Automation in pharmacovigilance: artificial intelligence and machine learning for patient safety

C. V., D. P, Susmita A, S. P, Ramya Ch, Chandini K
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Abstract

Automation promises to be a game- change for pharmacovigilance decreasing the cost of case reporting and improving data quality to truly add value, including signal detection in drug safety. Pharmacovigilance analytic and benefit – risk assessment.Technology advances are playing a major role in pharmaceutical PV strategy updates. For example more companies are looking towards cloud- based solutions, mobile applications, robotic automation, artificial intelligence and big data analytics as a vital part of clinical safety and regulatory operations in the pharmaceutical industry. Applying innovative technology automation tools and processes to PV strategies is now a critical requirement for managing the safety of pharmaceutical products. The role of artificial intelligence and machine learning in pharmacovigilance can enhance the productivity in identification, detection, management and reporting of ADRs. The main objective ofArtificial intelligence is meant to challenges to implementing intelligent automatic solutions include finding / having appropriate training data for machine learning models and the need for harmonised regulatory guidance. AI can analyse and interpret data at lightning speed, never gets tried or sick and can simply work by 24/7. Thousands of adverse effects are processed every month by ICSR in PV that incudes native automation and standalone technologies like AI and ML that reduce the manual effort.
药物警戒中的自动化:用于患者安全的人工智能和机器学习
自动化有望改变药物警戒的游戏规则,降低病例报告的成本,提高数据质量,真正增加价值,包括药物安全的信号检测。药物警戒分析和获益-风险评估。技术进步在制药光伏战略更新中发挥着重要作用。例如,越来越多的公司将基于云的解决方案、移动应用、机器人自动化、人工智能和大数据分析作为制药行业临床安全和监管操作的重要组成部分。将创新技术自动化工具和流程应用于PV策略现在是管理药品安全的关键要求。人工智能和机器学习在药物警戒中的作用可以提高adr的识别、检测、管理和报告的生产力。人工智能的主要目标是解决实现智能自动化解决方案的挑战,包括为机器学习模型找到/拥有适当的训练数据,以及需要统一的监管指导。人工智能可以以闪电般的速度分析和解释数据,永远不会疲倦或生病,而且可以全天候工作。ICSR每个月都要处理成千上万的光伏不利影响,其中包括本地自动化和独立技术,如AI和ML,减少了人工工作量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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