AI Article Synopsis

  • The study aimed to estimate the radiation doses to the lungs and breasts during tube current modulated (TCM) lung cancer screening scans, considering different patient sizes.
  • Monte Carlo methods were employed to perform detailed dose calculations using voxelized phantom and patient models, identifying various radiosensitive organs involved in the scans.
  • Results highlighted how different patient sizes, represented by a water equivalent diameter, influenced the radiation output metrics and organ-specific doses during low-dose lung cancer screening protocols.

Article Abstract

Purpose: The purpose of this study was to estimate the radiation dose to the lung and breast as well as the effective dose from tube current modulated (TCM) lung cancer screening (LCS) scans across a range of patient sizes.

Methods: Monte Carlo (MC) methods were used to calculate lung, breast, and effective doses from a low-dose LCS protocol for a 64-slice CT that used TCM. Scanning parameters were from the protocols published by AAPM's Alliance for Quality CT. To determine lung, breast, and effective doses from lung cancer screening, eight GSF/ICRP voxelized phantom models with all radiosensitive organs identified were used to estimate lung, breast, and effective doses. Additionally, to extend the limited size range provided by the GSF/ICRP phantom models, 30 voxelized patient models of thoracic anatomy were generated from LCS patient data. For these patient models, lung and breast were semi-automatically segmented. TCM schemes for each of the GSF/ICRP phantom models were generated using a validated method wherein tissue attenuation and scanner limitations were used to determine the TCM output as a function of table position and source angle. TCM schemes for voxelized patient models were extracted from the raw projection data. The water equivalent diameter, Dw, was used as the patient size descriptor. Dw was estimated for the GSF/ICRP models. For the thoracic patient models, Dw was extracted from the DICOM header of the CT localizer radiograph. MC simulations were performed using the TCM scheme for each model. Absolute organ doses were tallied and effective doses were calculated using ICRP 103 tissue weighting factors for the GSF/ICRP models. Metrics of scanner radiation output were determined based on each model's TCM scheme, including CTDI , dose length product (DLP), and CTDI , a previously described regional metric of scanner output covering most of the lungs and breast. All lung and breast doses values were normalized by scan-specific CTDI and CTDI . Effective doses were normalized by scan-specific CTDI and DLP. Absolute and normalized doses were reported as a function of Dw.

Results: Lung doses normalized by CTDI were modeled as an exponential relationship with respect to Dw with coefficients of determination (R ) of 0.80. Breast dose normalized by CTDI was modeled with an exponential relationship to Dw with an R of 0.23. For all eight GSF/ICRP phantom models, the effective dose using TCM protocols was below 1.6 mSv. Effective doses showed some size dependence but when normalized by DLP demonstrated a constant behavior.

Conclusion: Lung, breast, and effective doses from LCS CT exams with TCM were estimated with respect to patient size. Normalized lung dose can be reasonably estimated with a measure of a patient size such as Dw and regional metric of CTDI covering the thorax such as CTDI , while normalized breast dose can also be estimated with a regional metric of CTDI but with a larger degree of variability than observed for lung. Effective dose normalized by DLP can be estimated with a constant multiplier.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6220713PMC
http://dx.doi.org/10.1002/mp.13131DOI Listing

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