193.174.19.232Abstract: M. Xu, X. Peng, P. Yang, J. Qi, Y. Yang (2024)

Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics), 14881 LNBI, 15–26p. (2024) DOI:10.1007/978-981-97-5689-6_2

An Activity Graph-Based Deep Convolutional Neural Network Framework in Symptom Severity Diagnosis Towards Parkinson's Disease Using Inertial Sensors

M. Xu, X. Peng, P. Yang, J. Qi, Y. Yang

Parkinson's disease (PD) is a neurodegenerative disorder diagnosed and assessed primarily through the subjective Hoehn and Yahr (H-Y) staging system, which can be limited by doctor's subjectivity, particularly in classifying subtle motor symptoms, leading to potential misclassification. Previous research has predominantly relied on machine learning algorithms that incorporated handcrafted feature extraction techniques. However, these approaches are constrained by domain-specific knowledge, which restricts the complexity of feature extraction, subsequently impacting algorithmic performance. To address these challenges, we propose a novel approach: a PD diagnosis assistance framework based on convolutional neural networks (CNNs) for automatic feature extraction and PD severity classification. In this paper, we collaborated with the First People's Hospital of Yunnan Province to collect motor data from 70 PD patients using wearable sensors equipped with an accelerometer and gyroscope. Neurologists assessed the PD severity on the Unified Parkinson's Disease Rating Scale (UPDRS) from simultaneously recorded video footages. The measured time data were transformed into activity graphs using recurrence transform, and two-dimensional images were constructed for training the network. The CNN model was trained by convolving images representing H-Y staging with kernels. The proposed symptom severity diagnosis of PD framework based on CNN was compared to previously studied machine learning algorithms and found to outperform them (accuracy

back


Creative Commons License © 2024 SOME RIGHTS RESERVED
The content of this web site is licensed under a Creative Commons Attribution-NonCommercial-NoDerivs 2.0 Germany License.

Please note: The abstracts of the bibliography database may underly other copyrights.

Ihr Browser versucht gerade eine Seite aus dem sogenannten Internet auszudrucken. Das Internet ist ein weltweites Netzwerk von Computern, das den Menschen ganz neue Möglichkeiten der Kommunikation bietet.

Da Politiker im Regelfall von neuen Dingen nichts verstehen, halten wir es für notwendig, sie davor zu schützen. Dies ist im beidseitigen Interesse, da unnötige Angstzustände bei Ihnen verhindert werden, ebenso wie es uns vor profilierungs- und machtsüchtigen Politikern schützt.

Sollten Sie der Meinung sein, dass Sie diese Internetseite dennoch sehen sollten, so können Sie jederzeit durch normalen Gebrauch eines Internetbrowsers darauf zugreifen. Dazu sind aber minimale Computerkenntnisse erforderlich. Sollten Sie diese nicht haben, vergessen Sie einfach dieses Internet und lassen uns in Ruhe.

Die Umgehung dieser Ausdrucksperre ist nach §95a UrhG verboten.

Mehr Informationen unter www.politiker-stopp.de.