Investigation of Sparse Data Mouse Imaging Using Micro-CT with a Carbon-Nanotube-Based X-ray Source.

Junguo Bian, Xiao Han, Emil Y Sidky, Guohua Cao, Jianping Lu, Otto Zhou, Xiaochuan Pan
Author Information
  1. Junguo Bian: Department of Radiology, University of Chicago, 5841 S. Maryland Avenue, Chicago, IL 60637, USA.

Abstract

There has been a renewed interest in algorithm development for image reconstruction from highly incomplete data in computed tomography (CT). Such algorithms may lead to reduced imaging dose and time, and to the design of innovative configurations tailored to specific imaging tasks. In recent years, a carbon-nanotube (CNT)-based field-emission x-ray source has been developed, which offers easy electronic control of radiation and thus can be an ideal candidate for gated imaging. We have recently proposed algorithms for image reconstruction from fan- and cone-beam data collected at highly sparse angular views through minimization of the total-variation (TV) of the image subject to the condition that the estimated data are consistent with the measured data. In this work, we investigate and demonstrate the application of the TV-minimization algorithm to reconstructing images from mouse data acquired with a CNT-based CT scanner at a number of views much lower than what is used in conventional CT imaging. The results demonstrate that the TV-minimization algorithm can yield images with quality comparable to those obtained from a large number of views by use of the conventional algorithms. The significance of the work may lie in that the substantial reduction of projection views promised by the TV-minimization algorithm can be exploited for reducing imaging dose and time or for improving temporal resolution in tasks such as dynamic imaging.

References

  1. Phys Med Biol. 2008 Sep 7;53(17):4777-807 [PMID: 18701771]
  2. Med Phys. 2001 Aug;28(8):1679-88 [PMID: 11548937]
  3. Med Phys. 1981 Sep-Oct;8(5):695-702 [PMID: 7290021]
  4. Phys Med Biol. 2002 Aug 7;47(15):2599-609 [PMID: 12200927]
  5. Med Phys. 2009 Nov;36(11):4920-32 [PMID: 19994501]
  6. Phys Med Biol. 2009 Oct 7;54(19):5781-804 [PMID: 19741274]
  7. Inverse Probl. 2008 Aug;24(4):45011-45028 [PMID: 19911080]

Grants

  1. R01 EB000225/NIBIB NIH HHS
  2. P50 CA125183/NCI NIH HHS
  3. U54 CA119343-05S20003/NCI NIH HHS
  4. S10 RR021039/NCRR NIH HHS
  5. R01 CA120540-03/NCI NIH HHS
  6. U54 CA119343/NCI NIH HHS
  7. R33 EB004204-04/NIBIB NIH HHS
  8. P30 CA014599/NCI NIH HHS
  9. R01 EB000225-08/NIBIB NIH HHS
  10. R21 EB004204/NIBIB NIH HHS
  11. R33 EB004204/NIBIB NIH HHS
  12. R01 CA120540/NCI NIH HHS

Word Cloud

Created with Highcharts 10.0.0imagingdataalgorithmviewsimageCTalgorithmscanTV-minimizationreconstructionhighlymaydosetimetasksworkdemonstrateimagesnumberconventionalrenewedinterestdevelopmentincompletecomputedtomographyleadreduceddesigninnovativeconfigurationstailoredspecificrecentyearscarbon-nanotubeCNT-basedfield-emissionx-raysourcedevelopedofferseasyelectroniccontrolradiationthusidealcandidategatedrecentlyproposedfan-cone-beamcollectedsparseangularminimizationtotal-variationTVsubjectconditionestimatedconsistentmeasuredinvestigateapplicationreconstructingmouseacquiredCNT-basedscannermuchlowerusedresultsyieldqualitycomparableobtainedlargeusesignificanceliesubstantialreductionprojectionpromisedexploitedreducingimprovingtemporalresolutiondynamicInvestigationSparseDataMouseImagingUsingMicro-CTCarbon-Nanotube-BasedX-raySource

Similar Articles

Cited By