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Non-Invasive Prenatal Diagnosis of Monogenic Disorders Through Bayesian- and Haplotype-Based Prediction of Fetal Genotype

Background: Non-invasive prenatal diagnosis (NIPD) can identify monogenic diseases early during pregnancy with negligible risk to fetus or mother, but the haplotyping methods involved sometimes cannot infer parental inheritance at heterozygous maternal or paternal loci or at loci for which haplotype...

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Autores principales: Li, Jia, Lu, Jiaqi, Su, Fengxia, Yang, Jiexia, Ju, Jia, Lin, Yu, Xu, Jinjin, Qi, Yiming, Hou, Yaping, Wu, Jing, He, Wei, Yang, Zhengtao, Wu, Yujing, Tang, Zhuangyuan, Huang, Yingping, Zhang, Guohong, Yang, Ying, Long, Zhou, Cheng, Xiaofang, Liu, Ping, Xia, Jun, Zhang, Yanyan, Wang, Yicong, Chen, Fang, Zhang, Jianguo, Zhao, Lijian, Jin, Xin, Gao, Ya, Yin, Aihua
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9283829/
https://www.ncbi.nlm.nih.gov/pubmed/35846127
http://dx.doi.org/10.3389/fgene.2022.911369
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author Li, Jia
Lu, Jiaqi
Su, Fengxia
Yang, Jiexia
Ju, Jia
Lin, Yu
Xu, Jinjin
Qi, Yiming
Hou, Yaping
Wu, Jing
He, Wei
Yang, Zhengtao
Wu, Yujing
Tang, Zhuangyuan
Huang, Yingping
Zhang, Guohong
Yang, Ying
Long, Zhou
Cheng, Xiaofang
Liu, Ping
Xia, Jun
Zhang, Yanyan
Wang, Yicong
Chen, Fang
Zhang, Jianguo
Zhao, Lijian
Jin, Xin
Gao, Ya
Yin, Aihua
author_facet Li, Jia
Lu, Jiaqi
Su, Fengxia
Yang, Jiexia
Ju, Jia
Lin, Yu
Xu, Jinjin
Qi, Yiming
Hou, Yaping
Wu, Jing
He, Wei
Yang, Zhengtao
Wu, Yujing
Tang, Zhuangyuan
Huang, Yingping
Zhang, Guohong
Yang, Ying
Long, Zhou
Cheng, Xiaofang
Liu, Ping
Xia, Jun
Zhang, Yanyan
Wang, Yicong
Chen, Fang
Zhang, Jianguo
Zhao, Lijian
Jin, Xin
Gao, Ya
Yin, Aihua
author_sort Li, Jia
collection PubMed
description Background: Non-invasive prenatal diagnosis (NIPD) can identify monogenic diseases early during pregnancy with negligible risk to fetus or mother, but the haplotyping methods involved sometimes cannot infer parental inheritance at heterozygous maternal or paternal loci or at loci for which haplotype or genome phasing data are missing. This study was performed to establish a method that can effectively recover the whole fetal genome using maternal plasma cell-free DNA (cfDNA) and parental genomic DNA sequencing data, and validate the method’s effectiveness in noninvasively detecting single nucleotide variations (SNVs), insertions and deletions (indels). Methods: A Bayesian model was developed to determine fetal genotypes using the plasma cfDNA and parental genomic DNA from five couples of healthy pregnancy. The Bayesian model was further integrated with a haplotype-based method to improve the inference accuracy of fetal genome and prediction outcomes of fetal genotypes. Five pregnancies with high risks of monogenic diseases were used to validate the effectiveness of this haplotype-assisted Bayesian approach for noninvasively detecting indels and pathogenic SNVs in fetus. Results: Analysis of healthy fetuses led to the following accuracies of prediction: maternal homozygous and paternal heterozygous loci, 96.2 ± 5.8%; maternal heterozygous and paternal homozygous loci, 96.2 ± 1.4%; and maternal heterozygous and paternal heterozygous loci, 87.2 ± 4.7%. The respective accuracies of predicting insertions and deletions at these types of loci were 94.6 ± 1.9%, 80.2 ± 4.3%, and 79.3 ± 3.3%. This approach detected pathogenic single nucleotide variations and deletions with an accuracy of 87.5% in five fetuses with monogenic diseases. Conclusions: This approach was more accurate than methods based only on Bayesian inference. Our method may pave the way to accurate and reliable NIPD.
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spelling pubmed-92838292022-07-16 Non-Invasive Prenatal Diagnosis of Monogenic Disorders Through Bayesian- and Haplotype-Based Prediction of Fetal Genotype Li, Jia Lu, Jiaqi Su, Fengxia Yang, Jiexia Ju, Jia Lin, Yu Xu, Jinjin Qi, Yiming Hou, Yaping Wu, Jing He, Wei Yang, Zhengtao Wu, Yujing Tang, Zhuangyuan Huang, Yingping Zhang, Guohong Yang, Ying Long, Zhou Cheng, Xiaofang Liu, Ping Xia, Jun Zhang, Yanyan Wang, Yicong Chen, Fang Zhang, Jianguo Zhao, Lijian Jin, Xin Gao, Ya Yin, Aihua Front Genet Genetics Background: Non-invasive prenatal diagnosis (NIPD) can identify monogenic diseases early during pregnancy with negligible risk to fetus or mother, but the haplotyping methods involved sometimes cannot infer parental inheritance at heterozygous maternal or paternal loci or at loci for which haplotype or genome phasing data are missing. This study was performed to establish a method that can effectively recover the whole fetal genome using maternal plasma cell-free DNA (cfDNA) and parental genomic DNA sequencing data, and validate the method’s effectiveness in noninvasively detecting single nucleotide variations (SNVs), insertions and deletions (indels). Methods: A Bayesian model was developed to determine fetal genotypes using the plasma cfDNA and parental genomic DNA from five couples of healthy pregnancy. The Bayesian model was further integrated with a haplotype-based method to improve the inference accuracy of fetal genome and prediction outcomes of fetal genotypes. Five pregnancies with high risks of monogenic diseases were used to validate the effectiveness of this haplotype-assisted Bayesian approach for noninvasively detecting indels and pathogenic SNVs in fetus. Results: Analysis of healthy fetuses led to the following accuracies of prediction: maternal homozygous and paternal heterozygous loci, 96.2 ± 5.8%; maternal heterozygous and paternal homozygous loci, 96.2 ± 1.4%; and maternal heterozygous and paternal heterozygous loci, 87.2 ± 4.7%. The respective accuracies of predicting insertions and deletions at these types of loci were 94.6 ± 1.9%, 80.2 ± 4.3%, and 79.3 ± 3.3%. This approach detected pathogenic single nucleotide variations and deletions with an accuracy of 87.5% in five fetuses with monogenic diseases. Conclusions: This approach was more accurate than methods based only on Bayesian inference. Our method may pave the way to accurate and reliable NIPD. Frontiers Media S.A. 2022-07-01 /pmc/articles/PMC9283829/ /pubmed/35846127 http://dx.doi.org/10.3389/fgene.2022.911369 Text en Copyright © 2022 Li, Lu, Su, Yang, Ju, Lin, Xu, Qi, Hou, Wu, He, Yang, Wu, Tang, Huang, Zhang, Yang, Long, Cheng, Liu, Xia, Zhang, Wang, Chen, Zhang, Zhao, Jin, Gao and Yin. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Genetics
Li, Jia
Lu, Jiaqi
Su, Fengxia
Yang, Jiexia
Ju, Jia
Lin, Yu
Xu, Jinjin
Qi, Yiming
Hou, Yaping
Wu, Jing
He, Wei
Yang, Zhengtao
Wu, Yujing
Tang, Zhuangyuan
Huang, Yingping
Zhang, Guohong
Yang, Ying
Long, Zhou
Cheng, Xiaofang
Liu, Ping
Xia, Jun
Zhang, Yanyan
Wang, Yicong
Chen, Fang
Zhang, Jianguo
Zhao, Lijian
Jin, Xin
Gao, Ya
Yin, Aihua
Non-Invasive Prenatal Diagnosis of Monogenic Disorders Through Bayesian- and Haplotype-Based Prediction of Fetal Genotype
title Non-Invasive Prenatal Diagnosis of Monogenic Disorders Through Bayesian- and Haplotype-Based Prediction of Fetal Genotype
title_full Non-Invasive Prenatal Diagnosis of Monogenic Disorders Through Bayesian- and Haplotype-Based Prediction of Fetal Genotype
title_fullStr Non-Invasive Prenatal Diagnosis of Monogenic Disorders Through Bayesian- and Haplotype-Based Prediction of Fetal Genotype
title_full_unstemmed Non-Invasive Prenatal Diagnosis of Monogenic Disorders Through Bayesian- and Haplotype-Based Prediction of Fetal Genotype
title_short Non-Invasive Prenatal Diagnosis of Monogenic Disorders Through Bayesian- and Haplotype-Based Prediction of Fetal Genotype
title_sort non-invasive prenatal diagnosis of monogenic disorders through bayesian- and haplotype-based prediction of fetal genotype
topic Genetics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9283829/
https://www.ncbi.nlm.nih.gov/pubmed/35846127
http://dx.doi.org/10.3389/fgene.2022.911369
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