Zhang Zhenyi, Qiao Jie, Chen Yidong, Zhou Peijie
School of Mathematical Sciences, State Key Laboratory of Female Fertility Promotion, Center for Reproductive Medicine, Department of Obstetrics and Gynecology, Third Hospital, Center for Machine Learning Research, Center for Quantitative Biology, Peking University, Beijing, 100871, China.
National Clinical Research Center for Obstetrics and Gynecology, Beijing, 100191, China.
Adv Sci (Weinh). 2025 Sep;12(34):e12660. doi: 10.1002/advs.202412660. Epub 2025 Jun 29.
Noninvasive preimplantation genetic testing for aneuploidy based on embryonic cell-free DNA (cfDNA) released in spent embryo culture media (SECM) has brought hope in selecting embryos that are most likely to implant and grow into healthy babies during assisted reproduction. However, maternal DNA contamination in SECM significantly hampers the reliability of embryonic chromosome ploidy profiles, leading to false negative results, particularly at high contamination levels. Here, we present DECENT (deep copy number variation (CNV) reconstruction), a deep learning method to reconstruct embryonic CNVs and mitigate maternal contamination in SECM from single-cell methylation sequencing of cfDNA. DECENT integrates sequence features and methylation patterns by combining convolution modules, long-short memory, and attention mechanisms to infer the origin of cfDNA reads. The benchmarking study demonstrated DECENT's ability to estimate contamination proportions and restore embryonic chromosome aneuploidies in samples with varying contamination levels. In contaminated SECM clinical samples, including one with more than 80% maternal reads, DECENT achieved consistent CNV recovery with invasive tests. Overall, DECENT contributes to enhancing the diagnostic accuracy and effectiveness of cfDNA-based noninvasive preimplantation genetic testing, establishing a robust groundwork for its extensive clinical utilization in the field of reproductive medicine.
基于废弃胚胎培养液(SECM)中释放的胚胎游离DNA(cfDNA)进行非整倍体无创胚胎植入前基因检测,为辅助生殖过程中选择最有可能着床并发育成健康婴儿的胚胎带来了希望。然而,SECM中的母体DNA污染严重影响了胚胎染色体倍性分析的可靠性,导致假阴性结果,尤其是在污染水平较高时。在此,我们提出了DECENT(深度拷贝数变异(CNV)重建)方法,这是一种通过对cfDNA进行单细胞甲基化测序来重建胚胎CNV并减轻SECM中母体污染的深度学习方法。DECENT通过结合卷积模块、长短期记忆和注意力机制来整合序列特征和甲基化模式,以推断cfDNA读数的来源。基准研究表明,DECENT能够估计污染比例,并在不同污染水平的样本中恢复胚胎染色体非整倍性。在受污染的SECM临床样本中,包括一个母体读数超过80%的样本,DECENT与侵入性检测在CNV恢复方面取得了一致的结果。总体而言,DECENT有助于提高基于cfDNA的无创胚胎植入前基因检测的诊断准确性和有效性,为其在生殖医学领域的广泛临床应用奠定了坚实基础。