Artificial intelligence for diabetes: Enhancing prevention, diagnosis, and effective management

Mohamed Khalifa , Mona Albadawy
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Abstract

Introduction

Diabetes, a major cause of premature mortality and complications, affects millions globally, with its prevalence increasing due to lifestyle factors and aging populations. This systematic review explores the role of Artificial Intelligence (AI) in enhancing the prevention, diagnosis, and management of diabetes, highlighting the potential for personalised and proactive healthcare.

Methods

A structured four-step method was used, including extensive literature searches, specific inclusion and exclusion criteria, data extraction from selected studies focusing on AI's role in diabetes, and thorough analysis to identify specific domains and functions where AI contributes significantly.

Results

Through examining 43 experimental studies, AI has been identified as a transformative force across eight key domains in diabetes care: 1) Diabetes Management and Treatment, 2) Diagnostic and Imaging Technologies, 3) Health Monitoring Systems, 4) Developing Predictive Models, 5) Public Health Interventions, 6) Lifestyle and Dietary Management, 7) Enhancing Clinical Decision-Making, and 8) Patient Engagement and Self-Management. Each domain showcases AI's potential to revolutionize care, from personalizing treatment plans and improving diagnostic accuracy to enhancing patient engagement and predictive healthcare.

Discussion

AI's integration into diabetes care offers personalised, efficient, and proactive solutions. It enhances care accuracy, empowers patients, and provides better understanding of diabetes management. However, the successful implementation of AI requires continued research, data security, interdisciplinary collaboration, and a focus on patient-centered solutions. Education for healthcare professionals and regulatory frameworks are also crucial to address challenges like algorithmic bias and ethics.

Conclusion and Recommendations

AI in diabetes care promises improved health outcomes and quality of life through personalised and proactive healthcare. Future efforts should focus on continued investment, ensuring data security, fostering interdisciplinary collaboration, and prioritizing patient-centered solutions. Regular monitoring and evaluation are essential to adjust strategies and understand long-term impacts, ensuring AI's ethical and effective integration into healthcare.

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人工智能治疗糖尿病:加强预防、诊断和有效管理
导言糖尿病是导致过早死亡和并发症的一个主要原因,影响着全球数百万人,其患病率因生活方式因素和人口老龄化而不断增加。本系统性综述探讨了人工智能(AI)在加强糖尿病预防、诊断和管理方面的作用,强调了个性化和前瞻性医疗保健的潜力。方法采用了结构化的四步方法,包括广泛的文献检索、特定的纳入和排除标准、从选定的关注人工智能在糖尿病中作用的研究中提取数据,以及进行全面分析,以确定人工智能在哪些特定领域和功能中做出了重大贡献。结果通过研究 43 项实验研究,发现人工智能在糖尿病护理的八个关键领域发挥着变革性作用:1)糖尿病管理和治疗;2)诊断和成像技术;3)健康监测系统;4)开发预测模型;5)公共卫生干预;6)生活方式和饮食管理;7)加强临床决策。加强临床决策,以及 8) 患者参与和自我管理。从个性化治疗方案和提高诊断准确性,到加强患者参与和预测性医疗保健,每个领域都展示了人工智能彻底改变医疗保健的潜力。人工智能与糖尿病护理的结合提供了个性化、高效和积极主动的解决方案,它提高了护理的准确性,增强了患者的能力,并让患者更好地了解糖尿病管理。然而,人工智能的成功实施需要持续的研究、数据安全、跨学科合作以及以患者为中心的解决方案。结论与建议 人工智能在糖尿病护理中的应用有望通过个性化和主动式医疗保健改善健康结果和生活质量。未来的工作重点应放在持续投资、确保数据安全、促进跨学科合作以及优先考虑以患者为中心的解决方案上。定期监测和评估对于调整战略和了解长期影响至关重要,可确保人工智能符合道德规范并有效地融入医疗保健。
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CiteScore
5.90
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审稿时长
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