Zhu Mingyue, Huang Fei, Xu Jingyun, Chen Wanwen, Ding Bo, Shen Yang
School of Medicine, Southeast University, Nanjing, 210009, Jiangsu, China.
Department of rehabilitation medicine, Zhongda Hospital, School of Medicine, Southeast University, Nanjing, 210009, Jiangsu, China.
Heliyon. 2024 Jul 15;10(14):e34534. doi: 10.1016/j.heliyon.2024.e34534. eCollection 2024 Jul 30.
Chronic pelvic pain (CPP) in women is a critical challenge. Due to the complex etiology and difficulties in diagnosis, it has a greatly negative impact on women's physical and mental health and the healthcare system. At present, there is still a lack of research on the related factors and predictive models of chronic pelvic pain in women. Our study aims to identify risk factors associated with chronic pelvic pain in women and develop a predictive nomogram specifically tailored to high-risk women with CPP.
From May to October 2022, trained interviewers conducted face-to-face questionnaire surveys and pelvic floor surface electromyography assessments on women from community hospitals in Nanjing. We constructed a multivariate logistic regression-based predictive model using CPP-related factors to assess the risk of chronic pelvic pain and create a predictive nomogram. Both internal and external validations were conducted, affirming the model's performance through assessments of discrimination, calibration, and practical applicability using area under the curve, calibration plots, and decision curve analysis.
1108 women were recruited in total (survey response rate:1108/1200), with 169 (15.3 %) being diagnosed as chronic pelvic pain. Factors contributing to CPP included weight, dysmenorrhea, sexual dysfunction, urinary incontinence, a history of pelvic inflammatory disease, and the surface electromyography value of post-baseline rest. In both the training and validation sets, the nomogram exhibited strong discrimination abilities with areas under the curve of 0.85 (95 % CI: 0.81-0.88) and 0.85 (95 % CI: 0.79-0.92), respectively. The examination of the decision curve and calibration plot showed that this model fit well and would be useful in clinical settings.
Weight, dysmenorrhea, sexual dysfunction, history of urinary incontinence and pelvic inflammatory disease, and surface electromyography value of post-baseline rest are independent predictors of chronic pelvic pain. The nomogram developed in this study serves as a valuable and straightforward tool for predicting chronic pelvic pain in women.
女性慢性盆腔疼痛(CPP)是一项严峻挑战。由于其病因复杂且诊断困难,对女性身心健康及医疗系统均产生极大负面影响。目前,针对女性慢性盆腔疼痛的相关因素及预测模型仍缺乏研究。本研究旨在识别与女性慢性盆腔疼痛相关的危险因素,并开发一种专门针对高危CPP女性的预测列线图。
2022年5月至10月,经过培训的访谈员对来自南京社区医院的女性进行了面对面问卷调查及盆底表面肌电图评估。我们使用与CPP相关的因素构建了基于多变量逻辑回归的预测模型,以评估慢性盆腔疼痛的风险并创建预测列线图。进行了内部和外部验证,通过曲线下面积、校准图和决策曲线分析评估辨别力、校准和实际适用性,从而肯定模型的性能。
共招募了1108名女性(调查应答率:1108/1200),其中169名(15.3%)被诊断为慢性盆腔疼痛。导致CPP的因素包括体重、痛经、性功能障碍、尿失禁、盆腔炎病史以及基线后静息时的表面肌电图值。在训练集和验证集中,列线图均表现出较强的辨别能力,曲线下面积分别为0.85(95%CI:0.81 - 0.88)和0.85(95%CI:0.79 - 0.92)。决策曲线和校准图检查表明该模型拟合良好,在临床环境中具有实用性。
体重、痛经、性功能障碍、尿失禁和盆腔炎病史以及基线后静息时的表面肌电图值是慢性盆腔疼痛的独立预测因素。本研究开发的列线图是预测女性慢性盆腔疼痛的有价值且直观的工具。