首页> 外文期刊>Frontiers in Neuroinformatics >A machine learning methodology for the selection and classification of spontaneous spinal cord dorsum potentials allows disclosure of structured (non-random) changes in neuronal connectivity induced by nociceptive stimulation
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A machine learning methodology for the selection and classification of spontaneous spinal cord dorsum potentials allows disclosure of structured (non-random) changes in neuronal connectivity induced by nociceptive stimulation

机译:一种用于选择和分类自发脊髓背侧电位的机器学习方法,可以揭示伤害性刺激引起的神经元连接性的结构性(非随机)变化

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Previous studies aimed to disclose the functional organization of the neuronal networks involved in the generation of the spontaneous cord dorsum potentials (CDPs) generated in the lumbosacral spinal segments used predetermined templates to select specific classes of spontaneous CDPs. Since this procedure was time consuming and required continuous supervision, it was limited to the analysis of two specific types of CDPs (negative CDPs and negative positive CDPs), thus excluding potentials that may reflect activation of other neuronal networks of presumed functional relevance. We now present a novel procedure based in machine learning that allows the efficient and unbiased selection of a variety of spontaneous CDPs with different shapes and amplitudes. The reliability and performance of the present method is evaluated by analyzing the effects on the probabilities of generation of different classes of spontaneous CDPs induced by the intradermic injection of small amounts of capsaicin in the anesthetized cat, a procedure known to induce a state of central sensitization leading to allodynia and hyperalgesia. The results obtained with the selection method presently described allowed detection of spontaneous CDPs with specific shapes and amplitudes that are assumed to represent the activation of functionally coupled sets of dorsal horn neurones that acquire different, structured configurations in response to nociceptive stimuli. These changes are considered as responses tending to adequate transmission of sensory information to specific functional requirements as part of homeostatic adjustments.
机译:旨在揭示参与在腰spin部脊柱节段中产生的自发脊髓背电位(CDP)的神经元网络的功能组织的先前研究使用预定模板来选择特定类别的自发CDP。由于此过程很耗时且需要连续的监督,因此仅限于分析两种特定类型的CDP(阴性CDP和阴性阳性CDP),因此排除了可能反映可能与功能相关的其他神经元网络激活的电位。现在,我们提出一种基于机器学习的新颖程序,该程序可以高效,无偏地选择具有不同形状和幅度的各种自发CDP。通过分析在麻醉猫中皮内注射少量辣椒素对已知种类的自发性CDP产生的概率的影响,评估了本方法的可靠性和性能,该过程已知会引起中枢敏化状态导致异常性疼痛和痛觉过敏。用目前描述的选择方法获得的结果允许检测具有特定形状和幅度的自发CDP,这些CDP被认为代表了功能性耦合的背角神经元的激活,这些背角神经元响应伤害性刺激而获得了不同的结构化构型。这些变化被认为是趋向于将感觉信息充分传递到特定功能要求的反应,作为稳态调节的一部分。

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