Andrzej Krol profile picture
315 464-7029

安德烈·克罗尔博士

113B 上州立大学医院
东亚当斯街750号
锡拉丘兹,纽约州13210
Andrzej Krol's email address generated as an image

当前预约

教授 放射学
教授 药理学

专业

医学核物理学

语言

英语
波兰的

病人类型

成人及儿童

RESEARCH PROGRAMS AND AFFILIATIONS

生物医学科学专业
Center for Psychiatric Neuroimaging
放射学

研究兴趣

的发展:

  • Extremely low-dose and high-resolution tomographic reconstruction methods in PET and SPECT
  • Advanced ultrafast PET detector
  • Advanced very high-sensitivity and high-spatial resolution brain PET scanner
  • Ultrafast laser-based betatron microfocal x-ray source for very high-resolution biomedical imaging
  • PET bioprobe for detection and treatment of hepatocellular carcinoma and other cancers
  • Advanced breast cancer detection methods in mammography

教育利益

  • 核医学物理学 – preparation of 放射学 residents for board exams
  • Physics of Nuclear Cardiology – preparation of Cardiology fellows for board exams

 

协会/会员

American Association of Physicists in Medicine
American College of 放射学 (ACR)
American Roentgen Ray Society (ARRS)
New York Academy of Sciences
Society of 核医学 (SNM)

教育

奖学金: SUNY 上州医科大学, 1994, Medical Physics
博士后: 纽约州立大学石溪分校,1989年
博士: Warsaw University, Poland, 1980
MS: Warsaw University, Poland, 1974

研究抽象

Preconditioned Alternating Projection Algorithms for Maximum a Posteriori ECT Reconstruction

We propose a preconditioned alternating projection algorithm (PAPA) for solving the maximum a posteriori (MAP) emission computed tomography (ECT) reconstruction problem. 具体地说, we formulate the reconstruction problem as a constrained convex optimization problem with the total variation (TV) regularization. We then characterize the solution of the constrained convex optimization problem and show that it satisfies a system of fixed-point equations defined in terms of two proximity operators raised from the convex functions that define the TV-norm and the constrain involved in the problem. The characterization (of the solution) via the proximity operators that define two projection operators naturally leads to an alternating projection algorithm for finding the solution. For efficient numerical computation, we introduce to the alternating projection algorithm a preconditioning matrix (the EM-preconditioner) for the dense system matrix involved in the optimization problem. We prove theoretically convergence of the preconditioned alternating projection algorithm. 在数值实验中, performance of our algorithms, with an appropriately selected preconditioning matrix, is compared with performance of the conventional MAP expectation-maximization (MAP-EM) algorithm with TV regularizer (EM-TV) and that of the recently developed nested EM-TV algorithm for ECT reconstruction. Based on the numerical experiments performed in this work, we observe that the alternating projection algorithm with the EM-preconditioner outperforms significantly the EM-TV in all aspects including the convergence speed, the noise in the reconstructed images and the image quality. It also outperforms the nested EM-TV in the convergence speed while providing comparable image quality.

出版物

链接到 PubMed (打开新窗口. 关闭 the PubMed window to return to this page.)