Suppr超能文献

采用多重平均记录法识别感觉神经中的 Aδ 纤维。

Multiple averaged records to identify Aδ-fibers in sensory nerves.

机构信息

Department of Neurology, University of Minnesota, Minneapolis, MN, USA.

Department of Neurology, University of Minnesota, Minneapolis, MN, USA.

出版信息

J Neurosci Methods. 2024 May;405:110081. doi: 10.1016/j.jneumeth.2024.110081. Epub 2024 Feb 17.

Abstract

BACKGROUND

Existing methods identify only ≈10 Aδ-fibers in human sensory nerves per recording. This study examines methods to increase the detection of Aδ-fibers.

NEW METHOD

Two to 20 averages of 500 replicate responses to epidermal nerve stimulation are obtained. Pairs of different averages are constructed. Each pair is analyzed with algorithms applied to amplitude and frequency to detect replication of responses to stimulation as "simultaneous similarities in two averages" (SS2AVs) at ≥99.5th percentile of control. In a pair of averages the latencies of amplitude and frequency SS2AVs for the same response to stimulation may differ by ≤0.25 ms. Therefore, Aδ-fibers are identified by the 0.25 ms moving sum of SS2AV latencies of the pairs of averages.

RESULTS

Increasing averages increases pairs of different averages and detection of Aδ-fibers: from 2 to 10 Aδ-fibers with two averages (one pair) to >50 Aδ-fibers with 12-20 averages (66-190 pairs).

COMPARISON WITH EXISTING METHOD(S): Existing methods identify ≤10 Aδ-fibers in 10 averages/45 pairs with the medians of amplitude and frequency algorithms applied to all 45 pairs. This study identifies Aδ-fibers (i) by applying these algorithms at the 99.5th percentile of control, (ii) to each pair of averages and (iii) by the 0.25 ms sum of algorithm identified events (SS2AVs) in all pairs. These three changes significantly increase the detection of Aδ-fibers, e.g., in 10 averages/45pairs from 10 to 45.

CONCLUSIONS

Three modifications of existing methods can increase the detection of Aδ-fibers to an amount suitable (>50 with ≥12 averages) for statistical comparison of different nerves.

摘要

背景

现有的方法在人体感觉神经中每记录到约 10 根 Aδ 纤维。本研究探讨了增加 Aδ 纤维检测的方法。

新方法

获取 500 次表皮神经刺激重复反应的 2 到 20 个平均值。构建不同平均值的对。使用应用于幅度和频率的算法分析每一对,以检测刺激的反应复制为“两个平均值中的同时相似性”(SS2AV),达到对照的 99.5%以上。在一对平均值中,同一刺激的幅度和频率 SS2AV 的潜伏期差异可≤0.25ms。因此,通过对平均对的 SS2AV 潜伏期进行 0.25ms 的移动求和来识别 Aδ 纤维。

结果

增加平均值会增加不同平均值的对和 Aδ 纤维的检测:从 2 个平均值(一对)增加到 12-20 个平均值(66-190 对),检测到超过 10 根 Aδ 纤维。

与现有方法的比较

现有的方法在 10 个平均值/45 对中识别出≤10 根 Aδ 纤维,应用于所有 45 对的幅度和频率算法的中位数。本研究通过以下三种方法识别 Aδ 纤维:(i)在对照的 99.5%上应用这些算法,(ii)应用于每一对平均值,以及 (iii)通过所有对中算法识别事件(SS2AV)的 0.25ms 总和。这三个变化显著增加了 Aδ 纤维的检测,例如,在 10 个平均值/45 对中从 10 增加到 45。

结论

对现有方法的三种改进可以增加 Aδ 纤维的检测数量,达到足够的数量(超过 50 个,至少 12 个平均值),以进行不同神经的统计比较。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验