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A Task-dependent Investigation on Dose and Texture in CT Image Reconstruction. | LitMetric

A Task-dependent Investigation on Dose and Texture in CT Image Reconstruction.

IEEE Trans Radiat Plasma Med Sci

Department of Radiology, Stony Brook University, Stony Brook, NY 11794, USA, and now with the Department of Radiology, New York University, New York, NY 10016, USA.

Published: July 2020

AI Article Synopsis

  • This study focuses on reducing radiation exposure from CT scans while effectively identifying and characterizing lung nodules that could indicate lung cancer.
  • It evaluates the effectiveness of different imaging techniques and reconstruction algorithms at multiple radiation dose levels with 133 patients involved.
  • Findings reveal that a specific reconstruction method (MRF-T) at lower doses can localize and characterize nodules comparably to higher doses, highlighting the textures' significance in nodules' detection.

Article Abstract

Localizing and characterizing clinically-significant lung nodules, a potential precursor to lung cancer, at the lowest achievable radiation dose is demanded to minimize the stochastic radiation effects from x-ray computed tomography (CT). A minimal dose level is heavily dependent on the image reconstruction algorithms and clinical task, in which the tissue texture always plays an important role. This study aims to investigate the dependence through a task-based evaluation at multiple dose levels and variable textures in reconstructions with prospective patient studies. 133 patients with a suspicious pulmonary nodule scheduled for biopsy were recruited and the data was acquired at120kVp with three different dose levels of 100, 40 and 20mAs. Three reconstruction algorithms were implemented: analytical filtered back-projection (FBP) with optimal noise filtering; statistical Markov random field (MRF) model with optimal Huber weighting (MRF-H) for piecewise smooth reconstruction; and tissue-specific texture model (MRF-T) for texture preserved statistical reconstruction. Experienced thoracic radiologists reviewed and scored all images at random, blind to the CT dose and reconstruction algorithms. The radiologists identified the nodules in each image including the 133 biopsy target nodules and 66 other non-target nodules. For target nodule characterization, only MRF-T at 40mAs showed no statistically significant difference from FBP at 100mAs. For localizing both the target nodules and the non-target nodules, some as small as 3mm, MRF-T at 40 and 20mAs levels showed no statistically significant difference from FBP at 100mAs, respectively. MRF-H and FBP at 40 and 20mAs levels performed statistically differently from FBP at 100mAs. This investigation concluded that (1) the textures in the MRF-T reconstructions improves both the tasks of localizing and characterizing nodules at low dose CT and (2) the task of characterizing nodules is more challenging than the task of localizing nodules and needs more dose or enhanced textures from reconstruction.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8075295PMC
http://dx.doi.org/10.1109/trpms.2019.2957459DOI Listing

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