Inferring the Genetic Influences on Psychological Traits Using MRI Connectivity Predictive Models: Demonstration with Cognition.

Complex psychiatry Pub Date : 2022-12-01 eCollection Date: 2023-01-01 DOI:10.1159/000527224
Alexander S Hatoum, Andrew E Reineberg, Philip A Kragel, Tor D Wager, Naomi P Friedman
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引用次数: 0

Abstract

Introduction: Genetic correlations between brain and behavioral phenotypes in analyses from major genetic consortia have been weak and mostly nonsignificant. fMRI models of systems-level brain patterns may help improve our ability to link genes, brains, and behavior by identifying reliable and reproducible endophenotypes. Work using connectivity-based predictive modeling has generated brain-based proxies of behavioral and neuropsychological variables. If such models capture activity in inherited brain systems, they may offer a more powerful link between genes and behavior.

Method: As a proof of concept, we develop models predicting intelligence (IQ) based on fMRI connectivity and test their effectiveness as endophenotypes. We link brain and IQ in a model development dataset of N = 3,000 individuals and test the genetic correlations between brain models and measured IQ in a genetic validation sample of N = 13,092 individuals from the UK Biobank. We compare an additive connectivity-based model to multivariate LASSO and ridge models phenotypically and genetically. We also compare these approaches to single "candidate" brain areas.

Results: We found that predictive brain models were significantly phenotypically correlated with IQ and showed much stronger correlations than individual edges. Further, brain models were more heritable (h2 = 0.155-0.181) than single brain regions (h2 = 0.038-0.118) and captured about half of the genetic variance in IQ (rG = 0.422-0.576), while rGs with single brain measures were smaller and nonsignificant. For the different approaches, LASSO and ridge were similarly predictive, with slightly weaker performance of the additive model. LASSO model weights were highly theoretically interpretable and replicated known brain IQ associations. Finally, functional connectivity models trained in midlife showed genetic correlations with early life correlates of IQ, suggesting some stability in the prediction of fMRI models.

Conclusion: Multisystem predictive models hold promise as imaging endophenotypes that offer complex and theoretically relevant conclusions for future imaging genetics research.

利用MRI连通性预测模型推断遗传对心理特征的影响:以认知为例。
导言:在主要遗传联合体的分析中,大脑和行为表型之间的遗传相关性很弱,而且大多不显著。系统级大脑模式的功能磁共振成像模型可以通过识别可靠和可重复的内表型,帮助我们提高联系基因、大脑和行为的能力。使用基于连接的预测建模的工作已经产生了基于大脑的行为和神经心理变量的代理。如果这些模型能捕捉到遗传大脑系统的活动,它们可能会在基因和行为之间提供更有力的联系。方法:作为概念验证,我们开发了基于fMRI连通性的预测智力(IQ)模型,并测试了它们作为内表型的有效性。我们在一个N = 3000人的模型开发数据集中将大脑和智商联系起来,并在来自英国生物银行的N = 13092个人的基因验证样本中测试了大脑模型和测量智商之间的遗传相关性。我们比较了一个加性连接为基础的模型,多变量LASSO和岭模型表型和遗传。我们还将这些方法与单一的“候选”大脑区域进行比较。结果:我们发现预测脑模型与智商显著显着相关,并且表现出比个体优势更强的相关性。此外,脑模型比单一脑区域(h2 = 0.038-0.118)更具可遗传性(h2 = 0.155-0.181),捕获了大约一半的智商遗传变异(rG = 0.422-0.576),而单一脑测量的rG较小且不显著。对于不同的方法,LASSO和ridge的预测效果相似,加性模型的表现稍弱。LASSO模型权重在理论上具有很高的可解释性,并复制了已知的大脑智商关联。最后,在中年时期训练的功能连接模型显示出与早期IQ相关的遗传相关性,这表明fMRI模型的预测具有一定的稳定性。结论:多系统预测模型有望作为影像学内表型,为未来影像学遗传学研究提供复杂且理论相关的结论。
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