论文标题
迈向听觉幻影感知的认知计算神经科学
Towards a Cognitive Computational Neuroscience of Auditory Phantom Perceptions
论文作者
论文摘要
为了对耳鸣在大脑中的出现有一种机械理解,我们必须构建模仿耳鸣发展和感知的生物学上合理的计算模型,并通过大脑和行为实验测试暂定模型。我们特别关注耳鸣研究,我们回顾了人工智能,心理学和神经科学交集的最新工作,表明新的研究议程遵循这样一种观念,即实验只有在测试大脑计算模型时才能产生理论见解。这种观点挑战了这一普遍的看法,即耳鸣研究主要是数据有限的,并且通过先进的数据分析算法进行分析的大型,多模式和复杂的数据集将最终导致对耳鸣如何出现的基本见解。然而,有证据表明,尽管现代技术允许在动物和人类中以富裕方式评估神经活动,但经验测试一种关于耳鸣的口头定义的假设,但永远不会导致机械理解。取而代之的是,假设检验需要与产生可验证预测的计算模型的构建相辅相成。我们认为,即使当代的人工智能和机器学习方法在很大程度上缺乏生物学上的合理性,但要构建的模型仍必须借鉴这些领域的概念,因为它们已经证明在建模大脑功能方面做得很好。然而,必须连续提高生物忠诚度,从而导致更加细粒度的模型,最终允许在应用动物或患者研究中使用时甚至测试硅中可能的治疗策略。
In order to gain a mechanistic understanding of how tinnitus emerges in the brain, we must build biologically plausible computational models that mimic both tinnitus development and perception, and test the tentative models with brain and behavioral experiments. With a special focus on tinnitus research, we review recent work at the intersection of artificial intelligence, psychology and neuroscience, indicating a new research agenda that follows the idea that experiments will yield theoretical insight only when employed to test brain-computational models. This view challenges the popular belief, that tinnitus research is primarily data limited, and that producing large, multi-modal, and complex datasets, analyzed with advanced data analysis algorithms, will finally lead to fundamental insights into how tinnitus emerges. However, there is converging evidence that although modern technologies allow assessing neural activity in unprecedentedly rich ways in both, animals and humans, empirical testing one verbally defined hypothesis about tinnitus after another, will never lead to a mechanistic understanding. Instead, hypothesis testing needs to be complemented with the construction of computational models that generate verifiable predictions. We argue, that even though, contemporary artificial intelligence and machine learning approaches largely lack biological plausibility, the models to be constructed will have to draw on concepts from these fields, since they have already proven to do well in modeling brain function. Nevertheless, biological fidelity will have to be increased successively, leading to ever better and fine-grained models, allowing at the end for even testing possible treatment strategies in silico, before application in animal or patient studies.