Nejad-Mansouri Mehran, Lizotte Daniel, Myers Jeremy, Elliott Sean, Stoffel John T, Lenherr Sara, Lyons Rhiannon, Zhong Tianyue, Welk Blayne
Department of Surgery, Western University, London, Ontario, Canada.
Department of Epidemiology and Biostatistics, Western University, London, Ontario, Canada.
Neurourol Urodyn. 2025 Sep;44(7):1466-1473. doi: 10.1002/nau.70116. Epub 2025 Jul 9.
Individuals with spinal cord injury (SCI) have varying bladder health trajectories after their injury. We explored whether a predictive machine learning model could identify which variables impact urinary symptoms.
We used 238 variables from the Neurogenic Bladder Research Group SCI registry for a Decision Tree analysis (eCHAID technique). The primary outcomes were the baseline Neurogenic Bladder Symptom Score (NBSS), and the change from the baseline NBSS at 1-year follow up (measured as better/worse than the median change).
Among the 1479 participants, mean baseline NBSS was 24.16 ± 0.28 (standard error of the mean). Our decision tree that evaluated the NBSS at baseline predicted that individuals with a suprapubic tube/urostomy as their primary bladder management method and good bowel QOL at baseline had the lowest (best) mean baseline NBSS at 13.44 ± 0.83. In contrast, females with baseline spontaneous voiding had the highest (worst) mean baseline NBSS at 34.42 ± 1.05. Our second decision tree evaluated the change in the NBSS at 1-year follow-up. Of the 711 participants that performed better than the median change (i.e., improved), 45% were accounted for jointly by women who did not use bladder relaxing medications at baseline, and men without a history of prior urinary tract infections who used a single bladder management method at follow-up. The predictive capacity the decision tree was 57%.
Decision tree models help identify combinations of patient characteristics which correlate with urinary symptoms after SCI. However, there was a limited predictive capacity of the decision tree to forecast future bladder symptoms.
脊髓损伤(SCI)患者在受伤后膀胱健康轨迹各不相同。我们探讨了一种预测性机器学习模型是否能够识别哪些变量会影响泌尿症状。
我们使用了神经源性膀胱研究组SCI登记处的238个变量进行决策树分析(eCHAID技术)。主要结局为基线神经源性膀胱症状评分(NBSS),以及随访1年时相对于基线NBSS的变化(以高于/低于中位数变化来衡量)。
在1479名参与者中,平均基线NBSS为24.16±0.28(均值标准误)。我们评估基线NBSS的决策树预测,以耻骨上造瘘管/尿流改道术作为主要膀胱管理方法且基线时肠道生活质量良好的个体,其平均基线NBSS最低(最佳),为13.44±0.83。相比之下,基线时自发排尿的女性平均基线NBSS最高(最差),为34.42±1.05。我们的第二个决策树评估了随访1年时NBSS的变化。在711名表现优于中位数变化(即改善)的参与者中,45%由基线时未使用膀胱松弛药物的女性以及随访时仅采用单一膀胱管理方法且无既往尿路感染史的男性共同构成。决策树的预测能力为57%。
决策树模型有助于识别与脊髓损伤后泌尿症状相关的患者特征组合。然而,决策树预测未来膀胱症状的能力有限。