Department of Psychiatry and Behavioral Sciences, University of Kansas Medical Center, Kansas City, MO 66160, USA.
Department of Molecular and Human Genetics, Baylor College of Medicine, Houston, TX 77030, USA.
Int J Mol Sci. 2020 Nov 27;21(23):9029. doi: 10.3390/ijms21239029.
Human genetic studies have implicated more than a hundred genes in Autism Spectrum Disorder (ASD). Understanding how variation in implicated genes influence expression of co-occurring conditions and drug response can inform more effective, personalized approaches for treatment of individuals with ASD. Rapidly translating this information into the clinic requires efficient algorithms to sort through the myriad of genes implicated by rare gene-damaging single nucleotide and copy number variants, and common variation detected in genome-wide association studies (GWAS). To pinpoint genes that are more likely to have clinically relevant variants, we developed a functional annotation pipeline. We defined clinical relevance in this project as any ASD associated gene with evidence indicating a patient may have a complex, co-occurring condition that requires direct intervention (e.g., sleep and gastrointestinal disturbances, attention deficit hyperactivity, anxiety, seizures, depression), or is relevant to drug development and/or approaches to maximizing efficacy and minimizing adverse events (i.e., pharmacogenomics). Starting with a list of all candidate genes implicated in all manifestations of ASD (i.e., idiopathic and syndromic), this pipeline uses databases that represent multiple lines of evidence to identify genes: (1) expressed in the human brain, (2) involved in ASD-relevant biological processes and resulting in analogous phenotypes in mice, (3) whose products are targeted by approved pharmaceutical compounds or possessing pharmacogenetic variation and (4) whose products directly interact with those of genes with variants recommended to be tested for by the American College of Medical Genetics (ACMG). Compared with 1000 gene sets, each with a random selection of human protein coding genes, more genes in the ASD set were annotated for each category evaluated ( ≤ 1.99 × 10). Of the 956 ASD-implicated genes in the full set, 18 were flagged based on evidence in all categories. Fewer genes from randomly drawn sets were annotated in all categories (x = 8.02, sd = 2.56, = 7.75 × 10). Notably, none of the prioritized genes are represented among the 59 genes compiled by the ACMG, and 78% had a pathogenic or likely pathogenic variant in ClinVar. Results from this work should rapidly prioritize potentially actionable results from genetic studies and, in turn, inform future work toward clinical decision support for personalized care based on genetic testing.
人类遗传学研究已经发现了 100 多个与自闭症谱系障碍(ASD)相关的基因。了解这些受影响的基因变异如何影响同时发生的疾病和药物反应的表达,可以为 ASD 患者提供更有效、更个性化的治疗方法。将这些信息快速转化为临床实践需要有效的算法来筛选出由罕见的基因破坏性单核苷酸和拷贝数变异以及全基因组关联研究(GWAS)中检测到的常见变异所涉及的众多基因。为了确定更有可能具有临床相关变异的基因,我们开发了一个功能注释管道。在本项目中,我们将临床相关性定义为任何与 ASD 相关的基因,有证据表明患者可能患有复杂的、同时发生的疾病,需要直接干预(例如,睡眠和胃肠道紊乱、注意力缺陷多动障碍、焦虑、癫痫、抑郁),或者与药物开发和/或最大限度提高疗效和最小化不良反应的方法相关(即,药物遗传学)。从所有与 ASD 的所有表现形式相关的候选基因列表开始(即,特发性和综合征性),该管道使用代表多种证据的数据库来识别基因:(1)在人类大脑中表达,(2)参与与 ASD 相关的生物过程,并导致在小鼠中出现类似的表型,(3)其产物被已批准的药物化合物靶向或具有药物遗传学变异,以及(4)其产物直接与具有变异的基因相互作用,这些变异被建议由美国医学遗传学学院(ACMG)进行测试。与 1000 个基因集相比,每个基因集都随机选择了人类蛋白质编码基因,在评估的每个类别中,ASD 基因集中有更多的基因被注释(≤1.99×10)。在全集中的 956 个 ASD 相关基因中,有 18 个基因基于所有类别的证据被标记。从随机抽取的基因集中,所有类别的基因注释数量都较少(x=8.02,sd=2.56,=7.75×10)。值得注意的是,在 ACMG 汇编的 59 个基因中没有一个优先基因,并且 78%的基因在 ClinVar 中具有致病性或可能致病性变异。这项工作的结果应该能够快速确定遗传研究中潜在可操作的结果,并进而为基于遗传测试的个性化护理的临床决策支持提供未来的工作方向。