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12th International Conference on Parallel and Distributed Systems - Volume 1 (ICPADS'06)
Acceleration of Maximum Likelihood Estimation for Tomosynthesis Mammography
Minneapolis, Minnesota
July 12-July 15
ISBN: 0-7695-2612-8
Juemin Zhang, Northeastern University, USA
Waleed Meleis, Northeastern University, USA
David Kaeli, Northeastern University, USA
Tao Wu, Massachusetts General Hospital, USA
Maximum likelihood (ML) estimation is used during tomosynthesis mammography reconstruction. A single reconstruction involves the processing of highresolution projection images, which is both computeintensive and time-consuming. This workload is presently a bottleneck in the accurate diagnosis of breast cancer during screening. This paper presents our parallelization work on an ML algorithm using three different partitioning models: no inter-communication, overlap with inter-communication and non-overlap model. These models are evaluated to obtain the best reconstruction performance given a range of computing environments with different computational power and network speed.

Our test results show that the non-overlap method outperforms the other two methods on all five computing platforms evaluated. This parallelization of ML has enabled tomosynthesis to become a viable technology in the breast screening clinic, reducing reconstruction time from 3 hours on a PentiumIV workstation to 6 minutes on a 32-node PentiumIV cluster.

Citation:
Juemin Zhang, Waleed Meleis, David Kaeli, Tao Wu, "Acceleration of Maximum Likelihood Estimation for Tomosynthesis Mammography," icpads, vol. 1, pp.291-299, 12th International Conference on Parallel and Distributed Systems - Volume 1 (ICPADS'06), 2006
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