Towards Parkinson's Disease Detection Through Analysis of Everyday Handwriting

被引:0
作者
Gallo-Aristizabal, Jeferson David [1 ]
Escobar-Grisales, Daniel [1 ]
Rios-Urrego, Cristian David [1 ]
Vargas-Bonilla, Jesus Francisco [1 ]
Garcia, Adolfo M. [2 ,3 ,4 ,5 ]
Orozco-Arroyave, Juan Rafael [1 ,6 ]
机构
[1] Univ Antioquia, GITA Lab, Fac Engn, Medellin 510010, Colombia
[2] Univ San Andres, Cognit Neurosci Ctr, B1644BID, Buenos Aires, Argentina
[3] Univ Calif San Francisco, Global Brain Hlth Inst GBHI, San Francisco, CA 94143 USA
[4] Trinity Coll Dublin, Dublin D02 R590, Ireland
[5] Univ Santiago de Chile, Dept Linguist & Literatura, Fac Humanidades, Santiago 9170020, Chile
[6] Univ Erlangen Nurnberg, LME Lab, D-91054 Erlangen, Germany
基金
美国国家卫生研究院;
关键词
Parkinson's disease; handwriting; convolutional neural networks; dynamic analysis; natural handwriting tasks; CLASSIFICATION; KINEMATICS; DIAGNOSIS;
D O I
10.3390/diagnostics15030381
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background: Parkinson's disease (PD) is the second most prevalent neurodegenerative disorder worldwide. People suffering from PD exhibit motor symptoms that affect the control of upper and lower limb movement. Among daily activities that depend on proper upper limb control is the handwriting process, which has been studied in state-of-the-art research, mainly considering non-semantic drawings like spirals, geometric figures, cursive lines, and others. Objectives: This paper analyzes the suitability of modeling the handwriting process of digits from 0 to 9 to automatically discriminate between PD patients and healthy control subjects. The main hypothesis is that modeling these numbers allows a more natural evaluation of upper limb control. Methods: Two approaches are considered: modeling of the images resulting from the strokes collected by the digital tablet and modeling of the time series yielded by the digital tablet while performing the strokes, i.e., time-dependent signals. The first approach is implemented by fine-tuning a CNN-based architecture, while the second approach is based on hand-crafted features measured upon the time series, namely pressure and kinematic measurements. Features extracted from time-dependent signals are represented following two strategies, one based on statistical functionals and the other one based on creating Gaussian Mixture Models (GMMs). Results: The experiments indicate that pressure-based features modeled with functionals are the ones that yield the highest accuracy, indicating that PD-related symptoms are better modeled with dynamic approaches than those based on images. Conclusions: The dynamic approach outperformed the image-based model, indicating that the writing process, modeled with signals collected over time, reveals motor symptoms more clearly than images resulting from handwriting. This finding is in line with previous results in the state-of-the-art research and constitutes a step forward to create more accurate and informative methods to detect and monitor PD symptoms.
引用
收藏
页数:13
相关论文
共 38 条
  • [1] Hornykiewicz O., Biochemical aspects of Parkinson’s disease, Neurology, 51, pp. S2-S9, (1998)
  • [2] Meder D., Herz D.M., Rowe J.B., Lehericy S., Siebner H.R., The role of dopamine in the brain-lessons learned from Parkinson’s disease, Neuroimage, 190, pp. 79-93, (2019)
  • [3] Sveinbjornsdottir S., The clinical symptoms of Parkinson’s disease, J. Neurochem, 139, pp. 318-324, (2016)
  • [4] Thomas M., Lenka A., Kumar Pal P., Handwriting analysis in Parkinson’s disease: Current status and future directions, Mov. Disord. Clin. Pract, 4, pp. 806-818, (2017)
  • [5] Letanneux A., Danna J., Velay J., Viallet F., Pinto S., From micrographia to Parkinson’s disease dysgraphia, Mov. Disord, 29, pp. 1467-1475, (2014)
  • [6] D'Alessandro T., Carmona-Duarte C., De Stefano C., Diaz M., Ferrer M., Fontanella F., A Machine Learning Approach to Analyze the Effects of Alzheimer’s Disease on Handwriting Through Lognormal Features, Proceedings of the Graphonomics in Human Body Movement: Bridging Research and Practice from Motor Control to Handwriting Analysis and Recognition (IGS), pp. 103-121
  • [7] D'Alessandro T., De Stefano C., Fontanella F., Nardone E., Pace C., From Handwriting Analysis to Alzheimer’s Disease Prediction: An Experimental Comparison of Classifier Combination Methods, Proceedings of the Document Analysis and Recognition—ICDAR 2024, pp. 334-351
  • [8] Impedovo D., Pirlo G., Dynamic Handwriting Analysis for the Assessment of Neurodegenerative Diseases: A Pattern Recognition Perspective, IEEE Rev. Biomed. Eng, 12, pp. 209-220, (2019)
  • [9] Aouraghe I., Khaissidi G., Mrabti M., A literature review of online handwriting analysis to detect Parkinson’s disease at an early stage, Multimed. Tools Appl, 82, pp. 11923-11948, (2023)
  • [10] Vessio G., Dynamic Handwriting Analysis for Neurodegenerative Disease Assessment: A Literary Review, Appl. Sci, 9, (2019)