| Literature DB >> 28663832 |
Milad R Vahid1,2, Jerry Chao1,2, Dongyoung Kim1,2, E Sally Ward2,3, Raimund J Ober1,2.
Abstract
Single molecule super-resolution microscopy enables imaging at sub-diffraction-limit resolution by producing images of subsets of stochastically photoactivated fluorophores over a sequence of frames. In each frame of the sequence, the fluorophores are accurately localized, and the estimated locations are used to construct a high-resolution image of the cellular structures labeled by the fluorophores. Many methods have been developed for localizing fluorophores from the images. The majority of these methods comprise two separate steps: detection and estimation. In the detection step, fluorophores are identified. In the estimation step, the locations of the identified fluorophores are estimated through an iterative approach. Here, we propose a non-iterative state space-based localization method which combines the detection and estimation steps. We demonstrate that the estimated locations obtained from the proposed method can be used as initial conditions in an estimation routine to potentially obtain improved location estimates. The proposed method models the given image as the frequency response of a multi-order system obtained with a balanced state space realization algorithm based on the singular value decomposition of a Hankel matrix. The locations of the poles of the resulting system determine the peak locations in the frequency domain, and the locations of the most significant peaks correspond to the single molecule locations in the original image. The performance of the method is validated using both simulated and experimental data.Keywords: (000.5490) Probability theory, stochastic processes, and statistics; (100.2960) Image analysis; (100.6640) Superresolution; (110.3010) Image reconstruction techniques; (170.2520) Fluorescence microscopy
Year: 2017 PMID: 28663832 PMCID: PMC5480547 DOI: 10.1364/BOE.8.001332
Source DB: PubMed Journal: Biomed Opt Express ISSN: 2156-7085 Impact factor: 3.732