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人工智能辅助的松鼠猴颈椎损伤后恢复过程中抓握和伸展行为的 3D 分析。

AI-assisted 3D analysis of grasping and reaching behavior of squirrel monkeys during recovery from cervical spinal cord injury.

机构信息

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.

出版信息

Behav Brain Res. 2025 Jan 5;476:115265. doi: 10.1016/j.bbr.2024.115265. Epub 2024 Sep 20.

Abstract

We have previously demonstrated that machine learning-based video analysis, conducted via DeepLabCut, is more sensitive for detecting subtle deficits in hand grasping behavior than traditional end-point performance assessments. This superiority was observed in a nonhuman primate (NHP) model of cervical spinal cord injury, specifically a dorsal column lesion (DCL). The current study aims to further characterize the kinematic aspects of the deficits in hand reaching, grasping, and retrieving behavior from a 3D perspective following a DCL. Squirrel monkeys were trained to retrieve sugar pellets from eight wells, which were located either on a flat plate or a raised tube with varying well depths. This setup was designed to require coordinated finger movements during the task. Immediately after the DCL, the animals exhibited measurable behavioral deficits. These were characterized by significant increases in grasping speed squared and trial completion time, markedly widened movement trajectories of individual fingers, and abnormalities in inter-finger distance and orientation. Increased task difficulty was associated with more pronounced behavioral deficits. By three months post-DCL, video-based measurements indicated no significant recovery, even though global end-point performance had returned to baseline levels. Our findings demonstrate that deprivation of tactile information results in impaired dexterous hand behavior involving coordinated finger movements, and the impairment is sustained for 20 weeks. This spinal cord injury (SCI) model, along with DeepLapCut analysis, provides a valuable platform for separately evaluating sensory and motor functions and their contributions to dexterous hand behavior and may be used for evaluating therapeutic interventions using more sensitive behavioral outcome readouts.

摘要

我们之前已经证明,基于机器学习的视频分析(通过 DeepLabCut 进行)比传统的终点性能评估更能敏感地检测到手抓行为的细微缺陷。这种优势在非人类灵长类动物(NHP)的颈脊髓损伤模型中观察到,特别是背柱损伤(DCL)。本研究旨在进一步从 3D 角度描述 DCL 后手伸、抓握和取回行为的运动学方面的缺陷。松鼠猴被训练从八个井中取回糖丸,这些井要么位于平板上,要么位于带有不同井深的凸起管上。这个设置旨在要求在任务中协调手指运动。在 DCL 后,动物立即表现出可测量的行为缺陷。这些缺陷的特征是抓握速度平方和试验完成时间明显增加,单个手指的运动轨迹明显变宽,手指间距离和方向异常。任务难度的增加与更明显的行为缺陷有关。在 DCL 后三个月,基于视频的测量表明没有明显的恢复,尽管整体终点性能已恢复到基线水平。我们的发现表明,触觉信息的剥夺会导致涉及协调手指运动的灵巧手行为受损,并且这种损伤持续 20 周。这种脊髓损伤(SCI)模型以及 DeepLapCut 分析为分别评估感觉和运动功能及其对手灵巧手行为的贡献提供了一个有价值的平台,并且可以用于评估使用更敏感的行为结果测量的治疗干预措施。

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