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Machine learning approach to flare-up detection and clustering in chronic obstructive pulmonary disease (COPD) patients
R. Rueda, E. Fabello, T. Silva, S. Genzor, J. Mizera, L. Stanke
Status not-indexed Language English Country England, Great Britain
Document type Journal Article
NLK
BioMedCentral Open Access
from 2013
Free Medical Journals
from 2013
PubMed Central
from 2013 to 1 year ago
Europe PubMed Central
from 2013 to 1 year ago
ProQuest Central
from 2018-01-01 to 1 year ago
Open Access Digital Library
from 2013-01-01
Open Access Digital Library
from 2013-01-01
Health & Medicine (ProQuest)
from 2018-01-01 to 1 year ago
ROAD: Directory of Open Access Scholarly Resources
from 2013
- Publication type
- Journal Article MeSH
PURPOSE: Chronic obstructive pulmonary disease (COPD) is a prevalent and preventable condition that typically worsens over time. Acute exacerbations of COPD significantly impact disease progression, underscoring the importance of prevention efforts. This observational study aimed to achieve two main objectives: (1) identify patients at risk of exacerbations using an ensemble of clustering algorithms, and (2) classify patients into distinct clusters based on disease severity. METHODS: Data from portable medical devices were analyzed post-hoc using hyperparameter optimization with Self-Organizing Maps (SOM), Density-Based Spatial Clustering of Applications with Noise (DBSCAN), Isolation Forest, and Support Vector Machine (SVM) algorithms, to detect flare-ups. Principal Component Analysis (PCA) followed by KMeans clustering was applied to categorize patients by severity. RESULTS: 25 patients were included within the study population, data from 17 patients had the required reliability. Five patients were identified in the highest deterioration group, with one clinically confirmed exacerbation accurately detected by our ensemble algorithm. Then, PCA and KMeans clustering grouped patients into three clusters based on severity: Cluster 0 started with the least severe characteristics but experienced decline, Cluster 1 consistently showed the most severe characteristics, and Cluster 2 showed slight improvement. CONCLUSION: Our approach effectively identified patients at risk of exacerbations and classified them by disease severity. Although promising, the approach would need to be verified on a larger sample with a larger number of recorded clinically verified exacerbations.
References provided by Crossref.org
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