翻译信息学驱动的神经退行性疾病药物重新定位。

IF 4.8 2区 医学 Q1 NEUROSCIENCES
Xin Zheng, Jing Chen, Yuxin Zhang, Shanshan Hu, Cheng Bi, Rajeev K Singla, Mohammad Amjad Kamal, Katsuhisa Horimoto, Bairong Shen
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引用次数: 0

摘要

神经退行性疾病是年龄相关疾病的一个普遍类别。随着人类寿命的延长和社会老龄化的加剧,神经退行性疾病对公众健康构成越来越大的威胁。缺乏有效的治疗药物对常见和罕见的神经退行性疾病放大了他们目前的医疗挑战。目前对这些疾病的治疗主要提供症状缓解,而不是治愈,强调迫切需要制定有效的治疗干预措施。药物重新定位是一种创新的数据驱动的研究和开发方法,它提出对现有药物进行重新评估,以便在新的治疗领域中应用。在人工智能快速发展和医疗数据迅速积累的推动下,药物重新定位已成为一种有希望的药物发现途径。这篇综述通过翻译信息学的视角全面考察了神经退行性疾病的药物重新定位,包括数据源、计算模型和临床应用。初步对药品再定位相关数据库和网络平台进行系统化,注重数据资源管理和标准化。随后,我们从药物-药物、药物靶点和药物-疾病相互作用的角度将药物重新定位的计算模型分为机器学习、深度学习和基于网络的方法等类别。最后,我们强调了目前在神经退行性疾病研究中使用的计算模型,并确定了具有未来药物重新定位潜力的数据库。在人工智能时代,药物重新定位作为一种数据驱动的策略,为开发适合神经退行性疾病复杂性和多面性的治疗方法提供了一条有前途的途径。这些进步可以为患者提供更快速、更具成本效益的治疗选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Translational Informatics Driven Drug Repositioning for Neurodegenerative Disease.

Neurodegenerative diseases represent a prevalent category of age-associated diseases. As human lifespans extend and societies become increasingly aged, neurodegenerative diseases pose a growing threat to public health. The lack of effective therapeutic drugs for both common and rare neurodegenerative diseases amplifies the medical challenges they present. Current treatments for these diseases primarily offer symptomatic relief rather than a cure, underscoring the pressing need to develop efficacious therapeutic interventions. Drug repositioning, an innovative and data-driven approach to research and development, proposes the re-evaluation of existing drugs for potential application in new therapeutic areas. Fueled by rapid advancements in artificial intelligence and the burgeoning accumulation of medical data, drug repositioning has emerged as a promising pathway for drug discovery. This review comprehensively examines drug repositioning for neurodegenerative diseases through the lens of translational informatics, encompassing data sources, computational models, and clinical applications. Initially, we systematized drug repositioning-related databases and online platforms, focusing on data resource management and standardization. Subsequently, we classify computational models for drug repositioning from the perspectives of drug-drug, drug-target, and drug-disease interactions into categories such as machine learning, deep learning, and networkbased approaches. Lastly, we highlight computational models presently utilized in neurodegenerative disease research and identify databases that hold potential for future drug repositioning efforts. In the artificial intelligence era, drug repositioning, as a data-driven strategy, offers a promising avenue for developing treatments suited to the complex and multifaceted nature of neurodegenerative diseases. These advancements could furnish patients with more rapid, cost-effective therapeutic options.

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来源期刊
Current Neuropharmacology
Current Neuropharmacology 医学-神经科学
CiteScore
8.70
自引率
1.90%
发文量
369
审稿时长
>12 weeks
期刊介绍: Current Neuropharmacology aims to provide current, comprehensive/mini reviews and guest edited issues of all areas of neuropharmacology and related matters of neuroscience. The reviews cover the fields of molecular, cellular, and systems/behavioural aspects of neuropharmacology and neuroscience. The journal serves as a comprehensive, multidisciplinary expert forum for neuropharmacologists and neuroscientists.
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