| Literature DB >> 30516038 |
Fabiane Leonel Utino1,2, Marina Garcia1, Paulo Eduardo Neves Ferreira Velho2, Andréa Fernandes Eloy da Costa França2, Rafael Fantelli Stelini1, Vitor Bianchin Pelegati3,4, Carlos Lenz Cesar3,4,5, Elemir Macedo de Souza2, Maria Letícia Cintra1, Gislaine Vieira Damiani3,6.
Abstract
Sarcoidosis and tuberculoid leprosy (TL) are prototypes of granulomatous inflammation in dermatology, which embody one of the histopathology limitations in distinguishing some diseases. Recent advances in the use of nonlinear optical microscopy in skin have enabled techniques, such as second-harmonic generation (SHG), to become powerful tools to study the physical and biochemical properties of skin. We use SHG images to analyze the collagen network, to distinguish differences between sarcoidosis and TL granulomas. SHG images obtained from skin biopsies of 33 patients with TL and 24 with sarcoidosis retrospectively were analyzed using first-order statistics (FOS) and second-order statistics, such as gray-level co-occurrence matrix (GLCM). Among the four parameters evaluated (optical density, entropy, contrast, and second angular moment), only contrast demonstrated statistical significance, being higher in sarcoidosis (p = 0.02; 4908.31 versus 2822.17). The results may indicate insufficient differentiating power for most tested FOS and GLCM parameters in classifying sarcoidosis and TL granulomas, when used individually. But in combination with histopathology (H&E and complementary stains, such as silver and fast acid stains), SHG analysis, like contrast, can contribute to distinguishing between these diseases. This study can provide a way to evaluate collagen distribution in granulomatous diseases. (2018) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE).Entities:
Keywords: granulomatous diseases; sarcoidosis; second-harmonic generation; tuberculoid leprosy
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Year: 2018 PMID: 30516038 DOI: 10.1117/1.JBO.23.12.126001
Source DB: PubMed Journal: J Biomed Opt ISSN: 1083-3668 Impact factor: 3.170