Fu Yumin, Zhao Jijing, Wang Yunpeng
The First People's Hospital of Jiande, Hangzhou, 311600, Zhejiang Province, China.
Clin Exp Med. 2025 May 10;25(1):149. doi: 10.1007/s10238-025-01701-3.
The present study aims to investigate the relationship between the neutrophil-percentage-to-albumin ratio (NPAR) and asthma using least absolute shrinkage and selection operator (LASSO) regression and Boruta algorithm. Based on the National Health and Nutrition Examination Survey database from 2001 to 2018, a total of 31,138 eligible participants were included in this study. The participants were randomly divided into a training cohort and a validation cohort in a 7:3 ratio. LASSO regression and Boruta algorithm were applied to the training cohort for assessment, selection of the optimal model, and identification of potential confounding factors. A nomogram prediction model, receiver operating characteristic curve, calibration curve, and decision curve analysis were constructed to evaluate the model's ability to predict the risk of asthma and its stability. These analyses aim to provide a reference for clinical diagnosis and treatment. The study demonstrated that after adjusting for potential confounding factors, the NPAR was positively correlated with asthma incidence (P < 0.01). The area under the curve for the training set was 0.66 for LASSO regression and 0.64 for Boruta algorithm, indicating that LASSO regression exhibited superior performance. Through LASSO regression, 10 variables were selected, including gender, race, smoking status, hypertension, diabetes, cancer, poverty-income ratio, BMI, cardiovascular disease, and age. A nomogram prediction model was constructed based on these predictors. The calibration curve showed good fit between the two groups. A higher NPAR is significantly positively correlated with an increased risk of asthma.
本研究旨在使用最小绝对收缩和选择算子(LASSO)回归及Boruta算法,探讨中性粒细胞百分比与白蛋白比值(NPAR)和哮喘之间的关系。基于2001年至2018年的美国国家健康与营养检查调查数据库,本研究共纳入31138名符合条件的参与者。参与者按7:3的比例随机分为训练队列和验证队列。将LASSO回归和Boruta算法应用于训练队列,以进行评估、选择最优模型并识别潜在的混杂因素。构建列线图预测模型、受试者工作特征曲线、校准曲线和决策曲线分析,以评估模型预测哮喘风险的能力及其稳定性。这些分析旨在为临床诊断和治疗提供参考。研究表明,在调整潜在混杂因素后,NPAR与哮喘发病率呈正相关(P < 0.01)。训练集的LASSO回归曲线下面积为0.66,Boruta算法为0.64,表明LASSO回归表现更优。通过LASSO回归,选择了10个变量,包括性别、种族、吸烟状况、高血压、糖尿病、癌症、贫困收入比、体重指数、心血管疾病和年龄。基于这些预测因子构建了列线图预测模型。校准曲线显示两组之间拟合良好。较高的NPAR与哮喘风险增加显著正相关。