| Literature DB >> 23725638 |
Hang Su1, Zhaozheng Yin, Seungil Huh, Takeo Kanade.
Abstract
Phase-contrast microscopy is one of the most common and convenient imaging modalities to observe long-term multi-cellular processes, which generates images by the interference of lights passing through transparent specimens and background medium with different retarded phases. Despite many years of study, computer-aided phase contrast microscopy analysis on cell behavior is challenged by image qualities and artifacts caused by phase contrast optics. Addressing the unsolved challenges, the authors propose (1) a phase contrast microscopy image restoration method that produces phase retardation features, which are intrinsic features of phase contrast microscopy, and (2) a semi-supervised learning based algorithm for cell segmentation, which is a fundamental task for various cell behavior analysis. Specifically, the image formation process of phase contrast microscopy images is first computationally modeled with a dictionary of diffraction patterns; as a result, each pixel of a phase contrast microscopy image is represented by a linear combination of the bases, which we call phase retardation features. Images are then partitioned into phase-homogeneous atoms by clustering neighboring pixels with similar phase retardation features. Consequently, cell segmentation is performed via a semi-supervised classification technique over the phase-homogeneous atoms. Experiments demonstrate that the proposed approach produces quality segmentation of individual cells and outperforms previous approaches.Entities:
Keywords: Cell segmentation; Phase contrast microscopy image; Phase retardation feature; Semi-supervised classification; Sparse representation
Mesh:
Year: 2013 PMID: 23725638 DOI: 10.1016/j.media.2013.04.004
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545