Parallel Datasets for Classification of Respiratory Rhythm Phases

Abstract The paper describes the dataset used for building machine learning models for labeling respiratory rate signals into four classes: breath-in, breath-out, and retentions after inhale and exhale. Additionally, we introduce a label to represent segments of the signal infected by noise. The dat...

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Main Authors: Julian Szymański, Maciej Szefler, Kacper Karski, Filip Krawczak, Damian Jankowski
Format: Article
Language:English
Published: Nature Portfolio 2025-02-01
Series:Scientific Data
Online Access:https://doi.org/10.1038/s41597-025-04625-5
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author Julian Szymański
Maciej Szefler
Kacper Karski
Filip Krawczak
Damian Jankowski
author_facet Julian Szymański
Maciej Szefler
Kacper Karski
Filip Krawczak
Damian Jankowski
author_sort Julian Szymański
collection DOAJ
description Abstract The paper describes the dataset used for building machine learning models for labeling respiratory rate signals into four classes: breath-in, breath-out, and retentions after inhale and exhale. Additionally, we introduce a label to represent segments of the signal infected by noise. The data was collected simultaneously using different types of sensors: a tensometer and two accelerometers. The datasets have been made publicly available via the Gdansk University of Technology repository “Most Wiedzy”, ensuring open access to the data and reproducibility of research on respiratory classification. Along with the data we also publish the source files of tools used for building the datasets as well as our implementation of the models for respiratory rate classification and visualization. The data have been stored in CSV format and organized through a directory structure according to different breath patterns. These datasets can be easily processed and converted for usage with different machine learning methods across various research applications in respiratory health.
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spelling doaj-art-ccd0d29e5d3d464da7f3d253ed6c18642025-08-20T02:16:54ZengNature PortfolioScientific Data2052-44632025-02-0112111110.1038/s41597-025-04625-5Parallel Datasets for Classification of Respiratory Rhythm PhasesJulian Szymański0Maciej Szefler1Kacper Karski2Filip Krawczak3Damian Jankowski4Gdańsk University of Technology, Faculty of Electronics, Telecommunications and InformaticsGdańsk University of Technology, Faculty of Electronics, Telecommunications and InformaticsGdańsk University of Technology, Faculty of Electronics, Telecommunications and InformaticsGdańsk University of Technology, Faculty of Electronics, Telecommunications and InformaticsGdańsk University of Technology, Faculty of Electronics, Telecommunications and InformaticsAbstract The paper describes the dataset used for building machine learning models for labeling respiratory rate signals into four classes: breath-in, breath-out, and retentions after inhale and exhale. Additionally, we introduce a label to represent segments of the signal infected by noise. The data was collected simultaneously using different types of sensors: a tensometer and two accelerometers. The datasets have been made publicly available via the Gdansk University of Technology repository “Most Wiedzy”, ensuring open access to the data and reproducibility of research on respiratory classification. Along with the data we also publish the source files of tools used for building the datasets as well as our implementation of the models for respiratory rate classification and visualization. The data have been stored in CSV format and organized through a directory structure according to different breath patterns. These datasets can be easily processed and converted for usage with different machine learning methods across various research applications in respiratory health.https://doi.org/10.1038/s41597-025-04625-5
spellingShingle Julian Szymański
Maciej Szefler
Kacper Karski
Filip Krawczak
Damian Jankowski
Parallel Datasets for Classification of Respiratory Rhythm Phases
Scientific Data
title Parallel Datasets for Classification of Respiratory Rhythm Phases
title_full Parallel Datasets for Classification of Respiratory Rhythm Phases
title_fullStr Parallel Datasets for Classification of Respiratory Rhythm Phases
title_full_unstemmed Parallel Datasets for Classification of Respiratory Rhythm Phases
title_short Parallel Datasets for Classification of Respiratory Rhythm Phases
title_sort parallel datasets for classification of respiratory rhythm phases
url https://doi.org/10.1038/s41597-025-04625-5
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AT kacperkarski paralleldatasetsforclassificationofrespiratoryrhythmphases
AT filipkrawczak paralleldatasetsforclassificationofrespiratoryrhythmphases
AT damianjankowski paralleldatasetsforclassificationofrespiratoryrhythmphases