Classification of interstitial lung disease patterns with topological texture features
Markus B. Huber, Mahesh Nagarajan, Gerda Leinsinger, Lawrence A. Ray,, Axel Wism\"uller

TL;DR
This study demonstrates that topological texture features, especially Minkowski Functionals, significantly improve the automated classification of honeycombing patterns in HRCT images for diagnosing fibrotic interstitial lung diseases.
Contribution
The paper introduces the use of Minkowski Functionals as topological texture features, showing they outperform standard GLCM and Minkowski Dimension features in classifying lung tissue patterns.
Findings
Minkowski Functional features achieved up to 97.5% accuracy.
Topological features significantly outperform standard texture features.
Advanced features improve computer-assisted diagnosis of lung diseases.
Abstract
Topological texture features were compared in their ability to classify morphological patterns known as 'honeycombing' that are considered indicative for the presence of fibrotic interstitial lung diseases in high-resolution computed tomography (HRCT) images. For 14 patients with known occurrence of honey-combing, a stack of 70 axial, lung kernel reconstructed images were acquired from HRCT chest exams. A set of 241 regions of interest of both healthy and pathological (89) lung tissue were identified by an experienced radiologist. Texture features were extracted using six properties calculated from gray-level co-occurrence matrices (GLCM), Minkowski Dimensions (MDs), and three Minkowski Functionals (MFs, e.g. MF.euler). A k-nearest-neighbor (k-NN) classifier and a Multilayer Radial Basis Functions Network (RBFN) were optimized in a 10-fold cross-validation for each texture vector, and…
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