| Literature DB >> 31942279 |
D U Campos-Delgado1, O Gutierrez-Navarro2, J J Rico-Jimenez3, E Duran3, H Fabelo4, S Ortega4, G M Callicó4, J A Jo3,5.
Abstract
In some applications of biomedical imaging, a linear mixture model can represent the constitutive elements (end-members) and their contributions (abundances) per pixel of the image. In this work, the extended blind end-member and abundance extraction (EBEAE) methodology is mathematically formulated to address the blind linear unmixing (BLU) problem subject to positivity constraints in optical measurements. The EBEAE algorithm is based on a constrained quadratic optimization and an alternated least-squares strategy to jointly estimate end-members and their abundances. In our proposal, a local approach is used to estimate the abundances of each end-member by maximizing their entropy, and a global technique is adopted to iteratively identify the end-members by reducing the similarity among them. All the cost functions are normalized, and four initialization approaches are suggested for the end-members matrix. Synthetic datasets are used first for the EBEAE validation at different noise types and levels, and its performance is compared to state-of-the-art algorithms in BLU. In a second stage, three experimental biomedical imaging applications are addressed with EBEAE: m-FLIM for chemometric analysis in oral cavity samples, OCT for macrophages identification in post-mortem artery samples, and hyper-spectral images for in-vivo brain tissue classification and tumor identification. In our evaluations, EBEAE was able to provide a quantitative analysis of the samples with none or minimal a priori information.Entities:
Keywords: blind linear unmixing; constrained optimization; fluorescence lifetime imaging microscopy; hyperspectral imaging; optical coherence tomography
Year: 2019 PMID: 31942279 PMCID: PMC6961960 DOI: 10.1109/ACCESS.2019.2958985
Source DB: PubMed Journal: IEEE Access ISSN: 2169-3536 Impact factor: 3.367