Department of Geriatric Orthopedics, Third Hospital of Hebei Medical University, Shijiazhuang, 050051, Hebei, China.
Third Hospital of Hebei Medical University, Shijiazhuang, 050051, Hebei, China.
BMC Geriatr. 2024 Mar 28;24(1):296. doi: 10.1186/s12877-024-04892-8.
Hip fractures are a serious health concern among the elderly, particularly in patients with hypertension, where the incidence of acute heart failure preoperatively is high, significantly affecting surgical outcomes and prognosis. This study aims to assess the risk of preoperative acute heart failure in elderly patients with hypertension and hip fractures by constructing a predictive model using machine learning on potential risk factors.
A retrospective study design was employed, collecting preoperative data from January 2018 to December 2019 of elderly hypertensive patients with hip fractures at the Third Hospital of Hebei Medical University. Using SPSS 24.0 and R software, predictive models were established through LASSO regression and multivariable logistic regression analysis. The models' predictive performance was evaluated using metrics such as the concordance index (C-index), receiver operating characteristic curve (ROC curve), and decision curve analysis (DCA), providing insights into the nomogram's predictive accuracy and clinical utility.
Out of 1038 patients screened, factors such as gender, age, history of stroke, arrhythmias, anemia, and complications were identified as independent risk factors for preoperative acute heart failure in the study population. Notable predictors included Sex (OR 0.463, 95% CI 0.299-0.7184, P = 0.001), Age (OR 1.737, 95% CI 1.213-2.488, P = 0.003), Stroke (OR 1.627, 95% CI 1.137-2.327, P = 0.008), Arrhythmia (OR 2.727, 95% CI 1.490-4.990, P = 0.001), Complications (OR 2.733, 95% CI 1.850-4.036, P < 0.001), and Anemia (OR 3.258, 95% CI 2.180-4.867, P < 0.001). The prediction model of acute heart failure was Logit(P) = -2.091-0.770 × Sex + 0.552 × Age + 0.487 × Stroke + 1.003 × Arrhythmia + 1.005 × Complications + 1.181 × Anemia, and the prediction model nomogram was established. The model's AUC was 0.785 (95% CI, 0.754-0.815), Decision curve analysis (DCA) further validated the nomogram's excellent performance, identifying an optimal cutoff value probability range of 3% to 58% for predicting preoperative acute heart failure in elderly patients with hypertension and hip fractures.
The predictive model developed in this study is highly accurate and serves as a powerful tool for the clinical assessment of the risk of preoperative acute heart failure in elderly hypertensive patients with hip fractures, aiding in the optimization of preoperative risk assessment and patient management.
髋部骨折是老年人的严重健康问题,尤其是在高血压患者中,术前急性心力衰竭的发生率较高,这显著影响手术结果和预后。本研究旨在通过使用机器学习对潜在风险因素构建预测模型,评估老年高血压合并髋部骨折患者术前发生急性心力衰竭的风险。
采用回顾性研究设计,收集 2018 年 1 月至 2019 年 12 月河北医科大学第三医院老年高血压合并髋部骨折患者的术前数据。使用 SPSS 24.0 和 R 软件,通过 LASSO 回归和多变量逻辑回归分析建立预测模型。使用一致性指数(C 指数)、受试者工作特征曲线(ROC 曲线)和决策曲线分析(DCA)评估模型的预测性能,为列线图的预测准确性和临床实用性提供了见解。
在筛选出的 1038 例患者中,性别、年龄、中风史、心律失常、贫血和并发症等因素被确定为研究人群中术前急性心力衰竭的独立危险因素。显著的预测因素包括性别(OR 0.463,95%CI 0.299-0.7184,P=0.001)、年龄(OR 1.737,95%CI 1.213-2.488,P=0.003)、中风(OR 1.627,95%CI 1.137-2.327,P=0.008)、心律失常(OR 2.727,95%CI 1.490-4.990,P=0.001)、并发症(OR 2.733,95%CI 1.850-4.036,P<0.001)和贫血(OR 3.258,95%CI 2.180-4.867,P<0.001)。急性心力衰竭预测模型为 Logit(P)=-2.091-0.770×性别+0.552×年龄+0.487×中风+1.003×心律失常+1.005×并发症+1.181×贫血,并建立了预测模型列线图。模型的 AUC 为 0.785(95%CI,0.754-0.815),决策曲线分析(DCA)进一步验证了该列线图的出色表现,确定了预测老年高血压合并髋部骨折患者术前急性心力衰竭的最佳截断值概率范围为 3%至 58%。
本研究建立的预测模型具有较高的准确性,可作为评估老年高血压合并髋部骨折患者术前急性心力衰竭风险的有力工具,有助于优化术前风险评估和患者管理。