Liu Zhu, Lin Shinuan, Zhou Junhong, Wang Xuemei, Wang Zhan, Yang Yaqin, Ma Huizi, Chen Zhonglue, Ren Kang, Wu Lingyu, Zhuang Haimei, Ling Yun, Feng Tao
Department of Neurology, Center for Movement Disorders, Beijing Tiantan Hospital, Capital Medical University, Beijing, China.
China National Clinical Research Center for Neurological Diseases, Beijing, China.
CNS Neurosci Ther. 2024 Mar;30(3):e14575. doi: 10.1111/cns.14575.
Levodopa could induce orthostatic hypotension (OH) in Parkinson's disease (PD) patients. Accurate prediction of acute OH post levodopa (AOHPL) is important for rational drug use in PD patients. Here, we develop and validate a prediction model of AOHPL to facilitate physicians in identifying patients at higher probability of developing AOHPL.
The study involved 497 PD inpatients who underwent a levodopa challenge test (LCT) and the supine-to-standing test (STS) four times during LCT. Patients were divided into two groups based on whether OH occurred during levodopa effectiveness (AOHPL) or not (non-AOHPL). The dataset was randomly split into training (80%) and independent test data (20%). Several models were trained and compared for discrimination between AOHPL and non-AOHPL. Final model was evaluated on independent test data. Shapley additive explanations (SHAP) values were employed to reveal how variables explain specific predictions for given observations in the independent test data.
We included 180 PD patients without AOHPL and 194 PD patients with AOHPL to develop and validate predictive models. Random Forest was selected as our final model as its leave-one-out cross validation performance [AUC_ROC 0.776, accuracy 73.6%, sensitivity 71.6%, specificity 75.7%] outperformed other models. The most crucial features in this predictive model were the maximal SBP drop and DBP drop of STS before medication (ΔSBP/ΔDBP). We achieved a prediction accuracy of 72% on independent test data. ΔSBP, ΔDBP, and standing mean artery pressure were the top three variables that contributed most to the predictions across all individual observations in the independent test data.
The validated classifier could serve as a valuable tool for clinicians, offering the probability of a patient developing AOHPL at an early stage. This supports clinical decision-making, potentially enhancing the quality of life for PD patients.
左旋多巴可诱发帕金森病(PD)患者出现体位性低血压(OH)。准确预测左旋多巴治疗后急性OH(AOHPL)对于PD患者合理用药至关重要。在此,我们开发并验证了一种AOHPL预测模型,以帮助医生识别发生AOHPL可能性较高的患者。
本研究纳入了497例接受左旋多巴激发试验(LCT)的PD住院患者,在LCT期间进行了4次平卧位到站立位试验(STS)。根据左旋多巴起效期间是否发生OH(AOHPL)将患者分为两组(AOHPL组和非AOHPL组)。数据集被随机分为训练集(80%)和独立测试数据(20%)。训练并比较了几种模型以区分AOHPL组和非AOHPL组。最终模型在独立测试数据上进行评估。采用Shapley加性解释(SHAP)值来揭示变量如何解释独立测试数据中给定观察值的特定预测。
我们纳入了180例无AOHPL的PD患者和194例有AOHPL的PD患者来开发和验证预测模型。随机森林被选为我们的最终模型,因为其留一法交叉验证性能 [AUC_ROC 0.776,准确率73.6%,敏感性71.6%,特异性75.7%] 优于其他模型。该预测模型中最关键的特征是用药前STS的最大收缩压下降和舒张压下降(ΔSBP/ΔDBP)。我们在独立测试数据上实现了72%的预测准确率。在独立测试数据的所有个体观察中,ΔSBP、ΔDBP和站立平均动脉压是对预测贡献最大的前三个变量。
经过验证的分类器可为临床医生提供有价值的工具,在早期阶段提供患者发生AOHPL的概率。这有助于临床决策,可能提高PD患者生活质量。