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Accuracy Optimization of the Spike Sorting Algorithm for Classification of Neural Signals

机译:峰值分类算法在神经信号分类中的精度优化

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The Spike Sorting is an algorithm that allows extracting peculiar features from the neural signals and uniquely identifying the neurons that contributed to the generation of the recording. The literature shows that researches on this topic do not pay the due attention to the optimization process of the algorithm parameters. Here, an optimization process based on the multimodality approach is presented. It was aimed to select the best set of features to increase the accuracy of classification of neural signals. Simulated recordings were used to validate the approach. We demonstrated that triplets of optimized features were able to discriminate among 10 classes with an accuracy of ~95%; on the other hand, a fixed triplet reached an accuracy of ~90%. Moreover, accuracy decay with respect to the classes was slower and surprisingly more predictable.
机译:Spike Sorting是一种算法,可以从神经信号中提取特殊特征,并唯一地识别对记录产生有贡献的神经元。文献表明,关于该主题的研究并未对算法参数的优化过程给予应有的重视。在此,提出了一种基于多模态方法的优化过程。目的是选择最佳的功能集,以提高神经信号分类的准确性。模拟记录用于验证该方法。我们证明,经过优化的功能的三元组能够区分10个类别,准确度约为95%;另一方面,固定的三元组的准确度约为90%。此外,相对于类别的准确性下降较慢,并且出人意料地更容易预测。

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