4 DISCUSSION
In this quantitative phantom study, CT image quality
performance of two different reconstruction techno-
logies have been carefully evaluated.
We comprehensively characterised the physical
properties (in terms of several quality parameters
such as noise, NPS, MTF and CNR) of the ASIR-
reconstructed CT images using different blending
levels of reconstruction in a number of experimental
designs.
Our findings confirm the dose reduction potential
of ASIR (Richard et al., 2012; Samei et al., 2015;
Miéville et al., 2013; Smith, 2014 et al.; Brady et al.,
2012; McCollough et al., 2015; Yanagawa et al.,
2010). As compared to conventional FBP,
noise/CNR decreases (Fig. 1)/increases (Table 3) up
to 50%/100% when using ASIR. Also, ASIR does
not modify the typical noise dependence on the
acquisition parameters. Furthermore, the noise and
CNR vary non-linearly with the ASIR blending level
of reconstruction. In addition, NPS analysis (Fig. 3)
shows that ASIR acts as a low-pass filter and
modifies noise texture: for ASIR-reconstructed CT
images, the frequency of the maximum of the NPS
curve shifts non-linearly toward lower frequencies
with increasing blending level of reconstruction, in
agreement with the results of previous studies
(Samei et al., 2015; Miéville et al., 2013).
We assessed the spatial resolution by estimating
the MTF at different contrasts and exposure values.
We found that, unlike conventional FBP, the MTF
decreases with decreasing contrast and tube load. It
should be noted that, for lower contrast and tube
load, the MTF of ASIR-reconstructed images is
lower than that of FBP-reconstructed images, and
decreases with increasing blending level of
reconstruction.
Recent studies have shown that these effects may
affect low-contrast resolution and thus may
influence the performance of automatic contour
detection software (Precht et al., 2016).
When compared to conventional FBP reconstru-
ction, ASIR allows for an improvement of image
quality in terms of reduced noise and increased CNR,
and hence a potential dose reduction in CT imaging
can be obtained while preserving diagnostic
capabilities. However, ASIR can modify noise
texture as well as affect spatial resolution at low
contrast and radiation exposure. For these reasons,
the optimal ASIR blending level of reconstruction
(i.e. the best trade-off between image quality and
dose reduction) should be assessed for each specific
application through quantitative as well as subjective
analysis.
Because of the noise reduction and CNR
increment offered by ASIR, CT examinations can be
performed at reduced radiation exposure levels.
However, in order to avoid potential effects of losses
in spatial resolution, which are inherent to ASIR and
may reduce the diagnostic value of CT images, the
optimal blending level of reconstruction should be
assessed for each specific clinical application.
In this regard, CT follow-up examinations (Lim
et al., 2016; Precht et al., 2016) and screening
programs could benefit of this new reconstruction
technology. In particular, the use of ASIR in CT
screening programs – aimed at detecting small
contrast lesions with low dose – should be carefully
evaluated.
5 CONCLUSIONS
A relevant noise reduction and CNR increment in
CT images are achieved with the ASIR algorithm
with respect to the conventional FBP reconstruction
in different experimental designs. For this reason,
the iterative reconstruction approach represents an
effective method for optimizing dose in CT imaging.
However, for low dose and low contrast acquisitions
(typical for instance of screening programs) ASIR
can provide lower performance, in terms of reduced
spatial resolution capabilities, as compared to
conventional FBP, and its use, along with the choice
of the optimal blending level of reconstruction,
should therefore be carefully evaluated.
Moreover, this work lays the basis for further
studies on CT imaging with ASIR. In particular, our
recent interests are focused on the performance of a
Computed Aided Detection (CAD) system with
ASIR-reconstructed clinical images of the lung. In
fact, the CAD system has been developed by taking
into account the FBP-related appearance of the
images and therefore, an investigation on the CAD
response to the ASIR-reconstructed images could be
of considerable interest.
ACKNOWLEDGEMENTS
We would like to thank Prof. Duccio Volterrani,
Prof. Antonio Claudio Traino and Dr. Davide
Giustini for supporting this work.