BSN, Graduate Student, School of Nursing, Nantong University, Nantong City, Jiangsu, People's Republic of China.
MS, Associate Professor, School of Nursing, Nantong University, Nantong City, Jiangsu, People's Republic of China.
J Nurs Res. 2020 Dec 21;29(1):e135. doi: 10.1097/JNR.0000000000000411.
Surgery-related pressure injury (SRPI) is a serious problem in patients who undergo cardiovascular surgery. Identifying patients at a high risk of SRPI is important for clinicians to recognize and prevent it expeditiously. Machine learning (ML) has been widely used in the field of healthcare and is well suited to predictive analysis.
The aim of this study was to develop an ML-based predictive model for SRPI in patients undergoing cardiovascular surgery.
This secondary analysis of data was based on a single-center, prospective cohort analysis of 149 patients who underwent cardiovascular surgery. Data were collected from a 1,000-bed university-affiliated hospital. We developed the ML model using the XGBoost algorithm for SRPI prediction in patients undergoing cardiovascular surgery based on major potential risk factors. Model performance was tested using a receiver operating characteristic curve and the C-index.
Of the sample of 149 patients, SRPI developed in 37, an incidence rate of 24.8%. The five most important predictors included duration of surgery, patient weight, duration of the cardiopulmonary bypass procedure, patient age, and disease category. The ML model had an area under the receiver operating characteristic curve of 0.806, which indicates that the ML model has a moderate prediction value for SRPI.
Applying ML to clinical data may be a reliable approach to the assessment of the risk of SRPI in patients undergoing cardiovascular surgical procedures. Future studies may deploy the ML model in the clinic and focus on applying targeted interventions for SRPI and related diseases.
手术相关压力性损伤(SRPI)是心血管手术患者的一个严重问题。识别 SRPI 风险较高的患者对于临床医生快速识别和预防该损伤非常重要。机器学习(ML)已广泛应用于医疗保健领域,非常适合预测分析。
本研究旨在开发一种基于机器学习的心血管手术患者 SRPI 预测模型。
这是对 149 例接受心血管手术患者的单中心前瞻性队列分析的二次数据分析。数据来自一家拥有 1000 张床位的大学附属医院。我们基于主要潜在风险因素,使用 XGBoost 算法为接受心血管手术的患者开发了用于预测 SRPI 的 ML 模型。使用接收者操作特征曲线和 C 指数来测试模型性能。
在 149 例患者样本中,37 例(发生率 24.8%)发生了 SRPI。五个最重要的预测因素包括手术持续时间、患者体重、体外循环程序持续时间、患者年龄和疾病类别。ML 模型的接收者操作特征曲线下面积为 0.806,表明 ML 模型对 SRPI 具有中等的预测价值。
将 ML 应用于临床数据可能是评估心血管手术患者发生 SRPI 风险的可靠方法。未来的研究可能会将 ML 模型应用于临床,并专注于针对 SRPI 和相关疾病的靶向干预。