医学
截肢
退伍军人事务部
糖尿病足
人口
多项式logistic回归
物理疗法
糖尿病
物理医学与康复
外科
内科学
计算机科学
环境卫生
机器学习
内分泌学
作者
Lyndsay M. O’Hara,Alison Lydecker,Gwen Robinson,Nathan N. O’Hara,Justin Kim,Alyson J. Littman,Brian M. Schmidt,Odessa Addison,David J. Margolis,Mary‐Claire Roghmann
出处
期刊:Diabetes Care
[American Diabetes Association]
日期:2025-07-03
摘要
OBJECTIVE Diabetic foot ulcers (DFUs) often lead to amputations. Limb salvage aims to preserve the lower extremity, but the complexity of care and uncertainty of healing can delay patients’ return to normal activities. This study aimed to understand military veterans’ preferences regarding limb salvage for DFUs, using a discrete choice experiment (DCE). RESEARCH DESIGN AND METHODS A DCE was conducted with 98 veterans with diabetes at the Baltimore Veterans Affairs Medical Center. Participants were presented with 10 choice sets involving different levels of postrecovery mobility, amputation levels, and future surgery risks. These attributes were developed through literature review and interviews. Data were analyzed using a multinomial logit model to estimate the utility of each attribute level and assess preference heterogeneity. RESULTS The study population was older (mean age 69 years), Black (61%), and male (94%). Half (53%) had a prior foot complication. Postrecovery mobility was the most important attribute (relative importance 53%), followed by amputation level (30%) and future surgery risk (18%). Veterans valued mobility highly, with significant utility differences between walking unaided and needing a wheelchair or scooter. They were willing to accept higher amputation levels to improve mobility. CONCLUSIONS Postrecovery mobility is a critical factor for veterans with DFUs, outweighing concerns about amputation level and future surgical risks. It should be a focus of shared decision-making. The study is limited by its single-site setting and study population. Broader research is needed. Understanding patient preferences through DCE can inform more patient-centered approaches to DFU management, potentially improving outcomes and satisfaction.
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