Eldaly Abdullah S, Avila Francisco R, Torres-Guzman Ricardo A, Maita Karla, Garcia John P, Serrano Luiza Palmieri, Forte Antonio J
Division of Plastic Surgery, Mayo Clinic, Jacksonville, Florida.
J Clin Transl Res. 2022 Jun 1;8(3):234-242. eCollection 2022 Jun 29.
Lymphedema practice is facing many challenges. Some of these challenges include eradication of tropical lymphedema, preclinical diagnosis of cancer-related lymphedema, and delivery of appropriate individualized care. The past two decades have witnessed an increasing implementation of artificial intelligence (AI) in health-care services. The nature of the challenges facing the lymphedema practice is suitable for AI applications.
The aim of this study was to explore the current AI applications in lymphedema prevention, diagnosis, and management and investigate the potential future applications.
Four databases were searched: PubMed, Scopus, Web of Science, and EMBASE. We used the Preferred Reporting Items for Systematic Reviews and Meta-Analysis as our basis of organization. Our analysis showed that several domains of AI, including machine learning (ML), fuzzy models, deep learning, and robotics, were successfully implemented in lymphedema practice. ML can guide the eradication campaigns of tropical lymphedema by estimating disease prevalence and mapping the risk areas. Robotic-assisted surgery for gynecological cancer was associated with a lower risk for the lower limb lymphedema. Several feasible models were described for the early detection and diagnosis of lymphedema. The proposed models are more accurate, sensitive, and specific than current methods in practice. ML was also used to guide and monitor patients during the rehabilitation exercises.
AI offers a variety of solutions to the most challenging problems in lymphedema practice. Further, implementation into the practice can revolutionize many aspects of lymphedema prevention, diagnosis, and management.
Lymphedema is a chronic debilitating disease that is affecting millions of patients. Developing new modalities for prevention, early diagnosis, and treatment are critical to improve the outcomes. AI offers a variety of solutions for some of the complexities of lymphedema management. In this systematic review, we summarize and discuss the latest AI advances in lymphedema practice.
淋巴水肿治疗面临诸多挑战。其中一些挑战包括根除热带淋巴水肿、癌症相关淋巴水肿的临床前诊断以及提供适当的个性化护理。在过去二十年中,人工智能(AI)在医疗保健服务中的应用日益增加。淋巴水肿治疗所面临挑战的性质适合人工智能应用。
本研究旨在探索人工智能在淋巴水肿预防、诊断和管理中的当前应用,并调查其未来的潜在应用。
检索了四个数据库:PubMed、Scopus、科学网和EMBASE。我们以系统评价和Meta分析的首选报告项目为组织依据。我们的分析表明,人工智能的几个领域,包括机器学习(ML)、模糊模型、深度学习和机器人技术,已成功应用于淋巴水肿治疗。机器学习可以通过估计疾病患病率和绘制风险区域来指导热带淋巴水肿的根除运动。妇科癌症的机器人辅助手术与下肢淋巴水肿风险较低相关。描述了几种用于淋巴水肿早期检测和诊断的可行模型。所提出的模型在实践中比当前方法更准确、更敏感、更具特异性。机器学习还用于在康复锻炼期间指导和监测患者。
人工智能为淋巴水肿治疗中最具挑战性的问题提供了多种解决方案。此外,将其应用于实践可以彻底改变淋巴水肿预防、诊断和管理的许多方面。
淋巴水肿是一种慢性衰弱性疾病,影响着数百万患者。开发新的预防、早期诊断和治疗方法对于改善治疗效果至关重要。人工智能为淋巴水肿管理的一些复杂性提供了多种解决方案。在本系统评价中,我们总结并讨论了淋巴水肿治疗中人工智能的最新进展。