Next Article in Journal
Travel-Time Inversion Method of Converted Shear Waves Using RayInvr Algorithm
Previous Article in Journal
Risks and Benefits of Crew Reduction and/or Removal with Increased Automation on the Ship Operator: A Licensed Deck Officer’s Perspective
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Feasibility of the Quantitative Assessment Method for CT Quality Control in Phantom Image Evaluation

1
Biomedical Engineering Research Center, Asan Institute for Life Sciences, Asan Medical Center, 88 Olympic-ro 43-gil, Songpa-gu, Seoul 05505, Korea
2
Department of Medical Engineering, Dongguk University College of Medicine, 32 Dongguk-ro, Goyang-si, Gyeonggi-do 10326, Korea
3
Department of Radiology and Research Institute of Radiology, University of Ulsan College of Medicine, Asan Medical Center, Seoul 05505, Korea
4
Department of Radiological Science, Eulji University, 553 Sanseong-daero, Sujeong-gu, Seongnam-si, Gyeonggi-do 13135, Korea
*
Author to whom correspondence should be addressed.
Appl. Sci. 2021, 11(8), 3570; https://doi.org/10.3390/app11083570
Submission received: 9 March 2021 / Revised: 1 April 2021 / Accepted: 12 April 2021 / Published: 16 April 2021
(This article belongs to the Section Applied Biosciences and Bioengineering)

Abstract

:
Computed tomography (CT) quality control (QC) is regularly performed with standard phantoms, to bar faulty equipment from medical use. Its accuracy may be improved by replacing qualitative methods based on good visual distinction with pixel value-based quantitative methods. We hypothesized that statistical texture analysis (TA) that covers the entire phantom image would be a more appropriate tool. Therefore, our study devised a novel QC method based on the TA for contrast resolution (CR) and spatial resolution (SR) and proposed new, quantitative CT QC criteria. TA of CR and SR images on an American Association of Physicists in Medicine (AAPM) CT Performance Phantom were performed with nine CT scanner models. Six texture descriptors derived from first-order statistics of grayscale image histograms were analyzed. Principal component analysis was used to reveal descriptors with high utility. For CR evaluation, contrast and softness were the most accurate descriptors. For SR evaluation, contrast, softness, and skewness were the most useful descriptors. We propose the following ranges: contrast for CR, 29.5 ± 15%, for SR, 29 ± 10%; softness for CR, <0.015, for SR, <0.014; and skewness for SR, >−1.85. Our novel TA method may improve the assessment of CR and SR of AAPM phantom images.

1. Introduction

Computed tomography (CT) is a computerized imaging technique in which many X-ray measurements of a body are made, with an X-ray tube usually rotating around the patient during the CT scan [1,2]. These signals are computationally processed and, consequently, cross-sectional images of the body are reconstructed. The utilization of CT for image-based diagnosis has increased steeply in the medical field [3,4]. Additionally, in the past ten years, state of-the-art CT detectors and sources and several techniques, such as automatic exposure control and iterative reconstruction, have been launched; these can provide a higher image quality by using a lower radiation dose [5,6,7,8,9,10]. However, despite the reduced radiation exposure per single CT examination, the total number of CT examinations performed has increased consistently [11,12]. Therefore, it is imperative that CT scanners are properly managed and quality control (QC) is accurately performed [13,14,15,16].
QC related to radiation dose and image quality for CT is universally composed of quantitative assessments with a standard phantom [13,14,15,16]. In particular, the decreases in image quality of CT scanners need to be managed quantitatively because a relatively high radiation dose may be used to overcome the image quality during CT examination. Although the standard phantom evaluation exists, this is often included in the quantitative evaluation, especially for contrast resolution (CR) and spatial resolution (SR) assessments [14,15,16]. For the CR and the SR evaluation, radiologists sometimes perform visual evaluations of these images (e.g., holes that are visible as distinct circles), instead of making use of quantitative cut-off values. However, quantitative tools are considered more effective for evaluating phantom images [17,18,19]. There are several types of standard phantoms with similarities in composition such as the American Association of Physicists in Medicine (AAPM) CT Performance Phantom, and the American College of Radiology (ACR) phantom [14,17,18]. As a result, measurement of the contrast-to-noise ratio (CNR) as an objective tool has been conducted in recent years to evaluate the CR with the ACR phantom in the United States, which overcomes the limitations of qualitative evaluation [17]. However, as the CNR is usually focused on specific regions of interest (ROIs) and does not encompass the entire CT image, there is a risk of sampling error [20]. In fact, a specific location with a small size can be problematic as it represents the quality of the overall image. Therefore, computer-aided analysis, such as texture analysis (TA), that covers the entire ROI was considered as a more appropriate tool than the value of the CNR, which varies by measured location, because it has a lower standard error.
Such tools have already been investigated, making use of the TA, which may be able to distinguish between diseases with objective values [21,22,23,24]. There are five types of TA methods: structural, statistical, local binary patterns, model-based, or transform-based [25,26]. Among these, the statistical method has been utilized as the most common approach for CT TA or digital image-based diagnosis [25,27]. Since the specific characteristics of the tumor can be distinguished through TA [21,22,23,24], we hypothesized that statistical TA may also be useful for classification of standard phantom images during QC of CT scanners. CR and SR represent whether the pixel value in the ROI can be identified in a situation where the difference of signal between the ROI and the surrounding area is small or large. The rationale for this study was whether it would be possible to quantify the distinction for CT QC, similarly to the distinction of tumors through TA mentioned above. Therefore, the purpose of our study was to perform the TA based on the statistical method for CR and SR assessment and to evaluate its feasibility as a quantitative component of CT QC.

2. Materials and Methods

2.1. Equipment

An AAPM CT Performance Phantom (Model 76-410; Fluke Corporation, Everett, WA, USA) was used for all experiments. It is a cylinder made of acrylic and consists of five different assessment blocks (Figure 1a). We utilized multi-detector CT scanners made by various manufacturers, including widely used and state-of-the-art equipment in three tertiary hospitals. The scanner, rows of detectors, and manufacturer’s information were as follows: SOMATOM Definition AS (32), AS+ (64), and Edge (64) (Siemens Healthineers, Erlangen, Germany); Lightspeed VCT XTe (64) and Discovery CT750 HD (64) (GE Healthcare, Chicago, IL, USA); Phillips Brilliance CT (64) and IQon Spectral CT (64) (Philips Healthcare, Amsterdam, Netherlands); and Aquilion CX (64) and GENESIS (160) (Canon Medical Systems Corporation, Otawara, Japan). The SOMATOM Edge differs from the AS+ only in its integrated circuit detector, which provides a higher image quality [6]. Similarly, the Discovery CT750 HD contains a gemstone clarity detector, which generates higher-resolution images than those of the Lightspeed VCT XTe [7]. The former is state-of-the-art equipment, and the latter is a widely used scanner.

2.2. Image Acquisition Parameters

For CT QC, image acquisition parameters were equal for all scanners, except for the tube current (in mA). The recommended tube current is 250 mA for AAPM CT Performance Phantom evaluation [13,14]. However, the CT radiation dose, measured as the CT dose index volume (CTDIvol), is not the same among the various CT scanners when the tube current is fixed at 250 mA. As a result, we adopted a radiation dose-based protocol (CTDIvol: 20 mGy) for all scanners (i.e., a tube current corresponding to a CTDIvol of 20 mGy was selected). However, CT scanners that cannot be set to exactly 20 mGy were set to the nearest value) (Table 1), similar to that of a previous study [28]. The other parameters were as follows: tube peak kilovoltage(kVp) = 120 kV, rotation time = 1 s, reconstruction method: filtered back projection, convolution kernels = Siemens, B30; GE, standard; Philips, B; Canon, FC13, display field-of-view = 25 cm, and scan mode = sequential scan of 10-mm slice thickness. All raw data in DICOM format was acquired by one author (K.B.L. with 10 years of experience in QC of CT).
The specifications of the scanners are as follows: Siemens Healthineers: SOMATOM Definition AS (32), AS+ (64), and Edge (64); GE Healthcare: Lightspeed VCT XTe (64) and Discovery CT750 HD (64); Philips Healthcare: Brilliance CT (64) and IQon Spectral CT (64); Canon Medical Systems: Aquilion CX (64) and GENESIS (160). CT, computed tomography; CTDIvol, computed tomography dose index volume; kVp, peak kilovoltage.

2.3. Acquisition Method of CR Images

The CR block contains holes of 57.2 mm in depth and 25.4, 19.1, 12.7, 9.5, 6.4, and 3.2 mm in diameter, at intervals of 5 mm, arranged in pairs separated by twice the width of the respective holes (Figure 1b). CR-block images were acquired with four different contrast medium concentrations and in eight different positions (12, 1.5, 3, 4.5, 6, 7.5, 9, and 10.5 o’clock) with each machine. In particular, the methodology of acquiring images with different directions aimed to examine the validity of the related result values by considering all directions that can be acquired at the time of actual QC. For CR evaluation, the required difference in radiodensity between the holes and the ROIs (the acrylic medium between the holes) was 10 HU (Hounsfield units). However, there are no specific criteria for contrast medium concentration for CR evaluation. Therefore, we utilized four different concentrations to measure the radiodensity, in order to prevent users from exploiting the maximum concentration to achieve the required CR. The contrast medium used was 0.612 g/mL iopamidol, of which 0.3 g/mL was iodine (Pamiray 300; DongKook Pharmaceutical Co. Ltd., Seoul, Korea) and the concentrations used were 0.01%, (Figure 2a), 0.015% (Figure 2b), 0.02% (Figure 2c), and 0.025% (Figure 2d) of the contrast medium diluted in sterile distilled water.

2.4. Acquisition Method of SR Images

SR images were acquired in four different positions (12, 3, 6, and 9 o’clock). The rationale of the acquisition of images in various directions is the same as the reason shown in the acquisition method of CR images. The SR block contains five rows with eight holes each, with a diameter of 1.75, 1.50, 1.25, 1.00, 0.75, 0.60, 0.50, and 0.40 mm, at intervals of 4.3 mm (Figure 1c). Since the SR evaluation aims to evaluate the sharpness of small objects with high-density differences, inadequate images were acquired and compared with appropriate images for comparison of the sharpness. In order to compare images with appropriate (Figure 3a) and distorted SR (Figure 3b), distorted images were acquired in the same four positions by tilting the gantry of the CT scanner 10 degrees backward (Dist_B) or forward (Dist_F). The suspension rate of SR represented deviation ≥10% from the manufacturer’s specification [16]. Thus, the angle of 10 degrees was used to distort the image.

2.5. Quantitative Analysis

2.5.1. Texture Analysis (TA)

Quantitative assessment was performed using an evaluation tool that was developed in the MATLAB/Simulink 7.10.0 platform (R2015a; MathWorks, Natick, MA, USA). A total of six texture descriptors were evaluated, derived from first-order statistics of grayscale image histograms: brightness, contrast, softness, skewness, uniformity, and randomness [29,30,31,32,33]. The specific definition, equation, and characteristics were shown in Table 2.

2.5.2. Analysis Method of Image CR

To apply the evaluation tool for CR, the biggest holes in the CR block must be arrayed on the left side of the image; this is achieved by drawing a line that connects the largest holes, allowing the tool to orient the image (Figure 4a,b). Thereafter, the ROI is indicated to the tool by placing a 300 × 200 px rectangle so that it encompasses all 12 holes (Figure 4c). The algorithm then automatically calculates the six TA descriptors from the ROI image (Figure 4d).

2.5.3. Analysis Method of Image SR

For CR evaluation, the largest holes in the SR block need to be arrayed on the left side of the image. This is a simple step to apply images acquired from various directions to our program. This is achieved by drawing a line over a stainless-steel wire located on the opposite side, which is normally used for modulation transfer function evaluation (Figure 5a). Using this indication, the tool automatically orients the image (Figure 5b). Lastly, the ROI is indicated to the tool by placing an 80 × 60 px rectangle so that it encompasses all 40 holes (Figure 5b). Thereafter, the tool automatically calculates the six TA descriptors for the ROI (Figure 5c).

2.6. Statistical Analysis

All six TA descriptors for CR and SR (appropriate and distorted images) were measured in each of the different imaging locations and compared in the same descriptors respectively. For CR, TA descriptors of CR images yielding the lowest difference in contrast between holes and background were compared within all CT scanners using a one-way analysis of variance (no adjustments were made for multiple comparisons). Afterwards, CR TA descriptors were also compared between different scanner models of the same manufacturers, using either a two-tailed, independent two-sample t-test (comparing two models) or a one-way analysis of variance (comparing three models; no adjustments were made for multiple comparisons). SR TA descriptors were compared between appropriate and distorted images using a two-tailed, paired t-test, and between different scanner models of the same manufacturers, using either a two-tailed, independent two-sample t-test or a one-way analysis of variance.
Principal component analysis was used to determine the texture descriptors with the most utility for CR and SR evaluation. First, Kaiser–Meyer–Olkin and Bartlett’s test of sphericity was used to evaluate the case-to-variable ratio. Thereafter, the rotated component matrix was obtained and simplified using varimax rotation [34]. A p-value < 0.05 was considered statistically significant.

3. Results

3.1. TA of CR

There were no statistically significant differences in CR TA descriptors in the eight imaging locations within each CT scanner (p > 0.05). The contrast medium concentrations yielding the lowest difference in contrast for all CT scanners were 0.015% or 0.02% (i.e., when the difference between holes and background was minimum according to the various scanners, the contrast medium diluted in sterile distilled water was as follows: Siemens; 0.02% in AS, AS+, and Edge, GE; 0.015% in CT750 HD, and VCT XTe; Philips; 0.015% in IQon, and 0.02% in Brilliance, Canon; 20% in GENESIS, 15% in Aquilion CX). Contrast and softness were the only descriptors which had no statistically significant differences of CR images yielding the lowest difference in contrast within all CT scanners (p > 0.05). Among the measured texture descriptors, all values except for brightness showed results reflecting qualitative image characteristics. The other five factors achieved a Kaiser–Meyer–Olkin value of 0.608, indicating that principal component analysis was suitable. Based on the rotated component matrix, the contrast (0.871), and softness (0.847) indices were determined as suitable indices to evaluate the CR. Here, mean values of skewness, uniformity, and randomness were statistically significantly different between different scanners from the same manufacturer (p < 0.05). As a result, contrast and softness were revealed as appropriate indices to evaluate the CR, as the differences in their mean values on the lowest-contrast images between different scanners of the same manufacturer were not statistically significant (Table 3). The overall contrast and softness index values were 29.73 ± 1.36 and 0.0135 ± 0.0012, respectively.

3.2. TA of SR

There were no statistically significant differences in the SR TA descriptors in the four imaging locations within each CT scanner (p > 0.05). However, there were statistically significant differences in all six SR TA descriptors (p < 0.001) between appropriate images acquired with the different CT scanner models within the same manufacturer and distorted images acquired with the different CT scanner models of all manufacturers (Table 4). There were no statistically significant differences in contrast, softness, skewness, uniformity, or randomness index values for appropriate or distorted images between Siemens scanner models. However, regarding the brightness index, values were statistically significantly different for distorted images (Dist_B, p < 0.001; Dist_F, p = 0.003) (Table 5). For appropriate images acquired using GE CT scanners, the contrast, softness, and skewness index values were more similar than any other values (p > 0.1 for all three) (Table 5). There were no differences for any descriptors of distorted images (i.e., Dist_B, and Dist_F) between the GE scanners (all p > 0.05) (Table 5). There were no other significant differences (p < 0.05), except in the randomness index for appropriate images acquired by different Phillips CT scanners (p = 0.007) and the uniformity index for appropriate images acquired by different Canon CT scanners (p = 0.031).
To determine which indices had the highest utility to distinguish between appropriate and distorted images, regardless of the scanner, all SR image data were integrated and compared (Table 4). As the brightness index exhibited statistically significant differences for distorted images between Siemens CT scanners, it was discarded as an unsuitable index. For a combination of the appropriate images, the other five factors achieved a Kaiser–Meyer–Olkin value of 0.691 which, combined with the result of Bartlett’s test of sphericity (p < 0.001), indicated that principal component analysis was suitable. Based on the rotated component matrix, the contrast (0.933), softness (0.936), and skewness (−0.926) indices were determined as suitable indices to evaluate the SR. Their suitability is demonstrated via the graphs in Figure 6. As a result, the mean values of contrast, softness, and skewness index were 29.09 ± 0.28, 0.0128 ± 0.0002, and −1.6832 ± 0.0477, respectively. Here, the skewness index close to 0 represents an image with a symmetrical image.

4. Discussion

In QC of CT scanners, CR and SR evaluation with the standard phantom has often been performed subjectively, by eye [13,14,16]. Qualitative evaluation in medical diagnostics has an important role to play, but subjective decisions increase the error rate. Different observers, and even the same observer on different occasions, can provide different results when presented with the same signals [35]. In this regard, McCollough et al. [36] revealed common mistakes made by individuals using a phantom when being tested for CT accreditation. Moreover, these analyses should be quantitative in nature, as there is already a subjective component to the assessment of clinical CT images [16,18]. Additionally, the criteria used in the phantom evaluation should be consistent. Currently, in Europe and the United States, it is mainly recommended that CNR should be used for CR evaluation and modulation transfer function (MTF) or image sharpness assessment for SR analysis [16,17]. CNR is also a useful index for distinguishing at low contrast, but it cannot reflect a whole CR image containing all sizes of holes by using a small size of ROI. Moreover, the acceptance criteria for CR include that circles of certain sizes should be shown (e.g., circles up to 6.4 mm in diameter must be distinguished from the background with the AAPM phantom [14,18]), and all four cylinders (diameters: 2, 3, 4, 5, and 6 mm) are visualized by using the ACR phantom [17,37]. For this reason, it would be better to quantify the entire CR image, as was performed in this study. For MTF measurement for SR analysis, line spread function or edge spread function should be acquired by specific images in the form of straight lines and then transformed into the spatial-frequency domain [38]. Although MTF is a useful method, the direct SR block images of the standard phantom could not be utilized (i.e., a slanted image or a point image with a clear difference in contrast is essential). In contrast, our method is easier to apply and has the advantage that a variety of images, including the AAPM phantom, can be used directly; this can simplify complex processes by only setting the ROI on the SR image.
Depending on the equipment used, the values of CTDIvol were different even if the same tube currents (mAs) were applied in the AAPM phantom (Table 1). It is important to control for radiation dose when quantitatively comparing different CT scanners because the radiation dose is related to kVp and mA, which directly affects the signal-to-noise ratio, not the resolution. Therefore, in our study, a dose-based protocol was utilized (Table 1), similar to that used by Saiprasad et al. [28] and Gulliksrud et al. [39].
As a result, the feasible TA descriptors were determined for CR and SR evaluation. Among the TA descriptors, brightness, uniformity, and randomness were inappropriate as useful criteria for CR and SR. Since the value of tube currents was different even at the same CTDIvol among all the scanners, there may have been a statistically significant difference in brightness representing the number of X-rays. Uniformity represents a uniform image, whereas randomness represents a non-uniform image. In other words, these descriptors emphasize the characteristics whether they are uniform or not. Therefore, we assumed that these maybe did not fit the TA, the ability to distinguish two different objects. We recommend the following indices and ranges as suitable values: CR: contrast index, 29.5 ± 15%; softness index, <0.015; SR: contrast index, 29 ± 10%; softness index, <0.014; and skewness index, >−1.85. The recommended values were slightly expanded beyond the range of the previous results section as a conservative threshold because it may be dangerous to determine appropriate or inadequate values within a tight range setting. Additionally, the range was set in consideration of the radiation intensity and volume. For contrast index, the range of 15% for CR and 10% for SR were set considering our numerical results and regulation of tube current (mA) involved in CTDIvol or tube voltages (kVp). The allowed ranges of mAs and CTDIvol related to CR are ± 15% and those of kVp related to SR are ± 10% [15,16]. Based on our results and the regulation of the QC, we presented the appropriate ranges making the standards more flexible.
TA using a histogram is divided into several types such as first-order, and second-order methods [29,30]. The first-order method, which is the design of this study, measures texture calculated using only a histogram. The second-order method could take into account the relative position between pixels along with the existing brightness distribution. It is called a gray-level co-occurrence matrix (GLCM), which creates a co-occurrence matrix based on the frequency count of one pixel and another neighboring pixel value in the original image [29,30]. However, as a result of using GLCM when evaluating CR and SR using the AAPM phantom, there was no appearance of appropriate values to distinguish subtle differences or changes in phantom images. On the other hand, the first-order method could classify numerically between inappropriate images and normal images. Thus, the first-order statistical method was adopted since it was possible to find criteria for numerically common convergence in the various pieces of equipment.
There are several limitations to this study. First, we did not perform the analysis with the receiver operating characteristic curve. In future research, the classification of suitable and inappropriate images and QC with TA will be performed by collaborating with radiologists. This step will contribute to conducting the exact assessment of the suitability of TA with the receiver operating characteristic curve. Second, the suggested criteria are only applicable to one dose level. Therefore, further studies should be performed at other lower radiation dose levels in order to confirm the maintenance of high quality at low doses. Third, TA analysis was only performed with images of the AAPM phantom. Hence, it will be necessary to evaluate the feasibility of other QC phantoms. Lastly, even if there is no statistically significant difference, there may be limitations in concluding that the proposed parameters are suitable for QC. Therefore, a verification of the statistical significance of the results is proposed through further research in the future. Despite these limitations, this was the first study conducted to present the TA method and the criteria for evaluating CR and SR for any CT scanner. Although additional verification may be required, our study showed the feasibility of TA for quantifying CR and SR evaluation with the AAPM phantom. Especially the first-order statistical TA method proved to be efficient in the quantification of CT QC.

5. Conclusions

Our novel TA method may improve the assessment of CR and SR of AAPM phantom images and standardize the CT QC process instead of subjective visual evaluation. The proposed TA descriptors were contrast, and softness index for CR, and contrast, softness, and skewness index for SR. Therefore, this study presented an opportunity to easily perform QC in hospitals of various sizes by presenting an automated QC method for image-based diagnostic medical equipment.

Author Contributions

Conceptualization: H.C.K.; methodology: K.B.L. and K.C.N.; validation: K.B.L.; formal analysis: K.B.L. and J.S.J.; investigation: K.B.L.; resources: K.B.L.; data curation: K.C.N.; writing—original draft preparation: K.B.L.; writing—review and editing: K.C.N. and J.S.J.; visualization: K.B.L.; supervision: H.C.K.; funding acquisition: H.C.K. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by Eulji University, grant number EJBS-19-04; and the National Research Foundation of Korea (NRF) grant funded by the Korea government (MSIT), grant number 2019R1H1A1079770.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The datasets used and/or analyzed during the current study are available from the corresponding author on reasonable request.

Acknowledgments

We would like to thank Eulji University (www.eulji.ac.kr (accessed on 23 February 2021)).

Conflicts of Interest

The authors declare no conflict of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.

References

  1. Zeng, G.L. Medical Image Reconstruction: A Conceptual Tutorial; Springer: Heidelberg, Germany, 2010; pp. 67–85. [Google Scholar]
  2. Jeong, J.E.; Lee, S.J. Performance comparison of ray-driven system models in model-based iterative reconstruction for transmission computed tomography. J. Biomed. Eng. Res. 2014, 35, 142–150. [Google Scholar] [CrossRef]
  3. Amis, E.S., Jr.; Butler, P.F.; Applegate, K.E.; Birnbaum, S.B.; Brateman, L.F.; Hevezi, J.M.; Mettler, F.A.; Morin, R.L.; Pentecost, M.J.; Smith, G.G.; et al. American College of Radiology white paper on radiation dose in medicine. J. Am. Coll. Radiol. 2007, 4, 272–284. [Google Scholar] [CrossRef]
  4. Do, K.H.; Sung, D.W. Strategies of computed tomography radiation dose reduction: Justification and optimization. J. Korean Med. Assoc. 2015, 58, 534–541. [Google Scholar] [CrossRef] [Green Version]
  5. Shefer, E.; Altman, A.; Behling, R.; Goshen, R.; Gregorian, L.; Roterman, Y.; Uman, I.; Wainer, N.; Yagil, Y.; Zarchin, O. State of the art of CT detectors and sources: A literature review. Curr. Radiol. Rep. 2013, 1, 76–91. [Google Scholar] [CrossRef]
  6. Geyer, L.L.; Glenn, G.R.; De Cecco, C.N.; Van Horn, M.; Canstein, C.; Silverman, J.R.; Krazinski, A.W.; Kemper, J.M.; Bucher, A.; Ebersberger, U.; et al. CT Evaluation of small-diameter coronary artery stents: Effect of an integrated circuit detector with iterative reconstruction. Radiology 2015, 276, 706–714. [Google Scholar] [CrossRef] [PubMed]
  7. Zhu, Z.; Zhao, X.M.; Zhao, Y.F.; Wang, X.Y.; Zhou, C.W. Feasibility study of using Gemstone Spectral Imaging (GSI) and adaptive statistical iterative reconstruction (ASIR) for reducing radiation and iodine contrast dose in abdominal CT patients with high BMI values. PLoS ONE 2015, 10, e0129201. [Google Scholar] [CrossRef]
  8. Kalra, M.K.; Maher, M.M.; Toth, T.L.; Hamberg, L.M.; Blake, M.A.; Shepard, J.A.; Saini, S. Strategies for CT radiation dose optimization. Radiology 2004, 230, 619–628. [Google Scholar] [CrossRef] [PubMed]
  9. Lee, K.; Lee, W.; Lee, J.; Lee, B.; Oh, G. Dose reduction and image quality assessment in MDCT using AEC (D-DOM & Z-DOM) and in-plane bismuth shielding. Radiat. Prot. Dosimetry 2010, 141, 162–167. [Google Scholar] [CrossRef] [PubMed]
  10. Gunn, M.L.D.; Kohr, J.R. State of the art: Technologies for computed tomography dose reduction. Emerg Radiol. 2010, 17, 209–218. [Google Scholar] [CrossRef]
  11. Brenner, D.J.; Hall, E.J. Computed tomography—An increasing source of radiation exposure. N. Engl. J. Med. 2007, 357, 2277–2284. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  12. Larson, D.B.; Johnson, L.W.; Schnell, B.M.; Salisbury, S.R.; Forman, H.P. National trends in CT use in the emergency department: 1995–2007. Radiology 2011, 258, 164–173. [Google Scholar] [CrossRef] [Green Version]
  13. ICRP; Rehani, M.M.; Gupta, R.; Bartling, S.; Sharp, G.C.; Pauwels, R.; Berris, T.; Boon, J.M. Radiological protection in cone beam computed tomography (CBCT). ICRP publication 129. Ann. ICRP 2015, 44, 9–127. [Google Scholar] [CrossRef]
  14. Park, H.J.; Jung, S.E.; Lee, Y.J.; Cho, W.I.; Do, K.H.; Kim, S.H.; Na, D.G. Review of failed CT phantom image evaluations in 2005 and 2006 by the CT accreditation program of the korean institute for accreditation of medical image. Korean J. Radiol. 2008, 9, 354–363. [Google Scholar] [CrossRef]
  15. New Jersey Department of Environmental Protection. Compliance Guidance for Computed Tomography Quality Control, 2nd ed.; Bureau of X-ray Compliance: Trenton, NJ, USA. Available online: https://www.state.nj.us/dep/rpp/qa/qa_down/qaman.pdf (accessed on 19 December 2020).
  16. European Commission. Radiation protection N° 162: Criteria for Acceptability of Medical Radiological Equipment Used in Diagnostic Radiology, Nuclear Medicine and Radiotherapy. Quality Assurance Reference Centre for the European Commission 2012. Available online: https://ec.europa.eu/energy/sites/ener/files/documents/162.pdf (accessed on 28 March 2021).
  17. ACR Committee on CT Accreditation, 2017 Computed Tomography Quality Control Manual; American College of Radiology: Reston, VA, USA; Available online: https://www.acr.org/-/media/ACR/NOINDEX/QC-Manuals/CT_QCManual.pdf/ (accessed on 23 February 2021).
  18. Lee, K.B.; Cho, Y.B.; Jeong, H.K.; Nam, K.C.; Kim, H.C. The study on automatized quantitative assessment method of CT Image in quality control: Focusing on spatial and low contrast resolution. J. IEIE 2017, 54, 186–194. [Google Scholar] [CrossRef]
  19. Sharp, P.; Barber, D.C.; Brown, D.G.; Burgess, A.E.; Metz, C.E.; Myers, K.J.; Taylor, C.J.; Wagner, R.F.; Brooks, R.; Hill, C.R.; et al. ICRU Report 54. Medical imaging—the assessment of image quality. Rep. Int. Comm. Radiat. Units Meas. 1996, os28, 1–41. [Google Scholar] [CrossRef]
  20. Lee, K.B.; Goo, H.W. Quantitative image quality and histogram-based evaluations of an iterative reconstruction algorithm at low-to-ultralow radiation dose levels: A phantom study in chest CT. Korean J. Radiol. 2018, 19, 119–129. [Google Scholar] [CrossRef] [Green Version]
  21. Hodgdon, T.; McInnes, M.D.F.; Schieda, N.; Flood, T.A.; Lamb, L.; Thornhill, R.E. Can quantitative CT texture analysis be used to differentiate fat-poor renal angiomyolipoma from renal cell carcinoma on unenhanced CT images? Radiology 2015, 276, 787–796. [Google Scholar] [CrossRef] [PubMed]
  22. Wang, X.; Yuan, M.; Mi, H.; Suo, S.; Eteer, K.; Li, S.; Lu, Q.; Xu, J.; Hu, J. The feasibility of differentiating colorectal cancer from normal and inflammatory thickening colon wall using CT texture analysis. Sci. Rep. 2020, 10, 6346. [Google Scholar] [CrossRef] [PubMed]
  23. Ganeshan, B.; Miles, K.A. Quantifying tumour heterogeneity with CT. Cancer Imaging 2013, 13, 140–149. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  24. Andersen, M.B.; Harders, S.W.; Ganeshan, B.; Thygesen, J.; Torp Madsen, H.H.; Rasmussen, F. CT texture analysis can help differentiate between malignant and benign lymph nodes in the mediastinum in patients suspected for lung cancer. Acta Radiol. 2016, 57, 669–676. [Google Scholar] [CrossRef] [Green Version]
  25. Bharati, M.H.; Liu, J.J.; MacGregor, J.F. Image texture analysis: Methods and comparisons. Chemom. Intell. Lab. Syst. 2004, 72, 57–71. [Google Scholar] [CrossRef]
  26. Di Cataldo, S.; Ficarra, E. Mining textural knowledge in biological images: Applications, methods and trends. Comput. Struct. Biotechnol. J. 2016, 15, 56–67. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  27. Miles, K.A.; Ganeshan, B.; Hayball, M.P. CT texture analysis using the filtration-histogram method: What do the measurements mean? Cancer Imaging 2013, 13, 400–406. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  28. Saiprasad, G.; Filliben, J.; Peskin, A.; Siegel, E.; Chen, J.; Trimble, C.; Yang, Z.; Christianson, O.; Samei, E.; Krupinski, E.; et al. Evaluation of low-contrast detectability of iterative reconstruction across multiple institutions, CT scanner manufacturers, and radiation exposure levels. Radiology 2015, 277, 124–133. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  29. Srinivasan, G.N.; Shobha, G. Statistical texture analysis. Proc. World Acad. Sci. Eng. Technol. 2008, 36, 2070–3740. [Google Scholar]
  30. Bevk, M.; Kononenko, I. A Statistical approach to texture description of medical images: A preliminary study. In Proceedings of the 15th IEEE Symposium Computer-Based Medical Systems (CBMS 2002), Maribor, Slovenia, 4–7 June 2002; pp. 239–244. [Google Scholar] [CrossRef] [Green Version]
  31. Gonzalez, R.C.; Woods, R.E.; Eddins, S.L. Digital Image Processing Using MATLAB, 2nd ed.; Gatesmark Publishing: Knoxville, TN, USA, 2009; pp. 535–655. [Google Scholar]
  32. Abbasian Ardakani, A.A.; Gharbali, A.; Mohammadi, A. Application of texture analysis method for classification of benign and malignant thyroid nodules in ultrasound images. Iran. J. Cancer Prev. 2015, 8, 116–124. [Google Scholar] [CrossRef]
  33. Lee, J.; Im, I.; Yu, Y.; Park, H.; Kwak, B. Statistical techniques based computer-aided diagnosis (CAD) using texture feature analysis: Applied of cerebral infarction in computed tomography (CT) images. Biomed. Sci. Lett. 2012, 18, 399–405. [Google Scholar]
  34. Principal Components Analysis (PCA) Using SPSS Statistics. Available online: https://statistics.laerd.com/spss-tutorials/principal-components-analysis-pca-using-spss-statistics.php/ (accessed on 21 December 2020).
  35. Thilander-Klang, A.; Ledenius, K.; Hansson, J.; Sund, P.; Båth, M. Evaluation of subjective assessment of the low-contrast visibility in constancy control of computed tomography. Radiat. Prot. Dosim. 2010, 139, 449–454. [Google Scholar] [CrossRef]
  36. McCollough, C.H.; Bruesewitz, M.R.; McNitt-Gray, M.F.; Bush, K.; Ruckdeschel, T.; Payne, J.T.; Brink, J.A.; Zeman, R.K.; American College of Radiology. The phantom portion of the American College of Radiology (ACR) Computed Tomography (CT) accreditation program: Practical tips, artifact examples, and pitfalls to avoid. Med. Phys. 2004, 31, 2423–2442. [Google Scholar] [CrossRef] [Green Version]
  37. American College of Radiology. Computed Tomography Accreditation Program Phantom Testing Instructions. Available online: http://www.doza.ru/docs/med/phantom_testing_instruction.pdf (accessed on 20 December 2020).
  38. Boone, J.M.; Brink, J.A.; Huda, W.; Leitz, W.; McCollough, C.H.; McNitt-Gray, M.F.; Dawson, P.; Deluca, P.L.M.; Seltzer, S.M.; Brunberg, J.A.; et al. Radiation dose and image-quality assessment in computed tomography. J. ICRU 2012, 12, 9–149. [Google Scholar] [CrossRef]
  39. Gulliksrud, K.; Stokke, C.; Martinsen, A.C.T. How to measure CT image quality: Variations in CT-numbers, uniformity and low contrast resolution for a CT quality assurance phantom. Phys. Med. 2014, 30, 521–526. [Google Scholar] [CrossRef] [PubMed]
Figure 1. The American Association of Physicists in Medicine (AAPM) phantom. (a) The AAPM CT Performance Phantom consists of five blocks with different functions, from top to bottom: contrast resolution (CR), linearity, spatial resolution (SR), slice thickness, and various measurements; (b) the CR block; (c) the SR block.
Figure 1. The American Association of Physicists in Medicine (AAPM) phantom. (a) The AAPM CT Performance Phantom consists of five blocks with different functions, from top to bottom: contrast resolution (CR), linearity, spatial resolution (SR), slice thickness, and various measurements; (b) the CR block; (c) the SR block.
Applsci 11 03570 g001
Figure 2. Images acquired for CR evaluation in the 3 o’clock position. From a to d, images were acquired with four different concentrations of contrast medium: 0.01% (a), 0.015% (b), 0.02% (c), and 0.025% (d). From top to bottom, images were acquired using the SOMATOM Definition AS, AS+, and Edge CT scanners (Siemens Healthineers).
Figure 2. Images acquired for CR evaluation in the 3 o’clock position. From a to d, images were acquired with four different concentrations of contrast medium: 0.01% (a), 0.015% (b), 0.02% (c), and 0.025% (d). From top to bottom, images were acquired using the SOMATOM Definition AS, AS+, and Edge CT scanners (Siemens Healthineers).
Applsci 11 03570 g002
Figure 3. Example images with appropriate and distorted spatial resolution (SR). (a) An image with appropriate SR can be used to visually separate the four largest groups of holes; (b) An image with inappropriate SR, distorted by tilting the gantry of the CT scanner.
Figure 3. Example images with appropriate and distorted spatial resolution (SR). (a) An image with appropriate SR can be used to visually separate the four largest groups of holes; (b) An image with inappropriate SR, distorted by tilting the gantry of the CT scanner.
Applsci 11 03570 g003
Figure 4. Operation of the contrast resolution (CR) quantification tool. (a) The original orientation of the image, with the biggest holes positioned at 6 o’clock. The user draws a line between the two biggest holes. (b) The tool correctly aligns the image. (c) A region of interest (ROI) of 300 × 200 px was selected in this image, to encompass all 12 holes. (d) The tool performs texture analysis (TA) on the ROI image.
Figure 4. Operation of the contrast resolution (CR) quantification tool. (a) The original orientation of the image, with the biggest holes positioned at 6 o’clock. The user draws a line between the two biggest holes. (b) The tool correctly aligns the image. (c) A region of interest (ROI) of 300 × 200 px was selected in this image, to encompass all 12 holes. (d) The tool performs texture analysis (TA) on the ROI image.
Applsci 11 03570 g004
Figure 5. Operation of the spatial resolution (SR) quantification tool. (a) The original orientation of the image with the biggest holes positioned at approximately 12 o’clock. The user draws a line over the stainless steel wire; (b) the tool correctly aligns the image. A region of interest (ROI) of 80 × 60 px was selected in this image; (c) the tool performs texture analysis (TA) on the ROI image.
Figure 5. Operation of the spatial resolution (SR) quantification tool. (a) The original orientation of the image with the biggest holes positioned at approximately 12 o’clock. The user draws a line over the stainless steel wire; (b) the tool correctly aligns the image. A region of interest (ROI) of 80 × 60 px was selected in this image; (c) the tool performs texture analysis (TA) on the ROI image.
Applsci 11 03570 g005
Figure 6. Textural analysis of appropriate images per manufacturer and all distorted images combined, for spatial resolution (SR). (a) Mean values of the contrast index; (b) mean values of the softness index; (c) mean values of the skewness index.
Figure 6. Textural analysis of appropriate images per manufacturer and all distorted images combined, for spatial resolution (SR). (a) Mean values of the contrast index; (b) mean values of the softness index; (c) mean values of the skewness index.
Applsci 11 03570 g006
Table 1. Tube current values of CT scanners to achieve a CTDIvol of ±20 mGy.
Table 1. Tube current values of CT scanners to achieve a CTDIvol of ±20 mGy.
ManufacturerModelTube VoltageRotation TimeSlice ThicknessConvolution KernelTube CurrentCTDIvol
kVpsmm mAmGy
SiemensEdge120110B30f27419.95
AS+30019.92
AS30019.92
GECT750 HDStandard22519.85
VCT XTe23519.9
PhilipsIQonB23020
Brilliance30520
CanonGENESISFC1335019.9
Aquilion CX17020
Table 2. A total of six texture descriptors from first-order statistics of grayscale image histograms.
Table 2. A total of six texture descriptors from first-order statistics of grayscale image histograms.
DefinitionEquationDescriptionCharacteristics
Brightness i = 0 L 1 z i p ( z i ) Mean gray level (pixel value) of the image (equal to the mean value in the histogram)
Contrast σ 2 Variance from the mean value
Softness 1 1 / ( 1 + σ 2 ) Softness is a relative measure of image brightnessThe softness index closer to 0 represents an image with more constant brightness
Skewness i = 0 L 1 ( z i m ) 3 p ( z i ) Degree of asymmetry of the histogramIf the histogram is symmetrical, the skewness index is 0. If high pixel values are located to the right or left from the mean value, the skewness is a positive or negative value
Uniformity i = 0 L 1 p 2 ( z i ) Similarity of gray levelsUniformity is at its highest when light and shade are distributed uniformly throughout the figure
Randomness i = 0 L 1 p ( z i ) log 2 p ( z i ) EntropyRandomness is at its lowest under the same conditions
Note. z is a random variable representing brightness, p(z) is a histogram of brightness levels of the ROI, and L is the number of possible brightness levels.
Table 3. Contrast resolution (CR) texture analysis (TA) for all CT scanners using the lowest-contrast image.
Table 3. Contrast resolution (CR) texture analysis (TA) for all CT scanners using the lowest-contrast image.
MFModelCCBrightness Contrast Softness Skewness Uniformity Randomness
SiemensAS0.02127.65 ± 2.0230.56 ± 1.600.0146 ± 0.00160.0024 ± 0.01250.0533 ± 0.00184.4426 ± 0.0453
AS+0.02125.26 ± 4.6530.53 ± 1.400.0141 ± 0.00130.0014 ± 0.01530.0568 ± 0.00224.3486 ± 0.0588
EDGE0.02125.06 ± 5.1630.58 ± 1.540.0142 ± 0.00140.0022 ± 0.00760.0573 ± 0.00114.3382 ± 0.0249
p-value * 0.0470.9960.7600.887<0.001<0.001
GECT750HD0.015159.79 ± 3.5228.94 ± 1.110.0127 ± 0.0010−0.2475 ± 0.03440.0367 ± 0.00045.0469 ± 0.0111
VCT XTe0.015135.61 ± 2.7929.91 ± 1.010.0136 ± 0.0009−0.0621 ± 0.00500.0419 ± 0.00074.8016 ± 0.0215
p-value <0.0010.0840.084<0.001<0.001<0.001
PhilipsIQon0.015125.04 ± 3.0128.73 ± 1.580.0122 ± 0.0013−0.0363 ± 0.01800.0362 ± 0.00045.0213 ± 0.0190
Brilliance0.02115.10 ± 5.4430.04 ± 1.280.0145 ± 0.00160.2210 ± 0.06340.0388 ± 0.00124.9402 ± 0.0534
p-value <0.0010.0610.055<0.001<0.001<0.001
CanonGENESIS0.02123.95 ± 2.6928.83 ± 1.050.0126 ± 0.00090.0170 ± 0.00430.0425 ± 0.00024.7843 ± 0.0051
Aquilion CX0.015122.20 ± 2.9828.99 ± 1.160.0130 ± 0.00090.0278 ± 0.00640.0368 ± 0.00024.9948 ± 0.0191
p-value 0.2710.7930.407<0.001<0.001<0.001
* One-way analysis of variance. † Two-tailed, independent two-sample t-test. ‡ Pixel values (mean ± standard deviation). CC, contrast medium concentration (%); CT, computed tomography; MF, manufacturer.
Table 4. Texture analysis (TA) of appropriate and distorted spatial resolution (SR) images for computed tomography (CT) scanners by different manufacturers.
Table 4. Texture analysis (TA) of appropriate and distorted spatial resolution (SR) images for computed tomography (CT) scanners by different manufacturers.
MFBrightnessContrastSoftnessSkewnessUniformityRandomness
Siemens *235.24 ± 1.0029.45 ± 0.430.0132 ± 0.0004−1.6360 ± 0.07050.1127 ± 0.00524.2739 ± 0.0540
GE *241.08 ± 0.3628.76 ± 0.450.0126 ± 0.0004−1.6606 ± 0.07650.1368 ± 0.00673.8993 ± 0.0441
Philips *238.79 ± 0.8429.08 ± 0.540.0128 ± 0.0005−1.6903 ± 0.08850.1046 ± 0.00384.2339 ± 0.0644
Canon *238.80 ± 0.8629.06 ± 0.470.0128 ± 0.0004−1.7464 ± 0.08260.0926 ± 0.00354.3578 ± 0.0447
Distorted data 235.26 ± 2.0931.72 ± 1.360.0153 ± 0.0013−1.8544 ± 0.12930.0882 ± 0.01074.5971 ± 0.1361
p-value <0.001<0.001<0.001<0.001<0.001<0.001
* These are the mean values of appropriate images acquired with the different CT scanner models of the same manufacturer. † These are the mean values of distorted images acquired with the different CT scanner models of all manufacturers. ‡ Two-tailed, independent two-sample t-test. All texture analysis (TA) values are provided as the mean ± standard deviation. CT, computed tomography; MF, manufacturer.
Table 5. Texture analysis (TA) of appropriate and distorted spatial resolution (SR) images for Siemens and GE computed tomography (CT) scanners.
Table 5. Texture analysis (TA) of appropriate and distorted spatial resolution (SR) images for Siemens and GE computed tomography (CT) scanners.
MFModelsBrightnessContrastSoftnessSkewnessUniformityRandomness
ApSiemensAS234.51 ± 0.6129.42 ± 0.270.0131 ± 0.0002−1.6252 ± 0.04570.1128 ± 0.00614.2796 ± 0.0548
AS+235.75 ± 1.2729.66 ± 0.490.0134 ± 0.0004−1.6696 ± 0.08270.1146 ± 0.00604.2565 ± 0.0677
EDGE235.36 ± 0.6229.27 ± 0.440.0130 ± 0.0004−1.6117 ± 0.07110.1109 ± 0.00314.2863 ± 0.0396
p-value *0.0690.2500.2460.2930.4290.583
GEHD241.29 ± 0.2028.85 ± 0.560.0126 ± 0.0005−1.6725 ± 0.09730.1407 ± 0.00563.8776 ± 0.0423
VCT240.87 ± 0.3728.67 ± 0.320.0125 ± 0.0003−1.6487 ± 0.05370.1328 ± 0.00543.9210 ± 0.0365
p-value 0.0240.4640.4530.5840.0190.062
Dist_BSiemensAS236.16 ± 0.5732.18 ± 0.610.0157 ± 0.0006−1.8396 ± 0.08060.0913 ± 0.00824.5993 ± 0.1256
AS+232.50 ± 1.4933.00 ± 1.160.0167 ± 0.0009−1.9409 ± 0.12190.0873 ± 0.00384.6718 ± 0.0658
EDGE232.78 ± 0.8832.54 ± 0.630.0160 ± 0.0061−1.9192 ± 0.06130.0901 ± 0.00284.6237 ± 0.0425
p-value *<0.0010.6000.5900.1210.4000.296
GEHD237.81 ± 0.6130.97 ± 0.440.0145 ± 0.0004−1.8032 ± 0.04980.1048 ± 0.00784.3761 ± 0.0793
VCT237.38 ± 0.8431.71 ± 1.140.0152 ± 0.0011−1.8998 ± 0.13010.1004 ± 0.00364.4054 ± 0.04300
p-value 0.2910.1450.1420.1050.2060.411
Dist_FSiemensAS234.59 ± 0.3233.07 ± 1.720.0166 ± 0.0017−1.9463 ± 0.23380.0856 ± 0.00564.7064 ± 0.0893
AS+232.47 ± 1.6132.76 ± 0.830.0162 ± 0.0008−1.9046 ± 0.08580.0891 ± 0.00274.6590 ± 0.0494
EDGE232.60 ± 0.9232.57 ± 0.760.0161 ± 0.0007−1.8752 ± 0.08760.0867 ± 0.00434.6740 ± 0.0685
p-value *0.0030.7350.7100.6860.3260.459
GEHD237.29 ± 0.6832.15 ± 0.430.0157 ± 0.0004−1.9055 ± 0.06790.0984 ± 0.00634.4629 ± 0.1029
VCT236.53 ± 0.6232.10 ± 0.770.0156 ± 0.0007−1.9431 ± 0.09950.1012 ± 0.00534.4468 ± 0.0970
p-value 0.790.8840.8930.4260.3920.768
* One-way analysis of variance. † Two-tailed, independent two-sample t-test. Ap, appropriate image; CT, computed tomography; Dist_B, distorted image (gantry tilted 10 degrees backward); Dist_F, distorted image (gantry tilted 10 degrees forward); MF, manufacturer.
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Lee, K.B.; Nam, K.C.; Jang, J.S.; Kim, H.C. Feasibility of the Quantitative Assessment Method for CT Quality Control in Phantom Image Evaluation. Appl. Sci. 2021, 11, 3570. https://doi.org/10.3390/app11083570

AMA Style

Lee KB, Nam KC, Jang JS, Kim HC. Feasibility of the Quantitative Assessment Method for CT Quality Control in Phantom Image Evaluation. Applied Sciences. 2021; 11(8):3570. https://doi.org/10.3390/app11083570

Chicago/Turabian Style

Lee, Ki Baek, Ki Chang Nam, Ji Sung Jang, and Ho Chul Kim. 2021. "Feasibility of the Quantitative Assessment Method for CT Quality Control in Phantom Image Evaluation" Applied Sciences 11, no. 8: 3570. https://doi.org/10.3390/app11083570

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop