J. Pruitt Family Department of Biomedical Engineering, College of Engineering, University of Florida, Gainesville, Florida, United States of America.
Brain Rehabilitation Research Center, Malcom Randall VA Medical Center, Gainesville, Florida, United States of America.
PLoS One. 2021 Aug 17;16(8):e0254338. doi: 10.1371/journal.pone.0254338. eCollection 2021.
In stroke survivors, a treatment-resistant problem is inability to volitionally differentiate upper limb wrist extension versus flexion. When one intends to extend the wrist, the opposite occurs, wrist flexion, rendering the limb non-functional. Conventional therapeutic approaches have had limited success in achieving functional recovery of patients with chronic and severe upper extremity impairments. Functional magnetic resonance imaging (fMRI) neurofeedback is an emerging strategy that has shown potential for stroke rehabilitation. There is a lack of information regarding unique blood-oxygenation-level dependent (BOLD) cortical activations uniquely controlling execution of wrist extension versus uniquely controlling wrist flexion. Therefore, a first step in providing accurate neural feedback and training to the stroke survivor is to determine the feasibility of classifying (or differentiating) brain activity uniquely associated with wrist extension from that of wrist flexion, first in healthy adults.
We studied brain signal of 10 healthy adults, who performed wrist extension and wrist flexion during fMRI data acquisition. We selected four types of analyses to study the feasibility of differentiating brain signal driving wrist extension versus wrist flexion, as follows: 1) general linear model (GLM) analysis; 2) support vector machine (SVM) classification; 3) 'Winner Take All'; and 4) Relative Dominance.
With these four methods and our data, we found that few voxels were uniquely active during either wrist extension or wrist flexion. SVM resulted in only minimal classification accuracies. There was no significant difference in activation magnitude between wrist extension versus flexion; however, clusters of voxels showed extension signal > flexion signal and other clusters vice versa. Spatial patterns of activation differed among subjects.
We encountered a number of obstacles to obtaining clear group results in healthy adults. These obstacles included the following: high variability across healthy adults in all measures studied; close proximity of uniquely active voxels to voxels that were common to both the extension and flexion movements; in general, higher magnitude of signal for the voxels common to both movements versus the magnitude of any given uniquely active voxel for one type of movement. Our results indicate that greater precision in imaging will be required to develop a truly effective method for differentiating wrist extension versus wrist flexion from fMRI data.
在中风幸存者中,存在一种治疗抵抗性问题,即无法自主区分上肢手腕伸展和弯曲。当一个人意图伸展手腕时,相反的情况会发生,即手腕弯曲,导致肢体失去功能。传统的治疗方法在实现慢性和严重上肢损伤患者的功能恢复方面收效有限。功能磁共振成像(fMRI)神经反馈是一种新兴的策略,已显示出在中风康复方面的潜力。关于独特的血氧水平依赖(BOLD)皮质激活,以独特的方式控制手腕伸展的执行与独特的方式控制手腕弯曲的信息很少。因此,为中风幸存者提供准确的神经反馈和训练的第一步是确定区分(或区分)与手腕伸展相关的大脑活动与与手腕弯曲相关的大脑活动的可行性,首先是在健康成年人中。
我们研究了 10 名健康成年人的大脑信号,他们在 fMRI 数据采集过程中进行了手腕伸展和手腕弯曲。我们选择了四种分析方法来研究区分驱动手腕伸展与手腕弯曲的大脑信号的可行性,如下所示:1)广义线性模型(GLM)分析;2)支持向量机(SVM)分类;3)“胜者通吃”;4)相对优势。
使用这四种方法和我们的数据,我们发现很少有体素在手腕伸展或弯曲时具有独特的活性。SVM 仅导致最小的分类准确性。手腕伸展与弯曲之间的激活幅度没有显著差异;然而,体素簇显示伸展信号>弯曲信号,其他簇则相反。激活的空间模式在不同的受试者之间存在差异。
我们在健康成年人中获得明确的组结果遇到了许多障碍。这些障碍包括以下几点:在所有研究的测量中,健康成年人之间的变异性很高;唯一活跃的体素与同时适用于伸展和弯曲运动的体素非常接近;通常,同时适用于两种运动的体素的信号幅度大于任何给定的单一运动的唯一活跃体素的幅度。我们的结果表明,为了从 fMRI 数据中开发出一种真正有效的区分手腕伸展与手腕弯曲的方法,需要更高的成像精度。