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Automated Cell-Type Classification and Death-Detection of Spinal Motoneurons

机译:脊髓运动神经元的自动细胞类型分类和死亡检测

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Spinal motoneurons (MNs) play a crucial role in movement control. Decoding the firing activity of spinal MNs could help in real-life challenges, such as enhancing the control of myoelectric prostheses and diagnosing neurodegenerative diseases. In this paper, we propose a machine learning approach to automatically classify MNs based on their firing activity. Applying the proposed approach to data from a MN computational model, the classification accuracy of all examined datasets exceeded 95%. We extended the approach to detecting the death of a given MN type using clustering validity index. Results indicated that 86% of the examined death-detection cases were detected accurately. These results demonstrate that the proposed approach is a successful step in automating neuronal cell-type classification.
机译:脊髓运动神经元(MNs)在运动控制中起着至关重要的作用。解码脊髓MNs的发射活动可以帮助解决现实生活中的挑战,例如增强对肌电假体的控制和诊断神经退行性疾病。在本文中,我们提出了一种机器学习方法,可以根据MN的触发活动对其进行自动分类。将所提出的方法应用于来自MN计算模型的数据,所有检查的数据集的分类精度均超过95%。我们扩展了使用聚类有效性指数检测给定MN型死亡的方法。结果表明,已检查的死亡检测病例中有86%被准确检测到。这些结果表明,提出的方法是自动化神经元细胞类型分类的成功步骤。

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