Drug repositioning for Parkinson’s disease: An emphasis on artificial intelligence approaches

IF 12.5 1区 医学 Q1 CELL BIOLOGY
Iman Karimi-Sani , Mehrdad Sharifi , Nahid Abolpour , Mehrzad Lotfi , Amir Atapour , Mohammad-Ali Takhshid , Amirhossein Sahebkar
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引用次数: 0

Abstract

Parkinson’s disease (PD) is one of the most incapacitating neurodegenerative diseases (NDDs). PD is the second most common NDD worldwide which affects approximately 1–2 percent of people over 65 years. It is an attractive pursuit for artificial intelligence (AI) to contribute to and evolve PD treatments through drug repositioning by repurposing existing drugs, shelved drugs, or even candidates that do not meet the criteria for clinical trials. A search was conducted in three databases Web of Science, Scopus, and PubMed. We reviewed the data related to the last years (1975-present) to identify those drugs currently being proposed for repositioning in PD. Moreover, we reviewed the present status of the computational approach, including AI/Machine Learning (AI/ML)-powered pharmaceutical discovery efforts and their implementation in PD treatment. It was found that the number of drug repositioning studies for PD has increased recently. Repositioning of drugs in PD is taking off, and scientific communities are increasingly interested in communicating its results and finding effective treatment alternatives for PD. A better chance of success in PD drug discovery has been made possible due to AI/ML algorithm advancements. In addition to the experimentation stage of drug discovery, it is also important to leverage AI in the planning stage of clinical trials to make them more effective. New AI-based models or solutions that increase the success rate of drug development are greatly needed.
帕金森病的药物重新定位:强调人工智能方法。
帕金森病(PD)是最严重的神经退行性疾病(ndd)之一。PD是世界上第二大最常见的NDD,影响了大约1%到2%的65岁以上的人。人工智能(AI)通过重新定位现有药物、搁置药物甚至不符合临床试验标准的候选药物,为PD治疗做出贡献和发展,这是一个有吸引力的追求。在Web of Science、Scopus和PubMed三个数据库中进行了搜索。我们回顾了过去几年(1975年至今)的相关数据,以确定目前建议用于PD重新定位的药物。此外,我们回顾了计算方法的现状,包括人工智能/机器学习(AI/ML)驱动的药物发现工作及其在PD治疗中的实施。近年来,PD药物重新定位研究的数量有所增加。帕金森氏症药物的重新定位正在起飞,科学界越来越有兴趣交流其结果并寻找有效的帕金森氏症治疗方案。由于AI/ML算法的进步,PD药物发现的成功机会更大。除了药物发现的实验阶段,在临床试验的规划阶段利用人工智能来使其更有效也很重要。迫切需要新的基于人工智能的模型或解决方案,以提高药物开发的成功率。
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来源期刊
Ageing Research Reviews
Ageing Research Reviews 医学-老年医学
CiteScore
19.80
自引率
2.30%
发文量
216
审稿时长
55 days
期刊介绍: With the rise in average human life expectancy, the impact of ageing and age-related diseases on our society has become increasingly significant. Ageing research is now a focal point for numerous laboratories, encompassing leaders in genetics, molecular and cellular biology, biochemistry, and behavior. Ageing Research Reviews (ARR) serves as a cornerstone in this field, addressing emerging trends. ARR aims to fill a substantial gap by providing critical reviews and viewpoints on evolving discoveries concerning the mechanisms of ageing and age-related diseases. The rapid progress in understanding the mechanisms controlling cellular proliferation, differentiation, and survival is unveiling new insights into the regulation of ageing. From telomerase to stem cells, and from energy to oxyradical metabolism, we are witnessing an exciting era in the multidisciplinary field of ageing research. The journal explores the cellular and molecular foundations of interventions that extend lifespan, such as caloric restriction. It identifies the underpinnings of manipulations that extend lifespan, shedding light on novel approaches for preventing age-related diseases. ARR publishes articles on focused topics selected from the expansive field of ageing research, with a particular emphasis on the cellular and molecular mechanisms of the aging process. This includes age-related diseases like cancer, cardiovascular disease, diabetes, and neurodegenerative disorders. The journal also covers applications of basic ageing research to lifespan extension and disease prevention, offering a comprehensive platform for advancing our understanding of this critical field.
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