Fractional Dynamics Foster Deep Learning of COPD Stage Prediction

Author:

Yin Chenzhong1ORCID,Udrescu Mihai2,Gupta Gaurav1,Cheng Mingxi1,Lihu Andrei2,Udrescu Lucretia3,Bogdan Paul1ORCID,Mannino David M.4,Mihaicuta Stefan5

Affiliation:

1. Ming Hsieh Department of Electrical and Computer Engineering University of Southern California Los Angeles CA USA

2. Department of Computer and Information Technology Politehnica University of Timisoara 2 Vasile Parvan Blvd. Timişoara 300223 Romania

3. Department I – Drug Analysis “Victor Babeş” University of Medicine and Pharmacy Timişoara 2 Eftimie Murgu Sq. Timişoara 300041 Romania

4. College of Medicine University of Kentucky Lexington KY USA

5. Department of Pulmonology Center for Research and Innovation in Precision Medicine of Respiratory Diseases, “Victor Babes” University of Medicine and Pharmacy 2 Eftimie Murgu Sq. Timişoara 300041 Romania

Abstract

AbstractChronic obstructive pulmonary disease (COPD) is one of the leading causes of death worldwide. Current COPD diagnosis (i.e., spirometry) could be unreliable because the test depends on an adequate effort from the tester and testee. Moreover, the early diagnosis of COPD is challenging. The authors address COPD detection by constructing two novel physiological signals datasets (4432 records from 54 patients in the WestRo COPD dataset and 13824 medical records from 534 patients in the WestRo Porti COPD dataset). The authors demonstrate their complex coupled fractal dynamical characteristics and perform a fractional‐order dynamics deep learning analysis to diagnose COPD. The authors found that the fractional‐order dynamical modeling can extract distinguishing signatures from the physiological signals across patients with all COPD stages—from stage 0 (healthy) to stage 4 (very severe). They use the fractional signatures to develop and train a deep neural network that predicts COPD stages based on the input features (such as thorax breathing effort, respiratory rate, or oxygen saturation). The authors show that the fractional dynamic deep learning model (FDDLM) achieves a COPD prediction accuracy of 98.66% and can serve as a robust alternative to spirometry. The FDDLM also has high accuracy when validated on a dataset with different physiological signals.

Funder

National Science Foundation

Army Research Office

Publisher

Wiley

Subject

General Physics and Astronomy,General Engineering,Biochemistry, Genetics and Molecular Biology (miscellaneous),General Materials Science,General Chemical Engineering,Medicine (miscellaneous)

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