Breathing Rate Asymmetry for Early Detection of Severe Preeclampsia Using Machine Learning Classifiers

dc.audience students
dc.audience researchers
dc.audience teachers
dc.audience generalPublic
dc.contributor.author Ximena Gonzalez Reyes, 0009-0001-3003-0126
dc.contributor.author Hector Romero Morales, 0000-0002-9038-4591
dc.contributor.author Jenny Muñoz-Montes de Oca, 0000-0002-6376-0344
dc.contributor.author José Javier Reyes-Lagos, 0000-0001-5361-5007
dc.contributor.author Eric Alonso Abarca-Castro, 0000-0002-2029-3790
dc.coverage México
dc.date.accessioned 2025-04-11T23:08:53Z
dc.date.available 2025-04-11T23:08:53Z
dc.date.issued 2025
dc.description This dataset contains breath-to-breath (BB) interval signals in miliseconds, captured from parturient women at the "Monica Pretelini Saenz" Maternal-Perinatal Hospital in Toluca de Lerdo, State of Mexico, during 2021-2022. The dataset includes signals from two distinct groups: 210 normotensive control segments (C) and 210 severe preeclampsia segments (SP). Each original respiratory signal (RESP) was recorded for 3 minutes with a sampling frequency of 1000 Hz using a Mobi amplifier system equiped with a respiration sensor. The pre-processing steps applied to the respirograms involved band-pass filtering within 0.2 to 0.5 Hz to isolate the breath-to-breath intervals, followed by peak detection and manual selection of reliable three minute BB interval segments. Additionally, the results of asymmetric indices from Porta, Guzik, Ehlers, HDR, HAR, HNO, MFE, and multiscale versions of Porta, Guzik, and Ehlers, as well as the mean breathing rate derived from this BB interval signals were included. These data were used to train and validate the classifiers.
dc.format application/zip
dc.identificador.materia 3
dc.identifier.uri http://hdl.handle.net/20.500.12222/437
dc.language eng
dc.publisher Universidad Autónoma Metropolitana- Unidad Lerma
dc.rights.license info:eu-repo/semantics/openAccess
dc.rights.uri http://creativecommons.org/licenses/by-nc-nd/4.0/
dc.subject MEDICINA Y CIENCIAS DE LA SALUD
dc.subject.keywords Severe Preeclampsia
dc.subject.keywords Breathing Rate Asymmetry
dc.subject.keywords Machine Learning
dc.title Breathing Rate Asymmetry for Early Detection of Severe Preeclampsia Using Machine Learning Classifiers
dc.type technicalDocumentation
dc.type.version info:eu-repo/semantics/submittedVersion
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