基于深度学习的中枢神经系统损伤无偏见运动学分析方法。

IF 4.6 2区 医学 Q1 NEUROSCIENCES
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引用次数: 0

摘要

创伤性脊髓损伤(SCI)是一种破坏性疾病,仅在美国就有 30 多万人受到影响。根据损伤的严重程度,SCI 可导致不同程度的感觉运动障碍和瘫痪。尽管我们对 SCI 潜在病理机制的认识取得了进展,并确定了有望修复和恢复功能的分子靶点,但投入临床应用的疗法却寥寥无几。为了提高临床转化的成功率,需要更加可靠、灵敏和可重复的功能评估方法。对患有 SCI 的啮齿动物进行运动评估的黄金标准是巴索-比蒂-布雷斯纳汉量表(BBB)和巴索小鼠量表(BMS)。为了克服现有方法的不足,我们基于 DeepLabCut 开源工具箱生成的深度学习算法,开发了两种独立的小鼠无标记运动学分析范例:MotorBox 和 MotoRater。MotorBox 系统使用的是最初设计的定制腔体,而 MotoRater 系统则是在商用 MotoRater 设备上实现的。我们将 MotorBox 和 MotoRater 系统与传统的 BMS 测试进行了比较,验证了这两个系统,并提取了运动和步态指标,这些指标可以准确、灵敏地反映小鼠受伤后的运动功能,同时消除研究人员的偏差和变异性。MotorBox和/或MotoRater评估与BMS评分的整合将提供更广泛的运动特定方面的信息,确保损伤后行为结果的准确性、严谨性和可重复性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A deep learning-based approach for unbiased kinematic analysis in CNS injury

Traumatic spinal cord injury (SCI) is a devastating condition that impacts over 300,000 individuals in the US alone. Depending on the severity of the injury, SCI can lead to varying degrees of sensorimotor deficits and paralysis. Despite advances in our understanding of the underlying pathological mechanisms of SCI and the identification of promising molecular targets for repair and functional restoration, few therapies have made it into clinical use. To improve the success rate of clinical translation, more robust, sensitive, and reproducible means of functional assessment are required. The gold standards for the evaluation of locomotion in rodents with SCI are the Basso Beattie Bresnahan (BBB) scale and Basso Mouse Scale (BMS).

To overcome the shortcomings of current methods, we developed two separate markerless kinematic analysis paradigms in mice, MotorBox and MotoRater, based on deep-learning algorithms generated with the DeepLabCut open-source toolbox. The MotorBox system uses an originally designed, custom-made chamber, and the MotoRater system was implemented on a commercially available MotoRater device. We validated the MotorBox and MotoRater systems by comparing them with the traditional BMS test and extracted metrics of movement and gait that can provide an accurate and sensitive representation of mouse locomotor function post-injury, while eliminating investigator bias and variability. The integration of MotorBox and/or MotoRater assessments with BMS scoring will provide a much wider range of information on specific aspects of locomotion, ensuring the accuracy, rigor, and reproducibility of behavioral outcomes after SCI.

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来源期刊
Experimental Neurology
Experimental Neurology 医学-神经科学
CiteScore
10.10
自引率
3.80%
发文量
258
审稿时长
42 days
期刊介绍: Experimental Neurology, a Journal of Neuroscience Research, publishes original research in neuroscience with a particular emphasis on novel findings in neural development, regeneration, plasticity and transplantation. The journal has focused on research concerning basic mechanisms underlying neurological disorders.
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