A complex network approach to time series analysis with application in diagnosis of neuromuscular disorders

08/16/2021
by   Samaneh Samiei, et al.
0

Electromyography (EMG) refers to a biomedical signal indicating neuromuscular activity and muscle morphology. Experts accurately diagnose neuromuscular disorders using this time series. Modern data analysis techniques have recently led to introducing novel approaches for mapping time series data to graphs and complex networks with applications in diverse fields, including medicine. The resulting networks develop a completely different visual acuity that can be used to complement physician findings of time series. This can lead to a more enriched analysis, reduced error, more accurate diagnosis of the disease, and increased accuracy and speed of the treatment process. The mapping process may cause the loss of essential data from the time series and not retain all the time series features. As a result, achieving an approach that can provide a good representation of the time series while maintaining essential features is crucial. This paper proposes a new approach to network development named GraphTS to overcome the limited accuracy of existing methods through EMG time series using the visibility graph method. For this purpose, EMG signals are pre-processed and mapped to a complex network by a standard visibility graph algorithm. The resulting networks can differentiate between healthy and patient samples. In the next step, the properties of the developed networks are given in the form of a feature matrix as input to classifiers after extracting optimal features. Performance evaluation of the proposed approach with deep neural network shows 99.30 data. Therefore, in addition to enriched network representation and covering the features of time series for healthy, myopathy, and neuropathy EMG, the proposed technique improves accuracy, precision, recall, and F-score.

READ FULL TEXT

page 8

page 22

page 23

research
06/16/2021

Adaptive Visibility Graph Neural Network and its Application in Modulation Classification

Our digital world is full of time series and graphs which capture the va...
research
05/03/2019

CompEngine: a self-organizing, living library of time-series data

Modern biomedical applications often involve time-series data, from high...
research
12/15/2010

Translating biomarkers between multi-way time-series experiments

Translating potential disease biomarkers between multi-species 'omics' e...
research
08/11/2022

HyperTime: Implicit Neural Representation for Time Series

Implicit neural representations (INRs) have recently emerged as a powerf...
research
07/08/2020

Accuracy of neural networks for the simulation of chaotic dynamics: precision of training data vs precision of the algorithm

We explore the influence of precision of the data and the algorithm for ...
research
09/21/2021

Signal Classification using Smooth Coefficients of Multiple wavelets

Classification of time series signals has become an important construct ...

Please sign up or login with your details

Forgot password? Click here to reset