34 research outputs found
Exploration of Various Fractional Order Derivatives in Parkinson's Disease Dysgraphia Analysis
Parkinson's disease (PD) is a common neurodegenerative disorder with a
prevalence rate estimated to 2.0% for people aged over 65 years. Cardinal motor
symptoms of PD such as rigidity and bradykinesia affect the muscles involved in
the handwriting process resulting in handwriting abnormalities called PD
dysgraphia. Nowadays, online handwritten signal (signal with temporal
information) acquired by the digitizing tablets is the most advanced approach
of graphomotor difficulties analysis. Although the basic kinematic features
were proved to effectively quantify the symptoms of PD dysgraphia, a recent
research identified that the theory of fractional calculus can be used to
improve the graphomotor difficulties analysis. Therefore, in this study, we
follow up on our previous research, and we aim to explore the utilization of
various approaches of fractional order derivative (FD) in the analysis of PD
dysgraphia. For this purpose, we used the repetitive loops task from the
Parkinson's disease handwriting database (PaHaW). Handwritten signals were
parametrized by the kinematic features employing three FD approximations:
Gr\"unwald-Letnikov's, Riemann-Liouville's, and Caputo's. Results of the
correlation analysis revealed a significant relationship between the clinical
state and the handwriting features based on the velocity. The extracted
features by Caputo's FD approximation outperformed the rest of the analyzed FD
approaches. This was also confirmed by the results of the classification
analysis, where the best model trained by Caputo's handwriting features
resulted in a balanced accuracy of 79.73% with a sensitivity of 83.78% and a
specificity of 75.68%.Comment: Print ISBN 978-3-031-19744-
Monitorización de la enfermedad de Parkinson a partir de la cinemática de la articulación del habla
Parkinson Disease (PD) is a neuromotor illness affecting general movements of different muscles, those implied in speech production being among them. The relevance of speech in monitoring illness progression has been documented in these last two decades. Most of the studies have concentrated in dysarthria and dysphonia induced by the syndrome. The present work is devoted to explore how PD affects the dynamic behavior of the speech neuromotor biomechanics (neuromechanics) involved in deficient articulation (dysarthria), in contrast to classical measurements based on static features as extreme and central vowel triangle positions. A statistical distribution of the kinematic velocity of the lower jaw and tongue is introduced, which presents interesting properties regarding pattern recognition and classification. This function may be used to establish distances between different articulation profiles in terms of information theory. Results show that these distances are correlated with a set of tests currently used by neurologists in PD progress evaluation, and could be used in elaborating new speech testing protocols.La enfermedad de Parkinson (EP) es un trastorno del sistema neuromotor que afecta a todo tipo de movimientos regulados por el sistema muscular humano, entre ellos los que controlan la producción del habla. La importancia del habla en la monitorización del progreso de la EP se ha estudiado ampliamente durante las últimas dos décadas. La mayoría de los estudios se han concentrado en describir y modelar el comportamiento de la fonación (disfonía) y de la articulación (disartria), en relación con el síndrome de la EP. El presente trabajo se centra en explorar la forma en la que la EP afecta al comportamiento dinámico de la biomecánica neuromotora relacionada con la disartria típica mostrada por este tipo de pacientes, a diferencia de las mediciones clásicamente utilizadas hasta el momento, que se basan en las posiciones extremas y centrales del triángulo vocálico. Se propone, para ello, una nueva medida basada en la distribución estadística de la cinemática del sistema mandibular y lingual, que presenta interesantes propiedades de cara al reconocimiento de patrones utilizado en la clasificación de los rasgos disártricos del paciente. Esta medida puede emplearse para establecer las distancias entre las distintas articulaciones en términos de la teoría de información. Los resultados del estudio presentado muestran que dichas distancias se hallan sustancialmente correlacionadas con ciertas pruebas utilizadas habitualmente por los neurólogos para evaluar el progreso de la EP. La distancia cinemática propuesta puede servir para elaborar nuevos protocolos de realización de pruebas para el seguimiento de la EP
Prodromal Diagnosis of Lewy Body Diseases Based on the Assessment of Graphomotor and Handwriting Difficulties
To this date, studies focusing on the prodromal diagnosis of Lewy body
diseases (LBDs) based on quantitative analysis of graphomotor and handwriting
difficulties are missing. In this work, we enrolled 18 subjects diagnosed with
possible or probable mild cognitive impairment with Lewy bodies (MCI-LB), 7
subjects having more than 50% probability of developing Parkinson's disease
(PD), 21 subjects with both possible/probable MCI-LB and probability of PD >
50%, and 37 age- and gender-matched healthy controls (HC). Each participant
performed three tasks: Archimedean spiral drawing (to quantify graphomotor
difficulties), sentence writing task (to quantify handwriting difficulties),
and pentagon copying test (to quantify cognitive decline). Next, we
parameterized the acquired data by various temporal, kinematic, dynamic,
spatial, and task-specific features. And finally, we trained classification
models for each task separately as well as a model for their combination to
estimate the predictive power of the features for the identification of LBDs.
Using this approach we were able to identify prodromal LBDs with 74% accuracy
and showed the promising potential of computerized objective and non-invasive
diagnosis of LBDs based on the assessment of graphomotor and handwriting
difficulties.Comment: Print ISBN 978-3-031-19744-
Deep Learning for In-Orbit Cloud Segmentation and Classification in Hyperspectral Satellite Data
This article explores the latest Convolutional Neural Networks (CNNs) for
cloud detection aboard hyperspectral satellites. The performance of the latest
1D CNN (1D-Justo-LiuNet) and two recent 2D CNNs (nnU-net and
2D-Justo-UNet-Simple) for cloud segmentation and classification is assessed.
Evaluation criteria include precision and computational efficiency for in-orbit
deployment. Experiments utilize NASA's EO-1 Hyperion data, with varying
spectral channel numbers after Principal Component Analysis. Results indicate
that 1D-Justo-LiuNet achieves the highest accuracy, outperforming 2D CNNs,
while maintaining compactness with larger spectral channel sets, albeit with
increased inference times. However, the performance of 1D CNN degrades with
significant channel reduction. In this context, the 2D-Justo-UNet-Simple offers
the best balance for in-orbit deployment, considering precision, memory, and
time costs. While nnU-net is suitable for on-ground processing, deployment of
lightweight 1D-Justo-LiuNet is recommended for high-precision applications.
Alternatively, lightweight 2D-Justo-UNet-Simple is recommended for balanced
costs between timing and precision in orbit.Comment: Hyperspectral Satellite Data, Cloud Segmentation, Classification,
Convolutional Neural Networks, Principal Component Analysi
Neuromechanical Modelling of Articulatory Movements from Surface Electromyography and Speech Formants
Speech articulation is produced by the movements of muscles in the larynx, pharynx, mouth and face. Therefore speech shows acoustic features as formants which are directly related with neuromotor actions of these muscles. The first two formants are strongly related with jaw and tongue muscular activity. Speech can be used as a simple and ubiquitous signal, easy to record and process, either locally or on e-Health platforms. This fact may open a wide set of applications in the study of functional grading and monitoring neurodegenerative diseases. A relevant question, in this sense, is how far speech correlates and neuromotor actions are related. This preliminary study is intended to find answers to this question by using surface electromyographic recordings on the masseter and the acoustic kinematics related with the first formant. It is shown in the study that relevant correlations can be found among the surface electromyographic activity (dynamic muscle behavior) and the positions and first derivatives of the first formant (kinematic variables related to vertical velocity and acceleration of the joint jaw and tongue biomechanical system). As an application example, it is shown that the probability density function associated to these kinematic variables is more sensitive than classical features as Vowel Space Area (VSA) or Formant Centralization Ratio (FCR) in characterizing neuromotor degeneration in Parkinson's Disease.This work is being funded by Grants TEC2016-77791-C4-4-R from the Ministry of Economic Affairs and Competitiveness of Spain, Teka-Park 55 02 CENIE-0348_CIE_6_E POCTEP (InterReg Programme) and 16-30805A, SIX Research Center (CZ.1.05/2.1.00/03.0072), and LO1401 from the Czech Republic Government
Degree of Parkinson's Disease Severity Estimation Based on Speech Signal Processing
International audienceThis paper deals with Parkinson's disease (PD) severity estimation according to the Unified Parkinson's Disease Rating Scale: motor subscale (UPDRS III), which quantifies the hallmark symptoms of PD, using an acoustic analysis of speech signals. Experimental dataset comprised 42 speech tasks acquired from 50 PD patients (UPDRS III ranged from 6 to 92). It was divided into subsets: words, sentences, reading text, monologue and diadochokinetic tasks. We performed a parametrization of the whole corpus and these groups separately using a wide range of conventional and novel speech features. We used guided regu-larized random forest algorithm to select features with maximum clinical information and performed random forests regression to estimate PD severity. According to significant correlations between true UPDRS III scores and scores predicted by the proposed methodology it was shown that information extracted through variety of speech tasks can be used to estimate the degree of PD severity
Comparison of CNN-Learned vs. Handcrafted Features for Detection of Parkinson's Disease Dysgraphia in a Multilingual Dataset
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. Both approaches are evaluated on a multilingual dataset collected from 143 PD patients and 151 healthy controls in the Czech Republic, United States, Colombia, and Hungary. The subjects performed the spiral drawing task (SDT; a language-independent task) and the sentence writing task (SWT; a language-dependent task). Models based on logistic regression and gradient boosting were trained in several scenarios, specifically single language (SL), leave one language out (LOLO), and all languages combined (ALC). We found that the HF slightly outperformed the CNN-extracted features in all considered evaluation scenarios for the SWT. In detail, the following balanced accuracy (BACC) scores were achieved: SL—0.65 (HF), 0.58 (CNN); LOLO—0.65 (HF), 0.57 (CNN); and ALC—0.69 (HF), 0.66 (CNN). However, in the case of the SDT, features extracted by a CNN provided competitive results: SL—0.66 (HF), 0.62 (CNN); LOLO—0.56 (HF), 0.54 (CNN); and ALC—0.60 (HF), 0.60 (CNN). In summary, regarding the SWT, the HF outperformed the CNN-extracted features over 6% (mean BACC of 0.66 for HF, and 0.60 for CNN). In the case of the SDT, both feature sets provided almost identical classification performance (mean BACC of 0.60 for HF, and 0.58 for CNN). Copyright © 2022 Galaz, Drotar, Mekyska, Gazda, Mucha, Zvoncak, Smekal, Faundez-Zanuy, Castrillon, Orozco-Arroyave, Rapcsak, Kincses, Brabenec and Rektorova