Comparison of CNN-learned vs. handcrafted features for detection of Parkinson's disease dysgraphia in a multilingual dataset
Author
Galaz, Zoltan
Drotar, Peter
Gazda, Matej
Mucha, Jan
Zvoncak, Vojtech
Smekal, Zdenek
Castrillon, Reinel
Orozco-Arroyave, Juan Rafael
Rapcsak, Steven
Kincses, Tamas
Brabenec, Lubos
Rektorova, Irena
Publication date
2022Abstract
Parkinson’s disease dysgraphia (PDYS), one of the earliest signs of Parkinson’s disease
(PD), has been researched as a promising biomarker of PD and as the target of
a noninvasive and inexpensive approach to monitoring the progress of the disease.
However, although several approaches to supportive PDYS diagnosis have been
proposed (mainly based on handcrafted features (HF) extracted from online handwriting
or the utilization of deep neural networks), it remains unclear which approach provides
the highest discrimination power and how these approaches can be transferred
between different datasets and languages. This study aims to compare classification
performance based on two types of features: features automatically extracted by
a pretrained convolutional neural network (CNN) and HF designed by human experts. [...]
Document Type
Article
Citation
Galaz Z, Drotar P, Mekyska J, Gazda M, Mucha J, Zvoncak V, Smekal Z, Faundez-Zanuy M, Castrillon R, Orozco-Arroyave JR, Rapcsak S, Kincses T, Brabenec L, Rektorova I. Comparison of CNN-learned vs. handcrafted features for detection of Parkinson's disease dysgraphia in a multilingual dataset. Front Neuroinform. 2022;(16):877139. DOI: 10.3389/fninf.2022.877139
Rights
© 2022 Galaz, Drotar, Mekyska, Gazda, Mucha, Zvoncak, Smekal, Faundez-Zanuy, Castrillon, Orozco-Arroyave, Rapcsak, Kincses, Brabenec and Rektorova.
Except where otherwise noted, this item's license is described as http://creativecommons.org/licenses/by/4.0/