A review of the use of machine learning in predictive analytics for patient health outcomes in pharmacy practice

Ehizogie Paul Adeghe, Chioma Anthonia Okolo, Olumuyiwa Tolulope Ojeyinka
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Abstract

Predictive analytics, empowered by machine learning, has emerged as a transformative force in healthcare, offering unparalleled opportunities for enhancing patient outcomes. The primary focus is on understanding the implications, applications, and challenges associated with the use of machine learning algorithms in predicting patient health outcomes. The paper begins by establishing the context with an overview of predictive analytics in healthcare and its evolution. Emphasis is placed on the critical role of patient health outcomes in pharmacy practice. The review explores the current landscape of predictive analytics in pharmacy practice, detailing traditional approaches, their limitations, and the advantages that machine learning brings to the forefront. An in-depth examination of applications follows, focusing on areas such as medication adherence prediction, disease progression modeling, and personalized medication regimens. Real-world case studies and success stories illustrate the practical impact of machine learning on patient outcomes. Addressing the importance of data sources, the paper discusses the diverse types of data employed in predictive analytics, ranging from electronic health records to patient-generated data and wearables. Ethical and privacy concerns are thoroughly explored, emphasizing the need for responsible data usage. The implications for pharmacists and healthcare providers are discussed, highlighting the evolving role of pharmacists in predictive analytics and the potential benefits and challenges for healthcare providers. The conclusion summarizes key findings and issues a call to action, encouraging further research and adoption of machine learning in pharmacy practice to harness its potential for improving patient outcomes.
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机器学习在药学实践中预测分析患者健康结果的应用综述
在机器学习的推动下,预测分析已成为医疗保健领域的一股变革力量,为提高患者的治疗效果提供了无与伦比的机会。本文的主要重点是了解与使用机器学习算法预测患者健康结果相关的影响、应用和挑战。本文首先通过概述医疗保健领域的预测分析及其演变来建立背景。重点强调了患者健康结果在药学实践中的关键作用。综述探讨了预测分析在药学实践中的现状,详细介绍了传统方法、其局限性以及机器学习带来的优势。随后对应用进行了深入探讨,重点关注用药依从性预测、疾病进展建模和个性化用药方案等领域。真实世界的案例研究和成功故事说明了机器学习对患者治疗效果的实际影响。针对数据源的重要性,本文讨论了预测分析中使用的各种类型的数据,包括电子健康记录、患者生成的数据和可穿戴设备。论文深入探讨了伦理和隐私问题,强调了负责任地使用数据的必要性。讨论了对药剂师和医疗服务提供者的影响,强调了药剂师在预测分析中不断演变的角色,以及对医疗服务提供者的潜在益处和挑战。结论总结了主要发现,并发出行动呼吁,鼓励在药学实践中进一步研究和采用机器学习,以利用其改善患者预后的潜力。
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