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A GPU Simulation Tool for Training and Optimisation in 2D Digital X-Ray Imaging

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  • Elena Gallio
  • Osvaldo Rampado
  • Elena Gianaria
  • Silvio Diego Bianchi
  • Roberto Ropolo

Abstract

Conventional radiology is performed by means of digital detectors, with various types of technology and different performance in terms of efficiency and image quality. Following the arrival of a new digital detector in a radiology department, all the staff involved should adapt the procedure parameters to the properties of the detector, in order to achieve an optimal result in terms of correct diagnostic information and minimum radiation risks for the patient. The aim of this study was to develop and validate a software capable of simulating a digital X-ray imaging system, using graphics processing unit computing. All radiological image components were implemented in this application: an X-ray tube with primary beam, a virtual patient, noise, scatter radiation, a grid and a digital detector. Three different digital detectors (two digital radiography and a computed radiography systems) were implemented. In order to validate the software, we carried out a quantitative comparison of geometrical and anthropomorphic phantom simulated images with those acquired. In terms of average pixel values, the maximum differences were below 15%, while the noise values were in agreement with a maximum difference of 20%. The relative trends of contrast to noise ratio versus beam energy and intensity were well simulated. Total calculation times were below 3 seconds for clinical images with pixel size of actual dimensions less than 0.2 mm. The application proved to be efficient and realistic. Short calculation times and the accuracy of the results obtained make this software a useful tool for training operators and dose optimisation studies.

Suggested Citation

  • Elena Gallio & Osvaldo Rampado & Elena Gianaria & Silvio Diego Bianchi & Roberto Ropolo, 2015. "A GPU Simulation Tool for Training and Optimisation in 2D Digital X-Ray Imaging," PLOS ONE, Public Library of Science, vol. 10(11), pages 1-17, November.
  • Handle: RePEc:plo:pone00:0141497
    DOI: 10.1371/journal.pone.0141497
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