通过机器学习技术推进医疗事务能力和洞察生成。

IF 3.3 Q1 HEALTH POLICY & SERVICES Journal of Pharmaceutical Policy and Practice Pub Date : 2023-12-01 DOI:10.1186/s40545-023-00670-w
Karen Ka Yan Ng, Peter Chengming Zhang
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引用次数: 0

摘要

背景:制药公司越来越多地利用机器学习技术来优化医疗保健研究、药物开发和医疗事务活动。AI(人工智能)工具,如聊天机器人、虚拟数字助理和研究工具,已经在消费品或软件技术等行业得到了不同程度的成熟探索。然而,在制药行业中仍然存在未开发的机会,可以利用这些技术加强与医疗保健专业人员(hcp)的接触和教育。药剂师处于临床科学和创新的十字路口,有潜力通过开发和利用这些技术来提升他们在制药行业中的作用和意义。方法:为了解决这个问题,python编码的工具,医疗信息(MI)数据用于人工智能语义分析(MUFASA),利用了最先进的句子转换库,聚类和可视化技术。MUFASA利用人工智能技术利用主动提供的MI数据,提高效率,并为有针对性的内容交付提供可操作的医疗事务情报。结果:MUFASA通过其独特的功能:语义搜索、聚类分析和可视化,优化了医疗事务活动。通过三维矢量映射和聚类测试,它能够熟练地理解查询,从而提高了MI和医学科学联络(MSL)案件处理的效率。事实证明,它在培训新员工、增强响应一致性和降低合规风险方面是无价的。利用HDBSCAN算法,MUFASA的聚类分析揭示了深刻的见解,并从大型查询数据集中识别出可操作的主题。从语义搜索生成的可视化图形通过跟踪计划的有效性和监视趋势变化来支持基于证据的决策。总的来说,MUFASA丰富了战略决策,培养了可操作的见解,并加强了医疗保健专业人员的参与。结论:在医疗保健和数据科学的交叉领域有许多创新的机会。制药商的医疗事务职责之一是收集未经请求的咨询,特别是来自hcp的咨询,他们随时准备利用机器学习功能来优化其流程。越来越多的人努力以有意义的方式使用这些数据,从而产生了丰富的数据,这为制药公司利用机器学习技术提供了机会。
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Advancing medical affair capabilities and insight generation through machine learning techniques.

Background: Pharmaceutical companies are increasingly leveraging machine learning techniques to optimize healthcare research, drug development, and medical affairs activities. AI (artificial intelligence) tools such as chatbots, virtual digital assistants, and research tools have been explored to varying degrees of maturity in industries such as consumer goods or software technology. However, there continues to be untapped opportunities within the pharmaceutical industry to employ these technologies for enhanced engagement and education with healthcare professionals (HCPs). Pharmacists, situated at the crossroads of clinical sciences and innovation, have the potential to elevate their role and significance within the pharmaceutical industry by developing and leveraging such technologies.

Methods: To address this, the python-coded tool, Medical Information (MI) Data Uses For AI Semantic Analysis (MUFASA), utilizes state-of-the-art Sentence Transformer library, clustering, and visualization techniques. MUFASA harnesses unsolicited MI data with AI technology, improving efficiency and providing actionable medical affairs intelligence for targeted content delivery to HCPs.

Results: MUFASA optimizes medical affairs activities through its distinctive features: semantic search, cluster analysis, and visualization. Its proficiency in understanding inquiries, as demonstrated through 3D vector mapping and clustering tests, enhances the efficiency of MI and Medical Science Liaison (MSL) case handling. It proves invaluable in training new staff, bolstering response uniformity, and mitigating compliance risks. Leveraging the HDBSCAN algorithm, MUFASA's cluster analysis uncovers deep insights and discerns actionable themes from large inquiry data sets. The visualization graphs, generated from semantic searches, support evidence-based decisions by tracking the effectiveness of initiatives and monitoring trend shifts. Collectively, MUFASA enriches strategic decision-making, cultivates actionable insights, and bolsters healthcare professional engagement.

Conclusion: There are numerous opportunities for innovation within the intersection of healthcare and data science. Pharmaceutical manufacturers, with one of their medical affairs responsibilities being the collection of unsolicited inquiries, particularly from HCPs, stand poised to leverage machine learning capabilities to optimize its processes. The abundance of data generated by the growing effort to use it in meaningful ways presents an opportunity for pharmaceutical companies to harness machine learning techniques.

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来源期刊
Journal of Pharmaceutical Policy and Practice
Journal of Pharmaceutical Policy and Practice Health Professions-Pharmacy
CiteScore
4.70
自引率
9.50%
发文量
81
审稿时长
14 weeks
期刊最新文献
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