Shuyuan Hu, Ping Zhu, Shan Gao, Shiyang Wu, Yijie He, Fengzhen Liu, Kun Wang, Guiyou Liu
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Using seven AD datasets (four GWAS and three GWAX, including IGAP, <i>N</i> = 63 926; FinnGen R10, <i>N</i> = 191 061; UKB G30, <i>N</i> = 420 531; UKB2024, <i>N</i> = 434 286, and GWAX2017, <i>N</i> = 74 366; GWAX2018, <i>N</i> = 548 955; GWAX2021, <i>N</i> = 408 691) and six education subtypes (including years of schooling, <i>N</i> = 1 131 881; hardest math class completed, <i>N</i> = 430 445; self-reported math ability, <i>N</i> = 564 698; college completion, <i>N</i> = 280 007; cognition test performance, <i>N</i> = 257 841; and non-cognitive skills, <i>N</i> = 257 841). We also assessed the heterogeneity and pleiotropy across these datasets. We found opposing causal directions between GWAS and GWAX cohorts. In GWAS datasets, genetic variations related to education were causally linked to a lower risk of AD (OR < 1, <i>p</i> < 0.05), with years of schooling showing the strongest protective effects (OR = 0.71 in IGAP, <i>p</i> < 0.05). Conversely, UKB-based GWAX analyses paradoxically linked education-related traits to increased AD risk (OR > 1, <i>p</i> < 0.05), directly conflicting with the protective associations in clinical AD GWAS results. Genetic heterogeneity was observed in both AD GWAS and GWAX datasets. Pleiotropy was noted in AD outcomes, but MR estimates remained stable after outlier adjustments. Our findings reveal that self-reported AD statuses in UKB distorted genetic effect estimates, particularly for education subtypes requiring validation. The research urges caution in interpreting MR results from GWAX studies that use self-reported endpoints and highlights the need for rigorous phenotyping in biobank studies.\n <figure>\n <div><picture>\n <source></source></picture><p></p>\n </div>\n </figure></p>\n </div>","PeriodicalId":16527,"journal":{"name":"Journal of Neurochemistry","volume":"169 7","pages":""},"PeriodicalIF":4.0000,"publicationDate":"2025-07-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Self-Report Alzheimer's Disease Statuses in UK Biobank Distort Downstream Analyses\",\"authors\":\"Shuyuan Hu, Ping Zhu, Shan Gao, Shiyang Wu, Yijie He, Fengzhen Liu, Kun Wang, Guiyou Liu\",\"doi\":\"10.1111/jnc.70151\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div>\\n \\n <p>Genetic studies have identified Alzheimer's disease (AD)-linked variants through genome-wide association studies (GWAS) and proxy-based GWAS (GWAX), yet inconsistent causal inferences still persist. Here, we systematically evaluated how self-reported AD diagnoses in the UK Biobank (UKB) distort Mendelian randomization (MR) analyses. Using seven AD datasets (four GWAS and three GWAX, including IGAP, <i>N</i> = 63 926; FinnGen R10, <i>N</i> = 191 061; UKB G30, <i>N</i> = 420 531; UKB2024, <i>N</i> = 434 286, and GWAX2017, <i>N</i> = 74 366; GWAX2018, <i>N</i> = 548 955; GWAX2021, <i>N</i> = 408 691) and six education subtypes (including years of schooling, <i>N</i> = 1 131 881; hardest math class completed, <i>N</i> = 430 445; self-reported math ability, <i>N</i> = 564 698; college completion, <i>N</i> = 280 007; cognition test performance, <i>N</i> = 257 841; and non-cognitive skills, <i>N</i> = 257 841). We also assessed the heterogeneity and pleiotropy across these datasets. We found opposing causal directions between GWAS and GWAX cohorts. In GWAS datasets, genetic variations related to education were causally linked to a lower risk of AD (OR < 1, <i>p</i> < 0.05), with years of schooling showing the strongest protective effects (OR = 0.71 in IGAP, <i>p</i> < 0.05). Conversely, UKB-based GWAX analyses paradoxically linked education-related traits to increased AD risk (OR > 1, <i>p</i> < 0.05), directly conflicting with the protective associations in clinical AD GWAS results. Genetic heterogeneity was observed in both AD GWAS and GWAX datasets. Pleiotropy was noted in AD outcomes, but MR estimates remained stable after outlier adjustments. Our findings reveal that self-reported AD statuses in UKB distorted genetic effect estimates, particularly for education subtypes requiring validation. 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引用次数: 0
摘要
遗传学研究已经通过全基因组关联研究(GWAS)和基于代理的GWAS (GWAX)确定了阿尔茨海默病(AD)相关变异,但不一致的因果推论仍然存在。在这里,我们系统地评估了英国生物银行(UKB)中自我报告的AD诊断如何扭曲孟德尔随机化(MR)分析。使用7个AD数据集(4个GWAS和3个GWAX,包括IGAP, N = 63 926;FinnGen R10, N = 191 061;Ukb g30, n = 420 531;UKB2024, N = 434 286, GWAX2017, N = 74 366;Gwax2018, n = 548 955;GWAX2021, N = 408 691)和6个教育亚型(包括受教育年限,N = 1 131 881;最难数学课完成,N = 430 445;自我报告的数学能力,N = 564 698;大学毕业程度,N = 280007;认知测试成绩,N = 257 841;非认知技能,N = 257 841)。我们还评估了这些数据集的异质性和多效性。我们发现GWAS和GWAX队列之间存在相反的因果关系。在GWAS数据集中,与教育相关的遗传变异与较低的AD风险有因果关系(OR < 1, p < 0.05),受教育年限显示出最强的保护作用(OR = 0.71, p < 0.05)。相反,基于ukb的GWAX分析矛盾地将教育相关特征与AD风险增加联系起来(OR > 1, p < 0.05),直接与临床AD GWAS结果中的保护性关联相冲突。在AD GWAS和GWAX数据集中均观察到遗传异质性。在AD结果中注意到多效性,但在异常值调整后MR估计值保持稳定。我们的研究结果表明,UKB中自我报告的AD状态扭曲了遗传效应的估计,特别是对于需要验证的教育亚型。该研究敦促在解释使用自我报告终点的GWAX研究的MR结果时要谨慎,并强调在生物库研究中需要严格的表型分析。
Self-Report Alzheimer's Disease Statuses in UK Biobank Distort Downstream Analyses
Genetic studies have identified Alzheimer's disease (AD)-linked variants through genome-wide association studies (GWAS) and proxy-based GWAS (GWAX), yet inconsistent causal inferences still persist. Here, we systematically evaluated how self-reported AD diagnoses in the UK Biobank (UKB) distort Mendelian randomization (MR) analyses. Using seven AD datasets (four GWAS and three GWAX, including IGAP, N = 63 926; FinnGen R10, N = 191 061; UKB G30, N = 420 531; UKB2024, N = 434 286, and GWAX2017, N = 74 366; GWAX2018, N = 548 955; GWAX2021, N = 408 691) and six education subtypes (including years of schooling, N = 1 131 881; hardest math class completed, N = 430 445; self-reported math ability, N = 564 698; college completion, N = 280 007; cognition test performance, N = 257 841; and non-cognitive skills, N = 257 841). We also assessed the heterogeneity and pleiotropy across these datasets. We found opposing causal directions between GWAS and GWAX cohorts. In GWAS datasets, genetic variations related to education were causally linked to a lower risk of AD (OR < 1, p < 0.05), with years of schooling showing the strongest protective effects (OR = 0.71 in IGAP, p < 0.05). Conversely, UKB-based GWAX analyses paradoxically linked education-related traits to increased AD risk (OR > 1, p < 0.05), directly conflicting with the protective associations in clinical AD GWAS results. Genetic heterogeneity was observed in both AD GWAS and GWAX datasets. Pleiotropy was noted in AD outcomes, but MR estimates remained stable after outlier adjustments. Our findings reveal that self-reported AD statuses in UKB distorted genetic effect estimates, particularly for education subtypes requiring validation. The research urges caution in interpreting MR results from GWAX studies that use self-reported endpoints and highlights the need for rigorous phenotyping in biobank studies.
期刊介绍:
Journal of Neurochemistry focuses on molecular, cellular and biochemical aspects of the nervous system, the pathogenesis of neurological disorders and the development of disease specific biomarkers. It is devoted to the prompt publication of original findings of the highest scientific priority and value that provide novel mechanistic insights, represent a clear advance over previous studies and have the potential to generate exciting future research.