AI Article Synopsis

  • Alzheimer's disease (AD) is a complex condition affecting the brain, and this study aimed to explore its causes by using a statistical method called Mendelian randomization (MR) on a large dataset from MRC IEU OpenGWAS, which included various traits and outcomes related to AD.* -
  • The research analyzed a total of 400,274 data entries, focusing on 73,129 records from 4840 exposure traits categorized into ten groups, leading to the identification of different risk and protective factors for both early-onset and late-onset AD.* -
  • Key findings included the discovery of potential therapeutic targets related to AD, such as CD33 and TBCA, highlighting the complexity of the disease and enhancing the

Article Abstract

Alzheimer's disease (AD) is a complex degenerative disease of the central nervous system, and elucidating its pathogenesis remains challenging. In this study, we used the inverse-variance weighted (IVW) model as the major analysis method to perform hypothesis-free Mendelian randomization (MR) analysis on the data from MRC IEU OpenGWAS (18,097 exposure traits and 16 AD outcome traits), and conducted sensitivity analysis with six models, to assess the robustness of the IVW results, to identify various classes of risk or protective factors for AD, early-onset AD, and late-onset AD. We generated 400,274 data entries in total, among which the major analysis method of the IVW model consists of 73,129 records with 4840 exposure traits, which fall into 10 categories: Disease, Medical laboratory science, Imaging, Anthropometric, Treatment, Molecular trait, Gut microbiota, Past history, Family history, and Lifestyle trait. More importantly, a freely accessed online platform called MRAD (https://gwasmrad.com/mrad/) has been developed using the Shiny package with MR analysis results. Additionally, novel potential AD therapeutic targets (CD33, TBCA, VPS29, GNAI3, PSME1) are identified, among which CD33 was positively associated with the main outcome traits of AD, as well as with both EOAD and LOAD. TBCA and VPS29 were negatively associated with the main outcome traits of AD, as well as with both EOAD and LOAD. GNAI3 and PSME1 were negatively associated with the main outcome traits of AD, as well as with LOAD, but had no significant causal association with EOAD. The findings of our research advance our understanding of the etiology of AD.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11469671PMC
http://dx.doi.org/10.7554/eLife.96224DOI Listing

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