Meng Xianghong, Deng Kan, Huang Bingsheng, Lin Xiaoyi, Wu Yingtong, Tao Wei, Lin Chuxuan, Yang Yang, Chen Fuyong
Department of Neurosurgery, Shenzhen University General Hospital, Shenzhen, China.
Medical AI Lab, School of Biomedical Engineering, Health Science Center, Shenzhen University, Shenzhen, China.
Front Hum Neurosci. 2023 Jun 14;17:1100683. doi: 10.3389/fnhum.2023.1100683. eCollection 2023.
To assist improving long-term postoperative seizure-free rate, we aimed to use machine learning algorithms based on neuropsychological data to differentiate temporal lobe epilepsy (TLE) from extratemporal lobe epilepsy (extraTLE), as well as explore the relationship between magnetic resonance imaging (MRI) and neuropsychological tests.
Twenty-three patients with TLE and 23 patients with extraTLE underwent neuropsychological tests and MRI scans before surgery. The least absolute shrinkage and selection operator were firstly employed for feature selection, and a machine learning approach with neuropsychological tests was employed to classify TLE using leave-one-out cross-validation. A generalized linear model was used to analyze the relationship between brain alterations and neuropsychological tests.
We found that logistic regression with the selected neuropsychological tests generated classification accuracies of 87.0%, with an area under the receiver operating characteristic curve (AUC) of 0.89. Three neuropsychological tests were acquired as significant neuropsychological signatures for the diagnosis of TLE. We also found that the Right-Left Orientation Test difference was related to the superior temporal and the banks of the superior temporal sulcus (bankssts). The Conditional Association Learning Test (CALT) was associated with the cortical thickness difference in the lateral orbitofrontal area between the two groups, and the Component Verbal Fluency Test was associated with the cortical thickness difference in the lateral occipital cortex between the two groups.
These results showed that machine learning-based classification with the selected neuropsychological data can successfully classify TLE with high accuracy compared to previous studies, which could provide kind of warning sign for surgery candidate of TLE patients. In addition, understanding the mechanism of cognitive behavior by neuroimaging information could assist doctors in the presurgical evaluation of TLE.
为帮助提高术后长期无癫痫发作率,我们旨在使用基于神经心理学数据的机器学习算法,以区分颞叶癫痫(TLE)和颞叶外癫痫(extraTLE),并探索磁共振成像(MRI)与神经心理学测试之间的关系。
23例TLE患者和23例extraTLE患者在手术前接受了神经心理学测试和MRI扫描。首先采用最小绝对收缩和选择算子进行特征选择,并采用基于神经心理学测试的机器学习方法,通过留一法交叉验证对TLE进行分类。使用广义线性模型分析脑改变与神经心理学测试之间的关系。
我们发现,使用选定的神经心理学测试进行逻辑回归,分类准确率为87.0%,受试者工作特征曲线下面积(AUC)为0.89。获得了三项神经心理学测试作为诊断TLE的重要神经心理学特征。我们还发现,左右定向测试差异与颞上叶及颞上沟岸(bankssts)有关。条件联想学习测试(CALT)与两组外侧眶额区皮质厚度差异有关,成分言语流畅性测试与两组外侧枕叶皮质厚度差异有关。
这些结果表明,与以往研究相比,基于选定神经心理学数据的机器学习分类能够成功地高精度分类TLE,这可为TLE患者的手术候选者提供一种警示信号。此外,通过神经影像学信息了解认知行为机制有助于医生对TLE进行术前评估。