Liu Baohong, Tang Xiaoyan, Qiu Feng, Tao Chunmei, Gao Junhui, Ma Mengmeng, Zhong Tingyan, Cai JianPing, Li Yixue, Ding Guohui
State Key Laboratory of Veterinary Etiological Biology, Lanzhou Veterinary Research Institute, Chinese Academy of Agricultural Sciences, Xujiaping 1, Lanzhou, Gansu 730046, China.
Key Laboratory of Systems Biology, Institute of Biochemistry and Cell Biology, Shanghai Institutes for Biological Sciences, Chinese Academy of Sciences, Shanghai 200031, China.
Biomed Res Int. 2016;2016:2714341. doi: 10.1155/2016/2714341. Epub 2016 Jun 29.
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.
背景。随着大规模平行测序(MPS)技术的发展,利用孕妇游离DNA进行无创产前诊断因其固有的高准确性和低风险,正迅速成为检测胎儿染色体异常的首选方法。通常,MPS数据会经过解析以计算风险评分,该评分用于预测胎儿染色体是否正常。尽管有几种高度敏感和特异的MPS数据解析算法,但目前尚无实现这些方法的工具。结果。我们开发了一个R包,即胎儿常染色体异常检测(DASAF),它实现了三种最常用的三体检测方法——标准Z评分(STDZ)法、GC校正Z评分(GCCZ)法和内部参考Z评分(IRZ)法——以及一种亚染色体异常识别方法(SCAZ)。结论。随着DNA测序成本的下降以及个性化医疗的进步,无创产前检测的需求无疑会增加,这反过来将促使后续分析可用工具的增加。DASAF是一个在R语言中实现的用户友好型工具,它基于基因组映射后的孕妇游离DNA测序数据,支持全染色体以及亚染色体异常的识别。