利用人工智能预测神经源性膀胱过动症和多发性硬化症患者的治疗结果。

Oliva H Chang, Jaylen Lee, Felicia Lane, Michael Demetriou, Peter D Chang
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引用次数: 0

摘要

简介和目的:许多多发性硬化症(MS)女性患者会经历神经源性膀胱过动症(NOAB),其特征是尿频、尿急和尿急失禁。该研究的目的是利用临床和影像学数据创建机器学习(ML)模型,以预测按治疗类型分层的NOAB治疗成功。方法:对2017-2022年在某三级学术中心就诊的诊断为NOAB和MS的女性患者进行回顾性队列研究。提取临床和影像学资料。评估的三种NOAB治疗方案包括行为治疗、药物治疗和微创治疗。主要结局-治疗成功被定义为尿频减少50%,尿急或治疗成功的主观感觉。为了构建logistic回归ML模型,我们进行双变量分析,反向选择p值< 0.10的变量,并应用临床相关变量。对于ML,队列被分成训练数据集(70%)和测试数据集(30%)。计算曲线下面积(AUC)分数来评估模型的性能。结果:纳入的110例患者平均年龄为59岁(SD 14岁),以白人(91.8%)为主,绝经后(68.2%)。按NOAB治疗方式分层,行为治疗70例(63.6%),药物治疗58例(52.7%),微创治疗44例(40%)。在MRI脑成像中,63.6%的患者有bbb20病变,但大多数不是活动性病变。病变主要位于幕上(94.5%)、幕下(68.2%)和幕下58.2脑(63.8%)以及深部白质(53.4%)。脊柱MRI影像学病变以颈椎为主(71.8%),其次为胸椎(43.7%)和腰椎(6.4%)。在特征选择后,使用排名前10位的特征来训练互补的lasso正则化逻辑回归(LR)和极端梯度增强树(XGB)模型。预测行为、药物和微创治疗反应的最佳LR模型的AUC值分别为0.74、0.76和0.83。结论:使用这些排名靠前的特征,LR模型基于个体因素预测治疗成功的AUC值为0.74-0.83。需要进一步的前瞻性评估来更好地表征和验证这些已确定的关联。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
USING ARTIFICIAL INTELLIGENCE TO PREDICT TREATMENT OUTCOMES IN PATIENTS WITH NEUROGENIC OVERACTIVE BLADDER AND MULTIPLE SCLEROSIS.

Introduction and objectives: Many women with multiple sclerosis (MS) experience neurogenic overactive bladder (NOAB) characterized by urinary frequency, urinary urgency and urgency incontinence. The objective of the study was to create machine learning (ML) models utilizing clinical and imaging data to predict NOAB treatment success stratified by treatment type.

Methods: This was a retrospective cohort study of female patients with diagnosis of NOAB and MS seen at a tertiary academic center from 2017-2022. Clinical and imaging data were extracted. Three types of NOAB treatment options evaluated included behavioral therapy, medication therapy and minimally invasive therapies. The primary outcome - treatment success was defined as > 50% reduction in urinary frequency, urinary urgency or a subjective perception of treatment success. For the construction of the logistic regression ML models, bivariate analyses were performed with backward selection of variables with p-values of < 0.10 and clinically relevant variables applied. For ML, the cohort was split into a training dataset (70%) and a test dataset (30%). Area under the curve (AUC) scores are calculated to evaluate model performance.

Results: The 110 patients included had a mean age of patients were 59 years old (SD 14 years), with a predominantly White cohort (91.8%), post-menopausal (68.2%). Patients were stratified by NOAB treatment therapy type received with 70 patients (63.6%) at behavioral therapy, 58 (52.7%) with medication therapy and 44 (40%) with minimally invasive therapies. On MRI brain imaging, 63.6% of patients had > 20 lesions though majority were not active lesions. The lesions were mostly located within the supratentorial (94.5%), infratentorial (68.2%) and 58.2 infratentorial brain (63.8%) as well as in the deep white matter (53.4%). For MRI spine imaging, most of the lesions were in the cervical spine (71.8%) followed by thoracic spine (43.7%) and lumbar spine (6.4%).10.3%). After feature selection, the top 10 highest ranking features were used to train complimentary LASSO-regularized logistic regression (LR) and extreme gradient-boosted tree (XGB) models. The top-performing LR models for predicting response to behavioral, medication, and minimally invasive therapies yielded AUC values of 0.74, 0.76, and 0.83, respectively.

Conclusions: Using these top-ranked features, LR models achieved AUC values of 0.74-0.83 for prediction of treatment success based on individual factors. Further prospective evaluation is needed to better characterize and validate these identified associations.

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