Wang Ting, He Quanze, Li Haibo, Ding Jie, Wen Ping, Zhang Qin, Xiang Jingjing, Li Qiong, Xuan Liming, Kong Lingyin, Mao Yan, Zhu Yijun, Shen Jingjing, Liang Bo, Li Hong
Center for Reproduction and Genetics, Nanjing Medical University Affiliated Suzhou Hospital, Suzhou, Jiangsu, 215002, China.
Basecare Medical Device Co., Ltd., Suzhou, Jiangsu, China.
PLoS One. 2016 Jul 21;11(7):e0159648. doi: 10.1371/journal.pone.0159648. eCollection 2016.
Massively parallel sequencing (MPS) combined with bioinformatic analysis has been widely applied to detect fetal chromosomal aneuploidies such as trisomy 21, 18, 13 and sex chromosome aneuploidies (SCAs) by sequencing cell-free fetal DNA (cffDNA) from maternal plasma, so-called non-invasive prenatal testing (NIPT). However, many technical challenges, such as dependency on correct fetal sex prediction, large variations of chromosome Y measurement and high sensitivity to random reads mapping, may result in higher false negative rate (FNR) and false positive rate (FPR) in fetal sex prediction as well as in SCAs detection. Here, we developed an optimized method to improve the accuracy of the current method by filtering out randomly mapped reads in six specific regions of the Y chromosome. The method reduces the FNR and FPR of fetal sex prediction from nearly 1% to 0.01% and 0.06%, respectively and works robustly under conditions of low fetal DNA concentration (1%) in testing and simulation of 92 samples. The optimized method was further confirmed by large scale testing (1590 samples), suggesting that it is reliable and robust enough for clinical testing.
大规模平行测序(MPS)结合生物信息学分析已被广泛应用于通过对母血中游离胎儿DNA(cffDNA)进行测序来检测胎儿染色体非整倍体,如21三体、18三体、13三体以及性染色体非整倍体(SCA),即所谓的无创产前检测(NIPT)。然而,许多技术挑战,如依赖正确的胎儿性别预测、Y染色体测量的巨大差异以及对随机读段映射的高敏感性,可能导致胎儿性别预测以及SCA检测中出现更高的假阴性率(FNR)和假阳性率(FPR)。在此,我们开发了一种优化方法,通过过滤Y染色体六个特定区域中的随机映射读段来提高当前方法的准确性。该方法将胎儿性别预测的FNR和FPR分别从近1%降低到0.01%和0.06%,并且在92个样本的测试和模拟中,在低胎儿DNA浓度(1%)的条件下也能稳健运行。通过大规模测试(1590个样本)进一步证实了该优化方法,表明其对于临床检测足够可靠且稳健。