ArXiv TLDR

Time-Localized Parametric Decomposition of Respiratory Airflow for Sub-Breath Analysis

🐦 Tweet
2604.22695

Victoria Ribeiro Rodrigues, Paul W. Davenport, Nicholas J. Napoli

eess.SPcs.LG

TLDR

This paper introduces a parametric framework to decompose inspiratory airflow into time-localized components for detailed sub-breath analysis, improving fatigue state classification.

Key contributions

  • Introduces a parametric framework for decomposing inspiratory airflow into time-localized components.
  • Employs physiologically grounded basis functions (Half-Sine, Gaussian, Beta) for intrabreath morphology.
  • Achieves high reconstruction accuracy (MSE < 0.001) across 8,276 breaths.
  • Improves cognitive fatigue state classification by 30.7% compared to classical respiratory metrics.

Why it matters

Traditional airflow analysis misses crucial sub-breath events reflecting neuromuscular coordination. This new method provides an interpretable and precise way to quantify intrabreath organization and compensatory breathing dynamics. It offers deeper insights into respiratory motor control and cognitive-respiratory interactions.

Original Abstract

Respiratory airflow signals provide critical insight into breathing mechanics, yet conventional analysis methods remain limited in their ability to characterize the internal structure of individual breaths. Traditional approaches treat airflow as a quasi-periodic signal and rely on global descriptors such as tidal volume or peak flow, obscuring sub-breath events that reflect neuromuscular coordination and compensatory breathing strategies. This study introduces a parametric framework for decomposing inspiratory airflow into a small number of time-localized components with explicit amplitude, onset time, and duration parameters. Unlike spectral or data-adaptive methods, the proposed approach employs physiologically grounded basis functions, Half-Sine, Gaussian, and Beta, to represent intrabreath waveform morphology through constrained nonlinear optimization. Evaluation across 8,276 breaths demonstrates high reconstruction accuracy (mean squared error $&lt;$ 0.001 for four-component models) and robust parameter precision under moderate noise. Component-derived features describing sub-breath timing and coordination improved classification of cognitive fatigue states arising from cognitive-respiratory competition by up to 30.7% in Matthews correlation coefficient compared with classical respiratory metrics. These results establish that modeling airflow as a sum of parameterized, time-localized primitives provides an interpretable and precise foundation for quantifying intrabreath organization, compensatory breathing dynamics, and respiratory motor control adaptation under cognitive-respiratory dual-task demands.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.