Enhanced imaging of microcalcifications in digital breast tomosynthesis through improved image-reconstruction algorithms
Emil Y. Sidky, Xiaochuan Pan, Ingrid S. Reiser, Robert M. Nishikawa,, Richard H. Moore, Daniel B. Kopans

TL;DR
This paper introduces an iterative image-reconstruction algorithm for under-sampled digital breast tomosynthesis that minimizes image total p-variation, improving microcalcification imaging by balancing data fidelity and image regularity.
Contribution
The paper presents a novel iterative reconstruction method controlling image regularity via total p-variation, tailored for under-sampled tomographic systems like DBT.
Findings
Enhanced microcalcification imaging in clinical DBT data
Algorithm effectively balances data fidelity and image regularity
Potential for improved diagnostic accuracy in breast cancer detection
Abstract
PURPOSE: We develop a practical, iterative algorithm for image-reconstruction in under-sampled tomographic systems, such as digital breast tomosynthesis (DBT). METHOD: The algorithm controls image regularity by minimizing the image total -variation (TpV), a function that reduces to the total variation when or the image roughness when . Constraints on the image, such as image positivity and estimated projection-data tolerance, are enforced by projection onto convex sets (POCS). The fact that the tomographic system is under-sampled translates to the mathematical property that many widely varied resultant volumes may correspond to a given data tolerance. Thus the application of image regularity serves two purposes: (1) reduction of the number of resultant volumes out of those allowed by fixing the data tolerance, finding the minimum image TpV for fixed data tolerance,…
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