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DASAF: An R Package for Deep Sequencing-Based Detection of Fetal Autosomal Abnormalities from Maternal Cell-Free DNA

Background. With the development of massively parallel sequencing (MPS), noninvasive prenatal diagnosis using maternal cell-free DNA is fast becoming the preferred method of fetal chromosomal abnormality detection, due to its inherent high accuracy and low risk. Typically, MPS data is parsed to calc...

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Autores principales: Liu, Baohong, Tang, Xiaoyan, Qiu, Feng, Tao, Chunmei, Gao, Junhui, Ma, Mengmeng, Zhong, Tingyan, Cai, JianPing, Li, Yixue, Ding, Guohui
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi Publishing Corporation 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4942598/
https://www.ncbi.nlm.nih.gov/pubmed/27437397
http://dx.doi.org/10.1155/2016/2714341
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author Liu, Baohong
Tang, Xiaoyan
Qiu, Feng
Tao, Chunmei
Gao, Junhui
Ma, Mengmeng
Zhong, Tingyan
Cai, JianPing
Li, Yixue
Ding, Guohui
author_facet Liu, Baohong
Tang, Xiaoyan
Qiu, Feng
Tao, Chunmei
Gao, Junhui
Ma, Mengmeng
Zhong, Tingyan
Cai, JianPing
Li, Yixue
Ding, Guohui
author_sort Liu, Baohong
collection PubMed
description Background. With the development of massively parallel sequencing (MPS), noninvasive prenatal diagnosis using maternal cell-free DNA is fast becoming the preferred method of fetal chromosomal abnormality detection, due to its inherent high accuracy and low risk. Typically, MPS data is parsed to calculate a risk score, which is used to predict whether a fetal chromosome is normal or not. Although there are several highly sensitive and specific MPS data-parsing algorithms, there are currently no tools that implement these methods. Results. We developed an R package, detection of autosomal abnormalities for fetus (DASAF), that implements the three most popular trisomy detection methods—the standard Z-score (STDZ) method, the GC correction Z-score (GCCZ) method, and the internal reference Z-score (IRZ) method—together with one subchromosome abnormality identification method (SCAZ). Conclusions. With the cost of DNA sequencing declining and with advances in personalized medicine, the demand for noninvasive prenatal testing will undoubtedly increase, which will in turn trigger an increase in the tools available for subsequent analysis. DASAF is a user-friendly tool, implemented in R, that supports identification of whole-chromosome as well as subchromosome abnormalities, based on maternal cell-free DNA sequencing data after genome mapping.
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spelling pubmed-49425982016-07-19 DASAF: An R Package for Deep Sequencing-Based Detection of Fetal Autosomal Abnormalities from Maternal Cell-Free DNA Liu, Baohong Tang, Xiaoyan Qiu, Feng Tao, Chunmei Gao, Junhui Ma, Mengmeng Zhong, Tingyan Cai, JianPing Li, Yixue Ding, Guohui Biomed Res Int Research Article Background. With the development of massively parallel sequencing (MPS), noninvasive prenatal diagnosis using maternal cell-free DNA is fast becoming the preferred method of fetal chromosomal abnormality detection, due to its inherent high accuracy and low risk. Typically, MPS data is parsed to calculate a risk score, which is used to predict whether a fetal chromosome is normal or not. Although there are several highly sensitive and specific MPS data-parsing algorithms, there are currently no tools that implement these methods. Results. We developed an R package, detection of autosomal abnormalities for fetus (DASAF), that implements the three most popular trisomy detection methods—the standard Z-score (STDZ) method, the GC correction Z-score (GCCZ) method, and the internal reference Z-score (IRZ) method—together with one subchromosome abnormality identification method (SCAZ). Conclusions. With the cost of DNA sequencing declining and with advances in personalized medicine, the demand for noninvasive prenatal testing will undoubtedly increase, which will in turn trigger an increase in the tools available for subsequent analysis. DASAF is a user-friendly tool, implemented in R, that supports identification of whole-chromosome as well as subchromosome abnormalities, based on maternal cell-free DNA sequencing data after genome mapping. Hindawi Publishing Corporation 2016 2016-06-29 /pmc/articles/PMC4942598/ /pubmed/27437397 http://dx.doi.org/10.1155/2016/2714341 Text en Copyright © 2016 Baohong Liu et al. https://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Liu, Baohong
Tang, Xiaoyan
Qiu, Feng
Tao, Chunmei
Gao, Junhui
Ma, Mengmeng
Zhong, Tingyan
Cai, JianPing
Li, Yixue
Ding, Guohui
DASAF: An R Package for Deep Sequencing-Based Detection of Fetal Autosomal Abnormalities from Maternal Cell-Free DNA
title DASAF: An R Package for Deep Sequencing-Based Detection of Fetal Autosomal Abnormalities from Maternal Cell-Free DNA
title_full DASAF: An R Package for Deep Sequencing-Based Detection of Fetal Autosomal Abnormalities from Maternal Cell-Free DNA
title_fullStr DASAF: An R Package for Deep Sequencing-Based Detection of Fetal Autosomal Abnormalities from Maternal Cell-Free DNA
title_full_unstemmed DASAF: An R Package for Deep Sequencing-Based Detection of Fetal Autosomal Abnormalities from Maternal Cell-Free DNA
title_short DASAF: An R Package for Deep Sequencing-Based Detection of Fetal Autosomal Abnormalities from Maternal Cell-Free DNA
title_sort dasaf: an r package for deep sequencing-based detection of fetal autosomal abnormalities from maternal cell-free dna
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4942598/
https://www.ncbi.nlm.nih.gov/pubmed/27437397
http://dx.doi.org/10.1155/2016/2714341
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