机器学习大数据驱动的靶标识别:DRD2作为银屑病的治疗靶标。

IF 4.6
Takashi Sakai , Ryusuke Sawada , Otoha Ichinose , Takeshi Terabayashi , Yutaka Hatano , Yoshihiro Yamanishi , Toshimasa Ishizaki
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引用次数: 0

摘要

背景:医学治疗的发展传统上依赖于研究人员利用科学知识来假设疾病机制和确定治疗剂。然而,新的治疗靶点的枯竭已经成为一个重大挑战,导致药物研究停滞不前。目的:为了解决治疗靶标缺乏的问题,我们开发了一个基于机器学习(ML)的系统,能够预测疾病的治疗靶标分子。为了验证其实用性,我们将该系统应用于牛皮癣,旨在确定新的治疗策略。方法:我们的方法利用一个大型临床数据库来计算所有与相关疾病预防相关的药物的报告优势比。我们通过分析大型化学结构数据库来确定靶蛋白,以发现与预防性候选药物通常相关的蛋白质。通过在吡喹莫德诱导的牛皮癣小鼠模型中施用预测的治疗候选物进行实验验证。结果:基于ml的预测确定了帕金森病的药物作为牛皮癣的潜在预防候选药物。进一步的分析强调了多巴胺受体D2 (DRD2)作为治疗靶点。通过下调IL-17通路mRNA表达和降低血清肿瘤坏死因子-α水平,DRD2激动剂可缓解小鼠银屑病症状。结论:本研究证明了一种新的基于ml的系统在识别治疗靶点方面的实用性,该系统成功地揭示了DRD2在牛皮癣中的作用。除银屑病外,该系统还具有探索各种疾病的病理机制和发现治疗靶点的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Big data-driven target identification by machine learning: DRD2 as a therapeutic target for psoriasis

Background

The development of medical treatments has traditionally relied on researchers leveraging scientific knowledge to hypothesize disease mechanisms and identify therapeutic agents. However, the depletion of novel therapeutic targets has become a significant challenge, resulting in stagnation within pharmaceutical research.

Objective

To address the scarcity of therapeutic targets, we developed a machine learning (ML)-based system capable of predicting therapeutic target molecules for diseases. To validate its utility, we applied this system to psoriasis, aiming to identify novel treatment strategies.

Methods

Our approach utilized a large clinical database to calculate reporting odds ratios for all drugs associated with the prevention of diseases of interest. We identified target proteins by analyzing large chemical structure databases to discover proteins commonly associated with preventive drug candidates. Experimental validation was conducted by administering a predicted therapeutic candidate in an imiquimod-induced psoriasis mouse model.

Results

The ML-based predictions identified drugs for Parkinson’s disease as potential preventive candidates for psoriasis. Further analysis highlighted dopamine receptor D2 (DRD2) as a therapeutic target. Administration of a DRD2 agonist alleviated psoriasis symptoms in mice, evidenced by the downregulation of mRNA expression in the IL-17 pathway and reduced serum tumor necrosis factor-α levels.

Conclusion

This study demonstrates the utility of a novel ML-based system for identifying therapeutic targets, as shown by its successful application in uncovering the role of DRD2 in psoriasis. Beyond psoriasis, this system offers significant potential for exploring pathological mechanisms and discovering therapeutic targets across various diseases.
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CiteScore
7.60
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