Author:
Sampaio Paulo,Lopez-Antuña Maria,Storni Federico,Wicht Jonatan,Sökeland Greta,Wartenberg Martin,Márquez-Neila Pablo,Candinas Daniel,Demory Brice-Olivier,Perren Aurel,Sznitman Raphael
Abstract
AbstractPolarimetry is an optical characterization technique capable of analyzing the polarization state of light reflected by materials and biological samples. In this study, we investigate the potential of Müller matrix polarimetry (MMP) to analyze fresh pancreatic tissue samples. Due to its highly heterogeneous appearance, pancreatic tissue type differentiation is a complex task. Furthermore, its challenging location in the body makes creating direct imaging difficult. However, accurate and reliable methods for diagnosing pancreatic diseases are critical for improving patient outcomes. To this end, we measured the Müller matrices of ex-vivo unfixed human pancreatic tissue and leverage the feature-learning capabilities of a machine-learning model to derive an optimized data representation that minimizes normal-abnormal classification error. We show experimentally that our approach accurately differentiates between normal and abnormal pancreatic tissue. This is, to our knowledge, the first study to use ex-vivo unfixed human pancreatic tissue combined with feature-learning from raw Müller matrix readings for this purpose.
Funder
Swiss National Science Foundation
Inselspital, Universitätsspital Bern
National Centre for Competence in Research PlanetS
University of Bern
Swiss State Secretariat for Education, Research and Innovation
Publisher
Springer Science and Business Media LLC
Cited by
4 articles.
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