Advancing clinical decision support: The role of artificial intelligence across six domains

Mohamed Khalifa , Mona Albadawy , Usman Iqbal
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Abstract

Background

Artificial Intelligence (AI) is a transformative force in clinical decision support (CDS) systems within healthcare. Its emergence, fuelled by the growing volume and diversity of healthcare data, offers significant potential in patient care, diagnosis, treatment, and health management. This study systematically reviews AI's role in enhancing CDS across six domains, underscoring its impact on patient outcomes and healthcare efficiency.

Methods

A four-step systematic review was conducted, involving a comprehensive literature search, application of inclusion and exclusion criteria, data extraction and synthesis, and analysis. Sources included PubMed, Embase, and Google Scholar, with papers published in English since 2019. Selected studies focused on AI's application in CDS, with 32 papers ultimately reviewed.

Results

The review identified six AI CDS domains: Data-Driven Insights and Analytics, Diagnostic and Predictive Modelling, Treatment Optimisation and Personalised Medicine, Patient Monitoring and Telehealth Integration, Workflow and Administrative Efficiency, and Knowledge Management and Decision Support. Each domain is crucial in improving various aspects of CDS, from enhancing diagnostic accuracy to optimising resource management. AI's capabilities in EHR analysis, predictive analytics, personalised treatment, and telehealth demonstrate its critical role in advancing healthcare.

Discussion

AI significantly enhances healthcare by improving diagnostic precision, predictive capabilities, and administrative efficiency. It facilitates personalised medicine, remote monitoring, and evidence-based decision-making. However, challenges such as data privacy, ethical considerations, and integration with existing systems persist. This requires collaboration among technologists, healthcare professionals, and policymakers.

Conclusion

AI is revolutionising healthcare by enhancing CDS in several domains, contributing to more efficient, effective, and patient-centric care. However, it should complement, not replace, human expertise. Future directions include ethical AI development, continuous professional development for healthcare personnel, and collaborative efforts to address challenges. This approach ensures AI's potential is fully harnessed, leading to a synergistic blend of technology and human care.

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推进临床决策支持:人工智能在六个领域的作用
背景人工智能(AI)是医疗保健领域临床决策支持系统(CDS)的变革力量。随着医疗数据量和多样性的不断增长,人工智能的出现为患者护理、诊断、治疗和健康管理提供了巨大的潜力。本研究系统性地回顾了人工智能在六个领域加强CDS方面的作用,强调了其对患者预后和医疗效率的影响。研究方法进行了四步系统性回顾,包括全面的文献检索、纳入和排除标准的应用、数据提取和综合以及分析。文献来源包括 PubMed、Embase 和 Google Scholar,收录了自 2019 年以来发表的英文论文。所选研究侧重于人工智能在 CDS 中的应用,最终审查了 32 篇论文。结果审查确定了六个人工智能 CDS 领域:数据驱动的洞察和分析、诊断和预测建模、治疗优化和个性化医疗、患者监测和远程医疗整合、工作流程和管理效率以及知识管理和决策支持。从提高诊断准确性到优化资源管理,每个领域对于改善 CDS 的各个方面都至关重要。人工智能在电子病历分析、预测分析、个性化治疗和远程医疗方面的能力,证明了它在推进医疗保健方面的关键作用。它促进了个性化医疗、远程监控和循证决策。然而,数据隐私、伦理考虑以及与现有系统集成等挑战依然存在。结语人工智能正在通过增强多个领域的 CDS 来彻底改变医疗保健,从而促进更高效、有效和以患者为中心的医疗保健。然而,人工智能应该补充而不是取代人类的专业知识。未来的方向包括合乎道德的人工智能发展、医疗保健人员的持续专业发展以及应对挑战的合作努力。这种方法可确保充分发挥人工智能的潜力,实现技术与人类护理的协同融合。
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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5.90
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0.00%
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审稿时长
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