
LSTM-CNN : an efficient diagnostic network for Parkinson's disease utilizing dynamic handwriting analysis
- Author
- Xuechao Wang (UGent) , Junqing Huang (UGent) , Marianna Chatzakou (UGent) , Kadri Medijainen, Aaro Toomela, Sven Nomm and Michael Ruzhansky (UGent)
- Organization
- Project
- Abstract
- Background and objectives: Dynamic handwriting analysis, due to its noninvasive and readily accessible nature, has emerged as a vital adjunctive method for the early diagnosis of Parkinson's disease (PD). An essential step involves analysing subtle variations in signals to quantify PD dysgraphia. Although previous studies have explored extracting features from the overall signal, they may ignore the potential importance of local signal segments. In this study, we propose a lightweight network architecture to analyse dynamic handwriting signal segments of patients and present visual diagnostic results, providing an efficient diagnostic method. Methods: To analyse subtle variations in handwriting, we investigate time-dependent patterns in local representation of handwriting signals. Specifically, we segment the handwriting signal into fixed-length sequential segments and design a compact one-dimensional (1D) hybrid network to extract discriminative temporal features for classifying each local segment. Finally, the category of the handwriting signal is fully diagnosed through a majority voting scheme. Results: The proposed method achieves impressive diagnostic performance on the new DraWritePD dataset (with an accuracy of 96.2%, sensitivity of 94.5% and specificity of 97.3%) and the well-established PaHaW dataset (with an accuracy of 90.7%, sensitivity of 94.3% and specificity of 87.5%). Moreover, the network architecture stands out for its excellent lightweight design, occupying a mere 0.084M parameters, with only 0.59M floating-point operations. It also exhibits nearly real-time CPU inference performance, with the inference time for a single handwriting signal ranging from 0.106 to 0.220 s. Conclusions: We present a series of experiments with extensive analysis, which systematically demonstrate the effectiveness and efficiency of the proposed method in quantifying dysgraphia for a precise diagnosis of PD.
- Keywords
- Parkinson's disease, Dynamic handwriting analysis, Long short-term memory, Convolutional neural network, Real-time diagnosis, FEATURES
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Please use this url to cite or link to this publication: http://hdl.handle.net/1854/LU-01J0QQYWE863Z7TS1QK3BV8YC4
- MLA
- Wang, Xuechao, et al. “LSTM-CNN : An Efficient Diagnostic Network for Parkinson’s Disease Utilizing Dynamic Handwriting Analysis.” COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, vol. 247, 2024, pp. 1–9, doi:10.1016/j.cmpb.2024.108066.
- APA
- Wang, X., Huang, J., Chatzakou, M., Medijainen, K., Toomela, A., Nomm, S., & Ruzhansky, M. (2024). LSTM-CNN : an efficient diagnostic network for Parkinson’s disease utilizing dynamic handwriting analysis. COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 247, 1–9. https://doi.org/10.1016/j.cmpb.2024.108066
- Chicago author-date
- Wang, Xuechao, Junqing Huang, Marianna Chatzakou, Kadri Medijainen, Aaro Toomela, Sven Nomm, and Michael Ruzhansky. 2024. “LSTM-CNN : An Efficient Diagnostic Network for Parkinson’s Disease Utilizing Dynamic Handwriting Analysis.” COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE 247: 1–9. https://doi.org/10.1016/j.cmpb.2024.108066.
- Chicago author-date (all authors)
- Wang, Xuechao, Junqing Huang, Marianna Chatzakou, Kadri Medijainen, Aaro Toomela, Sven Nomm, and Michael Ruzhansky. 2024. “LSTM-CNN : An Efficient Diagnostic Network for Parkinson’s Disease Utilizing Dynamic Handwriting Analysis.” COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE 247: 1–9. doi:10.1016/j.cmpb.2024.108066.
- Vancouver
- 1.Wang X, Huang J, Chatzakou M, Medijainen K, Toomela A, Nomm S, et al. LSTM-CNN : an efficient diagnostic network for Parkinson’s disease utilizing dynamic handwriting analysis. COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE. 2024;247:1–9.
- IEEE
- [1]X. Wang et al., “LSTM-CNN : an efficient diagnostic network for Parkinson’s disease utilizing dynamic handwriting analysis,” COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, vol. 247, pp. 1–9, 2024.
@article{01J0QQYWE863Z7TS1QK3BV8YC4, abstract = {{Background and objectives: Dynamic handwriting analysis, due to its noninvasive and readily accessible nature, has emerged as a vital adjunctive method for the early diagnosis of Parkinson's disease (PD). An essential step involves analysing subtle variations in signals to quantify PD dysgraphia. Although previous studies have explored extracting features from the overall signal, they may ignore the potential importance of local signal segments. In this study, we propose a lightweight network architecture to analyse dynamic handwriting signal segments of patients and present visual diagnostic results, providing an efficient diagnostic method. Methods: To analyse subtle variations in handwriting, we investigate time-dependent patterns in local representation of handwriting signals. Specifically, we segment the handwriting signal into fixed-length sequential segments and design a compact one-dimensional (1D) hybrid network to extract discriminative temporal features for classifying each local segment. Finally, the category of the handwriting signal is fully diagnosed through a majority voting scheme. Results: The proposed method achieves impressive diagnostic performance on the new DraWritePD dataset (with an accuracy of 96.2%, sensitivity of 94.5% and specificity of 97.3%) and the well-established PaHaW dataset (with an accuracy of 90.7%, sensitivity of 94.3% and specificity of 87.5%). Moreover, the network architecture stands out for its excellent lightweight design, occupying a mere 0.084M parameters, with only 0.59M floating-point operations. It also exhibits nearly real-time CPU inference performance, with the inference time for a single handwriting signal ranging from 0.106 to 0.220 s. Conclusions: We present a series of experiments with extensive analysis, which systematically demonstrate the effectiveness and efficiency of the proposed method in quantifying dysgraphia for a precise diagnosis of PD.}}, articleno = {{108066}}, author = {{Wang, Xuechao and Huang, Junqing and Chatzakou, Marianna and Medijainen, Kadri and Toomela, Aaro and Nomm, Sven and Ruzhansky, Michael}}, issn = {{0169-2607}}, journal = {{COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE}}, keywords = {{Parkinson's disease,Dynamic handwriting analysis,Long short-term memory,Convolutional neural network,Real-time diagnosis,FEATURES}}, language = {{eng}}, pages = {{108066:1--108066:9}}, title = {{LSTM-CNN : an efficient diagnostic network for Parkinson's disease utilizing dynamic handwriting analysis}}, url = {{http://doi.org/10.1016/j.cmpb.2024.108066}}, volume = {{247}}, year = {{2024}}, }
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