Burak Yelmen, Maris Alver, Estonian Biobank Research Team, Flora Jay, Lili Milani
{"title":"解读人工神经网络,检测复杂性状的全基因组关联信号","authors":"Burak Yelmen, Maris Alver, Estonian Biobank Research Team, Flora Jay, Lili Milani","doi":"arxiv-2407.18811","DOIUrl":null,"url":null,"abstract":"Investigating the genetic architecture of complex diseases is challenging due\nto the highly polygenic and interactive landscape of genetic and environmental\nfactors. Although genome-wide association studies (GWAS) have identified\nthousands of variants for multiple complex phenotypes, conventional statistical\napproaches can be limited by simplified assumptions such as linearity and lack\nof epistasis models. In this work, we trained artificial neural networks for\npredicting complex traits using both simulated and real genotype/phenotype\ndatasets. We extracted feature importance scores via different post hoc\ninterpretability methods to identify potentially associated loci (PAL) for the\ntarget phenotype. Simulations we performed with various parameters demonstrated\nthat associated loci can be detected with good precision using strict selection\ncriteria, but downstream analyses are required for fine-mapping the exact\nvariants due to linkage disequilibrium, similarly to conventional GWAS. By\napplying our approach to the schizophrenia cohort in the Estonian Biobank, we\nwere able to detect multiple PAL related to this highly polygenic and heritable\ndisorder. We also performed enrichment analyses with PAL in genic regions,\nwhich predominantly identified terms associated with brain morphology. With\nfurther improvements in model optimization and confidence measures, artificial\nneural networks can enhance the identification of genomic loci associated with\ncomplex diseases, providing a more comprehensive approach for GWAS and serving\nas initial screening tools for subsequent functional studies. Keywords: Deep learning, interpretability, genome-wide association studies,\ncomplex diseases","PeriodicalId":501266,"journal":{"name":"arXiv - QuanBio - Quantitative Methods","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2024-07-26","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Interpreting artificial neural networks to detect genome-wide association signals for complex traits\",\"authors\":\"Burak Yelmen, Maris Alver, Estonian Biobank Research Team, Flora Jay, Lili Milani\",\"doi\":\"arxiv-2407.18811\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Investigating the genetic architecture of complex diseases is challenging due\\nto the highly polygenic and interactive landscape of genetic and environmental\\nfactors. Although genome-wide association studies (GWAS) have identified\\nthousands of variants for multiple complex phenotypes, conventional statistical\\napproaches can be limited by simplified assumptions such as linearity and lack\\nof epistasis models. In this work, we trained artificial neural networks for\\npredicting complex traits using both simulated and real genotype/phenotype\\ndatasets. We extracted feature importance scores via different post hoc\\ninterpretability methods to identify potentially associated loci (PAL) for the\\ntarget phenotype. Simulations we performed with various parameters demonstrated\\nthat associated loci can be detected with good precision using strict selection\\ncriteria, but downstream analyses are required for fine-mapping the exact\\nvariants due to linkage disequilibrium, similarly to conventional GWAS. By\\napplying our approach to the schizophrenia cohort in the Estonian Biobank, we\\nwere able to detect multiple PAL related to this highly polygenic and heritable\\ndisorder. We also performed enrichment analyses with PAL in genic regions,\\nwhich predominantly identified terms associated with brain morphology. With\\nfurther improvements in model optimization and confidence measures, artificial\\nneural networks can enhance the identification of genomic loci associated with\\ncomplex diseases, providing a more comprehensive approach for GWAS and serving\\nas initial screening tools for subsequent functional studies. 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引用次数: 0
摘要
由于遗传和环境因素具有高度的多源性和交互性,调查复杂疾病的遗传结构具有挑战性。尽管全基因组关联研究(GWAS)已经确定了多种复杂表型的数千个变体,但传统的统计方法可能会受到简化假设的限制,如线性和缺乏表观模型。在这项工作中,我们使用模拟和真实的基因型/表型数据集训练了预测复杂性状的人工神经网络。我们通过不同的事后可解释性方法提取了特征重要性评分,以确定目标表型的潜在相关基因位点(PAL)。我们使用各种参数进行的模拟表明,使用严格的选择标准可以很精确地检测到相关基因座,但由于连锁不平衡,需要进行下游分析来精细绘制确切的变异株,这与传统的 GWAS 类似。通过将我们的方法应用于爱沙尼亚生物库中的精神分裂症队列,我们能够检测到与这种高度多基因遗传性疾病相关的多个 PAL。我们还对基因区域的 PAL 进行了富集分析,主要发现了与大脑形态相关的术语。随着模型优化和置信度测量的进一步改进,人工神经网络可以增强与复杂疾病相关的基因组位点的鉴定,为GWAS提供一种更全面的方法,并作为后续功能研究的初步筛选工具。关键词深度学习 可解释性 全基因组关联研究 复杂疾病
Interpreting artificial neural networks to detect genome-wide association signals for complex traits
Investigating the genetic architecture of complex diseases is challenging due
to the highly polygenic and interactive landscape of genetic and environmental
factors. Although genome-wide association studies (GWAS) have identified
thousands of variants for multiple complex phenotypes, conventional statistical
approaches can be limited by simplified assumptions such as linearity and lack
of epistasis models. In this work, we trained artificial neural networks for
predicting complex traits using both simulated and real genotype/phenotype
datasets. We extracted feature importance scores via different post hoc
interpretability methods to identify potentially associated loci (PAL) for the
target phenotype. Simulations we performed with various parameters demonstrated
that associated loci can be detected with good precision using strict selection
criteria, but downstream analyses are required for fine-mapping the exact
variants due to linkage disequilibrium, similarly to conventional GWAS. By
applying our approach to the schizophrenia cohort in the Estonian Biobank, we
were able to detect multiple PAL related to this highly polygenic and heritable
disorder. We also performed enrichment analyses with PAL in genic regions,
which predominantly identified terms associated with brain morphology. With
further improvements in model optimization and confidence measures, artificial
neural networks can enhance the identification of genomic loci associated with
complex diseases, providing a more comprehensive approach for GWAS and serving
as initial screening tools for subsequent functional studies. Keywords: Deep learning, interpretability, genome-wide association studies,
complex diseases