使用分类和回归树预测住院糖尿病足患者下肢截肢的模型

IF 1.9 3区 医学 Q2 ORTHOPEDICS
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引用次数: 0

摘要

背景决定对糖尿病足溃疡(DFU)患者实施截肢手术并非易事。预测模型旨在帮助外科医生做出决策。方法利用两个骨科和创伤科现有的数据库,对住院治疗糖尿病足溃疡患者的回顾性队列数据进行分类和回归树分析。结果 在数据库中的 573 名患者中,有 290 名患者在住院的前 30 天内进行了下肢截肢。利用损失矩阵建立了六个不同的模型,以评估未检测到假阴性的误差。选定的树产生了 13 个末端节点,经过修剪后,最优树中只剩下一个分部(灵敏度:69%,特异度:75%,曲线下面积:0.76,复杂度参数:0.75):0.76,复杂度参数:0.01,误差:0.85):0.85).结论瓦格纳分级是预测 30 天内截肢的最佳变量。该分级间接描述了感染状态和血管闭塞情况,反映了对这两种情况较严重的患者迅速做出决定的重要性。最后,还需要对模型进行外部验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction model for lower limb amputation in hospitalized diabetic foot patients using classification and regression trees

Background

The decision to perform amputation of a limb in a patient with diabetic foot ulcer (DFU) is not an easy task. Prediction models aim to help the surgeon in decision making scenarios. Currently there are no prediction model to determine lower limb amputation during the first 30 days of hospitalization for patients with DFU.

Methods

Classification And Regression Tree analysis was applied on data from a retrospective cohort of patients hospitalized for the management of diabetic foot ulcer, using an existing database from two Orthopaedics and Traumatology departments. The secondary analysis identified independent variables that can predict lower limb amputation (mayor or minor) during the first 30 days of hospitalization.

Results

Of the 573 patients in the database, 290 feet underwent a lower limb amputation during the first 30 days of hospitalization. Six different models were developed using a loss matrix to evaluate the error of not detecting false negatives. The selected tree produced 13 terminal nodes and after the pruning process, only one division remained in the optimal tree (Sensitivity: 69%, Specificity: 75%, Area Under the Curve: 0.76, Complexity Parameter: 0.01, Error: 0.85). Among the studied variables, the Wagner classification with a cut-off grade of 3 exceeded others in its predicting capacity.

Conclusions

Wagner classification was the variable with the best capacity for predicting amputation within 30 days. Infectious state and vascular occlusion described indirectly by this classification reflects the importance of taking quick decisions in those patients with a higher compromise of these two conditions. Finally, an external validation of the model is still required.

Level of evidence

III

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来源期刊
Foot and Ankle Surgery
Foot and Ankle Surgery ORTHOPEDICS-
CiteScore
4.60
自引率
16.00%
发文量
202
期刊介绍: Foot and Ankle Surgery is essential reading for everyone interested in the foot and ankle and its disorders. The approach is broad and includes all aspects of the subject from basic science to clinical management. Problems of both children and adults are included, as is trauma and chronic disease. Foot and Ankle Surgery is the official journal of European Foot and Ankle Society. The aims of this journal are to promote the art and science of ankle and foot surgery, to publish peer-reviewed research articles, to provide regular reviews by acknowledged experts on common problems, and to provide a forum for discussion with letters to the Editors. Reviews of books are also published. Papers are invited for possible publication in Foot and Ankle Surgery on the understanding that the material has not been published elsewhere or accepted for publication in another journal and does not infringe prior copyright.
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