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Bayesian-based noninvasive prenatal diagnosis of single-gene disorders

In the last decade, noninvasive prenatal diagnosis (NIPD) has emerged as an effective procedure for early detection of inherited diseases during pregnancy. This technique is based on using cell-free DNA (cfDNA) and fetal cfDNA (cffDNA) in maternal blood, and hence, has minimal risk for the mother an...

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Autores principales: Rabinowitz, Tom, Polsky, Avital, Golan, David, Danilevsky, Artem, Shapira, Guy, Raff, Chen, Basel-Salmon, Lina, Matar, Reut Tomashov, Shomron, Noam
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory Press 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6396420/
https://www.ncbi.nlm.nih.gov/pubmed/30787035
http://dx.doi.org/10.1101/gr.235796.118
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author Rabinowitz, Tom
Polsky, Avital
Golan, David
Danilevsky, Artem
Shapira, Guy
Raff, Chen
Basel-Salmon, Lina
Matar, Reut Tomashov
Shomron, Noam
author_facet Rabinowitz, Tom
Polsky, Avital
Golan, David
Danilevsky, Artem
Shapira, Guy
Raff, Chen
Basel-Salmon, Lina
Matar, Reut Tomashov
Shomron, Noam
author_sort Rabinowitz, Tom
collection PubMed
description In the last decade, noninvasive prenatal diagnosis (NIPD) has emerged as an effective procedure for early detection of inherited diseases during pregnancy. This technique is based on using cell-free DNA (cfDNA) and fetal cfDNA (cffDNA) in maternal blood, and hence, has minimal risk for the mother and fetus compared with invasive techniques. NIPD is currently used for identifying chromosomal abnormalities (in some instances) and for single-gene disorders (SGDs) of paternal origin. However, for SGDs of maternal origin, sensitivity poses a challenge that limits the testing to one genetic disorder at a time. Here, we present a Bayesian method for the NIPD of monogenic diseases that is independent of the mode of inheritance and parental origin. Furthermore, we show that accounting for differences in the length distribution of fetal- and maternal-derived cfDNA fragments results in increased accuracy. Our model is the first to predict inherited insertions–deletions (indels). The method described can serve as a general framework for the NIPD of SGDs; this will facilitate easy integration of further improvements. One such improvement that is presented in the current study is a machine learning model that corrects errors based on patterns found in previously processed data. Overall, we show that next-generation sequencing (NGS) can be used for the NIPD of a wide range of monogenic diseases, simultaneously. We believe that our study will lead to the achievement of a comprehensive NIPD for monogenic diseases.
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spelling pubmed-63964202019-03-18 Bayesian-based noninvasive prenatal diagnosis of single-gene disorders Rabinowitz, Tom Polsky, Avital Golan, David Danilevsky, Artem Shapira, Guy Raff, Chen Basel-Salmon, Lina Matar, Reut Tomashov Shomron, Noam Genome Res Method In the last decade, noninvasive prenatal diagnosis (NIPD) has emerged as an effective procedure for early detection of inherited diseases during pregnancy. This technique is based on using cell-free DNA (cfDNA) and fetal cfDNA (cffDNA) in maternal blood, and hence, has minimal risk for the mother and fetus compared with invasive techniques. NIPD is currently used for identifying chromosomal abnormalities (in some instances) and for single-gene disorders (SGDs) of paternal origin. However, for SGDs of maternal origin, sensitivity poses a challenge that limits the testing to one genetic disorder at a time. Here, we present a Bayesian method for the NIPD of monogenic diseases that is independent of the mode of inheritance and parental origin. Furthermore, we show that accounting for differences in the length distribution of fetal- and maternal-derived cfDNA fragments results in increased accuracy. Our model is the first to predict inherited insertions–deletions (indels). The method described can serve as a general framework for the NIPD of SGDs; this will facilitate easy integration of further improvements. One such improvement that is presented in the current study is a machine learning model that corrects errors based on patterns found in previously processed data. Overall, we show that next-generation sequencing (NGS) can be used for the NIPD of a wide range of monogenic diseases, simultaneously. We believe that our study will lead to the achievement of a comprehensive NIPD for monogenic diseases. Cold Spring Harbor Laboratory Press 2019-03 /pmc/articles/PMC6396420/ /pubmed/30787035 http://dx.doi.org/10.1101/gr.235796.118 Text en © 2019 Rabinowitz et al.; Published by Cold Spring Harbor Laboratory Press http://creativecommons.org/licenses/by/4.0/ This article, published in Genome Research, is available under a Creative Commons License (Attribution 4.0 International), as described at http://creativecommons.org/licenses/by/4.0/.
spellingShingle Method
Rabinowitz, Tom
Polsky, Avital
Golan, David
Danilevsky, Artem
Shapira, Guy
Raff, Chen
Basel-Salmon, Lina
Matar, Reut Tomashov
Shomron, Noam
Bayesian-based noninvasive prenatal diagnosis of single-gene disorders
title Bayesian-based noninvasive prenatal diagnosis of single-gene disorders
title_full Bayesian-based noninvasive prenatal diagnosis of single-gene disorders
title_fullStr Bayesian-based noninvasive prenatal diagnosis of single-gene disorders
title_full_unstemmed Bayesian-based noninvasive prenatal diagnosis of single-gene disorders
title_short Bayesian-based noninvasive prenatal diagnosis of single-gene disorders
title_sort bayesian-based noninvasive prenatal diagnosis of single-gene disorders
topic Method
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6396420/
https://www.ncbi.nlm.nih.gov/pubmed/30787035
http://dx.doi.org/10.1101/gr.235796.118
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