China - epidemiology
/ DNA sequencing
/ East Asian People
/ Female
/ Genotype
/ Humans
/ Infant, Newborn
/ Infants (Newborn)
/ Infectious Diseases
/ Internal Medicine
/ Machine Learning
/ Male
/ Medicine
/ Medicine & Public Health
/ Metabolites
/ Methylmalonic acidemia (MMA)
/ Neonatal Screening - methods
/ Newborn screening
/ Nucleotide sequencing
/ Oncology
/ Random Forest
/ Random forest classifier
/ Surgery
2024
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Improving methylmalonic acidemia (MMA) screening and MMA genotype prediction using random forest classifier in two Chinese populations
by
Yin, Zhe
, Zhang, Chuan
, Zhou, Bingbo
, Gai, Zhongtao
, Wang, Shifan
, Dong, Rui
, Zhang, Xinyuan
, Hao, Shengju
, Hui, Ling
, Ma, Xu
, Liu, Yi
, Song, Yingnan
, Cao, Zongfu
, Xue, Huiqin
in
Amino Acid Metabolism, Inborn Errors - diagnosis
/ Amino Acid Metabolism, Inborn Errors - genetics
/ Amino acids
/ Asian People - genetics
/ Biomedicine
/ China - epidemiology
/ DNA sequencing
/ East Asian People
/ Female
/ Genotype
/ Humans
/ Infant, Newborn
/ Infants (Newborn)
/ Infectious Diseases
/ Internal Medicine
/ Machine Learning
/ Male
/ Medicine
/ Medicine & Public Health
/ Metabolites
/ Methylmalonic acidemia (MMA)
/ Neonatal Screening - methods
/ Newborn screening
/ Nucleotide sequencing
/ Oncology
/ Random Forest
/ Random forest classifier
/ Surgery
2024
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Improving methylmalonic acidemia (MMA) screening and MMA genotype prediction using random forest classifier in two Chinese populations
Journal Article
Improving methylmalonic acidemia (MMA) screening and MMA genotype prediction using random forest classifier in two Chinese populations
2024
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Overview
Background
Methylmalonic acidemia (MMA) is one of the most common hereditary organic acid metabolism disorders that endangers the lives and health of infants and children. Early detection and intervention before the appearance of a newborn’s clinical symptoms can control disease progression and prevent or mitigate its serious consequences.
Methods
42,004 newborns from two Chinese populations were included in the study. The small molecular metabolite analytes were detected from the dried blood spot (DBS) samples by MS/MS. Genetic analysis of 68 Chinese MMA cases were performed by whole-exome sequencing and Sanger sequencing. Random forest classifiers (RFC) were constructed to improve the MMA screening performance and genotype prediction in two Chinese populations. Meanwhile, other six machine learning models were trained to separate MMA patients from normal newborns. Model performance was assessed using accuracy, sensitivity, specificity, false positive rate (FPR), and positive predictive value (PPV) and the area under the receiver operating characteristic curve (AUC).
Results
In the total 42,004 newborn samples, 68 MMA cases were identified by genetic analysis, 42 cases of which were caused by variants in
MMACHC
, 24 cases by variants in
MMUT
, and two cases by variants in
MMAA
. Three novel variants including c.449T>G (p.I150R) of
MMACHC
, c.1151C>T (p.S384F) and c.1091_1108delins (p.Y364Sfs*4) in
MMUT
were identified in the MMA patients. RFC for newborn screening of MMA performed best as compared to several other classification models based on machine learning with 100% sensitivity, low FPR, excellent PPV and AUC. In addition, the subdivision RFC for MMA genotype prediction was constructed with superior performance.
Conclusions
It can be seen that RFC is extremely helpful for detection and genotype prediction in the newborn MMA screening. In addition, our findings extend the variant spectrum of genes related to MMA.
Publisher
BioMed Central,BioMed Central Ltd,BMC
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