Scientific Reports (Oct 2024)

Sleep prediction using data from oximeter, accelerometer and snoring for portable monitor obstructive sleep apnea diagnosis

  • Diego Munduruca Domingues,
  • Paloma Rodrigues Rocha,
  • Ana Cláudia M. V. Miachon,
  • Sara Quaglia de Campos Giampá,
  • Filipe Soares,
  • Pedro R. Genta,
  • Geraldo Lorenzi-Filho

DOI
https://doi.org/10.1038/s41598-024-75935-8
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 9

Abstract

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Abstract The aim of this study was to build and validate an artificial neural network (ANN) algorithm to predict sleep using data from a portable monitor (Biologix system) consisting of a high-resolution oximeter with built-in accelerometer plus smartphone application with snoring recording and cloud analysis. A total of 268 patients with suspected obstructive sleep apnea (OSA) were submitted to standard polysomnography (PSG) with simultaneous Biologix (age: $$56\pm 11$$ 56 ± 11 years; body mass index: $$30.9\pm 4.6$$ 30.9 ± 4.6 $$\hbox {kg/m}^{2}$$ kg/m 2 , apnea-hypopnea index [AHI]: $$35\pm 30$$ 35 ± 30 events/h). Biologix channels were input features for construction an ANN model to predict sleep. A k-fold cross-validation method (k=10) was applied, ensuring that all sleep studies (N=268; 246,265 epochs) were included in both training and testing across all iterations. The final ANN model, evaluated as the mean performance across all folds, resulted in a sensitivity, specificity and accuracy of 91.5%, 71.0% and 86.1%, respectively, for detecting sleep. As compared to the oxygen desaturation index (ODI) from Biologix without sleep prediction, the bias (mean difference) between PSG-AHI and Biologix-ODI with sleep prediction (Biologix-Sleep-ODI) decreased significantly (3.40 vs. 1.02 events/h, p<0.001). We conclude that sleep prediction by an ANN model using data from oximeter, accelerometer, and snoring is accurate and improves Biologix system OSA diagnostic precision.

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