Lu Huimin, Qi Guolian, Wu Dalong, Lin Chenglin, Ma Songzhe, Shi Yingqi, Xue Han
School of Computer Science and Engineering, Changchun University of Technology, Changchun, Jilin, China.
Jilin Provincial Smart Health Joint Innovation Laboratory for the New Generation of AI, Changchun Univerity of Technology, Changchun, Jilin, China.
PLoS One. 2025 Jan 24;20(1):e0318021. doi: 10.1371/journal.pone.0318021. eCollection 2025.
Parkinson's disease (PD) is a common disease of the elderly. Given the easy accessibility of handwriting samples, many researchers have proposed handwriting-based detection methods for Parkinson's disease. Extracting more discriminative features from handwriting is an important step. Although many features have been proposed in previous researches, the insight analysis of the combination of handwriting's kinematic, pressure, and angle dynamic features is lacking. Moreover, most existing feature is incompletely represented, with feature information lost. Therefore, to solve the above problems, a new feature extraction approach for PD detection is proposed using handwriting. First, built on the kinematic, pressure, and angle dynamic features, we propose a moment feature by composed these three types of features, an overall representation of these three types of features information. Then, we proposed a feature extraction method to extract time-frequency-based statistical (TF-ST) features from dynamic handwriting features in terms of their temporal and frequency characteristics. Finally, we proposed an escape Coati Optimization Algorithm (eCOA) for global optimization to enhance classification performance. Self-constructed and public datasets are used to verify the proposed method's effectiveness respectively. The experimental results showed an accuracy of 97.95% and 98.67%, a sensitivity of 98.15% (average) and 97.78%, a specificity of 99.17% (average) and 100%, and an AUC of 98.66% (average) and 98.89%. The code is available at https://github.com/dreamhcy/MLforPD.
帕金森病(PD)是一种常见的老年疾病。鉴于手写样本易于获取,许多研究人员提出了基于手写的帕金森病检测方法。从手写中提取更具判别力的特征是重要的一步。尽管先前的研究中已经提出了许多特征,但缺乏对手写运动学、压力和角度动态特征组合的深入分析。此外,大多数现有特征表示不完整,存在特征信息丢失的情况。因此,为了解决上述问题,提出了一种利用手写进行帕金森病检测的新特征提取方法。首先,基于运动学、压力和角度动态特征,通过组合这三种类型的特征提出了一种矩特征,它是这三种类型特征信息的整体表示。然后,提出了一种特征提取方法,根据动态手写特征的时间和频率特性提取基于时频的统计(TF-ST)特征。最后,提出了一种用于全局优化的逃逸浣熊优化算法(eCOA)以提高分类性能。分别使用自建数据集和公共数据集来验证所提方法的有效性。实验结果显示准确率分别为97.95%和98.67%,灵敏度平均为98.15%和97.78%,特异性平均为99.17%和100%,曲线下面积(AUC)平均为98.66%和98.89%。代码可在https://github.com/dreamhcy/MLforPD获取。