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Low-dose dynamic cerebral perfusion computed tomography reconstruction via kronecker-basis-representation tensor sparsity regularization

  • Dong Zeng
  • , Qi Xie
  • , Wenfei Cao
  • , Jiahui Lin
  • , Hao Zhang
  • , Shanli Zhang
  • , Jing Huang
  • , Zhaoying Bian
  • , Deyu Meng
  • , Zongben Xu
  • , Zhengrong Liang
  • , Wufan Chen
  • , Jianhua Ma
  • Southern Medical University
  • Xi'an Jiaotong University
  • Johns Hopkins University
  • Guangzhou University of Chinese Medicine
  • Guangzhou Key Laboratory of Medical Radiation Imaging and Detection Technology

Research output: Contribution to journalArticlepeer-review

40 Scopus citations

Abstract

Dynamic cerebral perfusioncomputed tomography (DCPCT) has the ability to evaluate the hemodynamic information throughout the brain. However, due to multiple 3-D image volume acquisitions protocol, DCPCT scanning imposes high radiation dose on the patients with growing concerns. To address this issue, in this paper, based on the robust principal component analysis (RPCA, or equivalently the low-rank and sparsity decomposition) model and the DCPCT imaging procedure, we propose a new DCPCT image reconstruction algorithm to improve lowdose DCPCT and perfusion maps quality via using a powerful measure, called Kronecker-basis-representation tensor sparsity regularization, for measuring low-rankness extent of a tensor. For simplicity, the first proposed model is termed tensor-based RPCA (T-RPCA). Specifically, the T-RPCA model views the DCPCT sequential images as a mixture of low-rank, sparse, and noise components to describe the maximumtemporal coherence of spatial structure among phases in a tensor framework intrinsically. Moreover, the low-rank component corresponds to the "background" part with spatial-temporal correlations, e.g., static anatomical contribution,which is stationary over time about structure, and the sparse component represents the time-varying component with spatial-temporal continuity, e.g., dynamic perfusion enhanced information, which is approximately sparse over time. Furthermore, an improved nonlocal patch-based T-RPCA (NL-T-RPCA) model which describes the 3-D block groups of the "background" in a tensor is also proposed. The NL-T-RPCA model utilizes the intrinsic characteristics underlying the DCPCT images, i.e., nonlocal self-similarity and global correlation. Two efficient algorithms using alternating direction method of multipliers are developed to solve the proposedT-RPCA and NL-T-RPCA models, respectively. Extensive experiments with a digital brain perfusion phantom, preclinical monkey data, and clinical patient data clearly demonstrate that the two proposed models can achieve more gains than the existing popular algorithms in terms of both quantitative and visual quality evaluations from low-dose acquisitions, especially as low as 20 mAs.

Original languageEnglish
Article number8025615
Pages (from-to)2546-2556
Number of pages11
JournalIEEE Transactions on Medical Imaging
Volume36
Issue number12
DOIs
StatePublished - Dec 2017

Keywords

  • Cerebral perfusion
  • Computed tomography
  • Regularization.
  • Sparsity
  • Tensor

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