Subclinical tremor differentiation using long short-term memory networks.

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL
Gerard Ruchin Randil Nanayakkara, Ping Yi Chan
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Abstract

Subclinical amplitudes complicate the differentiation between essential tremor (ET) and Parkinson's disease (PD) tremor, which is uncertain even when the tremors are apparent. Despite their prevalence-up to 30% of PD cases exhibit subclinical tremors-these tremors remain inadequately studied. Therefore, this study explores the potential of artificial intelligence (AI) to address this differentiation uncertainty. Our objective is to develop a deep learning model that can differentiate among subclinical tremors due to PD, ET, and normal physiological tremors. Subclinical tremor data were obtained from inertial sensors placed on the hands and arms of 51 PD, 15 ET, and 58 normal subjects. The AI architecture used was designed using a long short-term memory network (LSTM) and was trained on the short-time Fourier transformed subclinical tremor data as the input features. The network was trained separately to differentiate firstly between PD and ET tremors and then between PD, ET, and physiological tremors and yielded accuracies of 95% and 93%, respectively. Comparative analysis with existing convolutional LSTM demonstrated the superior performance of our work. The proposed method has 30-50% better accuracies when classifying low amplitude tremors as compared to the reference method. Future enhancements aim to enhance model interpretability and validate on larger, more diverse datasets, including action tremors. The proposed work can potentially serve as a valuable tool for clinicians, aiding in the differentiation of subclinical tremors common in Parkinson's disease, which in turn enhances diagnostic accuracy and informs treatment decisions.

利用长短期记忆网络鉴别亚临床震颤。
亚临床振幅使特发性震颤(ET)和帕金森病(PD)震颤的区分复杂化,即使在震颤明显时也不确定。尽管其患病率高达30%的PD病例表现为亚临床震颤,但这些震颤仍未得到充分研究。因此,本研究探讨了人工智能(AI)解决这种差异化不确定性的潜力。我们的目标是开发一个深度学习模型,可以区分由PD、ET和正常生理震颤引起的亚临床震颤。亚临床震颤数据通过放置在51名PD、15名ET和58名正常人手上和手臂上的惯性传感器获得。所使用的AI架构采用长短期记忆网络(LSTM)设计,并以短时傅里叶变换亚临床震颤数据作为输入特征进行训练。该网络分别进行训练,首先区分PD和ET震颤,然后区分PD、ET和生理性震颤,准确率分别为95%和93%。与现有卷积LSTM的对比分析证明了我们的工作具有优越的性能。与参考方法相比,该方法对低振幅地震进行分类的准确率提高了30-50%。未来的增强旨在增强模型的可解释性,并在更大、更多样化的数据集(包括动作震动)上进行验证。这项工作可能会成为临床医生的宝贵工具,帮助区分帕金森病中常见的亚临床震颤,从而提高诊断准确性并为治疗决策提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
8.40
自引率
4.50%
发文量
110
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