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Technical Note: Validation of TG 233 phantom methodology to characterize noise and dose in patient CT data.
Abstract
PURPOSE: Phantoms are useful tools in diagnostic CT, but practical limitations reduce
phantoms to being only a limited patient surrogate. Furthermore, a phantom with a
single cross sectional area cannot be used to evaluate scanner performance in modern
CT scanners that use dose reduction techniques such as Automated Tube Current Modulation
(ATCM) and Iterative Reconstruction (IR) algorithms to adapt x-ray flux to patient
size, reduce radiation dose, and achieve uniform image noise. A new multi-sized phantom
(Mercury Phantom, MP) has been introduced, representing multiple diameters. This work
aimed to ascertain if measurements from MP can predict radiation dose and image noise
in clinical CT images to prospectively inform protocol design. METHODS: The adult
MP design included four different physical diameters (18.5, 23.0, 30.0, 37.0 cm) representing
a range of patient sizes. The study included 1457 examinations performed on two scanner
models from two vendors, and two clinical protocols (abdominopelvic with and chest
without contrast). Attenuating diameter, radiation dose, and noise magnitude (average
pixel standard deviation in uniform image) was automatically estimated in patients
and in the MP using a previously validated algorithm. An exponential fit of CTDIvol
and noise as a function of size was applied to patients and MP data. Lastly, the fit
equations from the phantom data were used to fit the patient data. In each patient
distribution fit, the normalized root mean square error (nRMSE) values were calculated
in the residuals' plots as a metric to indicate how well the phantom data can predict
dose and noise in clinical operations as a function of size. RESULTS: For dose across
patient size distributions, the difference between nRMSE from patient fit and MP model
data prediction ranged between 0.6% and 2.0% (mean 1.2%). For noise across patient
size distributions, the nRMSE difference ranged between 0.1% and 4.7% (mean 1.4%).
CONCLUSION: The Mercury Phantom provided a close prediction of radiation dose and
image noise in clinical patient images. By assessing dose and image quality in a phantom
with multiple sizes, protocol parameters can be designed and optimized per patient
size in a highly constrained setup to predict clinical scanner and ATCM system performance.
Type
Journal articlePermalink
https://hdl.handle.net/10161/20154Published Version (Please cite this version)
10.1002/mp.14089Publication Info
Ria, Francesco; Solomon, Justin; Wilson, Joshua M; & Samei, Ehsan (2020). Technical Note: Validation of TG 233 phantom methodology to characterize noise and
dose in patient CT data. Med Phys. 10.1002/mp.14089. Retrieved from https://hdl.handle.net/10161/20154.This is constructed from limited available data and may be imprecise. To cite this
article, please review & use the official citation provided by the journal.
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Show full item recordScholars@Duke
Francesco Ria
Assistant Professor of Radiology
Dr. Francesco Ria is a medical physicist and he serves as an Assistant Professor in
the Department of Radiology. Francesco has an extensive expertise in the assessment
of procedure performances in radiology. In particular, his research activities focus
on the simultaneous evaluation of radiation dose and image quality in vivo in computed
tomography providing a comprehensive evaluation of radiological exams. Moreover, Francesco
is developing and investigating novel mathematical models t
Ehsan Samei
Reed and Martha Rice Distinguished Professor of Radiology
Dr. Ehsan Samei, PhD, DABR, FAAPM, FSPIE, FAIMBE, FIOMP, FACR is a Persian-American
medical physicist. He is a tenured Professor of Radiology, Medical Physics, Biomedical
Engineering, Physics, and Electrical and Computer Engineering at Duke University,
where he also serves as the Chief Imaging Physicist for Duke University Health System,
the director of the Carl E Ravin Advanced Imaging Laboratories, and the director of
Center for Virtual Imaging Trials. He is certi
Joshua M Wilson
Assistant Professor of Radiology
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