Wang Fang, Su Zhen-Zhen, Guo Xiao-Qian, Li Man, Wang Rui, Xu Yan-Jun
Department of Cardiac Surgery, The First Affiliated Hospital of USTC, Division of Life Science and Medicine, University of Science and Technology of China, Hefei, Anhui Province, China.
PeerJ. 2025 Jul 16;13:e19676. doi: 10.7717/peerj.19676. eCollection 2025.
To construct and validate a risk prediction model for hypoproteinemia in adults following cardiac valve surgery with cardiopulmonary bypass (CPB), providing medical staff with an effective tool for early identification and intervention.
This retrospective cohort study analyzed clinical data from 259 patients who underwent CPB-assisted heart valve surgery at the Department of Cardiovascular Surgery, First Affiliated Hospital of China University of Science and Technology, between January and December 2023. Patients were divided into two groups based on whether their serum albumin levels fell below 35 g/L within 48 hours postoperatively: the hypoproteinemia group ( = 144) and the non-hypoproteinemia group ( = 115). Least absolute shrinkage and selection operator (LASSO) regression was used to identify candidate predictors, followed by multivariate logistic regression to determine independent risk factors.
Among the 259 patients, 144 developed hypoproteinemia, yielding an incidence rate of 55.60%. LASSO regression identified nine variables associated with hypoproteinemia, and multivariate logistic regression confirmed eight independent predictors. Hypertension, chest infection, frailty, and preoperative heart failure were identified as independent risk factors (OR > 1, < 0.05), while higher body mass index (BMI), red blood cell (RBC) count at admission, platelet count at admission, and albumin level at admission were protective factors (OR < 1, < 0.05). The predictive model constructed using the nine LASSO-selected variables demonstrated good discrimination, with an area under the ROC curve (AUC) of 0.823 (95% CI [0.774-0.873]). The Hosmer-Lemeshow test showed no significant difference between predicted and observed outcomes ( = 0.737), indicating good model calibration.
The incidence of postoperative hypoproteinemia in this cohort was 55.60%. The developed nomogram model, based on key clinical predictors, demonstrated strong calibration and discrimination, offering a practical tool for identifying patients at high risk of hypoproteinemia following valve surgery.
构建并验证体外循环(CPB)下心瓣膜置换术后成人低蛋白血症的风险预测模型,为医护人员提供早期识别和干预的有效工具。
本回顾性队列研究分析了2023年1月至12月在中国科学技术大学附属第一医院心血管外科接受CPB辅助心脏瓣膜手术的259例患者的临床资料。根据术后48小时内血清白蛋白水平是否低于35 g/L将患者分为两组:低蛋白血症组(n = 144)和非低蛋白血症组(n = 115)。采用最小绝对收缩和选择算子(LASSO)回归识别候选预测因子,随后进行多因素逻辑回归以确定独立危险因素。
259例患者中,144例发生低蛋白血症,发生率为55.60%。LASSO回归确定了9个与低蛋白血症相关的变量,多因素逻辑回归确认了8个独立预测因子。高血压、肺部感染、身体虚弱和术前心力衰竭被确定为独立危险因素(OR > 1,P < 0.05),而较高的体重指数(BMI)、入院时红细胞(RBC)计数、入院时血小板计数和入院时白蛋白水平为保护因素(OR < 1,P < 0.05)。使用LASSO选择的9个变量构建的预测模型显示出良好的区分度,ROC曲线下面积(AUC)为0.823(95% CI [0.774 - 0.873])。Hosmer-Lemeshow检验显示预测结果与观察结果之间无显著差异(P = 0.737),表明模型校准良好。
该队列中术后低蛋白血症的发生率为55.60%。基于关键临床预测因子开发的列线图模型显示出强大的校准和区分能力,为识别瓣膜置换术后低蛋白血症高危患者提供了实用工具。