Liu Ye, Yeung William S B, Chiu Philip C N, Cao Dandan
Shenzhen Key Laboratory of Fertility Regulation, Reproductive Medicine Center, The University of Hong Kong-Shenzhen Hospital, Shenzhen, China.
Department of Obstetrics and Gynaecology, Li Ka Shing Faculty of Medicine, The University of Hong Kong, Hong Kong SAR, China.
Front Genet. 2022 Sep 29;13:981005. doi: 10.3389/fgene.2022.981005. eCollection 2022.
One objective of human genetics is to unveil the variants that contribute to human diseases. With the rapid development and wide use of next-generation sequencing (NGS), massive genomic sequence data have been created, making personal genetic information available. Conventional experimental evidence is critical in establishing the relationship between sequence variants and phenotype but with low efficiency. Due to the lack of comprehensive databases and resources which present clinical and experimental evidence on genotype-phenotype relationship, as well as accumulating variants found from NGS, different computational tools that can predict the impact of the variants on phenotype have been greatly developed to bridge the gap. In this review, we present a brief introduction and discussion about the computational approaches for variant impact prediction. Following an innovative manner, we mainly focus on approaches for non-synonymous variants (nsSNVs) impact prediction and categorize them into six classes. Their underlying rationale and constraints, together with the concerns and remedies raised from comparative studies are discussed. We also present how the predictive approaches employed in different research. Although diverse constraints exist, the computational predictive approaches are indispensable in exploring genotype-phenotype relationship.
人类遗传学的一个目标是揭示导致人类疾病的变异。随着下一代测序(NGS)的快速发展和广泛应用,大量的基因组序列数据得以产生,使得个人遗传信息成为可能。传统的实验证据对于建立序列变异与表型之间的关系至关重要,但效率较低。由于缺乏提供基因型-表型关系临床和实验证据的综合数据库和资源,以及从NGS中发现的不断积累的变异,能够预测变异对表型影响的不同计算工具得到了极大的发展,以弥补这一差距。在本综述中,我们对变异影响预测的计算方法进行了简要介绍和讨论。以一种创新的方式,我们主要关注非同义变异(nsSNV)影响预测的方法,并将其分为六类。讨论了它们的基本原理和局限性,以及比较研究中提出的问题和补救措施。我们还展示了不同研究中采用的预测方法。尽管存在各种局限性,但计算预测方法在探索基因型-表型关系中是不可或缺的。