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Journal ArticleDOI

Assessment of the dose reduction potential of a model-based iterative reconstruction algorithm using a task-based performance metrology.

Ehsan Samei, +1 more
- 24 Dec 2014 - 
- Vol. 42, Iss: 1, pp 314-323
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TLDR
Results indicated that MBIR exhibits a variability spatial resolution with respect to object contrast and noise while significantly reducing image noise, which extends current possibilities for the assessment of CT image quality under the complex resolution and noise characteristics exhibited with statistical and iterative reconstruction algorithms.
Abstract
Purpose: Different computed tomography (CT) reconstruction techniques offer different image quality attributes of resolution and noise, challenging the ability to compare their dose reduction potential against each other. The purpose of this study was to evaluate and compare the task-based imaging performance of CT systems to enable the assessment of the dose performance of a model-based iterative reconstruction (MBIR) to that of an adaptive statistical iterative reconstruction (ASIR) and a filtered back projection (FBP) technique. Methods: The ACR CT phantom (model 464) was imaged across a wide range of mA setting on a 64-slice CT scanner (GE Discovery CT750 HD, Waukesha, WI). Based on previous work, the resolution was evaluated in terms of a task-based modulation transfer function (MTF) using a circular-edge technique and images from the contrast inserts located in the ACR phantom. Noise performance was assessed in terms of the noise-power spectrum (NPS) measured from the uniform section of the phantom. The task-based MTF and NPS were combined with a task function to yield a task-based estimate of imaging performance, the detectability index (d′). The detectability index was computed as a function of dose for two imaging tasks corresponding to the detection of a relatively small and a relatively large feature (1.5 and 25 mm, respectively). The performance of MBIR in terms of the d′ was compared with that of ASIR and FBP to assess its dose reduction potential. Results: Results indicated that MBIR exhibits a variability spatial resolution with respect to object contrast and noise while significantly reducing image noise. The NPS measurements for MBIR indicated a noise texture with a low-pass quality compared to the typical midpass noise found in FBP-based CT images. At comparable dose, the d′ for MBIR was higher than those of FBP and ASIR by at least 61% and 19% for the small feature and the large feature tasks, respectively. Compared to FBP and ASIR, MBIR indicated a 46%–84% dose reduction potential, depending on task, without compromising the modeled detection performance. Conclusions: The presented methodology based on ACR phantom measurements extends current possibilities for the assessment of CT image quality under the complex resolution and noise characteristics exhibited with statistical and iterative reconstruction algorithms. The findings further suggest that MBIR can potentially make better use of the projections data to reduce CT dose by approximately a factor of 2. Alternatively, if the dose held unchanged, it can improve image quality by different levels for different tasks.

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Citations
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Image quality in CT: From physical measurements to model observers.

TL;DR: The spectrum of various methods that have been used to characterise image quality in CT: from objective measurements of physical parameters to clinically task-based approaches (i.e. model observer (MO) approach) including pure human observer approach are presented.
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Image quality and dose reduction opportunity of deep learning image reconstruction algorithm for CT: a phantom study

TL;DR: The new DLIR algorithm reduced noise and improved spatial resolution and detectability without perceived alteration of the texture, commonly reported with IR.
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Deep Learning Reconstruction at CT: Phantom Study of the Image Characteristics

TL;DR: On DLR images, the image noise was lower, and high-contrast spatial resolution and task-based detectability were better than on images reconstructed with other state-of-the art techniques.
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Characteristic image quality of a third generation dual-source MDCT scanner: Noise, resolution, and detectability.

TL;DR: Image quality increased with increasing dose and decreasing phantom size and the detectability exhibited less variability with phantom size for modulated scans compared to fixed tube current scans, indicating the ADMIRE algorithm could offer comparable image quality at reduced doses or improved image quality with changing phantom size.
Journal ArticleDOI

CT iterative reconstruction algorithms: a task-based image quality assessment

TL;DR: The advantage of task-based image quality assessment for radiologists is that it does not include only complicated metrics, but also clinically meaningful image quality, and the use of d′ is highly adapted and robust for an optimization process.
References
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Low-tube-voltage, high-tube-current multidetector abdominal CT: improved image quality and decreased radiation dose with adaptive statistical iterative reconstruction algorithm--initial clinical experience.

TL;DR: Compared with standard FBP reconstruction, an ASIR algorithm improves image quality and has the potential to decrease radiation dose at low-Tube-voltage, high-tube-current multidetector abdominal CT during the late hepatic arterial phase.
Journal ArticleDOI

Reducing abdominal CT radiation dose with adaptive statistical iterative reconstruction technique.

TL;DR: ASIR technique allows radiation dose reduction for abdominal CT examinations whereas improving image noise compared with the FBP technique, which however, was mild and did not affect the diagnostic acceptability of images.
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