Department of Electrical & Robotics Engineering, School of Engineering, Monash University Malaysia, Malaysia.
Department of Mechanical Engineering, School of Engineering, Monash University Malaysia, Bandar Sunway, Malaysia.
Comput Biol Med. 2024 Sep;180:108957. doi: 10.1016/j.compbiomed.2024.108957. Epub 2024 Aug 3.
The tremors of Parkinson's disease (PD) and essential tremor (ET) are known to have overlapping characteristics that make it complicated for clinicians to distinguish them. While deep learning is robust in detecting features unnoticeable to humans, an opaque trained model is impractical in clinical scenarios as coincidental correlations in the training data may be used by the model to make classifications, which may result in misdiagnosis. This work aims to overcome the aforementioned challenge of deep learning models by introducing a multilayer BiLSTM network with explainable AI (XAI) that can better explain tremulous characteristics and quantify the respective discovered important regions in tremor differentiation. The proposed network classifies PD, ET, and normal tremors during drinking actions and derives the contribution from tremor characteristics, (i.e., time, frequency, amplitude, and actions) utilized in the classification task. The analysis shows that the XAI-BiLSTM marks the regions with high tremor amplitude as important in classification, which is verified by a high correlation between relevance distribution and tremor displacement amplitude. The XAI-BiLSTM discovered that the transition phases from arm resting to lifting (during the drinking cycle) is the most important action to classify tremors. Additionally, the XAI-BiLSTM reveals frequency ranges that only contribute to the classification of one tremor class, which may be the potential distinctive feature to overcome the overlapping frequencies problem. By revealing critical timing and frequency patterns unique to PD and ET tremors, this proposed XAI-BiLSTM model enables clinicians to make more informed classifications, potentially reducing misclassification rates and improving treatment outcomes.
帕金森病(PD)和特发性震颤(ET)的震颤特征已知存在重叠,这使得临床医生难以区分它们。虽然深度学习在检测人类难以察觉的特征方面非常强大,但对于临床场景来说,不透明的训练模型是不切实际的,因为训练数据中的巧合相关性可能被模型用于进行分类,从而导致误诊。这项工作旨在通过引入具有可解释人工智能(XAI)的多层 BiLSTM 网络来克服深度学习模型的上述挑战,该网络可以更好地解释震颤特征,并量化震颤区分中各自发现的重要区域。所提出的网络对 PD、ET 和正常震颤进行分类,在饮水动作期间,分类任务利用了震颤特征(即时间、频率、幅度和动作)。分析表明,XAI-BiLSTM 将具有高震颤幅度的区域标记为分类中的重要区域,这与相关性分布和震颤位移幅度之间的高度相关性相验证。XAI-BiLSTM 发现,从手臂静止到抬起的过渡阶段(在饮水周期期间)是对震颤进行分类的最重要动作。此外,XAI-BiLSTM 揭示了仅对一种震颤分类有贡献的频率范围,这可能是克服重叠频率问题的潜在独特特征。通过揭示 PD 和 ET 震颤特有的关键时间和频率模式,这个 XAI-BiLSTM 模型使临床医生能够做出更明智的分类,有可能降低误诊率并改善治疗结果。