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人工智能框架识别阿尔茨海默病药物再利用的候选靶点。

Artificial intelligence framework identifies candidate targets for drug repurposing in Alzheimer's disease.

机构信息

Genomic Medicine Institute, Lerner Research Institute, Cleveland Clinic, Cleveland, OH, 44195, USA.

Department of Biostatistics and Health Data Science, School of Medicine, Indiana University, Indianapolis, IN, 46202, USA.

出版信息

Alzheimers Res Ther. 2022 Jan 10;14(1):7. doi: 10.1186/s13195-021-00951-z.

Abstract

BACKGROUND

Genome-wide association studies (GWAS) have identified numerous susceptibility loci for Alzheimer's disease (AD). However, utilizing GWAS and multi-omics data to identify high-confidence AD risk genes (ARGs) and druggable targets that can guide development of new therapeutics for patients suffering from AD has heretofore not been successful.

METHODS

To address this critical problem in the field, we have developed a network-based artificial intelligence framework that is capable of integrating multi-omics data along with human protein-protein interactome networks to accurately infer accurate drug targets impacted by GWAS-identified variants to identify new therapeutics. When applied to AD, this approach integrates GWAS findings, multi-omics data from brain samples of AD patients and AD transgenic animal models, drug-target networks, and the human protein-protein interactome, along with large-scale patient database validation and in vitro mechanistic observations in human microglia cells.

RESULTS

Through this approach, we identified 103 ARGs validated by various levels of pathobiological evidence in AD. Via network-based prediction and population-based validation, we then showed that three drugs (pioglitazone, febuxostat, and atenolol) are significantly associated with decreased risk of AD compared with matched control populations. Pioglitazone usage is significantly associated with decreased risk of AD (hazard ratio (HR) = 0.916, 95% confidence interval [CI] 0.861-0.974, P = 0.005) in a retrospective case-control validation. Pioglitazone is a peroxisome proliferator-activated receptor (PPAR) agonist used to treat type 2 diabetes, and propensity score matching cohort studies confirmed its association with reduced risk of AD in comparison to glipizide (HR = 0.921, 95% CI 0.862-0.984, P = 0.0159), an insulin secretagogue that is also used to treat type 2 diabetes. In vitro experiments showed that pioglitazone downregulated glycogen synthase kinase 3 beta (GSK3β) and cyclin-dependent kinase (CDK5) in human microglia cells, supporting a possible mechanism-of-action for its beneficial effect in AD.

CONCLUSIONS

In summary, we present an integrated, network-based artificial intelligence methodology to rapidly translate GWAS findings and multi-omics data to genotype-informed therapeutic discovery in AD.

摘要

背景

全基因组关联研究(GWAS)已经确定了许多阿尔茨海默病(AD)的易感基因座。然而,利用 GWAS 和多组学数据来识别高可信度的 AD 风险基因(ARGs)和可成药靶点,以指导开发新的治疗方法,为 AD 患者提供帮助,迄今为止尚未成功。

方法

为了解决该领域的这一关键问题,我们开发了一种基于网络的人工智能框架,能够整合多组学数据以及人类蛋白质 - 蛋白质相互作用网络,以准确推断受 GWAS 鉴定变体影响的准确药物靶点,从而发现新的治疗方法。当应用于 AD 时,该方法整合了 GWAS 发现、AD 患者和 AD 转基因动物模型的脑样本的多组学数据、药物靶点网络以及人类蛋白质 - 蛋白质相互作用网络,同时还进行了大规模的患者数据库验证和体外人类小胶质细胞的机制观察。

结果

通过这种方法,我们确定了 103 个在 AD 中得到不同水平的病理生物学证据验证的 ARGs。通过网络预测和基于人群的验证,我们发现三种药物(吡格列酮、非布司他和阿替洛尔)与对照人群相比,与 AD 风险降低显著相关。在回顾性病例对照验证中,吡格列酮的使用与 AD 风险降低显著相关(风险比(HR)=0.916,95%置信区间[CI]0.861-0.974,P=0.005)。吡格列酮是一种过氧化物酶体增殖物激活受体(PPAR)激动剂,用于治疗 2 型糖尿病,而倾向评分匹配队列研究证实,与格列吡嗪(HR=0.921,95%CI0.862-0.984,P=0.0159)相比,它与 AD 风险降低相关,格列吡嗪也是一种用于治疗 2 型糖尿病的胰岛素分泌促进剂。体外实验表明,吡格列酮下调了人小胶质细胞中的糖原合酶激酶 3β(GSK3β)和细胞周期蛋白依赖性激酶(CDK5),支持其在 AD 中有益作用的可能作用机制。

结论

总之,我们提出了一种综合的、基于网络的人工智能方法,可快速将 GWAS 发现和多组学数据转化为 AD 的基因型信息治疗发现。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b89f/8751379/06a43b87c04a/13195_2021_951_Fig1_HTML.jpg

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