HARTMANN GROUP, Heidenheim, Germany.
Institute of Public Health, Medical Decision Making and HTA, UMIT, Hall in Tirol, Austria.
Adv Wound Care (New Rochelle). 2023 Jul;12(7):387-398. doi: 10.1089/wound.2022.0017. Epub 2022 Nov 1.
Chronic wounds are associated with significant morbidity, marked loss of quality of life, and considerable economic burden. Evidence-based risk prediction to guide improved wound prevention and treatment is limited by the complexity in their etiology, clinical underreporting, and a lack of studies using large high-quality datasets. The objective of this review is to summarize key components and challenges in the development of personalized risk prediction tools for both prevention and management of chronic wounds, while highlighting several innovations in the development of better risk stratification. Regression-based risk prediction approaches remain important for assessment of prognosis and risk stratification in chronic wound management. Advances in statistical computing have boosted the development of several promising machine learning (ML) and other semiautomated classification tools. These methods may be better placed to handle large number of wound healing risk factors from large datasets, potentially resulting in better risk prediction when combined with conventional methods and clinical experience and expertise. Where the number of predictors is large and heterogenous, the correlations between various risk factors complex, and very large data sets are available, ML may prove a powerful adjuvant for risk stratifying patients predisposed to chronic wounds. Conventional regression-based approaches remain important, particularly where the number of predictors is relatively small. Translating estimated risk derived from ML algorithms into practical prediction tools for use in clinical practice remains challenging.
慢性伤口与显著的发病率、生活质量明显下降和相当大的经济负担有关。基于证据的风险预测可以指导改善伤口预防和治疗,但受到其病因的复杂性、临床报告不足以及缺乏使用大型高质量数据集的研究的限制。本综述的目的是总结用于慢性伤口预防和管理的个性化风险预测工具的开发中的关键组成部分和挑战,同时强调在改善风险分层方面的一些创新。基于回归的风险预测方法仍然是慢性伤口管理中评估预后和风险分层的重要方法。统计计算的进步促进了几种有前途的机器学习 (ML) 和其他半自动分类工具的发展。当与传统方法和临床经验与专业知识相结合时,这些方法可能更适合处理来自大型数据集的大量伤口愈合风险因素,从而可能实现更好的风险预测。当预测因子数量较多且异质、各种风险因素之间的相关性复杂且可用的数据集非常大时,机器学习可能被证明是对易患慢性伤口的患者进行风险分层的有力辅助手段。基于回归的传统方法仍然很重要,特别是在预测因子数量相对较少的情况下。将从 ML 算法中得出的估计风险转化为用于临床实践的实用预测工具仍然具有挑战性。