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Method for simulating dose reduction in digital mammography using the Anscombe transformation

Borges, Lucas R. ; Oliveira, Helder C.R.De ; Nunes, Polyana F. ; Bakic, Predrag R. LU ; Maidment, Andrew D.A. and Vieira, Marcelo A.C. (2016) In Medical Physics 43(6 Pt 1). p.2704-2714
Abstract

Purpose: This work proposes an accurate method for simulating dose reduction in digital mammography starting from a clinical image acquired with a standard dose. Methods: The method developed in this work consists of scaling a mammogram acquired at the standard radiation dose and adding signal-dependent noise. The algorithm accounts for specific issues relevant in digital mammography images, such as anisotropic noise, spatial variations in pixel gain, and the effect of dose reduction on the detective quantum efficiency. The scaling process takes into account the linearity of the system and the offset of the detector elements. The inserted noise is obtained by acquiring images of a flat-field phantom at the standard radiation dose and at... (More)

Purpose: This work proposes an accurate method for simulating dose reduction in digital mammography starting from a clinical image acquired with a standard dose. Methods: The method developed in this work consists of scaling a mammogram acquired at the standard radiation dose and adding signal-dependent noise. The algorithm accounts for specific issues relevant in digital mammography images, such as anisotropic noise, spatial variations in pixel gain, and the effect of dose reduction on the detective quantum efficiency. The scaling process takes into account the linearity of the system and the offset of the detector elements. The inserted noise is obtained by acquiring images of a flat-field phantom at the standard radiation dose and at the simulated dose. Using the Anscombe transformation, a relationship is created between the calculated noise mask and the scaled image, resulting in a clinical mammogram with the same noise and gray level characteristics as an image acquired at the lower-radiation dose.Results: The performance of the proposed algorithm was validated using real images acquired with an anthropomorphic breast phantom at four different doses, with five exposures for each dose and 256 nonoverlapping ROIs extracted from each image and with uniform images. The authors simulated lower-dose images and compared these with the real images. The authors evaluated the similarity between the normalized noise power spectrum (NNPS) and power spectrum (PS) of simulated images and real images acquired with the same dose. The maximum relative error was less than 2.5% for every ROI. The added noise was also evaluated by measuring the local variance in the real and simulated images. The relative average error for the local variance was smaller than 1%. Conclusions: A new method is proposed for simulating dose reduction in clinical mammograms. In this method, the dependency between image noise and image signal is addressed using a novel application of the Anscombe transformation. NNPS, PS, and local noise metrics confirm that this method is capable of precisely simulating various dose reductions.

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author
; ; ; ; and
publishing date
type
Contribution to journal
publication status
published
subject
keywords
Anscombe transformation, digital mammography, dose reduction, quantum noise
in
Medical Physics
volume
43
issue
6 Pt 1
pages
2704 - 2714
publisher
American Association of Physicists in Medicine
external identifiers
  • pmid:27277017
  • scopus:84973548102
ISSN
0094-2405
DOI
10.1118/1.4948502
language
English
LU publication?
no
id
d67ab176-5fd6-4e79-ae88-06e995e7816b
date added to LUP
2020-11-07 13:01:15
date last changed
2024-06-14 02:58:57
@article{d67ab176-5fd6-4e79-ae88-06e995e7816b,
  abstract     = {{<p>Purpose: This work proposes an accurate method for simulating dose reduction in digital mammography starting from a clinical image acquired with a standard dose. Methods: The method developed in this work consists of scaling a mammogram acquired at the standard radiation dose and adding signal-dependent noise. The algorithm accounts for specific issues relevant in digital mammography images, such as anisotropic noise, spatial variations in pixel gain, and the effect of dose reduction on the detective quantum efficiency. The scaling process takes into account the linearity of the system and the offset of the detector elements. The inserted noise is obtained by acquiring images of a flat-field phantom at the standard radiation dose and at the simulated dose. Using the Anscombe transformation, a relationship is created between the calculated noise mask and the scaled image, resulting in a clinical mammogram with the same noise and gray level characteristics as an image acquired at the lower-radiation dose.Results: The performance of the proposed algorithm was validated using real images acquired with an anthropomorphic breast phantom at four different doses, with five exposures for each dose and 256 nonoverlapping ROIs extracted from each image and with uniform images. The authors simulated lower-dose images and compared these with the real images. The authors evaluated the similarity between the normalized noise power spectrum (NNPS) and power spectrum (PS) of simulated images and real images acquired with the same dose. The maximum relative error was less than 2.5% for every ROI. The added noise was also evaluated by measuring the local variance in the real and simulated images. The relative average error for the local variance was smaller than 1%. Conclusions: A new method is proposed for simulating dose reduction in clinical mammograms. In this method, the dependency between image noise and image signal is addressed using a novel application of the Anscombe transformation. NNPS, PS, and local noise metrics confirm that this method is capable of precisely simulating various dose reductions.</p>}},
  author       = {{Borges, Lucas R. and Oliveira, Helder C.R.De and Nunes, Polyana F. and Bakic, Predrag R. and Maidment, Andrew D.A. and Vieira, Marcelo A.C.}},
  issn         = {{0094-2405}},
  keywords     = {{Anscombe transformation; digital mammography; dose reduction; quantum noise}},
  language     = {{eng}},
  month        = {{06}},
  number       = {{6 Pt 1}},
  pages        = {{2704--2714}},
  publisher    = {{American Association of Physicists in Medicine}},
  series       = {{Medical Physics}},
  title        = {{Method for simulating dose reduction in digital mammography using the Anscombe transformation}},
  url          = {{http://dx.doi.org/10.1118/1.4948502}},
  doi          = {{10.1118/1.4948502}},
  volume       = {{43}},
  year         = {{2016}},
}