Department of Neurology, Fujian Medical University Union Hospital, Fujian, People's Republic of China.
BaoFeng Key Laboratory of Genetics and Metabolism, Beijing, People's Republic of China.
Sci Rep. 2021 Oct 8;11(1):20002. doi: 10.1038/s41598-021-99506-3.
Many studies report predictions for cognitive function but there are few predictions in epileptic patients; therefore, we established a workflow to efficiently predict outcomes of both the Mini-Mental State Examination (MMSE) and Montreal Cognitive Assessment (MoCA) in outpatients with epilepsy. Data from 441 outpatients with epilepsy were included; of these, 433 patients met the 12 clinical characteristic criteria and were divided into training (n = 304) and experimental (n = 129) groups. After descriptive statistics were analyzed, cross-validation was used to select the optimal model. The random forest (RF) algorithm was combined with the redundancy analysis (RDA) algorithm; then, optimal feature selection and resampling were carried out after removing linear redundancy information. The features that contributed more to multiple outcomes were selected. Finally, the external traceability of the model was evaluated using the follow-up data. The RF algorithm was the best prediction model for both MMSE and MoCA outcomes. Finally, seven markers were screened by overlapping the top ten important features for MMSE ranked by RF modeling, those ranked for MoCA ranked by RF modeling, and those for both assessments ranked by RDA. The optimal combination of features were namely, sex, age, age of onset, seizure frequency, brain MRI abnormalities, epileptiform discharge in EEG and usage of drugs. which was the most efficient in predicting outcomes of MMSE, MoCA, and both assessments.
许多研究报告了对认知功能的预测,但在癫痫患者中预测较少;因此,我们建立了一个工作流程,以有效地预测癫痫门诊患者的简易精神状态检查(MMSE)和蒙特利尔认知评估(MoCA)的结果。共纳入 441 例癫痫门诊患者的数据;其中,433 例患者符合 12 项临床特征标准,分为训练组(n=304)和实验组(n=129)。在进行描述性统计分析后,采用交叉验证选择最佳模型。将随机森林(RF)算法与冗余分析(RDA)算法相结合;然后,在去除线性冗余信息后,进行最优特征选择和重采样。选择对多个结果贡献更大的特征。最后,使用随访数据评估模型的外部可追溯性。RF 算法是 MMSE 和 MoCA 结果的最佳预测模型。最后,通过重叠 RF 建模对 MMSE 排名前十的重要特征、RF 建模对 MoCA 排名前十的重要特征以及 RDA 对两项评估排名前十的重要特征,筛选出 7 个标志物。性别、年龄、发病年龄、发作频率、脑 MRI 异常、脑电图痫样放电和药物使用是预测 MMSE、MoCA 和两项评估结果最有效的最佳组合特征。