Department of Psychiatry and Behavioral Sciences, Medical Center, University of Kansas, Kansas City, KS, USA.
Division of Medical Informatics, Department of Internal Medicine, Medical Center, University of Kansas, Kansas City, KS, USA.
J Neurodev Disord. 2022 Jun 24;14(1):39. doi: 10.1186/s11689-022-09448-8.
Numerous genes are implicated in autism spectrum disorder (ASD). ASD encompasses a wide-range and severity of symptoms and co-occurring conditions; however, the details of how genetic variation contributes to phenotypic differences are unclear. This creates a challenge for translating genetic evidence into clinically useful knowledge. Sleep disturbances are particularly prevalent co-occurring conditions in ASD, and genetics may inform treatment. Identifying convergent mechanisms with evidence for dysfunction that connect ASD and sleep biology could help identify better treatments for sleep disturbances in these individuals.
To identify mechanisms that influence risk for ASD and co-occurring sleep disturbances, we analyzed whole exome sequence data from individuals in the Simons Simplex Collection (n = 2380). We predicted protein damaging variants (PDVs) in genes currently implicated in either ASD or sleep duration in typically developing children. We predicted a network of ASD-related proteins with direct evidence for interaction with sleep duration-related proteins encoded by genes with PDVs. Overrepresentation analyses of Gene Ontology-defined biological processes were conducted on the resulting gene set. We calculated the likelihood of dysfunction in the top overrepresented biological process. We then tested if scores reflecting genetic dysfunction in the process were associated with parent-reported sleep duration.
There were 29 genes with PDVs in the ASD dataset where variation was reported in the literature to be associated with both ASD and sleep duration. A network of 108 proteins encoded by ASD and sleep duration candidate genes with PDVs was identified. The mechanism overrepresented in PDV-containing genes that encode proteins in the interaction network with the most evidence for dysfunction was cerebral cortex development (GO:0,021,987). Scores reflecting dysfunction in this process were associated with sleep durations; the largest effects were observed in adolescents (p = 4.65 × 10).
Our bioinformatic-driven approach detected a biological process enriched for genes encoding a protein-protein interaction network linking ASD gene products with sleep duration gene products where accumulation of potentially damaging variants in individuals with ASD was associated with sleep duration as reported by the parents. Specifically, genetic dysfunction impacting development of the cerebral cortex may affect sleep by disrupting sleep homeostasis which is evidenced to be regulated by this brain region. Future functional assessments and objective measurements of sleep in adolescents with ASD could provide the basis for more informed treatment of sleep problems in these individuals.
许多基因与自闭症谱系障碍(ASD)有关。ASD 涵盖了广泛的症状和共存病症的严重程度;然而,遗传变异如何导致表型差异的细节尚不清楚。这给将遗传证据转化为临床有用知识带来了挑战。睡眠障碍是 ASD 中特别常见的共存病症,而遗传学可能为治疗提供信息。确定与 ASD 和睡眠生物学相关的功能障碍证据相连接的趋同机制,可以帮助为这些个体的睡眠障碍确定更好的治疗方法。
为了确定影响 ASD 和共存睡眠障碍风险的机制,我们分析了来自西蒙斯单倍型收集(n=2380)中个体的全外显子组序列数据。我们预测了目前在 ASD 或典型发育儿童的睡眠持续时间中涉及的基因中的蛋白质损伤变异(PDV)。我们预测了一个由具有 PDV 的基因编码的与睡眠持续时间相关的蛋白质与 ASD 相关蛋白的直接相互作用的网络。对由此产生的基因集进行了基因本体定义的生物学过程的过度表达分析。我们计算了过程中功能障碍的可能性。然后,我们测试了反映该过程中遗传功能障碍的分数是否与父母报告的睡眠持续时间有关。
在 ASD 数据集中有 29 个基因具有 PDV,文献报道这些基因中的变异与 ASD 和睡眠持续时间均有关。鉴定出一个由 ASD 和睡眠持续时间候选基因中的 PDV 编码的 108 个蛋白质的网络。在包含与具有最多功能障碍证据的蛋白质相互作用网络的蛋白编码基因中的 PDV 中,占主导地位的机制是大脑皮层发育(GO:0,021,987)。反映该过程中功能障碍的分数与睡眠持续时间有关;在青少年中观察到的影响最大(p=4.65×10)。
我们的生物信息学驱动方法检测到一个富含基因的生物过程,这些基因编码一个蛋白质-蛋白质相互作用网络,将 ASD 基因产物与睡眠持续时间基因产物连接起来,其中 ASD 个体中潜在有害变异的积累与父母报告的睡眠持续时间有关。具体来说,影响大脑皮层发育的遗传功能障碍可能通过扰乱睡眠稳态来影响睡眠,而睡眠稳态被证明受该大脑区域调节。在 ASD 青少年中进行进一步的功能评估和客观的睡眠测量,可为这些个体的睡眠问题提供更明智的治疗基础。