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FF‐QuantSC: accurate quantification of fetal fraction by a neural network model

BACKGROUND: Noninvasive prenatal testing (NIPT) is one of the most commonly employed clinical measures for screening of fetal aneuploidy. Fetal Fraction (ff) has been demonstrated to be one of the key factors affecting the performance of NIPT. Accurate quantification of ff plays vital role in NIPT....

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Autores principales: Yuan, Yuying, Chai, Xianghua, Liu, Na, Gu, Bida, Li, Shengting, Gao, Ya, Zhou, Lijun, Liu, Qiang, Yang, Fan, Liu, Jingjuan, Qiu, Jiao, Zhang, Jinjin, Hou, Yumei, Cen, Miaolan, Tian, Zhongming, Tang, Weijiang, Zhang, Hongyun, Chen, Fang, Yin, Ye, Wang, Wei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7284026/
https://www.ncbi.nlm.nih.gov/pubmed/32281746
http://dx.doi.org/10.1002/mgg3.1232
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author Yuan, Yuying
Chai, Xianghua
Liu, Na
Gu, Bida
Li, Shengting
Gao, Ya
Zhou, Lijun
Liu, Qiang
Yang, Fan
Liu, Jingjuan
Qiu, Jiao
Zhang, Jinjin
Hou, Yumei
Cen, Miaolan
Tian, Zhongming
Tang, Weijiang
Zhang, Hongyun
Chen, Fang
Yin, Ye
Wang, Wei
author_facet Yuan, Yuying
Chai, Xianghua
Liu, Na
Gu, Bida
Li, Shengting
Gao, Ya
Zhou, Lijun
Liu, Qiang
Yang, Fan
Liu, Jingjuan
Qiu, Jiao
Zhang, Jinjin
Hou, Yumei
Cen, Miaolan
Tian, Zhongming
Tang, Weijiang
Zhang, Hongyun
Chen, Fang
Yin, Ye
Wang, Wei
author_sort Yuan, Yuying
collection PubMed
description BACKGROUND: Noninvasive prenatal testing (NIPT) is one of the most commonly employed clinical measures for screening of fetal aneuploidy. Fetal Fraction (ff) has been demonstrated to be one of the key factors affecting the performance of NIPT. Accurate quantification of ff plays vital role in NIPT. METHODS: In this study, we present a new approach, the accurate Quantification of Fetal Fraction with Shallow‐Coverage sequencing of maternal plasma DNA (FF‐QuantSC), for the estimation of ff in NIPT. The method employs neural network model and utilizes differential genomic patterns between fetal and maternal genomes to quantify ff. RESULTS: Our results show that the predicted ff by FF‐QuantSC exhibit high correlation with the Y chromosome–based method on male pregnancies, and achieves the highest accuracy compared with other ff estimation approaches. We also demonstrate that the model generates statistically similar results on both male and female pregnancies. CONCLUSION: FF‐QuantSC achieves high accuracy in ff quantification. The method is suitable for application in both male and female pregnancies. Since the method does not require additional information upon NIPT routines, it can be easily incorporated into current NIPT settings without causing extra costs. We believe that FF‐QuantSC shall provide valuable additions to NIPT.
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spelling pubmed-72840262020-06-11 FF‐QuantSC: accurate quantification of fetal fraction by a neural network model Yuan, Yuying Chai, Xianghua Liu, Na Gu, Bida Li, Shengting Gao, Ya Zhou, Lijun Liu, Qiang Yang, Fan Liu, Jingjuan Qiu, Jiao Zhang, Jinjin Hou, Yumei Cen, Miaolan Tian, Zhongming Tang, Weijiang Zhang, Hongyun Chen, Fang Yin, Ye Wang, Wei Mol Genet Genomic Med Method BACKGROUND: Noninvasive prenatal testing (NIPT) is one of the most commonly employed clinical measures for screening of fetal aneuploidy. Fetal Fraction (ff) has been demonstrated to be one of the key factors affecting the performance of NIPT. Accurate quantification of ff plays vital role in NIPT. METHODS: In this study, we present a new approach, the accurate Quantification of Fetal Fraction with Shallow‐Coverage sequencing of maternal plasma DNA (FF‐QuantSC), for the estimation of ff in NIPT. The method employs neural network model and utilizes differential genomic patterns between fetal and maternal genomes to quantify ff. RESULTS: Our results show that the predicted ff by FF‐QuantSC exhibit high correlation with the Y chromosome–based method on male pregnancies, and achieves the highest accuracy compared with other ff estimation approaches. We also demonstrate that the model generates statistically similar results on both male and female pregnancies. CONCLUSION: FF‐QuantSC achieves high accuracy in ff quantification. The method is suitable for application in both male and female pregnancies. Since the method does not require additional information upon NIPT routines, it can be easily incorporated into current NIPT settings without causing extra costs. We believe that FF‐QuantSC shall provide valuable additions to NIPT. John Wiley and Sons Inc. 2020-04-13 /pmc/articles/PMC7284026/ /pubmed/32281746 http://dx.doi.org/10.1002/mgg3.1232 Text en © 2020 The Authors. Molecular Genetics & Genomic Medicine published by Wiley Periodicals, Inc. This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Method
Yuan, Yuying
Chai, Xianghua
Liu, Na
Gu, Bida
Li, Shengting
Gao, Ya
Zhou, Lijun
Liu, Qiang
Yang, Fan
Liu, Jingjuan
Qiu, Jiao
Zhang, Jinjin
Hou, Yumei
Cen, Miaolan
Tian, Zhongming
Tang, Weijiang
Zhang, Hongyun
Chen, Fang
Yin, Ye
Wang, Wei
FF‐QuantSC: accurate quantification of fetal fraction by a neural network model
title FF‐QuantSC: accurate quantification of fetal fraction by a neural network model
title_full FF‐QuantSC: accurate quantification of fetal fraction by a neural network model
title_fullStr FF‐QuantSC: accurate quantification of fetal fraction by a neural network model
title_full_unstemmed FF‐QuantSC: accurate quantification of fetal fraction by a neural network model
title_short FF‐QuantSC: accurate quantification of fetal fraction by a neural network model
title_sort ff‐quantsc: accurate quantification of fetal fraction by a neural network model
topic Method
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7284026/
https://www.ncbi.nlm.nih.gov/pubmed/32281746
http://dx.doi.org/10.1002/mgg3.1232
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