Classification of collagen remodeling in asthma using second-harmonic generation imaging, supervised machine learning and texture-based analysis
Natasha N. Kunchur, Joshua J. A. Poole, Jesse Levine, Tillie-Louise Hackett, Rebecca Thornhill, Leila B. Mostaço-Guidolin

TL;DR
This study uses advanced imaging and machine learning to classify collagen changes in asthmatic lungs, offering a new way to understand airway remodeling.
Contribution
A novel pipeline combining SHG imaging and supervised machine learning is introduced to classify collagen remodeling in asthma.
Findings
SHG imaging combined with texture analysis and machine learning successfully distinguishes remodeled collagen in asthmatic lungs.
A support vector machine model achieved a high AUC-ROC of 94% in classifying remodeled vs. control lung tissue.
Texture-based features from GLCM, GLSZM, GLRLM, GLDM, and NGTDM matrices effectively capture collagen morphological variations.
Abstract
Airway remodeling is present in all stages of asthma severity and has been linked to reduced lung function, airway hyperresponsiveness and increased deposition of fibrillar collagens. Traditional histological staining methods used to visualize the fibrotic response are poorly suited to capture the morphological traits of extracellular matrix (ECM) proteins in their native state, hindering our understanding of disease pathology. Conversely, second harmonic generation (SHG), provides label-free, high-resolution visualization of fibrillar collagen; a primary ECM protein contributing to the loss of asthmatic lung elasticity. From a cohort of 13 human lung donors, SHG-imaged collagen belonging to non-asthmatic (control) and asthmatic donors was evaluated through a custom textural classification pipeline. Integrated with supervised machine learning, the pipeline enables the precise…
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Taxonomy
TopicsCancer Cells and Metastasis · Radiomics and Machine Learning in Medical Imaging · Proteoglycans and glycosaminoglycans research
