Department of Thoracic Surgery, The First Affiliated Hospital of Wenzhou Medical University, Wenzhou 325000, China.
Department of Gastrointestinal Surgery, The First Affiliated Hospital of Wenzhou Medical University, Wenzhou 325000, China.
Intensive Crit Care Nurs. 2024 Aug;83:103715. doi: 10.1016/j.iccn.2024.103715. Epub 2024 May 2.
The occurrence of pressure injury in patients with diabetes during ICU hospitalization can result in severe complications, including infections and non-healing wounds.
The aim of this study was to predict the occurrence of pressure injury in ICU patients with diabetes using machine learning models.
In this study, LASSO regression was used for feature screening, XGBoost was employed for machine learning model construction, ROC curve analysis, calibration curve analysis, clinical decision curve analysis, sensitivity, specificity, accuracy, and F1 score were used for evaluating the model's performance.
Out of the 503 ICU patients with diabetes included in the study, pressure injury developed in 170 cases, resulting in an incidence rate of 33.8 %. The XGBoost model had a higher AUC for predicting pressure injury in patients with diabetes during ICU hospitalization (train: 0.896, 95 %CI: 0.863 to 0.929; test: 0.835, 95 % CI: 0.761-0.908). The importance of SHAP variables in the model from high to low was: 'Days in ICU', 'Mechanical Ventilation', 'Neutrophil Count', 'Consciousness', 'Glucose', and 'Warming Blanket'.
The XGBoost machine learning model we constructed has shown high performance in predicting the occurrence of pressure injury in ICU patients with diabetes. Additionally, the SHAP method enables the interpretation of the results provided by the machine learning model.
Improve the ability to predict the early occurrence of pressure injury in diabetic patients in the ICU. This will enable clinicians to intervene early and reduce the occurrence of complications.
糖尿病患者在 ICU 住院期间发生压疮会导致严重的并发症,包括感染和伤口不愈合。
本研究旨在使用机器学习模型预测 ICU 糖尿病患者压疮的发生。
本研究采用 LASSO 回归进行特征筛选,XGBoost 进行机器学习模型构建,ROC 曲线分析、校准曲线分析、临床决策曲线分析、敏感性、特异性、准确性和 F1 评分用于评估模型性能。
在纳入研究的 503 例 ICU 糖尿病患者中,170 例发生压疮,发生率为 33.8%。XGBoost 模型预测 ICU 糖尿病患者压疮发生的 AUC 更高(训练:0.896,95%CI:0.863-0.929;测试:0.835,95%CI:0.761-0.908)。模型中 SHAP 变量的重要性从高到低依次为:“入住 ICU 天数”、“机械通气”、“中性粒细胞计数”、“意识”、“血糖”和“保暖毯”。
我们构建的 XGBoost 机器学习模型在预测 ICU 糖尿病患者压疮发生方面表现出较高的性能。此外,SHAP 方法可用于解释机器学习模型提供的结果。
提高预测 ICU 糖尿病患者压疮早期发生的能力。这将使临床医生能够早期干预,减少并发症的发生。