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(Stroke. 2005;36:741.)
© 2005 American Heart Association, Inc.
Original Contributions |
From the Departments of Neurology (R.S., I.M.-M.), Neurosurgery (S.M.), Cardiovascular Surgery (N.M., K.D.), and Pathology (G.P.), University Hospital Geneva, Switzerland; the Department of Statistics (M.C.), University of Pavia, Italy; and Consultant in Biostatistics (G.B.), Pavia, Italy.
Correspondence to Dr R. Sztajzel, Neurosonology Unit, Department of Neurology 24, rue Micheli-du-Crest 1211 Geneva 14, Switzerland. E-mail Roman.Sztajzel{at}hcuge.ch
| Abstract |
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Methods Thirty-one carotid plaques derived from 28 patients undergoing carotid endarterectomy were investigated by ultrasound. GSMs of the whole plaque were used as measurement of echogenicity. A profile of the regional GSM as a function of distance from the plaque surface could be generated. Plaque pixels were further mapped into 3 different colors depending on their GSM value.
Results Plaques with large calcifications presented the highest GSM values, and those with large hemorrhagic areas or with a predominant necrotic core exhibited the lowest. Fibrous plaques had intermediate GSM values. A necrotic core located in a juxtalumenal position was associated with significantly lower GSM values (P=0.009) and with a predominant red color (GSM <50) at the surface (P=0.0019). With respect to the thickness of the fibrous cap and the position of the necrotic core, the sensitivity and specificity of the predominant red color of the whole plaque was respectively 45% and 67% and 53% and 75%; considering the predominant red color of the surface, the sensitivity and specificity increased to 73% and 67% and 84% and 75%, respectively.
Conclusions The stratified GSM measurement combined with color mapping showed a good correlation with the different histopathological components and further allowed identification with good accuracy of determinants of plaque instability. This approach should be investigated in a prospective, natural history study.
Key Words: carotid artery plaque pathology ultrasonography
| Introduction |
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| Patients and Methods |
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Only plaques presenting a similar luminal contour and spatial arrangement of the plaque segments, identified on a simultaneous visual assessment by confrontation of the ultrasound image and the histology specimen, were included in the study. This selection was performed before any GSM or histological examination of the internal structure of the plaque.
GSM Analysis
The video signal from the ultrasound device was converted to a digital image format by a personal computer, and the images were analyzed with a 2- to 3-fold increase of the initial size. GSM measurements were performed by 2 independent investigators. The GSM of the frequency distribution of gray-scale values of the pixels within the whole plaque or a region of it was used as measurement of the echogenicity. A program written in-house (S.M.) in MATLAB (Mathworks) was used to perform the following steps. All carotid plaques were first normalized by automatic linear scaling after the examiner was requested to outline a blood region and an adventitia region. The normalized gray scale was 0 for blood and 195 for adventitia.5,13,14 After normalization, plaque was outlined in its longitudinal section to obtain a binary map. The luminal margin was then outlined again to provide to the program the precise location of plaque surface. The program then calculated the shortest distance in millimeters between each plaque pixel and the plaque surface along with the normalized gray-scale value at that pixel. The distance was quantified in millimeters according to the resolution of the ultrasound scanner (144 pixels/inch). For each plaque, the plaque pixels were binned according to their distance from the plaque surface. The GSM value of all pixels at each millimeter increment of distance (ie, stratum) was calculated. A profile of the regional GSM as a function of distance from the plaque surface could be generated, realizing a stratified determination of the GSM. The following stratums for each plaque were chosen for statistical analysis: level 0 (GSM 0), and level 30 and 50 (GSM 30 and 50), corresponding respectively to the GSM values obtained at 30% and at 50% of the thickness of the plaque. GSM measures were compared with the values obtained for the whole plaque (total GSM value).
Color Mapping of the Normalized Gray-Scale Plaques
The plaque pixels were mapped into 3 different colors, namely red, yellow, and green, depending on their gray-scale value. Thresholds were chosen as: lowest gray-scale values (<50 mapped in red), intermediate values (between 50 and 80 mapped in yellow), and highest values (>80 mapped in green; Figure 1). We determined for each plaque the predominant color present on the surface, which was defined as the upper third part of the lesion, and the predominant color of the whole plaque or plaque segment. In case of presence of 2 or 3 colors on the whole plaque or on the surface, predominance was decided according to the corresponding GSM value of the whole plaque and to the corresponding stratified GSM values of levels 0 and 30 for the surface. The plaque was considered homogeneous when only 1 predominant color was present on at least two thirds of the lesion and heterogeneous when at least 2 different colors were equally present. All color mappings of the plaques were evaluated by 2 independent investigators (I.M. and R.S.).
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Histological Examination
After endarterectomy, fresh specimens were rinsed briefly in normal saline solution to remove the surface blood, were immersed in 4% formalin fixative, and subsequently decalcified to be sectioned. Each block was processed to paraffin and then sectioned at 5 µm in a longitudinal plane. Slices were then stained in sequence with hematoxylin and eosin, Masson trichrome, Miller, Congo red, phosphotungstic acid hematoxylin, and Perls stains. All sections were examined by an experienced pathologist (G.-P.P.) for the presence of the different plaque components. Fibrosis, hemorrhage, calcification, or necrotic/lipid core were respectively expressed as large or small if they occupied >50% or <50% of the total area of the plaque. Thrombus was either present or not. The fibrous cap was measured using an ocular micrometer; a value of <80 µm corresponded to a thin and >80 µm to a thick fibrous cap.15 The necrotic/lipid core was considered near the surface, in a juxtalumenal position (not covered by the fibrous cap), or distant from the surface of the plaque (covered by the fibrous cap, whatever its thickness).
Statistical Analysis
Statistical analysis was performed using the Wilcoxon rank sum test, allowing nonparametric comparisons and the Fisher exact test. A P value of <0.05 was chosen as the level of significance.
| Results |
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Thin or interrupted fibrous caps were associated with lower GSM values, although without statistical significant difference (P=0.07 for the mean GSM 0 level and P=0.09 for the mean overall GSM measurement; Table). Plaques containing a necrotic core located in a juxtalumenal position also presented lower GSM values; however, in this case, the difference turned out to be highly significant for the GSM value at the surface level (GSM 0; P=0.009) as well as for the GSM value of the total plaque (P=0.013; Table). Furthermore, color mapping demonstrated a predominance of the red color (GSM <50) at the surface of the plaques containing a necrotic core located near the surface (P=0.0019) or a thin fibrous cap (P=0.056; Table). The sensitivity and specificity of the predominant color of the whole plaque with respect to the thickness of the fibrous cap and the position of the necrotic core were respectively 45% and 67% and 53% and 75%. When considering the predominant color of the surface, the sensitivity and specificity increased to 73% and 67% for the thickness of the fibrous cap and 84% and 75% for the position of the necrotic core, respectively.
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The correlation between the different plaques or plaque segments and the stratified GSM values are shown in Figure 2. Plaques with large calcifications presented the highest GSM values at any level (from 49 to 75), and plaques with large hemorrhagic areas or with a predominant necrotic core exhibited the lowest ones, in particular, at the surface level, with a GSM value of 30 and 34, respectively. Predominantly, fibrotic plaques presented intermediate GSM values (from 42 to 53).
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There was a very good agreement between the stratified GSM method and color mapping. The
values for color mapping were 0.76 for the color of the whole plaque and 0.73 for the color of the surface.
| Discussion |
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70% symptomatic stenosis, this is much less the case for the asymptomatic lesions. It has actually been estimated for this latter group of patients that
20 operations would have to be performed to prevent 1 stroke. Therefore, degree of stenosis alone may not be sufficient to evaluate the risk of stroke, and additional markers are needed to better characterize the patients who would benefit most from surgery. Recent trials demonstrated that anechogenic plaques are also associated with the occurrence of cerebrovascular symptoms20 and that plaque morphology characterization may play an important role in the identification of subsets of high-risk patients. The echogenicity of the plaque was classified initially as bright (hyperechoic) or dark (hypoechoic).21 To provide more objective descriptions, more detailed classifications were developed;22,23 however, with a weak interobserver agreement and only little correlation with the histopathological findings.2230 An alternative approach was quantification of the echogenicity of the plaque by means of a computer-assisted analysis. As mentioned previously, the GSM is a global measure of total plaque brightness and, as such, does not reflect regional variations within the plaque. Our study showed that a quantitative, stratified analysis of plaque echogenicity by means of GSM measurement provided a good correlation with histological findings (Figure 2) and also allowed identification of some characteristics suggesting plaque instability such as the thickness of the fibrous cap or the juxtalumenal position of the necrotic core. Plaques with a necrotic core located near the surface were identified correctly by GSM analysis, and a significant correlation was obtained with the GSM 0 level (P=0.009) as well as with the total plaque GSM measurement (P=0.013). Color mapping of the plaque also demonstrated a highly significant correlation between the predominant red color at the surface, corresponding to GSM values of <50 and the presence of determinants of unstable plaques. In contrast, no correlation was found between the predominant red color of the whole plaque and features of plaque instability, suggesting in this case the superiority of a GSM assessment restricted to the surface level compared with the overall GSM measurement (Table).
Stratified GSM analysis and color mapping are in fact 2 complementary methods of plaque analysis (Figure 1). In case of competition between 2 different colors, for example, which may be present either on the whole plaque or on the surface, predominance is finally decided on ground of the numeric values given by the stratified method. Furthermore, a precise delineation of the surface area (defined as the upper third of the plaque) may be sometimes difficult, and again, the numeric values corresponding to the levels 0 and 30 render this evaluation more reproducible. Finally, stratified analysis gives information of the GSM values at different levels but does not allow a visual representation of the distribution of these GSM variations within the plaque; this aspect is best shown with the color mapping method (Figure 1).
A wide range of threshold values, going from 32 to 74, are proposed in the literature to distinguish anechogenic from echogenic plaques by means of GSM measurement.4,5,10,31 These various cut-off points may be attributable to different choices for the standardization of the reference values.5,12 For the purpose of the present study, we decided to choose the threshold value of 50 by using the usual recommended reference values for the blood and the adventitia. However, we believe that other cut-off points should also be further investigated to determine the most sensitive threshold value.
Conclusions
Ultrasound analysis of the carotid plaque combining a stratified GSM measurement and color mapping showed a good correlation with the different histopathological plaque types and further allowed identification of determinants of plaque instability, with a sensitivity of 73% for the thickness of the fibrous cap and 84% for the juxtalumenal position of the necrotic core. Therefore, this combined approach should be investigated in a prospective, natural history study.
Received September 2, 2004; revision received October 29, 2004; accepted December 2, 2004.
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