Department of Radiology, Weill Cornell Medicine, New York, NY, USA.
Brain and Mind Research Institute, Weill Cornell Medicine, New York, NY, USA.
Neurorehabil Neural Repair. 2020 May;34(5):428-439. doi: 10.1177/1545968320909796. Epub 2020 Mar 20.
. Accurate prediction of clinical impairment in upper-extremity motor function following therapy in chronic stroke patients is a difficult task for clinicians but is key in prescribing appropriate therapeutic strategies. Machine learning is a highly promising avenue with which to improve prediction accuracy in clinical practice. . The objective was to evaluate the performance of 5 machine learning methods in predicting postintervention upper-extremity motor impairment in chronic stroke patients using demographic, clinical, neurophysiological, and imaging input variables. . A total of 102 patients (female: 31%, age 61 ± 11 years) were included. The upper-extremity Fugl-Meyer Assessment (UE-FMA) was used to assess motor impairment of the upper limb before and after intervention. Elastic net (EN), support vector machines, artificial neural networks, classification and regression trees, and random forest were used to predict postintervention UE-FMA. The performances of methods were compared using cross-validated . . EN performed significantly better than other methods in predicting postintervention UE-FMA using demographic and baseline clinical data (median < .05). Preintervention UE-FMA and the difference in motor threshold (MT) between the affected and unaffected hemispheres were the strongest predictors. The difference in MT had greater importance than the absence or presence of a motor-evoked potential (MEP) in the affected hemisphere. . Machine learning methods may enable clinicians to accurately predict a chronic stroke patient's postintervention UE-FMA. Interhemispheric difference in the MT is an important predictor of chronic stroke patients' response to therapy and, therefore, could be included in prospective studies.
. 准确预测慢性脑卒中患者治疗后上肢运动功能的临床损伤程度是临床医生面临的一项艰巨任务,但这是制定适当治疗策略的关键。机器学习是一种很有前途的方法,可以提高临床实践中的预测准确性。. 目的是评估 5 种机器学习方法在使用人口统计学、临床、神经生理学和影像学输入变量预测慢性脑卒中患者干预后上肢运动损伤方面的性能。. 共纳入 102 例患者(女性占 31%,年龄 61±11 岁)。使用上肢 Fugl-Meyer 评估(UE-FMA)评估上肢运动功能在干预前后的损伤程度。使用弹性网络(EN)、支持向量机、人工神经网络、分类回归树和随机森林来预测干预后的 UE-FMA。通过交叉验证比较方法的性能。.. 在用人口统计学和基线临床数据预测干预后的 UE-FMA 方面,EN 明显优于其他方法(中位数<.05)。干预前 UE-FMA 和患侧与健侧运动阈值(MT)之间的差异是最强的预测因素。MT 的差异比患侧有无运动诱发电位(MEP)更重要。.. 机器学习方法可以帮助临床医生准确预测慢性脑卒中患者干预后的 UE-FMA。患侧和健侧之间 MT 的差异是慢性脑卒中患者对治疗反应的重要预测因素,因此可以纳入前瞻性研究。