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Multi-omics analysis reveals the key factors involved in the severity of the Alzheimer’s disease

Alzheimer's Research and Therapy, ISSN: 1758-9193, Vol: 16, Issue: 1, Page: 213
2024
  • 1
    Citations
  • 0
    Usage
  • 41
    Captures
  • 1
    Mentions
  • 0
    Social Media
Metric Options:   Counts1 Year3 Year

Metrics Details

  • Citations
    1
  • Captures
    41
  • Mentions
    1
    • News Mentions
      1
      • News
        1

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Multi-omics analysis reveals the key factors involved in the severity of the Alzheimer's disease.

Alzheimers Res Ther. 2024 Oct 2;16(1):213. Authors: Meng L, Jin H, Yulug B, Altay O, Li X, Hanoglu L, Cankaya S, Coskun E, Idil E, Nogaylar R, Ozsimsek A, Shoaie S, Turkez H, Nielsen J, Zhang C, Borén J, Uhlén M, Mardinoglu A PubMed: 39358810 Submit Comment

Article Description

Alzheimer’s disease (AD) is a debilitating neurodegenerative disorder with a global impact, yet its pathogenesis remains poorly understood. While age, metabolic abnormalities, and accumulation of neurotoxic substances are potential risk factors for AD, their effects are confounded by other factors. To address this challenge, we first utilized multi-omics data from 87 well phenotyped AD patients and generated plasma proteomics and metabolomics data, as well as gut and saliva metagenomics data to investigate the molecular-level alterations accounting the host-microbiome interactions. Second, we analyzed individual omics data and identified the key parameters involved in the severity of the dementia in AD patients. Next, we employed Artificial Intelligence (AI) based models to predict AD severity based on the significantly altered features identified in each omics analysis. Based on our integrative analysis, we found the clinical relevance of plasma proteins, including SKAP1 and NEFL, plasma metabolites including homovanillate and glutamate, and Paraprevotella clara in gut microbiome in predicting the AD severity. Finally, we validated the predictive power of our AI based models by generating additional multi-omics data from the same group of AD patients by following up for 3 months. Hence, we observed that these results may have important implications for the development of potential diagnostic and therapeutic approaches for AD patients.

Bibliographic Details

Meng, Lingqi; Jin, Han; Yulug, Burak; Altay, Ozlem; Li, Xiangyu; Hanoglu, Lutfu; Cankaya, Seyda; Coskun, Ebru; Idil, Ezgi; Nogaylar, Rahim; Ozsimsek, Ahmet; Shoaie, Saeed; Turkez, Hasan; Nielsen, Jens; Zhang, Cheng; Borén, Jan; Uhlén, Mathias; Mardinoglu, Adil

Springer Science and Business Media LLC

Neuroscience; Medicine

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