AI-based pelvic floor surface electromyography reference ranges and high-precision pelvic floor dysfunction diagnosis

肌电图 盆底 概化理论 医学 接收机工作特性 人工智能 计算机科学 参考数据 交叉验证 物理医学与康复 人口 缺少数据 机器学习 数据挖掘 统计 外科 环境卫生 数学
作者
Juan Chen,Jiahui Yao,Wei Chen,Feng Zhang,Heyuan Wang,Xiao‐Ying Xu,Huan Ge,Hongmei Zhou,Jin Cen,Dan Li,Bengui Jiang,Li He,Tingting Fu,Zhengxian Xu,Lei Chu,Shuxia Zhang,Dongmei Yao,Linyi Wei,Liu Huang,Allègre Ge
出处
期刊:EBioMedicine [Elsevier BV]
卷期号:117: 105755-105755 被引量:4
标识
DOI:10.1016/j.ebiom.2025.105755
摘要

BACKGROUND: Pelvic floor surface electromyography (sEMG) is widely used to evaluate and treat pelvic floor dysfunctions (PFDs). Based on sEMG, the Glazer protocol was developed over 20 years ago with a limited sample size, making it challenging to accurately diagnose PFDs across diverse populations and conditions. This study aims to establish a multidimensional database for monitoring pelvic floor sEMG, derive more reasonable reference ranges for sEMG parameters, and achieve accurate diagnosis of PFDs through artificial intelligence (AI). METHODS: In this population-based, multicenter, cross-sectional study, we recruited 1605 participants from 21 centres across China, collected pelvic floor sEMG data, and established a multidimensional sEMG database. Based on the database, we developed an AI-Diagnostician-PFD diagnostic model, which leverages AI to derive AI-Reference ranges for sEMG parameters and diagnose PFDs. Data from 15 centres were divided into a training dataset (60%) and a test dataset (40%), while data from 6 additional centres were used to form an independent validation dataset. The proportions of normal and abnormal samples were consistent across the 15 and 6 centres, ensuring balanced representation. Additionally, both datasets encompassed diverse geographical regions, enhancing the model's generalizability. The diagnostic performance of the AI-Diagnostician-PFD model was evaluated on both the internal test dataset and the external validation dataset. FINDINGS: ). Furthermore, the AI-Diagnostician-PFD model demonstrated superior diagnostic performance for PFDs, achieving an AUC 1% higher than other classical machine learning and deep learning models. INTERPRETATION: The performance of the reference interval derived by AI surpassed that of the Glazer standard. Upon publication of this study, the AI-Diagnostician-PFD model for PFD prediction will be provided free via software on machines. Implementing this algorithm in clinical practice can enhance individual PFD diagnosis and improve population-level health outcomes. FUNDING: This study was supported by grants from the National Key R&D Program of China: The Establishment of a Comprehensive Network for PFD Prevention, Rehabilitation, Pelvic Floor Surgery and Related Complications (2021YFC2701300), Perception and Analysis of the Situation of Major Infectious Disease Outbreaks Based on Internet Big Data (2021ZD0111202), Research on New Models for Forecasting Major Infectious Diseases and Policy Evaluation (2021ZD0111205); Beijing Natural Science Foundation (7212073), National High-Level Hospital Clinical Research Funding (2022-PUMCH-B-087) and the Chinese Academy of Medical Sciences (CAMS) Innovation Fund for Medical Sciences (2021-I2M- C&T-B- 021).
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