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2022 deep learning; time-frequency analysis; pulmonary diseases; biological system modeling; transfer learning; benchmark testing; predictive models; humans; neural networks, computer; respiratory rate

An Ensemble of Deep Learning Frameworks for Predicting Respiratory Anomalies

L. Pham; D. Ngo; K. Tran; T. Hoang; A. Schindler; I. McLoughlin

This paper evaluates a range of deep learning frameworks for detecting respiratory anomalies from input audio. Audio recordings of respiratory cycles collected from patients are transformed into time-frequency spectrograms to serve as front-end two-dimensional features. Cropped spectrogram segments are then used to train a range of back-end deep learning networks to classify respiratory cycles into predefined medically-relevant categories. A set of those trained high-performance deep learning frameworks are then fused to obtain the best score. Our experiments on the ICBHI benchmark dataset achieve the highest ICBHI score to date of 57.3%. This is derived from a late fusion of inception based and transfer learning based deep learning frameworks, easily outperforming other state-of-the-art systems. Clinical relevance--- Respiratory disease, wheeze, crackle, inception, convolutional neural network, transfer learning.

Added 2026-04-21