Automated Analysis of the Oximetry Signal to Simplify the Diagnosis of Pediatric Sleep Apnea: From Feature-Engineering to Deep-Learning Approaches

Vaquerizo Villar, Fernando

  • 出版商: Springer
  • 出版日期: 2024-07-05
  • 售價: $6,380
  • 貴賓價: 9.5$6,061
  • 語言: 英文
  • 頁數: 90
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 3031328345
  • ISBN-13: 9783031328343
  • 海外代購書籍(需單獨結帳)

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商品描述

This book describes the application of novel signal processing algorithms to improve the diagnostic capability of the blood oxygen saturation signal (SpO2) from nocturnal oximetry in the simplification of pediatric obstructive sleep apnea (OSA) diagnosis. For this purpose, 3196 SpO2 recordings from three different databases were analyzed using feature-engineering and deep-learning methodologies. Particularly, three novel feature extraction algorithms (bispectrum, wavelet, and detrended fluctuation analysis), as well as a novel deep-learning architecture based on convolutional neural networks are proposed. The proposed feature-engineering and deep-learning models outperformed conventional features from the oximetry signal, as well as state-of-the-art approaches. On the one hand, this book shows that bispectrum, wavelet, and detrended fluctuation analysis can be used to characterize changes in the SpO2 signal caused by apneic events in pediatric subjects. On the other hand, it demonstrates that deep-learning algorithms can learn complex features from oximetry dynamics that allow to enhance the diagnostic capability of nocturnal oximetry in the context of childhood OSA. All in all, this book offers a comprehensive and timely guide to the use of signal processing and AI methods in the diagnosis of pediatric OSA, including novel methodological insights concerning the automated analysis of the oximetry signal. It also discusses some open questions for future research.




商品描述(中文翻譯)

本書描述了新穎信號處理演算法的應用,以改善夜間血氧飽和度信號(SpO2)在簡化兒童阻塞性睡眠呼吸暫停(OSA)診斷中的診斷能力。為此,分析了來自三個不同數據庫的3196個SpO2記錄,使用了特徵工程和深度學習方法。特別地,提出了三種新穎的特徵提取演算法(雙譜、波浪變換和去趨勢波動分析),以及一種基於卷積神經網絡的新型深度學習架構。所提出的特徵工程和深度學習模型在性能上超越了傳統的氧氣測量信號特徵以及最先進的方法。一方面,本書顯示雙譜、波浪變換和去趨勢波動分析可以用來表徵兒童受試者因呼吸暫停事件而引起的SpO2信號變化。另一方面,證明了深度學習演算法能夠從氧氣測量動態中學習複雜特徵,從而增強夜間氧氣測量在兒童OSA背景下的診斷能力。總的來說,本書提供了一個全面且及時的指南,介紹信號處理和人工智慧方法在兒童OSA診斷中的應用,包括有關氧氣測量信號自動分析的新方法論見解。它還討論了一些未來研究的開放性問題。