Lorenzo Carlo Pescatori1, Edoardo Savarino2, Giovanni Mauri3, Enzo Silvestri4, Maurizio Cariati5, Francesco Sardanelli1,6, Luca Maria Sconfienza1,7. 1. Università degli Studi di Milano, Milano, Italia. 2. Università di Padova, Padova, Italia. 3. Istituto Europeo di Oncologia, Milano, Italia. 4. Ospedale Evangelico Internazionale, Genova, Italia. 5. ASST Santi Paolo e Carlo, Presidio San Carlo Borromeo, Milano, Italia. 6. IRCCS Policlinico San Donato, San Donato Milanese, Milano, Italia. 7. IRCCS Istituto Ortopedico Galeazzi, Milano, Italia.
Abstract
OBJECTIVE: To evaluate the feasibility of quantifying visceral adipose tissue (VAT) on computed tomography (CT) and magnetic resonance imaging (MRI) scans, using freeware, as well as calculating intraobserver and interobserver reproducibility. MATERIALS AND METHODS: We quantified VAT in patients who underwent abdominal CT and MRI at our institution between 2010 and 2015, with a maximum of three months between the two examinations. A slice acquired at the level of the umbilicus was selected. Segmentation was performed with the region growing algorithm of the freeware employed. Intraobserver and interobserver reproducibility were evaluated, as was the accuracy of MRI in relation to that of CT. RESULTS: Thirty-one patients (14 males and 17 females; mean age of 57 ± 15 years) underwent CT and MRI (mean interval between the examinations, 28 ± 12 days). The interobserver reproducibility was 82% for CT (bias = 1.52 cm2; p = 0.488), 86% for T1-weighted MRI (bias = -4.36 cm2; p = 0.006), and 88% for T2-weighted MRI (bias = -0.52 cm2; p = 0.735). The intraobserver reproducibility was 90% for CT (bias = 0.14 cm2; p = 0.912), 92% for T1-weighted MRI (bias = -3,4 cm2; p = 0.035), and 90% for T2-weighted MRI (bias = -0.30 cm2; p = 0.887). The reproducibility between T1-weighted MRI and T2-weighted MRI was 87% (bias = -0.11 cm2; p = 0.957). In comparison with the accuracy of CT, that of T1-weighted and T2-weighted MRI was 89% and 91%, respectively. CONCLUSION: The program employed can be used in order to quantify VAT on CT, T1-weighted MRI, and T2-weighted MRI scans. Overall, the accuracy of MRI (in comparison with that of CT) appears to be high, as do intraobserver and interobserver reproducibility. However, the quantification of VAT seems to be less reproducible in T1-weighted sequences.
OBJECTIVE: To evaluate the feasibility of quantifying visceral adipose tissue (VAT) on computed tomography (CT) and magnetic resonance imaging (MRI) scans, using freeware, as well as calculating intraobserver and interobserver reproducibility. MATERIALS AND METHODS: We quantified VAT in patients who underwent abdominal CT and MRI at our institution between 2010 and 2015, with a maximum of three months between the two examinations. A slice acquired at the level of the umbilicus was selected. Segmentation was performed with the region growing algorithm of the freeware employed. Intraobserver and interobserver reproducibility were evaluated, as was the accuracy of MRI in relation to that of CT. RESULTS: Thirty-one patients (14 males and 17 females; mean age of 57 ± 15 years) underwent CT and MRI (mean interval between the examinations, 28 ± 12 days). The interobserver reproducibility was 82% for CT (bias = 1.52 cm2; p = 0.488), 86% for T1-weighted MRI (bias = -4.36 cm2; p = 0.006), and 88% for T2-weighted MRI (bias = -0.52 cm2; p = 0.735). The intraobserver reproducibility was 90% for CT (bias = 0.14 cm2; p = 0.912), 92% for T1-weighted MRI (bias = -3,4 cm2; p = 0.035), and 90% for T2-weighted MRI (bias = -0.30 cm2; p = 0.887). The reproducibility between T1-weighted MRI and T2-weighted MRI was 87% (bias = -0.11 cm2; p = 0.957). In comparison with the accuracy of CT, that of T1-weighted and T2-weighted MRI was 89% and 91%, respectively. CONCLUSION: The program employed can be used in order to quantify VAT on CT, T1-weighted MRI, and T2-weighted MRI scans. Overall, the accuracy of MRI (in comparison with that of CT) appears to be high, as do intraobserver and interobserver reproducibility. However, the quantification of VAT seems to be less reproducible in T1-weighted sequences.
Entities:
Keywords:
Image processing, computer-assisted/methods; Intra-abdominal fat; Magnetic resonance imaging; Reproducibility of results; Tomography, X-ray computed
In the human body, the main function of white adipose tissue is to contribute to
energy homeostasis by absorbing and storing lipids, as well as by preventing ectopic
lipid deposition. White adipose tissue deposits are found mainly in the subcutaneous
compartments of the upper and lower body, as well as in the visceral
compartment(1). In
recent decades, evidence has been mounting that the quantity of visceral adipose
tissue (VAT) is linked to a number of metabolic dysfunctions, such as insulin
resistance, hyperinsulinemia, dyslipidemia, and hypertension(2). In addition, calculating the
variation in the quantity of VAT over time can be a useful way of evaluating
outcomes in patients who have undergone bariatric surgery(3), have dietary
restrictions(4),
participate in weight loss programs, or follow specific physical exercise
regimens(5).Various methods have been proposed to calculate the amount of fat tissue in
vivo. In clinical practice, some anthropometric indices have been
proposed for quick, reliable evaluation(6), such as waist circumference, hip circumference,
waist-to-hip ratio, skinfold thickness, and body mass index (BMI), although none of
those are able to differentiate the distribution among the compartments or to
distinguish between fat content and muscle mass. Although ultrasound has proven to
be an accurate means of evaluating the thickness of subcutaneous
fat(7), its
performance continues to be suboptimal for the quantification of
VAT(8). To address
these issues, some authors have used other tools, such as dual-energy X-ray
absorptiometry(9)
and body impedance analysis(10), which provide data on lean and fat tissue. However,
quantitative evaluation of body fat distribution is still difficult to perform.Computed tomography (CT) and magnetic resonance imaging (MRI) have both been used as
tools to investigate the distribution of subcutaneous adipose tissue (SCAT) and
VAT(11-13). Although each method shows
advantages and disadvantages for that purpose, they both can accurately quantify VAT
and SCAT(14), thus
quantifying total adipose tissue. CT is considered the most well-established imaging
method for abdominal fat quantification, because adipose tissue has always the same
(low) density. On MRI scans, the signal intensity of fat is high in T1- and
T2-weighted sequences, although the numerical value varies depending on several
factors(15). In the
use of CT and MRI, one option is to evaluate the amount of fat contained in a single
image (slice) acquired at the level of the umbilicus, which has been reported to
correlate well with the total VAT(16). The use of that strategy results in considerably less
radiation exposure during CT and in a markedly shorter duration of MRI
examinations(16).
However, some limitations of single-slice analysis have also been reported, mainly
the fact that VAT can undergo great variations due to bowel movement or variable
filling of the intestine(17).Several types of software have been used in the analysis of images obtained from CT
and MRI scans. Some such software is developed in-house, and the results are
therefore not reproducible, because the software is not publicly
available(18).
Other studies have employed specific plugins that can be used with freeware (e.g.,
ImageJ; NIH, Bethesda, MD, USA), although such plugins are very difficult to use in
clinical practice(19).
OsiriX (Pixmeo, Geneva, Switzerland) is image processing software, dedicated to
medical imaging, that is widely used in many radiological applications. The basic
version of OsiriX is available for free online. The region growing algorithm of the
software can be used in order to calculate the area of different compartments of the
body and has previously been used in abdominal imaging(20).The objective of this study was to test the feasibility of using OsiriX to calculate
the amount of VAT in patients who have undergone CT and MRI of the abdomen. We also
calculated the intraobserver and interobserver reproducibility.
MATERIALS AND METHODS
Study population
This was a retrospective study designed to quantify VAT in patients who underwent
abdominal CT and abdominal MRI at our institution between 2010 and 2015. The
study was approved by the local institutional review board, and the requirement
for written informed consent was waived. The image archive and communication
system of our hospital were screened to identify patients who had undergone
abdominal CT and abdominal MRI, for any reason, with no more than three months
between the two examinations. The exact interval between the CT and MRI
examinations was noted. Examinations of the upper abdomen, lower abdomen, or
entire abdomen, with or without contrast, were included in the evaluation. For
both imaging methods, a slice acquired at the level of the umbilicus was
considered. We included CT examinations with a non-contrast acquisition and MRI
examinations with at least one non-contrast, non-fat-saturated T1- or
T2-weighted sequence.
Image acquisition: MRI
MRI examinations were performed in one of two 1.5 T MRI scanners (Symphony or
Aera; Siemens Healthineers, Erlangen, Germany) equipped with phased-array
abdominal coils. Depending on the clinical problem to be investigated, different
acquisition sequences were used. However, all of the cases included the
acquisition of at least one T1-weighted sequence (breath-hold acquisition; echo
time = 4.76 ms; repetition time = 280 ms; number of excitations = 1; matrix, 256
× 256; and slice thickness = 4 mm) or one T2-weighted sequence (breath
hold acquisition; echo time = 199 ms; repetition time = 4000 ms; number of
excitations = 1; matrix, 256 × 256; and slice thickness = 4 mm). When it
was available, we selected the slice acquired at the level of the umbilicus in a
non-contrast T1-weighted sequence, a non-contrast T2-weighted sequence, or
both.
Image acquisition: CT
CT examinations were performed in multidetector scanners, either a 16-slice
scanner (Somatom Emotion; Siemens Healthineers) or a 64-slice scanner (Somatom
Definition; Siemens Healthineers). The technical parameters of CT acquisition
were adjusted according to the clinical problem under investigation and patient
body size. The slice acquired at the level of the umbilicus was selected in the
non-contrast acquisition. The slice thickness was 5 mm.
Image analysis
For CT and MRI, the images were obtained from the archive at our hospital. Those
images were uploaded to a separate workstation on which the OsiriX software was
installed.On CT scans, abdominal fat has a hypodense appearance, whereas it has a high
signal intensity on T1- and T2-weighted MRI scans. The individual CT and MRI
scans were anonymized and analyzed in random order by two readers, working
independently-a radiology resident and a radiologist, both with experience in
abdominal imaging (more than two years and more than ten years, respectively).
Prior to that analysis, both readers had a training session in which a series of
five CT scans and five MRI scans, not included in the study, were evaluated in
consensus in order to optimize the segmentation technique.On each image, a region of interest (ROI) was manually drawn over the abdominal
wall to delineate the interface between the abdominal wall and the abdominal
fat. No extreme precision is needed in this phase, because the difference in
density/intensity between the abdominal wall and the abdominal fat is high on CT
and MRI. The region growing (segmentation) algorithm was selected, thus allowing
the segmentation ROIs to be drawn with a semi-automated method. The cursor is
placed on a portion of the abdominal fat, and the software automatically creates
a ROI that includes all pixels with gray levels similar to those selected. The
threshold (range of gray levels to be included in the evaluation) can be
modified by the operator, who uses a slider to improve the
calibration(5,21).
At the end of the procedure, the software provides the size of the area included
in the region growing algorithm that was considered for statistical analysis.
The procedure is depicted in Figures 1 and
2.
Figure 1
A: Segmentation performed on a CT slice acquired at the level of the
umbilicus. The first step was to draw an ROI passing through the
abdominal wall, separating the SCAT from the VAT. B: Once the ROI
was defined, a point was selected within the VAT area (green cross,
white arrow) and an interval of pixels to be taken into account
(black arrowhead) was chosen by the reader, in order to include all
of the VAT within the ROI in the segmentation process. The software
then calculated the segmented area (green area) and assigned it a
value (white arrowhead). BL, bowel loop(s).
Figure 2
A: Segmentation performed on an MRI slice acquired at the level of
the umbilicus. In this case, a true fast imaging T2-weighted
sequence was selected. An ROI was drawn to separate the VAT from the
SCAT. B: The area within the ROI (white arrow) was calculated by
choosing an interval of pixels to be taken into account (black
arrowhead). A point within the VAT (green cross) was then selected
in order to segment the image. To obtain the VAT area (white
arrowhead), the reader has to choose an interval of pixels in order
to cover the entire area of adipose tissue surrounding the bowel
loops (green area). BL, bowel loop(s).
A: Segmentation performed on a CT slice acquired at the level of the
umbilicus. The first step was to draw an ROI passing through the
abdominal wall, separating the SCAT from the VAT. B: Once the ROI
was defined, a point was selected within the VAT area (green cross,
white arrow) and an interval of pixels to be taken into account
(black arrowhead) was chosen by the reader, in order to include all
of the VAT within the ROI in the segmentation process. The software
then calculated the segmented area (green area) and assigned it a
value (white arrowhead). BL, bowel loop(s).A: Segmentation performed on an MRI slice acquired at the level of
the umbilicus. In this case, a true fast imaging T2-weighted
sequence was selected. An ROI was drawn to separate the VAT from the
SCAT. B: The area within the ROI (white arrow) was calculated by
choosing an interval of pixels to be taken into account (black
arrowhead). A point within the VAT (green cross) was then selected
in order to segment the image. To obtain the VAT area (white
arrowhead), the reader has to choose an interval of pixels in order
to cover the entire area of adipose tissue surrounding the bowel
loops (green area). BL, bowel loop(s).
Statistical analysis
The threshold and fat area data are expressed as mean ± standard
deviation. For the thresholds, coefficients of variation (CVs) were also
calculated.To evaluate intraobserver reproducibility, the more experienced operator repeated
the evaluation, using the same method reported above, after two months.
Intraobserver and interobserver reproducibility were assessed with the
Bland-Altman method. Values of p < 0.05 were considered
statistically significant.In the literature, CT is considered a reliable method to measure VAT. Therefore,
CT was used as the reference in our study. The accuracy of MRI was estimated as
the inverse consistency error between CT-determined VAT quantity and that
measured on T1- and T2-weighted MRI scans.
RESULTS
During the study period, 4137 patients underwent abdominal CT and 1977 patients
underwent abdominal MRI. Among those, there were 31 (14 males and 17 females) who
underwent both types of examination. The mean age of the 31 patients was 57 ±
15 years (range, 34-92 years), and the mean interval between the two examinations
was 28 ± 12 days. The CT and MRI examinations were performed for a variety of
reasons: hepatic lesion (n = 4); pancreatic lesion (n = 5); tumor of the
genitourinary tract (n = 7); liver metastases (n = 5); Crohn's disease (n = 5);
diverticulitis (n = 1); endometriosis (n = 1); aortic aneurysm (n = 1);
gastrointestinal stromal tumor (n = 1); and small bowel lymphoma (n = 1). CT scans
were available for all 31 patients; T1-weighted MRI scans were available for 26
patients; T2-weighted MRI scans were available for 23 patients; and T1- and
T2-weighted MRI scans were both available for 20 patients.
Thresholds
As previously described, the threshold (range of gray levels to be included in
the evaluation) was adjusted manually. The mean threshold values used for CT
scans, T1-weighted MRI scans, and T2-weighted MRI scans in the first evaluation
made by the more experienced reader were 145 ± 40 (CV = 27.6%), 475
± 220 (CV = 46.3%), and 367 ± 159 (CV = 43.3%), respectively.
Fat area measurement
The mean area of abdominal fat on CT scans, T1-weighted MRI scans, and
T2-weighted MRI scans, as calculated by the more experienced reader, was 145
± 63 cm2, 130 ± 71 cm2, and 130 ± 68
cm2, respectively. The mean area of abdominal fat on CT scans,
T1-weighted MRI scans, and T2-weighted MRI scans, as calculated by the less
experienced reader, was 143 ± 68 cm2, 124 ± 67
cm2, and 130 ± 63 cm2, respectively.
Intraobserver and interobserver reproducibility
The intraobserver reproducibility was 90% for CT (bias = 0.14 cm2;
p = 0.912), 92% for T1-weighted MRI (bias = −3.4
cm2; p = 0.035), and 90% for T2-weighted MRI
(bias = −0.30 cm2; p = 0.887). The interobserver
reproducibility was 82% for CT (bias = 1.52 cm2; p =
0.488), 86% for T1-weighted MRI (bias = −4.36 cm2; p
= 0.006), and 88% for T2-weighted MRI (bias = −0.52 cm2;
p = 0.735). The reproducibility between T1- and T2-weighted
MRI was 87% (bias = −0.11 cm2; p = 0.957).
Accuracy of MRI
In comparison with that of CT, the accuracy of T1- and T2-weighted MRI was 89%
and 92%, respectively.
DISCUSSION
The main finding of the present study was that OsiriX can be used in order to
quantify VAT on CT scans, T1-weighted MRI scans, and T2-weighted MRI scans. Overall,
the accuracy of MRI, in comparison with that of CT, was high, as were intraobserver
and interobserver reproducibility, although the quantification of VAT seems to be
less reproducible on T1-weighted images.CT and MRI have both been used in order to quantify VAT(22,23), although CT has certainly been used more frequently.
Multidetector CT has the advantage of performing quick scans with very high
resolution. However, the high dose of ionizing radiation administered to patients is
a major limitation of CT. Conversely, MRI has the great advantage of not using
ionizing radiation as well as allowing for precise tissue characterization. However,
certain contraindications (e.g., non-MRI-compatible implants and claustrophobia), as
well as the high cost and long examination times, can limit the use of MRI in
clinical practice(5).
Regarding the evaluation of VAT, one major advantage of CT over MRI is that fat
always shows very low attenuation, with little variability among individuals. That
allows a relatively narrow threshold to be used when applying a region growing
algorithm, as confirmed by our data, given that we found a CV of approximately 25%.
That is also why we used CT as the reference to calculate the accuracy of MRI, which
was found to be high (approximately 90% for T1- and T2-weighted MRI). One
explanation for that finding is that CT and MRI were performed at different time
points. Therefore, bowel movement and differences in rectal filling may have
affected the quantity of VAT in the selected slice. However, the signal intensity of
fat is high on T1- and T2-weighted MRI scans, although that intensity is highly
variable, not only among the different types of sequences employed but also among
individual patients. That is consistent with our findings, given that the CV
exceeded 40% for T1- and T2-weighted MRI scans, which implies that a fully automated
system for VAT segmentation and quantification using MRI may be difficult to
construct.Previous studies have quantified VAT on the basis of images of the abdomen as a
whole(23) or a
single slice acquired at the level of the umbilicus(17). Although analysis of the entire abdomen
certainly has the advantage of greater accuracy, it is extremely time consuming and
hardly applicable in clinical practice. Various authors have demonstrated that VAT
quantification using a single slice acquired at the level of any one of several
anatomic landmarks correlates strongly with total VAT. In a study comparing
dual-energy X-ray absorptiometry evaluation of whole-body fat and CT evaluation of
SCAT at the level of the interspace of the fourth and fifth lumbar vertebrae
(L4-L5), Smith et al.(24) found that the two approaches correlated strongly,
especially among men. Abate et al.(16) found that, although the most reliable single-slice
evaluation was achieved with a slice acquired at the L2-L3 level, the addition of a
slice acquired at the L1-L2 level and another acquired at the L3-L4 level can
increase the predictability from 85% to 90%. Even if the use of three slices is
possible, it takes a considerable amount of time to perform the segmentation and the
approach should therefore be used only in cases in which greater precision is
needed. A slice acquired at the level of the umbilicus has been used because it is
commonly included in abdominal examinations performed for any reason. In one study
using that approach, Schwenzer et al.(17) found that VAT measured at the level of the umbilicus
correlated strongly with total VAT, especially among women.A wide variety of software has been used for VAT quantification, all such software
requiring continuous adjustments by the operator. However, most studies on the topic
have provided very few technical details, which limits the reproducibility of the
results. Addeman et al.(15) compared a new automated software known as AdipoQuant
with the free software ImageJ, the latter having already been used for this
purpose(19). The
authors found that the two programs provided almost identical VAT values, with
excellent agreement. However, the processing time per slice was only 2 s for
AdipoQuant, compared with 8 min for ImageJ. OsiriX has previously been used for
adipose tissue quantification. In a study involving 62 obese patients, O'Leary et
al.(25) used OsiriX
to quantify VAT, as a means of determining the risk of acute pancreatitis. Those
authors found that the quantity of VAT correlated positively with the risk of
pancreatitis, although they did not report exactly how segmentation was performed.
Kinsella et al.(26)
also used OsiriX to evaluate changes in fat distribution in patients who underwent
renal transplantation, identifying a significant correlation between VAT and BMI,
although they also provided no details about the segmentation technique. Lee et
al.(27) assessed
the evaluation of a single CT slice acquired at the level of the umbilicus, as
analyzed with the Rapidia software (3DMED, Seoul, Korea), in comparison with the use
of bioelectrical impedance analysis, in terms of the quantification of VAT. The
authors found that the VAT area was smaller when evaluated by bioelectrical
impedance analysis than when evaluated by single-slice CT, with a tendency to
increase in parallel with increases in BMI. Yu et al.(28) also used Rapidia to evaluate
the correlation between VAT and liver fibrosis among patients with nonalcoholic
fatty liver disease, finding that the VAT area was significantly larger in the
patients with fibrosis than in those without.In addition to the commercial software and freeware available, in-house systems of
VAT quantification have been developed and described by various authors. The main
limitations of such studies are that they provide few technical details on the
software build and that the software is not publicly available, thus precluding any
testing of the reproducibility of the results. Maurovich-Horvat et
al.(29) performed a
semi-automated evaluation of CT-based fat quantification in obese population with
in-house software, finding excellent intraobserver and interobserver
reproducibility. Yoshizumi et al.(30) evaluated VAT in a CT slice acquired at the level of the
umbilicus using an in-house algorithm: the attenuation range of CT values for fat
tissue was calculated, and a related histogram was constructed, considering the mean
attenuation plus or minus two standard deviations. Those authors also found that
intraobserver and interobserver reproducibility were high. In our study,
intraobserver reproducibility was ≥ 90%, whereas interobserver
reproducibility was lower, although still relatively high (82-88%). We found that
statistical significance was achieved only for the T1-weighted MRI scans. This
somewhat unexpected finding might be explained by the fact that the hyperintense
fluid within the bowel-which has a signal intensity similar to fat-could somehow
have affected the segmentation.OsiriX offers several advantages over other software in the evaluation of adipose
tissue. First, because it is freeware, there is a greater likelihood that data will
be comparable across studies. Second, because it allows rapid data analysis, it can
be applied to large populations as well as to several examinations of the same
patient in order to analyze changes over time. In addition, we have demonstrated
that the VAT segmentation performed with OsiriX has high intraobserver and
interobserver reproducibility, which underscores the applicability of this
method.The clinical relevance of the present study mainly resides in the fact that we have
shown that it is possible to use MRI as a reliable means of quantifying VAT. The
main advantage of that approach is the absence of ionizing radiation, which implies
that evaluations can be repeated as needed over time. In addition, MRI is
particularly useful in specific cohorts of patients (e.g., those with hepatic
lesions, pancreatic lesions, or Crohn's disease). Therefore, concurrent
quantification of VAT with no need for a separate examination may represent a
further advantage, given that the presence of a high quantity of VAT has been
implicated in predisposition to several diseases, as well as in a poor response to
several treatments(2,3).Our study has several limitations. First, it was a prospective evaluation of
retrospective data, the CT and MRI examinations having been performed at different
time points. Although it seems reasonable to assume that the quantity of VAT would
not have changed significantly over a period of three months, such changes could
have occurred, which would have affected our evaluation and might explain, at least
in part, the differences observed. In addition, we included patients with a wide
range of diseases, evaluated with different MRI protocols-some including only the
upper abdomen, some including only the lower abdomen, and some including both.
However, that limitation is mitigated by the fact that we always evaluated the same
slice acquired at the level of the umbilicus, in T1- or T2- weighted sequences, in
each patient. Furthermore, the sample size was relatively small. Nevertheless, it
was possible to obtain high levels of accuracy and reproducibility.In conclusion, OsiriX can be used in order to quantify VAT on CT and MRI scans
(T1-weighted or T2-weighted). We found that MRI showed high accuracy, in comparison
with that of CT, as well as high intraobserver and interobserver reproducibility.
However, accuracy, intraobserver reproducibility, and interobserver reproducibility
were higher for T2-weighted MRI scans, which might therefore be more suitable for
VAT quantification.
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