Noisy galvanic vestibular stimulation induces stochastic resonance in vestibular perceptual thresholds assessed efficiently using confidence reports.

IF 1.7 4区 医学 Q4 NEUROSCIENCES Experimental Brain Research Pub Date : 2024-12-24 DOI:10.1007/s00221-024-06984-8
Talie Stone, Torin K Clark, David R Temple
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Abstract

In sensory perception, stochastic resonance (SR) refers to the application of noise to enhance information transfer, allowing for the sensing of lower-level stimuli. Previously, subjective-assessments identified SR in vestibular perceptual thresholds, assessed using a standard two alternative (i.e., binary), forced-choice task, when applying noisy Galvanic Vestibular Stimulation (nGVS). However, this required extensive testing of at least 100 binary trials to yield sufficiently precise thresholds at each of several nGVS amplitudes, leading to confounds of fatigue, sleepiness, learning, etc. stalling the study of vestibular SR. To mitigate this, we explore confidence reporting, which via a confidence signal detection (CSD) model may much more efficiently identify SR (i.e., with fewer trials), if SR exists in CSD thresholds. To test this, Y-translation thresholds were tested with 100 trials at each nGVS amplitude (0 or sham, 0.1, 0.2, 0.3 and 0.4 mA peak-to-peak). To objectively identify SR, we applied a machine learning classification algorithm trained on simulated datasets. We found significant evidence of SR exhibition using CSD thresholds (p = 0.0025), with six of 10 subjects classified as exhibiting SR. Next, we considered fewer trials, finding the false positive rate of SR identification to be better using CSD thresholds with as few as 50 trials, when compared to 100 binary trials. Applying the CSD model to our subject's data with a subset of their trials found similar classifications of SR exhibition as with 100 binary trials. We demonstrate CSD thresholds exhibit SR, proving a means of better and much more efficiently identifying SR.

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噪声前庭电刺激诱导随机共振的前庭知觉阈值评估有效地使用置信度报告。
在感官知觉中,随机共振(random resonance, SR)是指利用噪声来增强信息传递,从而感知到较低水平的刺激。以前,主观评估确定了前庭感知阈值中的SR,使用标准的两种选择(即二元),强迫选择任务来评估,当使用嘈杂的前庭电刺激(nGVS)时。然而,这需要对至少100个二元试验进行广泛的测试,才能在几个nGVS振幅的每个值上产生足够精确的阈值,从而导致疲劳、嗜睡、学习等混淆,从而拖延前庭SR的研究。为了缓解这一问题,我们探索了置信度报告,如果SR存在于CSD阈值中,则通过置信度信号检测(CSD)模型可以更有效地识别SR(即较少的试验)。为了验证这一点,y平移阈值在每个nGVS振幅(0或假、0.1、0.2、0.3和0.4 mA峰对峰)下进行了100次试验。为了客观地识别SR,我们应用了在模拟数据集上训练的机器学习分类算法。我们使用CSD阈值发现了SR显示的显著证据(p = 0.0025), 10个受试者中有6个被归类为SR。接下来,我们考虑了更少的试验,发现与100个二元试验相比,使用CSD阈值的SR识别假阳性率更低,只有50个试验。将CSD模型应用于我们受试者的数据及其试验的子集,发现与100个二元试验相似的SR表现分类。我们证明了CSD阈值显示SR,证明了一种更好、更有效地识别SR的方法。
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来源期刊
CiteScore
3.60
自引率
5.00%
发文量
228
审稿时长
1 months
期刊介绍: Founded in 1966, Experimental Brain Research publishes original contributions on many aspects of experimental research of the central and peripheral nervous system. The focus is on molecular, physiology, behavior, neurochemistry, developmental, cellular and molecular neurobiology, and experimental pathology relevant to general problems of cerebral function. The journal publishes original papers, reviews, and mini-reviews.
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