An Open-Source Deep Learning-Based GUI Toolbox for Automated Auditory Brainstem Response Analyses (ABRA).

Abhijeeth Erra, Jeffrey Chen, Cayla M Miller, Elena Chrysostomou, Shannon Barret, Yasmin M Kassim, Rick A Friedman, Amanda Lauer, Federico Ceriani, Walter Marcotti, Cody Carroll, Uri Manor
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Abstract

Hearing loss is a pervasive global health challenge with profound impacts on communication, cognitive function, and quality of life. Recent studies have established age-related hearing loss as a significant risk factor for dementia, highlighting the importance of hearing loss research. Auditory brainstem responses (ABRs), which are electrophysiological recordings of synchronized neural activity from the auditory nerve and brainstem, serve as in vivo readouts for sensory hair cell, synaptic integrity, hearing sensitivity, and other key features of auditory pathway functionality, making them highly valuable for both basic neuroscience research and clinical diagnostics. Despite their utility, traditional ABR analyses rely heavily on subjective manual interpretation, leading to considerable variability and limiting reproducibility across studies. Here, we introduce Auditory Brainstem Response Analyzer (ABRA), a novel open-source graphical user interface powered by deep learning, which automates and standardizes ABR waveform analysis. ABRA employs convolutional neural networks trained on diverse datasets collected from multiple experimental settings, achieving rapid and unbiased extraction of key ABR metrics, including peak amplitude, latency, and auditory threshold estimates. We demonstrate that ABRA's deep learning models provide performance comparable to expert human annotators while dramatically reducing analysis time and enhancing reproducibility across datasets from different laboratories. By bridging hearing research, sensory neuroscience, and advanced computational techniques, ABRA facilitates broader interdisciplinary insights into auditory function. An online version of the tool is available for use at no cost at https://abra.ucsd.edu.

基于深度学习的开源GUI工具箱,用于自动听觉脑干响应分析(ABRA)。
听力损失是一项普遍存在的全球健康挑战,对沟通、认知功能和生活质量产生深远影响。最近的研究已经确定年龄相关性听力损失是痴呆的重要危险因素,强调了听力损失研究的重要性。听觉脑干反应(ABRs)是听神经和脑干同步神经活动的电生理记录,可作为感觉毛细胞、突触完整性、听觉灵敏度和其他听觉通路功能关键特征的体内读数,使其在基础神经科学研究和临床诊断中都具有很高的价值。尽管它们很实用,但传统的ABR分析严重依赖于主观的人工解释,导致相当大的可变性和限制了研究的可重复性。在这里,我们介绍了听觉脑干响应分析仪(ABRA),这是一个基于深度学习的新型开源图形用户界面,可以自动化和标准化ABR波形分析。ABRA采用卷积神经网络对从多个实验设置中收集的不同数据集进行训练,实现了关键ABR指标的快速无偏提取,包括峰值幅度、延迟和听觉阈值估计。我们证明了ABRA的深度学习模型提供了与专家人类注释器相当的性能,同时显着减少了分析时间并增强了来自不同实验室的数据集的可重复性。通过连接听觉研究、感觉神经科学和先进的计算技术,ABRA促进了对听觉功能更广泛的跨学科见解。该工具的在线版本可在https://abra.ucsd.edu免费使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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