BACKGROUND: Hepatocellular carcinoma is a primary tumor of the liver and involves different treatment modalities according to the tumor stage. After local therapies, the tumor evaluation is based on the mRECIST criteria, which involves the measurement of the maximum diameter of the viable lesion. This paper describes a computed methodology to measure through the contrasted area of the lesions the maximum diameter of the tumor by a computational algorithm. METHODS: 63 computed tomography (CT) slices from 23 patients were assessed. Non-contrasted liver and HCC typical nodules were evaluated, and a virtual phantom was developed for this purpose. Optimization of the algorithm detection and quantification was made using the virtual phantom. After that, we compared the algorithm findings of maximum diameter of the target lesions against radiologist measures. RESULTS: Computed results of the maximum diameter are in good agreement with the results obtained by radiologist evaluation, indicating that the algorithm was able to detect properly the tumor limits. A comparison of the estimated maximum diameter by radiologist versus the algorithm revealed differences on the order of 0.25 cm for large-sized tumors (diameter > 5 cm), whereas agreement lesser than 1.0 cm was found for small-sized tumors. CONCLUSIONS: Differences between algorithm and radiologist measures were accurate for small-sized tumors with a trend to a small decrease for tumors greater than 5 cm. Therefore, traditional methods for measuring lesion diameter should be complemented non-subjective measurement methods, which would allow a more correct evaluation of the contrast-enhanced areas of HCC according to the mRECIST criteria.
BACKGROUND:Hepatocellular carcinoma is a primary tumor of the liver and involves different treatment modalities according to the tumor stage. After local therapies, the tumor evaluation is based on the mRECIST criteria, which involves the measurement of the maximum diameter of the viable lesion. This paper describes a computed methodology to measure through the contrasted area of the lesions the maximum diameter of the tumor by a computational algorithm. METHODS: 63 computed tomography (CT) slices from 23 patients were assessed. Non-contrasted liver and HCC typical nodules were evaluated, and a virtual phantom was developed for this purpose. Optimization of the algorithm detection and quantification was made using the virtual phantom. After that, we compared the algorithm findings of maximum diameter of the target lesions against radiologist measures. RESULTS: Computed results of the maximum diameter are in good agreement with the results obtained by radiologist evaluation, indicating that the algorithm was able to detect properly the tumor limits. A comparison of the estimated maximum diameter by radiologist versus the algorithm revealed differences on the order of 0.25 cm for large-sized tumors (diameter > 5 cm), whereas agreement lesser than 1.0 cm was found for small-sized tumors. CONCLUSIONS: Differences between algorithm and radiologist measures were accurate for small-sized tumors with a trend to a small decrease for tumors greater than 5 cm. Therefore, traditional methods for measuring lesion diameter should be complemented non-subjective measurement methods, which would allow a more correct evaluation of the contrast-enhanced areas of HCC according to the mRECIST criteria.
Hepatocellular carcinoma (HCC) is the fifth most common cancer in men and the seventh
most common in women [1]. Its incidence is highest in regions where hepatitis B virus is endemic [1]. In the United States, deaths caused by hepatitis C virus (HCV)-related
HCC are rapidly rising. In the past two decades, the incidence of HCC in the United
States has tripled, but the 5-year survival rate has remained below 12% [2]. The greatest proportional increase in cases of HCC has been seen among
Hispanics and whites between 45 and 60 years old [2].In general, HCC diagnosis is based on noninvasive imaging tests [3,4]. In patients with cirrhosis and a focal hepatic
lesion ≥ 2 cm, the diagnosis may be confidently established on the
basis of typical imaging features showing areas of arterial enhancement and regions
promptly “washed out” (fainter than the liver tissue) in the venous or
delayed phase of four-phase multidetector computed tomography (CT) exam (where the
four phases are unenhanced, arterial, venous, and delayed) [3,5].Orthotopic liver transplantation (OLT) is the recommended treatment when the tumor is
within specific criteria, that based on the tumor maximum diameters and the absence
of tumor spread outside the liver [3]. Previous studies support the effectiveness of OLT in patients meeting
the Milan criteria adopted by the United Network for Organ Sharing (UNOS) [4,5]. The Milan criteria states that orthotopic liver transplantation is
recommended only if the patient have a solitary HCC nodule with a
diameter ≤ 5 cm or no more than 3 nodules with
diameters ≤ 3 cm [5,6].When any kind of local therapy is used in order to reduce the tumor size, the HCC
nodules are evaluated according to the mRECIST criteria, which require that only
well-delineated, arterially enhanced lesions could be selected as viable tumor
tissue [7]. Using Computed Tomography (CT) images, the viable tumor is measured in
the arterial phase, with highest distinction between the viable vascularized tumor
nodule and necrotic tisue (non enhanced region) [8-11]. The longest diameter of the viable tumor should be carefully assessed on
the CT examination, since it can change the decision of which treatment will be
further indicated to each patient [7]. The measurement of the viable tumor diameter should not include any
major intervening areas of necrosis [7]. However, large nodules and/or tumors previously submitted to local
therapies are often filled by necrotic areas, making difficult to calculate the
viable area of these tumors [8].Before a curative treatment, many patients with HCC receive non-curative therapies in
order to achieve the best survival rates, and one of the most used of them is the
transarterial chemoembolization (TACE). This kind of treatment consists of infusions
of a chemotherapeutic agent through the vessel that is the responsible by the tumor
nutrition [9]. As soon the infusion is finished, the vessel is closed in order to
isolate the chemotherapeutic agent within the tumor [9]. As a result, it causes a local destruction of the initial lesion, which
can be seen as a necrotic area within the tumor.The TACE efficacy can be measured by the decrease of the target lesion, and when the
tumor has enough reduction. The patients can be considered at low disease stage,
allowing them to receive OLT as a curative treatment [6]. However, there are some difficult to distinguish between patients which
are good candidates to OLT and those still needing to receive other sessions of TACE
or another therapy, taking only into account a single measure of the maximum tumor
diameter. Other criterion, as the WHO criterion is based on the sum of bidimensional
perpendicular products. Another one is the RECIST criterion which is based on the
unidimesional quantity, the sum of the longest found diameters. Both criteria were
designed for the evaluation of cytotoxic agents and not for local therapies. TACE
induces tumor necrosis with or without changes in tumor size [12]. Because of this, the WHO and RECIST criteria have been considered as
suboptimal methods for tumor response assessment in HCCpatients undergoing TACE. As
a result, the European Association for the Study of the Liver (EASL) and the
American Association for the Study of Liver Disease (AASLD) have proposed new
methods, including the concept of viable enhancing lesion modifying WHO (EASL) and
RECIST (mRECIST) criteria, respectively [8]. The EASL and mRECIST criteria resulted in a higher objective response
rate and provided more reliable prognostic information, including survival, than
conventional WHO and RECIST criteria. So, the measurements of the viable areas of
HCC nodules are now the best way to access the TACE efficiency [9].In this work, we measured the maximum diameter of the viable HCC by a computed
algorithm in patient after TACE. For this purpose, an algorithm based on the
discrete wavelet transform (DWT) was developed to quantify the enhanced areas of the
liver on CT images using a non subjective way.
Methods
CT data sample
The CT data for this study comprises 23 enhanced high-resolution abdomen CT exams
offered by the Clinical Hospital of Botucatu Medical School. Ethical approval
was granted by Research Ethical Commission of this institute under the protocol
number 485/2012. Written informed consent was obtained from the patient for the
publication of this report and any accompanying images. These exams included CT
scans performed after transarterial chemoembolization of 23 patients who had not
been treated by another kind of therapy. The hospital radiologist selected 63
slices which contains at least one contrasted part of a typical HCC lesion.
There were selected the slices that had the highest amount of tumoral
contrast-enhanced tissue. Each CT image measured 512 × 512
pixels, the pixel size ranged from 0.73 to 0.89 mm, with mean pixel value 0.80
mm. The HCC maximum contrasted diameter size evaluated by an expert radiologist,
with more than three years of experience, varies from 1.4 cm to 13.3 cm, central
value of 4.7 cm and mean ± standarddeviation of
5.3 ± 3.0 cm.
Patients
We included patients undergoing 4-phases tomography at Botucatu Medical School,
who have all of the following conditions: (i) more than 18 years old; (ii)
undoubted diagnosis of cirrhotic liver and HCC superior to 1 cm of diameter;
(iii) at least one contrast-enhanced lesion at the arterial phase; (iv) rapid
washout of the lesion during the venous phase; (v) without previous lipiodol use
in HCC lesions treated through transarterial chemoembolization.
Highlighting structures using wavelets
Multiscale contrast enhancement was used to highlight the tumor inside the liver.
Similar to Fourier analysis, the WT corresponds to a decomposition of the
functional representation of the digital image. Whereas Fourier transformation
represents the signal in the frequency domain, the WT provides a
spatio-frequency decomposition of the signal [10,11].This section describes image decomposition by multiresolution analysis (MRA),
which has the ability to separate the decomposition into higher frequency bands
and residuals (low-frequency components). This method offers multiresolution
properties and highlights the characteristics of interest in the image. By
introducing a high band-pass function ψ and a low-pass scaling
function φ, a one-dimensional (1D) signal f(x)
can be decomposed by MRA as:where the first and second terms on the right-hand side of equation (1) represent
the decomposed high- and low-frequency components of the image, respectively [13]. The wavelet coefficients d
(k) are given by the scalar products of the original image with
the ψ
basis elements in the pixel position k (covering the row image)
and the chosen decomposition level j. C
(k) are the scaling coefficients, and φ
(x) are the respective scaling functions [12].In the case of an image f(x, y), for
j = 1, 1D high-/low-pass filtering is first applied to the
original image f(x, y) along the horizontal
direction (0°), followed by a decimation in which every odd-numbered
element is removed. The 1D filtering and decimation are then applied in the
vertical direction (90°). According to the combination (high-high,
high-low, low-high, and low-low filtering), the output consists of four
quadrants (q). The lowest-resolution quadrant corresponds to the
sub-bands for the scaling coefficient C1(k). The other three quadrants with directionalities
{0°, 90°, 45°} are the sub-bands for the wavelet coefficients
d1(k, q). The process is repeated for
j = 2 by using C1(k) in place of the original image [13].The coefficients dj (k, q) indicate the high-frequency elements of
the decomposed image at position k and quadrant q within the
frequency band j, where j is usually referred to as the
decomposition/ resolution level (or simply as the “level”). As the
level j increases, the structural information of the image object in
d
(k, q) decreases [13]. Therefore, the wavelet coefficients used for the discrete WT may be
chosen according to the size of the structure that one wants to highlight in the
image. Alternatively, the images may be reconstructed to improve algorithm
performance via MRA [14-16].
Algorithm optimization method
Pixel intensities (in Hounsfield units, HU) of each slice were studied using
MatLab® platform. The gray intensity levels of the pixels in regions
containing enhanced and normal liver tissues were analyzed. The pixel intensity
distribution in each type of tissue was fitted by Gaussians and the mean and SD
determined in the slices was determined, as shown in Figure 1. The curve for normal liver tissue is depicted in part (a),
contrasted liver tissue distributions in part (b), the superposition of (a) and
(b) distribution is represented by the curve (c), and (d) is actual histogram
extracted from the image.A virtual phantom was developed for the algorithm
optimization. The phantom was used to optimize the detection of HCC and
remarking the differences from normal liver tissue as shown in the phantom image
of Figure 2(A).When constructing the phantom, the
Gaussian distribution representing the normal tissue was used to fill a
256 × 512 -pixel field image as a background. The pixels
intensities for this environment were simulated according to the distribution
represented by curve-(a) in Figure 1. A set of HCC
lesions were simulated by cycles with maximum diameter from 5 mm to 100 mm
incrusted to that background. The circle areas were filled with pixels with
intensity pseudorandomly generated by the Gaussian curve (b) in
Figure 1. Several algorithms and wavelets filters
for segmenting and quantifying the image structures were used until to get the
best results. The final algorithm and filter configuration are described in next
section.When calculating the efficiency of the algorithm, the diameters of the
created circles in the liver were compared with the diameter measured by the
algorithm. Circles of maximum diameters varying from 0.5 cm to 14.0 cm, in steps
of 0.5 cm and 10 iterations each size were generated and used as input to the
algorithm. This comparison is shown as a scatter plot located at
Figure 3. Bland-Altman Limits of Agreement (LoA)
encountered were in the range of -0.32 cm and 0.31 cm and an R squared equals to
0.99 for a linear fit, which is an acceptable limit of agreement.
Figure 1
Distributions of pixel intensity for liver tissues. Distributions
of pixel intensity for a real image containing normal curve-(a) and
contrasted liver tissue curve-(b). the Gaussian distributions present
mean value and dispersions 55 ± 10 HU for normal tissue
and 90 ± 11 HU for contrasted liver tissue. The
superposition of (a) and (b) distribution is represented by the curve
(c), and (d) is actual histogram extracted from the image.
Figure 2
Virtual phantom and algorithm results. Virtual phantom constituted
by simulated liver tissue and encrusted carcinomas (circles with
diameters of 10 cm, 8 cm, 6 cm, 4 cm, 2 cm and 0.5 cm) in part
(A). This phantom was used to optimize the algorithm
performance. In (B) an illustrative example of the algorithm
performance without wavelet filtering and in (C) an illustration
of the algorithm performance to highlight the HCC simulated area.
Figure 3
Algorithm results when applied to the phantom. Scatter plot of
differences between algorithm measure of maximum diameter of the masses
of the phantom (Figure 2), an agreement of
±0.2 cm is clearly shown. The central line corresponds to the mean
value of deviations. The upper and lower lines depict the limits of 2
SDs.
Distributions of pixel intensity for liver tissues. Distributions
of pixel intensity for a real image containing normal curve-(a) and
contrasted liver tissue curve-(b). the Gaussian distributions present
mean value and dispersions 55 ± 10 HU for normal tissue
and 90 ± 11 HU for contrasted liver tissue. The
superposition of (a) and (b) distribution is represented by the curve
(c), and (d) is actual histogram extracted from the image.Virtual phantom and algorithm results. Virtual phantom constituted
by simulated liver tissue and encrusted carcinomas (circles with
diameters of 10 cm, 8 cm, 6 cm, 4 cm, 2 cm and 0.5 cm) in part
(A). This phantom was used to optimize the algorithm
performance. In (B) an illustrative example of the algorithm
performance without wavelet filtering and in (C) an illustration
of the algorithm performance to highlight the HCC simulated area.Algorithm results when applied to the phantom. Scatter plot of
differences between algorithm measure of maximum diameter of the masses
of the phantom (Figure 2), an agreement of
±0.2 cm is clearly shown. The central line corresponds to the mean
value of deviations. The upper and lower lines depict the limits of 2
SDs.
Optimized algorithm description
The algorithm reads the DICOM image of the slice of interest, and the operator
makes a manual segmentation of the liver tissue. For this step, a non automatic
process is used, because the set of analyzed CT were previously segmented in the
routine service. In fact, there are several algorithms available that can semi
automatically segment the liver tissue with good results [17]. Of note, HCC is highly related to other liver diseases (i.e.,
hepatitis, venous thrombosis, cirrhosis) that may deform the liver structure.
Being so, we remark that manual segmentation of the liver tissue avoids the
quantification of unwanted structures.The discrete WT frequency bands were estimated in 1D by using equation (2) [18]:where ξ
(ψ) is the center spatial frequency (mm-1) in the
scale s, p is the pixel pitch, and ξ0(ψ) is the pseudo-frequency (mm-1) of the
wavelet in its basic level (ψ
). In this study, Daubechies 10 (ξ0(ψ) ≅ 0.693) [16,19] was used as the mother wavelet in all of the procedures. This
asymmetric, orthogonal wavelet has many image-processing applications and shows
better qualitative results than wavelets from other families [20-27]. The frequency bands chosen to reconstruct the ROI images were
determined by considering the size of the HCC lesion. Approximation coefficients
above level 2 (≅ 0.22 mm) were used to reconstruct all of the
images, because such coefficients remove small-sized fluctuations (but not
small-sized tumors) from the image.The output of the previous step was binarized with a threshold of
MNORMAL + STDNORMAL, as stated in equation
(3),where I (x, y) is the input image. After binarization,
erosion (4) and dilation (5) filters were applied in the image :In these equations, i and j are arbitrary labels for the
neighbors of the pixel being analyzed. Erosion and dilation filters (when
applied sequentially in an image) have the property of smoothing the objects in
the binary image and removing small-sized objects produced by binarization [15,28].
Statistical assessment
Three equivalent groups to the measured diameter by the radiologist were used:
(i) The G1, for which nodules equal or less than 3 cm in HCC diameter; (ii) The
G2 with nodules between 3 and 5 cm in HCC diameter and (iii) The G3, where HCC
diameters were above 5 cm. A group of three experienced radiologists, with more
than 5 years of experience each, scored the images together agreeing with each
other in the measure of the maximum diameter of the lesion. The separation
criteria were based on the limits stipulated by Barcelona Clinic Liver Cancer
(BCLC) staging, in which multinodular lesions greater than 3.0 cm or unique
lesions greater than 5.0 cm are intermediate HCC and cannot be submitted to
liver transplantation before tumor reduction [3]. Dependency was evaluated by the R-square produced by a linear
fitting of computed against radiologist measures. T-student test was applied to
conclude if there is statistical difference between the groups of measures and
Bland-Altmann plots were also used to assess the dispersion and limits of
agreement between measures [29].
Results and discussion
The optimized algorithm was used to detect HCC in the liver of actual CT images.
Figure 4 shows some examples of the algorithm
performance for highlighting the HCC region. The algorithm located and dimensioned
the lesion in all images with high precision. The radiologist opinion was in quite
good agreement with the delimitation region of the tumor for all the data set.
Figure 4
Highlighting of enhanced HCC in real CT-images. Input images
(A-D) with the correspondent output of the algorithm (E-H)
in the same column. CT slices were obtained from exams of 4 different
patients with HCCs, showing the detected HCCs (highlighted region) in the
output images.
Highlighting of enhanced HCC in real CT-images. Input images
(A-D) with the correspondent output of the algorithm (E-H)
in the same column. CT slices were obtained from exams of 4 different
patients with HCCs, showing the detected HCCs (highlighted region) in the
output images.Validation of the algorithm results was carried out by comparing measured diameters
using the algorithm with the radiologist evaluations. Data were divided in three
groups according to the maximum diameters calculated by the radiologist, as stated
in the statistical assessment session. Figure 5 compares
the results obtained from the algorithm computed measures with the results evaluated
by the radiologist, showing the difference between the algorithm and the
physician’s opinions. The value of R-parameter around 0.97 was obtained for
all groups. The expected linear dependency between the radiologist measures and the
algorithm was observed. The T-student test did not find statistical differences
between any group (p > 0.05). Figure 6 compares Bland-Altmann LoA for the three groups. It is clear that LoA
tends to increase with the size of the tumor.
Figure 5
Radiologist and algorithm correlation in measures. Comparison between
the maximum diameters determined by radiologist and by the algorithm.
Diameter evaluated by radiologist versus diameter evaluated by the algorithm
linear fit obtained an R-square of 0.97 and t-student test presented a
p of 0.13, not indicating difference significant.
Figure 6
Algorithm bearing for small, medium and large HCC enhancement.
Bland-Altmann plots of the nodules equal or less than 3 cm in HCC diameter
(A), nodules between 3 and 5 cm in HCC diameter (B)
diameters above 5 cm measured by the radiologist (C). The central
lines corresponds to the mean value of deviations. The upper and lower lines
depict the limits of 2 SDs.
Radiologist and algorithm correlation in measures. Comparison between
the maximum diameters determined by radiologist and by the algorithm.
Diameter evaluated by radiologist versus diameter evaluated by the algorithm
linear fit obtained an R-square of 0.97 and t-student test presented a
p of 0.13, not indicating difference significant.Algorithm bearing for small, medium and large HCC enhancement.
Bland-Altmann plots of the nodules equal or less than 3 cm in HCC diameter
(A), nodules between 3 and 5 cm in HCC diameter (B)
diameters above 5 cm measured by the radiologist (C). The central
lines corresponds to the mean value of deviations. The upper and lower lines
depict the limits of 2 SDs.Table 1 shows mean and differences obtained by the
radiologist and the algorithm. The algorithm measurements presented minimum errors
in the group of 3 cm < d ≤ 5 cm diameter. Larger
HCCs presented greater necrotic parts inside the tumors, which makes its maximum
diameter estimation more difficult by radiologist.
Table 1
Difference between radiologist and algorithm estimation of maximum
contrasted diameter of HCC
Group
Images
M¯±2×SD(cm)
Ra
pb
Radiologist
Algorithm
Algorithm and radiologist difference
d ≤ 3 cm
12
2.2 ± 0.5
2.1 ± 0.6
0.12 ± 0.58
0.78
0.17
3 cm < d ≤ 5 cm
28
4.0 ± 0.6
4.0 ± 0.7
- 0.05 ± 0.86
0.61
0.54
d > 6 cm
23
8.4 ± 2.7
8.2 ± 2.4
0.25 ± 1.14
0.96
0.05
aR-Squared correlation coefficients between data and linear
fit.
bp values based on t-test.
Difference between radiologist and algorithm estimation of maximum
contrasted diameter of HCC.
Difference between radiologist and algorithm estimation of maximum
contrasted diameter of HCCaR-Squared correlation coefficients between data and linear
fit.bp values based on t-test.Difference between radiologist and algorithm estimation of maximum
contrasted diameter of HCC.Of interest, the algorithm was able to measure area and volume of the tumors
evaluated. This can be an important tool contributing to a better assessment of the
tumor in the clinical routine.
Conclusions
Due to the relevance of the tumor size to choose the best treatment for each patient
with HCC lesions in the liver, the maximum diameter of the HCC lesions should be
considered as a measurement that requires other resent complementary measurement
methods. When the tumor maximum diameter is close to the limits established for the
OLT inclusion criteria and there was not tumor spread outside the liver, TACE is one
of the most treatment modality used to reduce HCC lesions, but the evaluation of
contrast-enhanced exams after TACE procedures can be difficult because the lesions
tend to be many necrotic areas within the tumor tissue. Since there are strict
criteria used to indicate which treatment must be performed to patients with HCC and
the most used criteria are based on the tumor size, a non-subjective evaluation is
an important tool to be considered in this case.Currently, the new concept of tumor viable tissue is coming to improve the assessment
of HCC lesions, especially after TACE procedures. Some studies showed that mRECIST
and EASL criteria are suitable to evaluate these tumors, being now considered more
adequate than the previous WHO and RECIST. They are more closely correlated to
clinical endpoints [30] and are easier to use. However, they can lead to variations in the
evaluations obtained from different radiologists, whom are not able to calculate the
viable tumor area.The analysis of the viable tumor area can be very important after TACE,
discriminating the lesions that really respond after the procedure. TACE often lead
to coagulative necrotic lesions in the central area of HCC tumors, and it can be
difficult to be measured using only the current criteria [30]. For instance, a tumor of 5 cm with a necrotic are of 1 cm in the central
area is different of a tumor of the same size with a central necrotic area of 4 cm,
but both have the same maximum diameter according to the current criteria, that take
into account the longest measure of viable tumor tissue and not the necrotic area.
On the other hand, the analysis of the viable tumor area can show the difference in
these two tumors after a TACE procedure because it calculates the area of viable
tumor in each lesion. Additionally, it can be used to compare the efficacy of TACE
procedures using different chemotherapeutic agents or of each hemodynamic
service.Therefore, a single dimension does not take into account the viable area of a given
tumor, and better evaluation methods are needed to avoid misinterpretations about
each nodule found at the contrast-enhanced exam. In this study, we have presented a
novel method to measure contrast-enhanced HCC nodules in liver CT exams. Our method
was able to distinguish the normal liver tissue from the cancer, by using wavelets
base to determine accurately the tumors’ limits. This image treatment plays an
important role in the lesions characterization, properly measuring the size of HCC
nodules. The algorithm was able to measure small-sized tumors with great accuracy.
The precision is gradually decreasing for large-sized lesions
(diameter > 5 cm), but still with enough precision to apply the used
treatment criteria.Our results confirm the findings of previous studies, suggesting that the maximum
diameter should not be used alone to represent the tumor size. Many HCC tumors are
noncircular lesions and may be only approximated by an ellipse, as described by
Jensen et al. [31]. Based on these findings, patients with different tumors’ shapes
can be misevaluated if only the maximum diameter would be used to classify the
disease according to the mRECIST criteria. Therefore, the HCC tumors evaluation can
be improved if the total viable tumor area could be analyzed, especially for tumors
submitted to TACE procedures, which often have coagulative necrotic areas inside of
them. This kind of evaluation of the local response after TACE could lead to a more
detailed comparison between the local response and the clinical end points, but it
needs to be evaluated in further studies. The trend to major difference for lesions
>5 cm may be associated with necrosis caused by TACE, leading radiologists to
overestimate lesions. For the moment, the algorithm presented in our study can be
very useful to analyze the viable tumor area without subjective measurements and
assist in the final decision clinic.
Competing interests
The authors declare that they have no competing interests.
Authors’ contributions
MA carried out the algorithm development and testing, image processing steps,
statistical analysis and drafted the manuscript. DRP helped in the design of the
study and helped to draft the manuscript. FGR gave the physicians point of view,
participated in the design of the study and helped to draft the manuscript. SBD
participated in the statistical analysis and helped to draft the manuscript. JRAM
conceived the study, participated in its design and coordination and helped to draft
the manuscript. All authors read and approved the final manuscript.
Authors: Matheus Alvarez; Diana R Pina; Marcela de Oliveira; Sérgio M Ribeiro; Rinaldo P Mendes; Sérgio B Duarte; José R A Miranda Journal: Medicine (Baltimore) Date: 2014-11 Impact factor: 1.889