作者
Zhe Liu, Yun Li, Lina Yao, Molly Lucas, Jessica JM Monaghan, Yu Zhang
发表日期
2022/8/23
期刊
IEEE Transactions on Neural Systems and Rehabilitation Engineering
卷号
30
页码范围
2352-2361
出版商
IEEE
简介
With the development of digital technology, machine learning has paved the way for the next generation of tinnitus diagnoses. Although machine learning has been widely applied in EEG-based tinnitus analysis, most current models are dataset-specific. Each dataset may be limited to a specific range of symptoms, overall disease severity, and demographic attributes; further, dataset formats may differ, impacting model performance. This paper proposes a side-aware meta-learning for cross-dataset tinnitus diagnosis, which can effectively classify tinnitus in subjects of divergent ages and genders from different data collection processes. Owing to the superiority of meta-learning, our method does not rely on large-scale datasets like conventional deep learning models. Moreover, we design a subject-specific training process to assist the model in fitting the data pattern of different patients or healthy people. Our method …
引用总数
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Z Liu, Y Li, L Yao, M Lucas, JJM Monaghan, Y Zhang - IEEE Transactions on Neural Systems and …, 2022