de Franciscis Stefano, Fregola Salvatore, Gallo Alessandro, Argirò Giuseppe, Barbetta Andrea, Buffone Gianluca, Caliò Francesco G, De Caridi Giovanni, Amato Bruno, Serra Raffaele
Interuniversity Center of Phlebolymphology (CIFL), International Research and Educational Program in Clinical and Experimental Biotechnology, University Magna Graecia of Catanzaro, Catanzaro, Italy.
Department of Medical and Surgical Sciences, University of Catanzaro, Catanzaro, Italy.
Int Wound J. 2016 Dec;13(6):1349-1353. doi: 10.1111/iwj.12529. Epub 2015 Nov 6.
Chronic leg ulcers (CLUs) are a common occurrence in the western population and are associated with a negative impact on the quality of life of patients. They also cause a substantial burden on the health budget. The pathogenesis of leg ulceration is quite heterogeneous, and chronic venous ulceration (CVU) is the most common manifestation representing the main complication of chronic venous disease (CVD). Prevention strategies and early identification of the risk represent the best form of management. Fuzzy logic is a flexible mathematical system that has proved to be a powerful tool for decision-making systems and pattern classification systems in medicine. In this study, we have elaborated a computerised prediction system for chronic leg ulcers (PredyCLU) based on fuzzy logic, which was retrospectively applied on a multicentre population of 77 patients with CVD. This evaluation system produced reliable risk score patterns and served effectively as a stratification risk tool in patients with CVD who were at the risk of developing CVUs.
慢性腿部溃疡(CLUs)在西方人群中很常见,对患者的生活质量有负面影响。它们还给健康预算带来沉重负担。腿部溃疡的发病机制非常复杂,慢性静脉溃疡(CVU)是最常见的表现形式,是慢性静脉疾病(CVD)的主要并发症。预防策略和风险的早期识别是最佳的管理方式。模糊逻辑是一种灵活的数学系统,已被证明是医学决策系统和模式分类系统的强大工具。在本研究中,我们基于模糊逻辑开发了一种慢性腿部溃疡计算机预测系统(PredyCLU),该系统被回顾性应用于77例CVD多中心患者群体。该评估系统产生了可靠的风险评分模式,并有效地作为有发生CVU风险的CVD患者的分层风险工具。