Hu Suyi, Hall Deborah A, Zubler Frédéric, Sznitman Raphael, Anschuetz Lukas, Caversaccio Marco, Wimmer Wilhelm
Department for Otolaryngology, Head and Neck Surgery, Inselspital, University Hospital Bern, University of Bern, Switzerland; Hearing Research Laboratory, ARTORG Center for Biomedical Engineering Research, University of Bern, Switzerland.
Hearing Sciences, Division of Clinical Neuroscience, School of Medicine, University of Nottingham, Nottingham, UK; Department of Psychology, School of Social Sciences, Heriot-Watt University Malaysia, Putrajaya, Malaysia.
Hear Res. 2021 Oct;410:108338. doi: 10.1016/j.heares.2021.108338. Epub 2021 Aug 24.
Recently, Bayesian brain-based models emerged as a possible composite of existing theories, providing an universal explanation of tinnitus phenomena. Yet, the involvement of multiple synergistic mechanisms complicates the identification of behavioral and physiological evidence. To overcome this, an empirically tested computational model could support the evaluation of theoretical hypotheses by intrinsically encompassing different mechanisms. The aim of this work was to develop a generative computational tinnitus perception model based on the Bayesian brain concept. The behavioral responses of 46 tinnitus subjects who underwent ten consecutive residual inhibition assessments were used for model fitting. Our model was able to replicate the behavioral responses during residual inhibition in our cohort (median linear correlation coefficient of 0.79). Using the same model, we simulated two additional tinnitus phenomena: residual excitation and occurrence of tinnitus in non-tinnitus subjects after sensory deprivation. In the simulations, the trajectories of the model were consistent with previously obtained behavioral and physiological observations. Our work introduces generative computational modeling to the research field of tinnitus. It has the potential to quantitatively link experimental observations to theoretical hypotheses and to support the search for neural signatures of tinnitus by finding correlates between the latent variables of the model and measured physiological data.
最近,基于贝叶斯脑的模型作为现有理论的一种可能组合出现,为耳鸣现象提供了一种通用解释。然而,多种协同机制的参与使得行为和生理证据的识别变得复杂。为了克服这一问题,一个经过实证检验的计算模型可以通过内在地包含不同机制来支持理论假设的评估。这项工作的目的是基于贝叶斯脑概念开发一个生成性耳鸣感知计算模型。对46名耳鸣受试者进行连续十次残余抑制评估的行为反应用于模型拟合。我们的模型能够复制我们队列中残余抑制期间的行为反应(中位数线性相关系数为0.79)。使用相同的模型,我们模拟了另外两种耳鸣现象:残余兴奋和感觉剥夺后非耳鸣受试者出现耳鸣。在模拟中,模型的轨迹与先前获得的行为和生理观察结果一致。我们的工作将生成性计算建模引入耳鸣研究领域。它有可能将实验观察结果与理论假设进行定量联系,并通过找到模型的潜在变量与测量的生理数据之间的相关性来支持寻找耳鸣的神经特征。