Role of the texture features of images in the diagnosis of solitary pulmonary nodules in different sizes

2014-03-21 02:01QianZhaoChangZhengShiLiangPingLuo
Chinese Journal of Cancer Research 2014年4期

Qian Zhao, Chang-Zheng Shi, Liang-Ping Luo

1Department of Statistics, School of Public Health, Guangzhou Medical University, Guangzhou 510182, China;2Medical Imaging Center, the First Affliated hospital of Jinan University, Guangzhou 510630, China

Correspondence to: Liang-Ping Luo, MD. Medical Imaging Center, First Affliated Hospital, Jinan University, No.613, Huangpu west Rd, Guangzhou 510630, China. Email: tluolp@jnu.edu.cn.

Role of the texture features of images in the diagnosis of solitary pulmonary nodules in different sizes

Qian Zhao1, Chang-Zheng Shi2, Liang-Ping Luo2

1Department of Statistics, School of Public Health, Guangzhou Medical University, Guangzhou 510182, China;2Medical Imaging Center, the First Affliated hospital of Jinan University, Guangzhou 510630, China

Correspondence to: Liang-Ping Luo, MD. Medical Imaging Center, First Affliated Hospital, Jinan University, No.613, Huangpu west Rd, Guangzhou 510630, China. Email: tluolp@jnu.edu.cn.

Objective:To explore the role of the texture features of images in the diagnosis of solitary pulmonary nodules (SPNs) in different sizes.

Materials and methods:A total of 379 patients with pathologically confrmed SPNs were enrolled in this study. They were divided into three groups based on the SPN sizes: ≤10, 11-20, and >20 mm. Their texture features were segmented and extracted. The differences in the image features between benign and malignant SPNs were compared. The SPNs in these three groups were determined and analyzed with the texture features of images.

Results:These 379 SPNs were successfully segmented using the 2D Otsu threshold method and the self-adaptive threshold segmentation method. The texture features of these SPNs were obtained using the method of grey level co-occurrence matrix (GLCM). Of these 379 patients, 120 had benign SPNs and 259 had malignant SPNs. The entropy, contrast, energy, homogeneity, and correlation were 3.5597±0.6470, 0.5384±0.2561, 0.1921±0.1256, 0.8281±0.0604, and 0.8748±0.0740 in the benign SPNs and 3.8007±0.6235, 0.6088±0.2961, 0.1673±0.1070, 0.7980±0.0555, and 0.8550±0.0869 in the malignant SPNs (all P<0.05). The sensitivity, specifcity, and accuracy of the texture features of images were 83.3%, 90.0%, and 86.8%, respectively, for SPNs sized ≤10 mm, and were 86.6%, 88.2%, and 87.1%, respectively, for SPNs sized 11-20 mm and 94.7%, 91.8%, and 93.9%, respectively, for SPNs sized >20 mm.

Conclusions:The entropy and contrast of malignant pulmonary nodules have been demonstrated to be higher in comparison to those of benign pulmonary nodules, while the energy, homogeneity correlation of malignant pulmonary nodules are lower than those of benign pulmonary nodules. The texture features of images can refect the tissue features and have high sensitivity, specifcity, and accuracy in differentiating SPNs. The sensitivity and accuracy increase for larger SPNs.

Solitary pulmonary nodules (SPNs); differentiation; textures; image features

View this article at:http://dx.doi.org/10.3978/j.issn.1000-9604.2014.08.07

Introduction

Diagnosis of solitary pulmonary nodules (SPNs) in clinical radiology is mainly based on radiographic sign analyses of lesions, such as the position, size, number, morphology, margin, density and changes of adjacent structures. Since it was up to the clinical experience of radiologists, there is a subjective factor involved in this process. Moreover, different diseases might share same radiological findings, and different radiological presentation might also be observed in different stages or types for a single disorder. Therefore, radiologists might make totally different diagnoses based on the same radiological changes.

If radiological findings could be segmented by a computer aided approach to extract regions of interest and to provide quantitative graphic variables in relevance to diagnosis, appropriate graphic features could be selected forthe diagnosis of specifc lesions, resulting in minimization of inter-radiologist variations and delivery of objective and quantitative radiological data. Utility of computeraided approaches contributes to improved confidence of radiological diagnosis (1-4).

In this study, the role of textural features in the differentiation of SPNs has been investigated. Segmentation and extraction of SPNs, as well as their spatial structures and grey-scale, were quantitatively described, in expectation to find appropriate statistical variables to improve the diagnostic specifcity of SPNs.

Materials and methods

General data and CT scans

Totally 379 cases of SPNs, including 120 benign lesions and 259 malignant lesions were collected and confrmed by clinical pathology or biopsy. There were 38 cases of SPNs sized ≤10 mm (20 benign lesions and 18 malignant lesions), 178 cases of SPNs sized 11-20 mm (51 benign lesions and 127 malignant lesions) and 163 cases of SPNs sized >20 mm (49 benign lesions and 114 malignant lesions). There were 211 men and 168 women aged 21 to 87 years (median: 53 years). CT scanning conditions: helical scan; slice thickness of 2-5 mm, the interlamination of 2-5 mm, scanning from pulmonary apex to the basis.

Image analysis

The maximal slice was selected and segmented by using the strategy of 2D Otsu threshold method (5) upon these 379 SPNs. In combination with morphological approaches, open and close calculations were implemented for binary images to eliminate the infuence of micro-vessels. Objects were isolated from the narrow parts of target area with the edge smoothing, but the target area and morphology remained unchanged. Profling tracking was conducted for binary images, and the maximal gradient point was selected as the starting point of boundary tracking from the gradient map, with the maximal gradient boundary determined by eight neighborhood searching methods.

With natural contrast and high difference in grayscale between SPNs and normal lung tissues, self-adaptive threshold segmentation method was employed to locate SPNs and to achieve segmentation automatically. After segmentation, the edge of SPNs was highly consistent with that of SPNs in original images (Figure 1).

Extraction of texture features

Texture features of segmented SPNs were analyzed by the method of grey level co-occurrence matrix (GLCM). The variables of texture features include contrast, homogeneity, correlation, energy and entropy (6). GLCM can be used to analyze the spatial distribution of image texture features through different spatial position and angle (7,8), with 0°, 45°, 90° and 135° as the angles generally used. The average values of texture features from four directions were used in this study, so that the texture features might not be infuenced by the angle of rotation.

• Energy, the square sum of each matrix element, reflects the grayscale distribution homogeneity of images and texture crudeness. Same values of all co-occurrence matrix resulted in small energy profles; on the contrary, high energy might be expected in case of unequal values among co-occurrence matrix values.

• Contrast reflects the sharpness of images and the depth of texture grooves. Deeper texture grooves were associated with high contrast and better visual sharpness; on the contrary, low contrast led to shallow grooves and blurred images. Higher number of pixels with high difference in grayscale (e.g., contrast profle) is associated with higher values of contrast.

• Entropy reflects the non-uniformity and complexity of image texture.

• Correlation refects the consistency of image texture.

in whichxµ,yµ,xσ, andyσwere described as follows:

• Homogeneity reflects the homogeneity of image textures and scaled the local changes of image texture. High values of homogeneity denote the absence of intra-regional changes and locally homogenous distribution in image textures.

Statistical analysis

SPSS 17.0 software is employed in the statistical analyses of this study. Inter-group comparison of texture variables between benign and malignant SPNs were analyzed by t-test. Differential analyses were performed upon SPNs of different sizes based on texture features, and a discrimination function was established to calculate the discrimination effciency.

Results

Comparison of texture features between benign and malignant SPNs

The texture features of 379 SPNs were extracted successfully. The entropy, contrast and correlation of malignant SPNs were higher than those of benign SPNs. However, the energy, homogeneity and correlation were higher in benign SPNs than in malignant SPNs. Therefore, there were statistically signifcant differences in the variables of texture features (Table 1). Thus, the heterogeneity or complexity of malignant SPNs was higher than those of benign SPNs, while more homogenous and uniform appearances were observed for benign SPNs.

Table 1 Texture features of benign and pulmonary and malignant nodules

Table 2 Outcome of texture feature-based prediction for nodules ≤10 mm

Texture feature-aided diagnosis of SPNs in different sizesQualitative diagnosis of SPNs remained to be highlights and challenges of medical imaging, especially in the diagnosis of patients with small SPNs. In this study, the texture features of radiological images were quantitatively analyzed. SPNs were classified according to the specified sizes and were utilized to determine the nature of SPNs, with different models of standardized linear discrimination function given.

Group of SPNs≤10 mm

The standardized linear discrimination function and discrimination outcomes were provided for SPNs ≤10 mm, as shown Table 2.

D1 = –0.665Correlation + 3.194Entropy – 2.359Contrast + 3.194Energy – 1.986Homegenetiy

According to the weighing position of classification system, malignant SPNs might be determined if the value of discrimination function >0, while the value <10 denoted benign SPNs, with 83.3%, 90.0% and 86.6% for the sensitivity, specificity and overall discrimination accuracy, respectively.

Case analysis (Figure 2).

Group of SPNs 11-20 mm

The standardized linear discrimination function and discrimination outcomes were provided for SPNs with the size of 11-20 mm, as shown Table 3.

D1 = 0.137Correlation – 0.562Entropy + 2.454Contrast– 1.776Energy + 2.938Homegenetiy

According to the weighing position of classification system, benign SPNs might be determined if the value of discrimination function >0, while the value <10 denoted malignant SPNs, with 86.6%, 88.2% and 87.1% for the sensitivity, specificity and overall discrimination accuracy, respectively.

Case analysis (Figure 3).

Group of SPNs >20 mm

The standardized linear discrimination function and discrimination outcomes were provided for SPNs with the size of >20 mm, as shown Table 4.

D1 = –0.465Correlation + 0.133Entropy + 2.231Contrast–1.344Energy + 3.288Homegenetiy

According to the weighing position of classification system, benign SPNs might be determined if the value of discrimination function >0, while the value <10 denoted malignant SPNs, with 94.7%, 91.8% and 93.9% for the sensitivity, specificity and overall discrimination accuracy, respectively.

Case analysis (Figure 4).

Discussion

The texture features of 379 segmented SPNs were extracted in our current study. The entropy and contrast of malignant SPNs have been demonstrated to be higher in comparison to those of benign SPNs, while the energy, homogeneitycorrelation of malignant SPNs were lower than those of benign SPNs. There were statistically signifcant differences in the texture features of radiological images between malignant and benign SPNs.

Figure 2 Group of ≤10 mm lung nodules: (A) right inferior pulmonary nodules of a 57-year-old woman. The correlation, entropy, contrast, energy and homogeneity of texture features were determined to be 0.8690, 2.4810, 0.1805, 0.2732 and 0.9323 respectively. These variables were input to the discrimination equation, and the D1 was determined to be =–0.932, which was below zero. This pulmonary nodule was determined to be benign. It was pathologically confrmed to be a fbrous and calcifed nodule of right inferior lung; (B) right upper pulmonary nodules in a 37-year-old man. After segmentation, the correlation, entropy, contrast, energy and homogeneity of texture features were determined to be 0.9268, 4.4735, 0.4498, 0.0700, and 0.7765 respectively. These variables were input to the discrimination equation, and the D1 was determined to be =0.466, which was above zero. The nodule was pathologically confrmed to be an adenocarcinoma in the right upper lung.

Table 3 Outcome of texture feature based prediction for nodules 11-20 mm

The energy of images was identified to be a scale to measure the grayscale distribution homogeneity of images and texture crudeness. Homogenous greyscale distribution and coarser particles were associated with higher energies; absence of local regions and homogenous local distribution in image textures were associated with higher homogeneity; correlation reflects the relevance of grey-scale in image texture; and higher values of matrix elements and finer image textures were associated with higher values of correlation (9,10). In this study, the energy, homogeneity and correlation were higher in benign SPNs than in malignant SPNs, suggesting the features of relatively homogenous grey-scale distribution, normal local texture regularity and relatively lower grey-scale contrast for benign SPNs; however, messy local texture, uneven grey-scale distribution and significant grey-scale contrast could be observed in malignant SPNs. Texture is known as a feature of tissue, which is composed of cells. Therefore, the texture changes of malignant SPNs was proposed to be associated with different cell sizes, irregular cell alignment, and cell polarity disorders in nodules involved.

Figure 3 Group of 11-20 mm lung nodules: (A) left upper lung nodule in a 71-year-old man. After segmentation, the correlation, entropy, contrast, energy and homogeneity of texture features were determined to be 0.9305, 4.0627, 0.5694, 0.1343 and 0.8214, respectively. These variables were input to the discrimination equation, and the D1 was determined to be =1.445, which was above zero. This pulmonary nodule was determined to be benign. It was pathologically confrmed to be granulomatous lesion and coagulative necrosis in the left upper lung; (B) a right upper pulmonary nodule in a 55-year-old woman. After segmentation, the correlation, entropy, contrast, energy and homogeneity of texture features were determined to be 0.8964, 3.2295, 0.4644, 0.2422 and 0.8493, respectively. These variables were input to the discrimination equation, and the D1 was determined to be =0.923, which was above zero. This pulmonary nodule was determined to be benign. It was pathologically confrmed to be chronic infammation in the right upper lung.

Table 4 Outcome of texture feature-based prediction for nodules >20 mm

Contrast refects the sharpness of images and the depth of texture grooves. Higher grey-scale diversity (e.g., contrast) was associated with more pixels and higher contrast. Entropy reflects the non-uniformity and complexity of image texture. More complicated images were associated with higher entropy (11,12). The contrast and entropy were lower in benign SPNs than in malignant nodules, which showed malignant nodules were associated with deeper grooves in image texture and more complicated grey-scale in local images. In contrast, benign SPNs were associated with shallow image textures and relatively homogenous distribution of grey-scale. These results were consistent with the relative complicated nature of malignant tumors. Malignant tumors are often concomitant with hemorrhage, liquefaction and necrosis, in addition to their inconsistent characteristics of cell size, morphology and polarity, which constituted the pathological basis of texture changes.

For SPNs of different size groups, texture feature based differential diagnosis showed satisfactory accuracies for the groups of ≤10, 11-20, and >20 mm, with the sensitivity of 83.3%, 86.6% and 94.7%, the specifcity of 90.0%, 88.2% and 91.8%, and the accuracy of 86.8%, 87.1% and 93.9%, respectively. For texture features, based on the results of intergroup differentiation of nodules in different sizes, the accuracy of differential diagnosis was increased in proportion to the size of pulmonary nodule, mainly due to the continuous elevation of sensitivity without significant changes of specifcity.

Figure 4 Group of 11-20 mm lung nodules: (A) left upper lung nodule in a 68-year-old man. After segmentation, the correlation, entropy, contrast, energy and homogeneity of texture features were determined to be 0.9045, 3.4264, 0.4812, 0.1795 and 0.8426 respectively. These variables were input to the discrimination equation, and the D1 was determined to be =1.074, which was above zero. This pulmonary nodule was determined to be benign. It was pathologically confrmed to be a pulmonary tuberculosis mass in the left upper lung; (B) a lung nodule in the left upper lobe in a 65-year-old woman. After segmentation, the correlation, entropy, contrast, energy and homogeneity of texture features were determined to be 0.9121, 3.3044, 0.5249, 0.3073 and 0.8150 respectively. These variables were input to the discrimination equation, and the D1 was determined to be =-1.531, which was below zero. This pulmonary nodule was determined to be malignant. It was pathologically confrmed to be an adenocarcinoma in the upper lobe of left lung.

The texture features of images were important in the differential diagnosis of benign and malignant SPNs. Texture features might be useful to depict certain repeated local patterns and arrangement regularity in specified regions of images, could be used to describe local characteristics of images, and could provide characteristic metrics such as smoothness, roughness and regularity (13,14). In this study, the texture features of SPNs were investigated by the GLCM method, which could be used to determine the correlation between two greyscale points different in both distance and directions to each other based on the co-occurrence matrix model, and refected the integrated information of direction, spacing and magnitude of changes in image greyscales to describe the roughness and repeated directions of image texture (15-17).

In this study, the diagnostic sensitivities were increased in proportion to the size of nodules in different size-groups of SPNs, without notable changes of the specificity. This was due to the features of benign SPNs, such as regular local texture and relatively homogeneous spreading, without notable texture changes in response to the size increase of nodules. Therefore, the changes of specifcity were limited. However, with the size increase of nodules, they were more vulnerable to develop uneven distribution of texture, heterogeneity and even evolvement, resulting in uneven distribution of texture, increased contrast of greyscales and complicated greyscale of local images, and increase of entropy. Thus, with the size increase of malignant SPNs, more notable changes of texture characteristics might be observed, resulting in improved diagnostic sensitivity.

According to CT-based diagnosis of SPNs, the relevant risk factors such as age, size, glitches, lobulation, vascular aggregation, air cavity density and so on were analyzed using binary Logistic regression analysis (18). Since those radiological findings were up to the clinical experience of radiologists, there is a subjective factor involved in this process. Radiological findings segmented by a computer aided approach would be more objective with quantitative texture features, which are truly relevant with benign SPNs and 2 malignant SPNs.

Conclusions

The texture features of images were very important for the differential diagnosis of SPNs. However, due to the retrospective nature of this study, no prospective analysis was implemented. Only CT plain images of SPNs were used and changes of texture features pre- and post-enhancement of SPNs were not analyzed.

Acknowledgements

This study was supported by National Natural Science Fundproject [81202284], Guangdong Provincial Natural Science Fund project [S2011040004735], Project for Outstanding Young Innovative Talents in Colleges and Universities of Guangdong Province [LYM11106], and Special Research Fund for Basic Scientific Research Projects in Central Universities [21612305, 21612101]. Guangzhou Municipal Science and Technology Fund project [2014J4100119].

Disclosure: The authors declare no confict of interest.

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Cite this article as:Zhao Q, Shi CZ, Luo LP. Role of the texture features of images in the diagnosis of solitary pulmonary nodules in different sizes. Chin J Cancer Res 2014;26(4):451-458. doi: 10.3978/j.issn.1000-9604.2014.08.07

10.3978/j.issn.1000-9604.2014.08.07

Submitted May 10, 2014. Accepted for publication Aug 09, 2014.