Department of Obstetrics and Gynecology, West China Second Hospital, Sichuan University, Chengdu, China.
J Med Internet Res. 2024 Nov 22;26:e55734. doi: 10.2196/55734.
Given the complexity and diversity of lichenoid vulvar disease (LVD) risk factors, it is crucial to actively explore these factors and construct personalized warning models using relevant clinical variables to assess disease risk in patients. Yet, to date, there has been insufficient research, both nationwide and internationally, on risk factors and warning models for LVD. In light of these gaps, this study represents the first systematic exploration of the risk factors associated with LVD.
The risk factors of LVD in women were explored and a medically evidence-based warning model was constructed to provide an early alert tool for the high-risk target population. The model can be applied in the clinic to identify high-risk patients and evaluate its accuracy and practicality in predicting LVD in women. Simultaneously, it can also enhance the diagnostic and treatment proficiency of medical personnel in primary community health service centers, which is of great significance in reducing overall health care spending and disease burden.
A total of 2990 patients who attended West China Second Hospital of Sichuan University from January 2013 to December 2017 were selected as the study candidates and were divided into 1218 cases in the normal vulvovagina group (group 0) and 1772 cases in the lichenoid vulvar disease group (group 1) according to the results of the case examination. We investigated and collected routine examination data from patients for intergroup comparisons, included factors with significant differences in multifactorial analysis, and constructed logistic regression, random forests, gradient boosting machine (GBM), adaboost, eXtreme Gradient Boosting, and Categorical Boosting analysis models. The predictive efficacy of these six models was evaluated using receiver operating characteristic curve and area under the curve.
Univariate analysis revealed that vaginitis, urinary incontinence, humidity of the long-term residential environment, spicy dietary habits, regular intake of coffee or caffeinated beverages, daily sleep duration, diabetes mellitus, smoking history, presence of autoimmune diseases, menopausal status, and hypertension were all significant risk factors affecting female LVD. Furthermore, the area under the receiver operating characteristic curve, accuracy, sensitivity, and F-score of the GBM warning model were notably higher than the other 5 predictive analysis models. The GBM analysis model indicated that menopausal status had the strongest impact on female LVD, showing a positive correlation, followed by the presence of autoimmune diseases, which also displayed a positive dependency.
In accordance with evidence-based medicine, the construction of a predictive warning model for female LVD can be used to identify high-risk populations at an early stage, aiding in the formulation of effective preventive measures, which is of paramount importance for reducing the incidence of LVD in women.
鉴于外阴苔藓样病变(lichenoid vulvar disease,LVD)危险因素的复杂性和多样性,积极探索这些因素并用相关临床变量构建个性化预警模型来评估患者的疾病风险至关重要。然而,国内外对 LVD 的危险因素和预警模型的研究都还不够充分。鉴于这些差距,本研究首次对 LVD 相关的危险因素进行了系统的探索。
探讨女性 LVD 的危险因素,并构建基于医学证据的预警模型,为高危目标人群提供早期预警工具。该模型可应用于临床,以识别高危患者,并评估其预测女性 LVD 的准确性和实用性。同时,还可以提高基层社区卫生服务中心医务人员的诊疗水平,对于降低总体医疗支出和疾病负担具有重要意义。
选取 2013 年 1 月至 2017 年 12 月于四川大学华西第二医院就诊的 2990 例患者为研究对象,根据病例检查结果分为正常外阴阴道组(0 组)1218 例和外阴苔藓样病变组(1 组)1772 例。对患者进行常规检查数据的调查和收集,并进行组间比较,纳入多因素分析中差异有统计学意义的因素,构建 logistic 回归、随机森林、梯度提升机(gradient boosting machine,GBM)、自适应增强(adaboost)、极端梯度提升(extreme gradient boosting)和分类提升(categorical boosting)分析模型。采用受试者工作特征曲线和曲线下面积评价 6 种模型的预测效能。
单因素分析显示,阴道炎、尿失禁、居住环境长期湿度、辛辣饮食习惯、经常喝咖啡或含咖啡因饮料、每日睡眠时间、糖尿病、吸烟史、自身免疫性疾病、绝经状态和高血压均为影响女性 LVD 的显著危险因素。此外,GBM 预警模型的受试者工作特征曲线下面积、准确率、敏感度和 F1 评分均显著高于其他 5 种预测分析模型。GBM 分析模型显示,绝经状态对女性 LVD 的影响最强,呈正相关,其次是自身免疫性疾病,也呈正相关。
基于循证医学,构建女性 LVD 预测预警模型可以早期识别高危人群,制定有效的预防措施,对于降低女性 LVD 的发病率具有重要意义。