人工智能在药物开发中的作用

Aditya Narayan, Arsh Chanana, Oma Shanker, Yukta R. Kulkarni, Pooja Gupta, Akhilesh Patel, Ujwal Havelikar, Ravindra Pal Singh, H. Chawra
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引用次数: 0

摘要

人工智能是当前科技和医疗保健行业最热门的领域之一。在寻找和开发新药的过程中,人工智能是必不可少的。使用计算机辅助设计(CADD)进行药物设计已经取代了传统方法。人工智能正在协助企业以更快、更实惠、更高效的方式开发新药,在创造治疗任何疾病的新药物分子的过程中节省资金和人力。定量结构-活性关系(QSAR)分析、活性评分、硅学测试、生物标记开发和作用模式识别都离不开人工智能的帮助。人工智能通过快速识别潜在候选药物、高效开展临床试验和定制病人护理,正在彻底改变这些领域。人工智能优化了药品生产流程,增强了安全性监测,并简化了市场分析。在临床试验中,人工智能可简化患者招募,确保更精确的试验设计,从而实现更快、更高效的研究。人工智能可根据患者的个体特征量身定制治疗方案和药物剂量,从而实现个性化医疗。人工智能还能优化制药流程,通过分析不良事件的实时数据加强安全监控,并支持市场分析和销售策略。制药行业的人工智能是一个多面手。人工智能有可能简化复杂的制药监管事务。利用人工智能工具,审计和档案填写等监管流程可以实现自动化。
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Role of Artificial Intelligence in Pharmaceutical Drug Development
One of the most popular sectors in the tech and healthcare industries right now is artificial intelligence. In the search and development of new drugs, artificial intelligence is essential. Drug design using computer-assisted design (CADD) has supplanted the traditional approach. Artificial intelligence is assisting businesses in the development of new drugs in a faster, more affordable, and more efficient manner, saving money and manpower in the process of creating new drug molecules to treat any disease. Quantitative structure-activity relationship (QSAR) analysis, activity scoring, in silico testing, biomarker development, and mode of action identification are all aided by artificial intelligence. It is revolutionizing these sectors by swiftly identifying potential drug candidates, efficiently conducting clinical trials, and customizing patient care. AI optimizes drug manufacturing processes, augments safety monitoring, and streamlines market analysis. In clinical trials, AI streamlines patient recruitment and ensures more precise trial designs, leading to faster and more efficient research. AI empowers personalized medicine by tailoring treatment plans and drug dosages to individual patient characteristics. AI also optimizes pharmaceutical manufacturing processes, amplifies safety monitoring by analyzing real-time data for adverse events, and supports market analysis and sales strategies. AI in the pharmaceutical industry is a multifaceted tool. Artificial Intelligence (AI) has the potential to streamline complex pharmaceutical regulatory matters. Regulatory processes like audits and dossier completion can be automated with AI tools.
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