Abstract
AbstractElectron tomography allows one to obtain 3D reconstructions visualizing a tissue’s ultrastructure from a series of 2D projection images. An inherent problem with this imaging technique is that its projection images contain unwanted shifts, which must be corrected for to achieve reliable reconstructions. Commonly, the projection images are aligned with each other by means of fiducial markers prior to the reconstruction procedure. In this work, we propose a joint alignment and reconstruction algorithm that iteratively solves for both the unknown reconstruction and the unintentional shift and does not require any fiducial markers. We evaluate the approach first on synthetic phantom data where the focus is not only on the reconstruction quality but more importantly on the shift correction. Subsequently, we apply the algorithm to healthy C57BL/6J mice and then compare it with non-obese diabetic (NOD) mice, with the aim of visualizing the attack of immune cells on pancreatic beta cells within type 1 diabetic mice at a more profound level through 3D analysis. We empirically demonstrate that the proposed algorithm is able to compute the shift with a remaining error at only the sub-pixel level and yields high-quality reconstructions for the limited-angle inverse problem. By decreasing labour and material costs, the algorithm facilitates further research directed towards investigating the immune system’s attacks in pancreata of NOD mice for numerous samples at different stages of type 1 diabetes.
Funder
Juvenile Diabetes Research Foundation United States of America
BioTechMed
Medical University of Graz
Publisher
Springer Science and Business Media LLC
Subject
Cell Biology,Medical Laboratory Technology,Molecular Biology,Histology
Reference36 articles.
1. AZoNano. High resolution and high throughput imaging of tissue samples using the atlas$$^{\text{TM}}$$. https://www.azonano.com/article.aspx?ArticleID=2724m, 2021. [Online; accessed 27 Sep 2021]
2. Beck A (2017) First-order methods in optimization. Society for Industrial and Applied Mathematics, Philadelphia, PA
3. Berriman J, Bryan R, Freeman R, Leonard K (1984) Methods for specimen thickness determination in electron microscopy. Ultramicroscopy 13(4):351–364
4. Bubba TA, Kutyniok G, Lassas M, März M, Samek W, Siltanen S, Srinivasan V (2019) Learning the invisible: a hybrid deep learning-shearlet framework for limited angle computed tomography. Inverse Problems 35(6):064002
5. Chambolle A, Pock T (2011) A first-order primal-dual algorithm for convex problems with applications to imaging. J Mathematical Imaging Vision 40(1):120–145
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献