Document detail
ID

oai:arXiv.org:2302.00973

Topic
Statistics - Machine Learning Computer Science - Machine Learnin...
Author
Wang, Xuechao Huang, Junqing Chatzakou, Marianna Medijainen, Kadri Taba, Pille Toomela, Aaro Nomm, Sven Ruzhansky, Michael
Category

Computer Science

Year

2023

listing date

2/8/2023

Keywords
disease parkinson learning methods machine model
Metrics

Abstract

In recent years, deep learning methods have achieved great success in various fields due to their strong performance in practical applications.

In this paper, we present a light-weight neural network for Parkinson's disease diagnostics, in which a series of hand-drawn data are collected to distinguish Parkinson's disease patients from healthy control subjects.

The proposed model consists of a convolution neural network (CNN) cascading to long-short-term memory (LSTM) to adapt the characteristics of collected time-series signals.

To make full use of their advantages, a multilayered LSTM model is firstly used to enrich features which are then concatenated with raw data and fed into a shallow one-dimensional (1D) CNN model for efficient classification.

Experimental results show that the proposed model achieves a high-quality diagnostic result over multiple evaluation metrics with much fewer parameters and operations, outperforming conventional methods such as support vector machine (SVM), random forest (RF), lightgbm (LGB) and CNN-based methods.

Wang, Xuechao,Huang, Junqing,Chatzakou, Marianna,Medijainen, Kadri,Taba, Pille,Toomela, Aaro,Nomm, Sven,Ruzhansky, Michael, 2023, A Light-weight CNN Model for Efficient Parkinson's Disease Diagnostics

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