Cui Chaohua, Li Changhong, Long Tonghua, Lao Zhenxian, Xia Tianyu
Life Science and Clinical Medicine Research Center, Affiliated Hospital of Youjiang Medical University for Nationalities, Youjiang Distract, Baise, Guangxi, China.
Liuzhou Municipal Liutie Central Hospital, Liunan Distract, Liuzhou, Guangxi, China.
Neurol Ther. 2024 Jun;13(3):857-868. doi: 10.1007/s40120-024-00615-8. Epub 2024 Apr 30.
Repeat transcranial magnetic stimulation (rTMS) demonstrates beneficial effects for stroke patients, though its efficacy varies due to the complexity of patient conditions and disease progression. Unsupervised machine learning could be the optimal solution for identifying target patients for transcranial magnetic stimulation treatment.
We collected data from ischaemic stroke patients treated with rTMS. Unsupervised machine learning methods, including K-means and Hierarchical Clustering, were used to explore the clinical characteristics of patients suitable for rTMS. We then utilized a prospective observational cohort to validate the effect of selected characteristics. For the validated cohort, outcomes included the presence of motor evoked potentials (MEP), favorable functional outcomes (FFO), and changes in the Fugl-Meyer Assessment (FMA) at 3 and 6 months.
Hierarchical clustering methods revealed that patients in the better prognosis group were more likely to take statins. The validated cohort was grouped based on statin intake. Patients taking statins exhibited a higher rate of MEP (p = 0.006), a higher rate of FFO at 3 months (p = 0.003) and 6 months (p = 0.021), and a more significant change in FMA (p < 0.001) at both 3 and 6 months. Statin intake was associated with FFO and changes in FMA at 3 and 6 months. This relationship persisted across all subgroups for FMA changes and some FFO subgroups.
Stroke patients undergoing rTMS treatment taking statins exhibited greater MEP, FFO, and changes in FMA. Statin intake was associated with a better prognosis in these patients.
重复经颅磁刺激(rTMS)对中风患者显示出有益效果,但其疗效因患者病情复杂程度和疾病进展而异。无监督机器学习可能是识别经颅磁刺激治疗目标患者的最佳解决方案。
我们收集了接受rTMS治疗的缺血性中风患者的数据。使用包括K均值和层次聚类在内的无监督机器学习方法来探索适合rTMS治疗的患者的临床特征。然后,我们利用一个前瞻性观察队列来验证所选特征的效果。对于验证队列,结局指标包括运动诱发电位(MEP)的出现情况、良好功能结局(FFO)以及3个月和6个月时Fugl-Meyer评估(FMA)的变化。
层次聚类方法显示,预后较好组的患者更有可能服用他汀类药物。根据他汀类药物的服用情况对验证队列进行分组。服用他汀类药物的患者MEP发生率更高(p = 0.006),3个月时FFO发生率更高(p = 0.003),6个月时FFO发生率更高(p = 0.021),3个月和6个月时FMA变化更显著(p < 0.001)。他汀类药物的服用与3个月和6个月时的FFO以及FMA变化相关。这种关系在FMA变化的所有亚组和一些FFO亚组中均持续存在。
接受rTMS治疗的中风患者服用他汀类药物时表现出更大的MEP、FFO以及FMA变化。服用他汀类药物与这些患者的较好预后相关。