J. Crayton Pruitt Family Department of Biomedical Engineering, Smart Medical Informatics Learning and Evaluation Lab, College of Engineering, University of Florida, PO Box 116131, Gainesville, FL, United States.
Laboratory for Rehabilitation Neuroscience, Department of Applied Physiology and Kinesiology, University of Florida, PO Box 118206, Gainesville, FL, United States.
Neuroimage. 2021 Dec 15;245:118710. doi: 10.1016/j.neuroimage.2021.118710. Epub 2021 Nov 12.
In addition to the well-established somatotopy in the pre- and post-central gyrus, there is now strong evidence that somatotopic organization is evident across other regions in the sensorimotor network. This raises several experimental questions: To what extent is activity in the sensorimotor network effector-dependent and effector-independent? How important is the sensorimotor cortex when predicting the motor effector? Is there redundancy in the distributed somatotopically organized network such that removing one region has little impact on classification accuracy? To answer these questions, we developed a novel experimental approach. fMRI data were collected while human subjects performed a precisely controlled force generation task separately with their hand, foot, and mouth. We used a simple linear iterative clustering (SLIC) algorithm to segment whole-brain beta coefficient maps to build an adaptive brain parcellation and then classified effectors using extreme gradient boosting (XGBoost) based on parcellations at various spatial resolutions. This allowed us to understand how data-driven adaptive brain parcellation granularity altered classification accuracy. Results revealed effector-dependent activity in regions of the post-central gyrus, precentral gyrus, and paracentral lobule. SMA, regions of the inferior and superior parietal lobule, and cerebellum each contained effector-dependent and effector-independent representations. Machine learning analyses showed that increasing the spatial resolution of the data-driven model increased classification accuracy, which reached 94% with 1755 supervoxels. Our SLIC-based supervoxel parcellation outperformed classification analyses using established brain templates and random simulations. Occlusion experiments further demonstrated redundancy across the sensorimotor network when classifying effectors. Our observations extend our understanding of effector-dependent and effector-independent organization within the human brain and provide new insight into the functional neuroanatomy required to predict the motor effector used in a motor control task.
除了在中央前回和中央后回中已经确立的躯体定位之外,现在有强有力的证据表明,躯体定位组织在感觉运动网络的其他区域中也是明显的。这提出了几个实验问题:感觉运动网络的活动在多大程度上是与效应器有关和无关的?当预测运动效应器时,感觉运动皮层有多重要?在分布式躯体定位组织的网络中是否存在冗余,以至于去除一个区域对分类准确性几乎没有影响?为了回答这些问题,我们开发了一种新的实验方法。在人类受试者分别用手、脚和口进行精确控制的力产生任务时,采集 fMRI 数据。我们使用简单线性迭代聚类(SLIC)算法分割全脑β系数图,以构建自适应脑区划分,然后使用基于不同空间分辨率的区划分的极端梯度增强(XGBoost)对效应器进行分类。这使我们能够了解数据驱动的自适应脑区划分粒度如何改变分类准确性。结果显示,在后中央回、中央前回和旁中央小叶的区域中存在与效应器有关的活动。SMA、下顶叶和上顶叶以及小脑区域都包含与效应器有关和无关的表示。机器学习分析表明,随着数据驱动模型的空间分辨率的增加,分类准确性增加,当使用 1755 个超体素时,分类准确性达到 94%。我们基于 SLIC 的超体素分区在使用既定脑模板和随机模拟的分类分析中表现更好。闭塞实验进一步证明了在分类效应器时,感觉运动网络中的冗余性。我们的观察结果扩展了我们对人类大脑中与效应器有关和无关组织的理解,并为预测运动控制任务中使用的运动效应器所需的功能神经解剖学提供了新的见解。