Vanderbilt University Institute of Imaging Science (VUIIS), Vanderbilt University Medical Center, Nashville, TN, USA; Vanderbilt Institute of Surgery and Engineering (VISE), Vanderbilt University Medical Center, Nashville, TN, USA; Department of Radiology and Radiological Sciences, Vanderbilt University Medical Center, Nashville, TN, USA.
Vanderbilt University Institute of Imaging Science (VUIIS), Vanderbilt University Medical Center, Nashville, TN, USA; Department of Radiology and Radiological Sciences, Vanderbilt University Medical Center, Nashville, TN, USA.
Behav Brain Res. 2023 Apr 12;443:114150. doi: 10.1016/j.bbr.2022.114150. Epub 2022 Oct 7.
Comprehensive characterizations of hand grasping behaviors after cervical spinal cord injuries are fundamental for developing rehabilitation strategies to promote recovery in spinal-cord-injured primates. We used the machine-learning-based video analysis software, DeepLabCut, to sensitively quantify kinematic aspects of grasping behavioral deficits in squirrel monkeys with C5-level spinal cord injuries. Three squirrel monkeys were trained to grasp sugar pellets from wells of varying depths before and after a left unilateral lesion of the cervical dorsal column. Using DeepLabCut, we identified post-lesion deficits in kinematic grasping behavior that included changes in digit orientation, increased variance in vertical and horizontal digit movement, and longer time to complete the task. While video-based analyses of grasping behavior demonstrated deficits in fine-scale digit function that persisted through at least 14 weeks post-injury, traditional end-point behavioral analyses showed a recovery of global hand function as evidenced by recovery of the proportion of successful retrievals by approximately 14 weeks post-injury. The combination of traditional end-point and video-based kinematic analyses provides a more comprehensive characterization of grasping behavior and highlights that global grasping performance may recover despite persistent fine-scale kinematic deficits in digit function. Machine-learning-based video analysis of kinematic digit function, in conjunction with traditional end-point behavioral analyses of grasping behavior, provide sensitive and specific indices for monitoring recovery of fine-grained hand sensorimotor behavior after spinal cord injury that can aid future studies that seek to develop targeted therapeutic interventions for improving behavioral outcomes.
全面描述颈脊髓损伤后手的抓握行为对于开发康复策略以促进脊髓损伤灵长类动物的恢复至关重要。我们使用基于机器学习的视频分析软件 DeepLabCut ,敏感地量化了 C5 脊髓损伤猕猴抓握行为缺陷的运动学方面。三只松鼠猴在接受左侧单侧颈背柱损伤前后,接受了从不同深度的井中抓取糖丸的训练。使用 DeepLabCut ,我们发现运动学抓握行为存在损伤后缺陷,包括指骨方向变化、垂直和水平指骨运动的方差增加以及完成任务的时间延长。虽然抓握行为的基于视频的分析显示出精细的手指功能缺陷,这些缺陷至少持续到损伤后 14 周,但传统的终点行为分析显示,手功能的整体恢复,证据是成功取回的比例在损伤后 14 周左右恢复。传统终点和基于视频的运动学分析的结合提供了更全面的抓握行为特征,并强调尽管手指功能的运动学精细缺陷持续存在,整体抓握性能仍可能恢复。基于机器学习的运动学手指功能视频分析,结合抓握行为的传统终点行为分析,为监测脊髓损伤后精细手感觉运动行为的恢复提供了敏感和特异的指标,有助于未来的研究,这些研究旨在开发有针对性的治疗干预措施,以改善行为结果。