Knowledge Engineering and Discovery Research Institute (KEDRI), School of Engineering Computer and Mathematical Sciences, Auckland University of Technology, Auckland 1010, New Zealand.
Centre for Robotics & Vision (CeRV), Auckland University of Technology, Auckland 1010, New Zealand.
Sensors (Basel). 2023 Jan 12;23(2):902. doi: 10.3390/s23020902.
Tinnitus is a hearing disorder that is characterized by the perception of sounds in the absence of an external source. Currently, there is no pharmaceutical cure for tinnitus, however, multiple therapies and interventions have been developed that improve or control associated distress and anxiety. We propose a new Artificial Intelligence (AI) algorithm as a digital prognostic health system that models electroencephalographic (EEG) data in order to predict patients' responses to tinnitus therapies. The EEG data was collected from patients prior to treatment and 3-months following a sound-based therapy. Feature selection techniques were utilised to identify predictive EEG variables with the best accuracy. The patients' EEG features from both the frequency and functional connectivity domains were entered as inputs that carry knowledge extracted from EEG into AI algorithms for training and predicting therapy outcomes. The AI models differentiated the patients' outcomes into either therapy responder or non-responder, as defined by their Tinnitus Functional Index (TFI) scores, with accuracies ranging from 98%-100%. Our findings demonstrate the potential use of AI, including deep learning, for predicting therapy outcomes in tinnitus. The research suggests an optimal configuration of the EEG sensors that are involved in measuring brain functional changes in response to tinnitus treatments. It identified which EEG electrodes are the most informative sensors and how the EEG frequency and functional connectivity can better classify patients into the responder and non-responder groups. This has potential for real-time monitoring of patient therapy outcomes at home.
耳鸣是一种听觉障碍,其特征是在没有外部声源的情况下感知声音。目前,耳鸣尚无药物治疗方法,但是已经开发出多种疗法和干预措施,可以改善或控制相关的痛苦和焦虑。我们提出了一种新的人工智能 (AI) 算法,作为一种数字预后健康系统,该系统对脑电图 (EEG) 数据进行建模,以预测患者对耳鸣疗法的反应。在治疗前和基于声音的治疗后 3 个月,从患者中收集了 EEG 数据。利用特征选择技术来识别具有最佳准确性的预测性 EEG 变量。将来自频率和功能连通性域的患者 EEG 特征作为输入输入到 AI 算法中,这些输入携带从 EEG 中提取的知识,以用于训练和预测治疗结果。AI 模型将患者的结果分为治疗反应者或非反应者,其依据是他们的耳鸣功能指数 (TFI) 得分,准确率在 98%-100%之间。我们的研究结果表明,人工智能(包括深度学习)可用于预测耳鸣的治疗结果。研究表明了在测量大脑对耳鸣治疗反应的功能变化时涉及的 EEG 传感器的最佳配置。它确定了哪些 EEG 电极是最具信息量的传感器,以及 EEG 频率和功能连通性如何能够更好地将患者分为反应者和非反应者群体。这有可能实现患者在家中进行治疗结果的实时监测。