An efficient tool for Parkinson's disease detection and severity grading based on time-frequency and fuzzy features of cumulative gait signals through improved LSTM networks

Q3 Medicine
Farhad Abedinzadeh Torghabeh , Yeganeh Modaresnia , Seyyed Abed Hosseini
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引用次数: 0

Abstract

Parkinson's disease (PD) is a widespread neurodegenerative condition that affects many individuals annually. Early identification and monitoring of disease progression are crucial to effectively managing symptoms and preventing motor complications. This research proposes an automated PD diagnosis and severity-grading model based on time-frequency and fuzzy features using improved uni-directional and bi-directional long short-term memory networks with sensitive hyperparameters optimization. We utilize vertical ground reaction force signals collected from Physionet's publicly available dataset recorded during regular and dual-task clinical trials of walking measurements. Only the cumulative signal of both feet was then utilized and segmented into 30-s windows without further pre-processing. Subsequently, we extracted only four key time-frequency and fuzzy features from each segment, effectively capturing the signal's inherent uncertainty. Bayesian optimization is employed in both detection and grading approaches to fine-tune the two critical hyperparameters: the initial learning rate and the number of hidden units in the network. The detection phase yields an exceptional accuracy of 99.19%, surpassing state-of-the-art studies with the same dataset. In the grading phase, classification based on the unified PD rating scale values achieves an accuracy of 92.28%. The proposed study delves into the potential of cumulative gait signals as a powerful diagnostic tool for PD, aiming to extract precise and intricate information by implementing straightforward and minimal processing endeavors. This method demonstrates significant efficiency in terms of complexity, cost, and energy consumption by utilizing a single-dimensional signal, eliminating the need for pre-processing steps, and limiting the features used for training.

通过改进的 LSTM 网络,基于累积步态信号的时频和模糊特征,开发帕金森病检测和严重程度分级的高效工具
帕金森病(Parkinson's disease,PD)是一种广泛的神经退行性疾病,每年都会影响许多人。早期识别和监测疾病进展对于有效控制症状和预防运动并发症至关重要。本研究提出了一种基于时间频率和模糊特征的帕金森病自动诊断和严重程度分级模型,该模型使用改进的单向和双向长短期记忆网络,并进行了灵敏的超参数优化。我们利用的垂直地面反作用力信号来自 Physionet 的公开数据集,该数据集记录了常规和双任务临床试验中的步行测量结果。我们只利用了双脚的累积信号,并将其分割成 30 秒的窗口,而没有进行进一步的预处理。随后,我们从每个片段中只提取了四个关键的时频和模糊特征,从而有效地捕捉到了信号固有的不确定性。在检测和分级方法中都采用了贝叶斯优化技术,以微调两个关键的超参数:初始学习率和网络中的隐藏单元数量。检测阶段的准确率高达 99.19%,超过了使用相同数据集进行的最先进研究。在分级阶段,基于统一的 PD 评级表值的分类准确率达到了 92.28%。所提出的研究深入探讨了累积步态信号作为诊断帕金森病的有力工具的潜力,旨在通过直接和最低限度的处理努力提取精确而复杂的信息。该方法利用单维信号,省去了预处理步骤,并限制了用于训练的特征,在复杂性、成本和能耗方面都表现出了显著的效率。
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来源期刊
Medicine in Novel Technology and Devices
Medicine in Novel Technology and Devices Medicine-Medicine (miscellaneous)
CiteScore
3.00
自引率
0.00%
发文量
74
审稿时长
64 days
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