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Interpretable machine learning models for COPD ease of breathing estimation

 
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dc.contributor.authorKok, Thomas
dc.contributor.authorMorales Tellez, John
dc.contributor.authorDeschrijver, Dirk
dc.contributor.authorBlanco-Almazan, Dolores
dc.contributor.authorGroenendaal, Willemijn
dc.contributor.authorRuttens, David
dc.contributor.authorSmeets, Christophe
dc.contributor.authorMihajlovic, Vojkan
dc.contributor.authorOngenae, Femke
dc.contributor.authorVan Hoecke, Sofie
dc.contributor.imecauthorKok, Thomas T.
dc.contributor.imecauthorMorales, John
dc.contributor.imecauthorDeschrijver, Dirk
dc.contributor.imecauthorGroenendaal, Willemijn
dc.contributor.imecauthorMihajlovic, Vojkan
dc.contributor.imecauthorOngenae, Femke
dc.contributor.imecauthorVan Hoecke, Sofie
dc.contributor.orcidimecDeschrijver, Dirk::0000-0001-6600-1792
dc.contributor.orcidimecGroenendaal, Willemijn::0000-0003-1024-0756
dc.contributor.orcidimecMihajlovic, Vojkan::0000-0001-8414-0155
dc.contributor.orcidimecOngenae, Femke::0000-0003-2529-5477
dc.contributor.orcidimecVan Hoecke, Sofie::0000-0002-7865-6793
dc.date.accessioned2025-01-23T10:23:19Z
dc.date.available2025-01-22T17:53:52Z
dc.date.available2025-01-23T10:23:19Z
dc.date.issued2025
dc.description.abstractChronic obstructive pulmonary disease (COPD) is a leading cause of death worldwide and greatly reduces the quality of life. Utilizing remote monitoring has been shown to improve quality of life and reduce exacerbations, but remains an ongoing area of research. We introduce a novel method for estimating changes in ease of breathing for COPD patients, using obstructed breathing data collected via wearables. Physiological signals were recorded, including respiratory airflow, acceleration, audio, and bio-impedance. By comparing patient-specific measurements, this approach enables non-intrusive remote monitoring. We analyze the influence of signal selection, window parameters, feature engineering, and classification models on predictive performance, finding that acceleration signals are most effective, complemented by audio signals. The best model achieves an F1-score of 0.83. To facilitate clinical adoption, we incorporate interpretability by designing novel saliency map methods, highlighting important aspects of the signals. We adapt local explainability techniques to time series and introduce a novel imputation method for periodic signals, improving faithfulness to the data and interpretability.
dc.description.wosFundingTextThis work was partially supported by the Flemish Government (AI Research Program).
dc.identifier.doi10.1007/s11517-025-03285-2
dc.identifier.issn0140-0118
dc.identifier.pmidMEDLINE:39808263
dc.identifier.urihttps://imec-publications.be/handle/20.500.12860/45103
dc.publisherSPRINGER HEIDELBERG
dc.source.beginpage1481
dc.source.endpage1495
dc.source.issue5
dc.source.journalMEDICAL & BIOLOGICAL ENGINEERING & COMPUTING
dc.source.numberofpages15
dc.source.volume2025
dc.subject.keywordsARTIFICIAL-INTELLIGENCE
dc.subject.keywordsBIOIMPEDANCE
dc.title

Interpretable machine learning models for COPD ease of breathing estimation

dc.typeJournal article
dspace.entity.typePublication
dspace.file.typePDF
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