Classification of Lung Pathologies in Neonates using Dual Tree Complex Wavelet Transform
Sagarjit Aujla, Adel Mohamed, Ryan Tan, Randy Tan, Lei Gao, Naimul, Khan, Karthikeyan Umapathy

TL;DR
This paper presents an automated system using dual-tree complex wavelet transform to classify neonatal lung conditions from ultrasound images, achieving over 92% accuracy on balanced datasets and aiding non-expert clinicians.
Contribution
It introduces a novel feature extraction approach combining DTCWT with statistical and texture features for classifying six neonatal lung conditions.
Findings
Achieved 92.78% per-image classification accuracy on balanced dataset.
Maximum per-subject accuracy of 81.53% with the proposed features.
Effective in distinguishing multiple neonatal lung pathologies.
Abstract
Annually 8500 neonatal deaths are reported in the US due to respiratory failure. Recently, Lung Ultrasound (LUS), due to its radiation free nature, portability, and being cheaper is gaining wide acceptability as a diagnostic tool for lung conditions. However, lack of highly trained medical professionals has limited its use especially in remote areas. To address this, an automated screening system that captures characteristics of the LUS patterns can be of significant assistance to clinicians who are not experts in lung ultrasound (LUS) images. In this paper, we propose a feature extraction method designed to quantify the spatially-localized line patterns and texture patterns found in LUS images. Using the dual-tree complex wavelet transform (DTCWT) and four types of common image features we propose a method to classify the LUS images into 6 common neonatal lung conditions. These…
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Taxonomy
TopicsUltrasound in Clinical Applications · Lung Cancer Diagnosis and Treatment · Phonocardiography and Auscultation Techniques
