Abstract
Background
Because shape or irregularity along the tumor perimeter can result from interactions between the tumor and the surrounding parenchyma, there could be a difference in tumor growth rate according to tumor margin or shape. However, no attempt has been made to evaluate the correlation between margin or shape features and tumor growth.
Methods
We evaluated 52 lung adenocarcinoma (ADC) patients who had at least two computed tomographic (CT) examinations before curative resection. Volume‐based doubling times (DTs) were calculated based on CT scans, and patients were divided into two groups according to the growth pattern (GP) of their ADCs (gradually growing tumors [GP I] vs. growing tumors with a temporary decrease in DT [GP II]). CT radiomic features reflecting margin characteristics were extracted, and radiomic features reflective of tumor DT were selected.
Results
Among the 52 patients, 41 (78.8%) were assigned to GP I and 11 (21.2%) to GP II. Of the 94 radiomic features extracted, eccentricity, surface‐to‐volume ratio, LoG uniformity (σ = 3.5), and LoG skewness (σ = 0.5) were ultimately selected for tumor DT prediction. Selected radiomic features in GP I were surface‐to‐volume ratio, contrast, LoG uniformity (σ = 3.5), and LoG skewness (σ = 0.5), similar to those for total subjects, whereas the radiomic features in GP II were solidity, energy, and busyness.
Conclusions
This study demonstrated the potential of margin‐related radiomic features to predict tumor DT in lung ADCs.
Key points
Significant findings of the study
We found a relationship between margin‐related radiomic features and tumor doubling time.
What this study adds
Margin‐related radiomic features can potentially be used as noninvasive biomarkers to predict tumor doubling time in lung adenocarcinoma and inform treatment strategies.
Keywords: Computed tomography, lung adenocarcinoma, radiomics, tumor doubling time, tumor margin
We found a relationship between margin‐related radiomic features and tumor doubling time. Margin‐related radiomic features can potentially be used as noninvasive biomarkers to predict tumor doubling time in lung adenocarcinoma and inform treatment strategies.
Introduction
Sequential computed tomography (CT) scans and pulmonary tumor volume measurements are useful for assessing tumor growth rates. 1 On sequential CT scan images, it is important to determine whether a pulmonary nodule has grown and, if it has, how fast it has grown. The doubling time (DT) of pulmonary tumors, which is the mean time for a tumor to double in volume, is used to differentiate malignant from benign tumors. 2 , 3 In lung cancer in particular, DT reflects tumor cell proliferation and serves as a determinant of tumor aggressiveness. 4 Moreover, the DT of lung cancer on serial CT scans reflects tumor histology and is closely associated with prognosis. 5 , 6 , 7 , 8 Thus, the DT of lung cancer is one of the key parameters that is used to distinguish aggressive tumors from indolent ones.
Several studies have investigated the correlation between tumor DT in lung cancer patients and imaging features. 6 , 7 , 8 , 9 , 10 Solid components of lung cancers on CT images reflect their invasive potential and are associated with rapid growth, whereas ground glass opacity (GGO) components suggest a longer DT and good outcome, such as seen for adenocarcinoma in situ (AIS) and minimally invasive adenocarcinoma (MIA). However, these previous studies only evaluated a few qualitative imaging characteristics, such as solidity.
Radiomics extracts accurate quantitative imaging descriptors from images using image processing techniques, 11 and several studies have attempted to provide descriptive and predictive models relating image features to tumor phenotypes. 12 , 13 The majority of features used in classification has been derived from intratumoral descriptors. Peritumoral radiomic features for both disease diagnosis and prognosis of brain, breast, and lung cancers have also been explored. 14 , 15 , 16 , 17 In the context of lung cancers, a few studies have indicated that radiomic features of the tumor surroundings can be used to discriminate granulomas from adenocarcinomas (ADCs). 15 , 18 Because shape or irregularity along the tumor perimeter can result from interactions between the tumor and the surrounding parenchyma, there could be a difference in tumor growth rate according to tumor margin or shape. To the best of our knowledge, no attempt has been made to evaluate the correlation between margin or shape features and tumor growth, even though these characteristics, which can be extracted from lung CT images, may reflect the tumor microenvironment.
Accordingly, we conducted a study to identify CT imaging features with a focus on margin characteristics that would allow us to predict the tumor DT of lung ADC using a radiomics approach. Our main purpose was to explore the potential of margin‐related radiomic features to predict tumor DT in patients with lung ADCs.
Methods
Patients and data acquisition
First, we retrieved data from 511 consecutive patients with lung ADC who underwent complete resection at our institution from July 2003 to January 2011. Subjects who had at least two preoperative chest CT examinations with a time interval of at least six months between the first and last preoperative CT to allow us to assess differences in tumor sizes were selected for our study. The first CT was regarded as the initial CT, and the last preoperative CT was regarded as the final CT. Finally, 52 subjects with an adequate CT protocol from which we could extract radiomic features at an optimal resolution were included in our study. This retrospective study was approved by the institutional review board of our institution (institutional review board file number 2016‐04‐135), and the requirement for informed consent to review patient medical records was waived.
Clinical data were collected from electronic medical records at the time of diagnostic work‐up. Sex, age, smoking status, Union for International Cancer Control stage, and operation type were recorded. Histologic reports were also retrieved from electronic medical records, with histological classification based on the International Association for the Study of Lung Cancer/American Thoracic Society/European Respiratory Society multidisciplinary classification of lung ADC. 19
Imaging acquisition
All helical CT images were obtained with a 64‐detector row CT scanner (LightSpeed VCT, GE Healthcare, Waukesha, WI). CT image parameters were as follows: detector collimation, 1.25 or 0.625 mm; field of view, 36 cm; beam pitch, 1.375 to 1.500; beam width, 10 to 20 mm; gantry speed, 0.5 or 0.6 seconds per rotation; 120 kVp; 125 mA; reconstruction interval, 1 to 2.5 mm; and matrix, 512 × 512 mm. Helical acquisitions were reformatted into contiguous 2.5 to 3.5 mm axial sections overlapping by 1 to 1.5 mm on a standard workstation. CT scanning was performed 90s after administration of contrast material (100 mL of iopamidol [Iomeron 300, Bracco, Milan, Italy]) at a rate of 1.5 mL/second using a power injector. This was followed by a 20 cm3 saline flush at a rate of 1.5 mL/second.
Tumor doubling time calculations
Reconstructed thin‐section CT data were transferred to our personal computer–based in‐house software program for lesion segmentation. Two readers independently performed manual segmentation of region of interests (ROIs) on axial CT images to generate a volume of interest that included the entire lesion (both GGO and consolidation components). Tumor volume of ROI was computed by multiplying the number of voxels by the unit volume of a voxel. Initial and final tumor volumes referred to the initial tumor volume and final tumor volume, respectively. If additional longitudinal CT images were obtained between the initial and last CT scan date, the two readers also performed segmentation of ROIs for those CT scans. Volume doubling time (DTvolume) of a tumor was obtained using the following equation:
where t was the interval (in days) between two CT scans, and RCvolume was the ratio of volume change of the initial and final volumes for each nodule. 20
Growth pattern analysis
Two radiologists performed sequential image review and noted a temporary decrease in tumor volume on serial CT scans in 11 (21.2%) tumors with a GGO component. The temporary decrease in tumor volume, which corresponds to a negative DT, is considered to result from alveolar collapse and central fibrosis with tumor progression causing tumor shrinkage. 21 , 22 Thus, the radiologists classified tumors into two groups based on their growth pattern (GP) on serial CT images. The one group comprised patients with gradually growing tumors without a temporary decrease in tumor volume through observation on CT (GP I), (n = 41, 78.8%), while the other group comprised patients with growing tumors with a temporary decrease in tumor volume (negative DT) between the initial and final CT scans (GP II), (n = 11, 21.2%) (Fig 1). If opinions differed with regard to growth pattern, consensus was achieved by discussion.
Radiomic analysis
Radiomic analysis of initial CT images was performed based on shape, local (texture based), filter‐based, and fractal model‐based features from the manually derived ROI, which was obtained as described for the tumor volume calculation. Shape, filter‐based, and fractal model‐based features except local features (texture based) were regarded to be margin‐related features. Details are provided in Appendix S1 and the categorization of all features is presented in Table S1. A total of 94 CT radiomic features were calculated using the open‐source code (PyRadiomics) 23 and in‐house code using MATLAB. Features unavailable in PyRadiomics were implemented using the in‐house code and there are several published articles which have been used the same software. 24 , 25
Data management and statistical analyses
Radiomic feature data from initial CT scans were used to establish a predictor of tumor DT. We utilized 94 radiomic features as the input to assess potential associations of these radiomic features with tumor growth rate.
The P‐values of all 94 radiomic features were calculated using univariate generalized estimating equations (GEEs) for the initial CT and final CT measures. Features with a P‐value < 0.1 and clinical significance were selected as significant for tumor DT prediction. Next, to remove redundant radiomic information, we chose more significant features among the selected radiomic features and then constructed a prediction model using multiple GEEs with those final selected features. We performed subgroup analysis according to tumor growth pattern in the same way. To compare the prediction models and verify our results, predicted and observed values were analyzed by Spearman's correlation analysis. The Shapiro‐Wilk test was used to verify normality of continuous variable. A flow chart showing the development of our tumor DT prediction model based on radiomic features is shown in Fig 2.
We evaluated the stability of various radiomic features by calculating intraclass correlation coefficients (ICCs) as a measure of interobserver reliability. ICC values >0.4, >0.6, >0.8, and >0.9 were regarded as representing moderate, good, very good, and excellent reproducibility, respectively. 26
Overall survival (OS) and disease‐free survival (DFS) were calculated for all patients who underwent curative operations for lung adenocarcinoma.
Results
Demographic information and tumor characteristics are listed in Table 1. Prior to complete resection, the median CT interval between the first and last scan was 23.5 months (interquartile range [IQR], 12.5 to 53.5 months).
Table 1.
Total (n = 52) | GP I (n = 41) | GP II (n = 11) | |
---|---|---|---|
Sex | |||
Male | 26 (50) | 22 (53.7) | 4 (36.4) |
Female | 26 (50) | 19 (46.3) | 7 (63.6) |
Age (mean ± SD) (years) | 60.1 ± 18.6 | 59.8 ± 18.6 | 61.2 ± 18 |
Smoking status | |||
Current smoker | 4 (7.7) | 3 (7.3) | 1 (9.1) |
Ex‐smoker | 14 (26.9) | 11 (26.8) | 3 (27.3) |
Non‐smoker | 34 (65.4) | 27 (65.9) | 7 (63.6) |
Initial tumor size (mean ± SD) (cm) | 2.2 ± 1.7 | 2.4 ± 1.7 | 1.5 ± 1.7 |
Initial tumor volume (mean ± SD) (voxels) | 5511.9 ± 28 772.9 | 6764.7 ± 28 772.9 | 842.7 ± 28 772 |
Tumor volume doubling time (mean ± SD) (days) | 1159 ± 2015 | 888 ± 20 | 2171 ± 2015 |
UICC stage | |||
I | 42 (80.8) | 31 (75.6) | 11 (100) |
II | 4 (7.7) | 4 (9.8) | 0 (0) |
III | 6 (11.5) | 6 (14.6) | 0 (0) |
Operation type | |||
Wedge resection | 18 (34.6) | 11 (26.8) | 7 (63.6) |
Lobectomy | 34 (65.4) | 30 (73.2) | 4 (36.4) |
Pneumonectomy | 0 (0) | 0 (0) | 0 (0) |
Histologic grade | |||
Low | 12 (23.1) | 10 (24.4) | 2 (18.2) |
Intermediate | 32 (61.5) | 23 (56.1) | 9 (81.8) |
High | 6 (11.5) | 6 (14.6) | 0 (0) |
AIS | 1 (1.9) | 1 (2.4) | 0 (0) |
Unknown | 1 (1.9) | 1 (2.4) | 0 (0) |
Predominant subtype | |||
Lepidic | 8 (15.4) | 7 (17.1) | 1 (9.1) |
Acinar | 32 (61.5) | 24 (58.5) | 8 (72.7) |
Papillary | 4 (7.7) | 3 (7.3) | 1 (9.1) |
Micropapillary | 0 (0) | 0 (0) | 0 (0) |
Solid | 5 (9.6) | 4 (9.8) | 1 (9.1) |
Variant | 3 (5.8) | 3 (7.3) | 0 (0) |
Unless otherwise indicated, data are number of patients with percentages in parentheses.
AIS, adenocarcinoma in situ; GP, growth pattern; SD, standard deviation; UICC, Union for International Cancer Control.
Reliability and reproducibility of tumor segmentation and feature extraction
ICC values ranged from 0.59 to 1, with mean a value of 0.91, indicating a moderate or high level of agreement. Most radiomic features showed very good or excellent reproducibility, but kurtosis‐related filter‐based features showed relatively lower levels of agreement (Table S2).
Radiomic prediction of tumor doubling time
Of the 94 total features evaluated, 48 with a P‐value < 0.1 were selected from univariate GEE analysis. Selected radiomic CT image features were eccentricity, surface‐to‐volume ratio, auto correlation, cluster tendency, variance, busyness, Laplacian of Gaussian (LoG) mean (σ = 0.5–3.5 in 0.5 voxel increments), LoG maximum (σ = 1–3.5), LoG median (σ = 0.5–3.5), LoG entropy (σ = 2–3.5), LoG uniformity (σ = 1.5–3.5), LoG standard deviation (σ = 1.5–3.5), LoG skewness (σ = 0.5), and LoG kurtosis (σ = 0.5–3.5). To remove redundant features, we reduced the list to 30 of the more significant features without redundancy (Table 2). When we performed multiple GEE analyses, eccentricity, surface‐to‐volume ratio, LoG uniformity (σ = 3.5), and LoG skewness (σ = 0.5) were ultimately identified as predictive of tumor DT (Table 2).
Table 2.
Radiomic features | Univariate | Multiple | |||||
Coefficient † | SE | P‐value | Coefficient † | SE | P‐value | ||
Shape features | Eccentricity | 1.201 | 0.5929 | 0.04289 | 0.7222 | 0.4147 | 0.0816 |
Surface‐to‐volume ratio | −0.7881 | 0.4671 | 0.09154 | −1.0237 | 0.3834 | 0.0076 | |
Local features (texture‐based) | Variance (GLCM) | −0.00002794 | 0.00001113 | 0.01204 | |||
Busyness (NGTDM) | −1.074 | 0.5245 | 0.04057 | ||||
Filter‐based features | LoG mean (σ = 0.5) | 0.0003892 | 0.000176 | 0.02699 | |||
LoG maximum (σ = 1) | 0.003213 | 0.00118 | 0.006463 | ||||
LoG uniformity (σ = 3) | −6.375 | 1.773 | 0.0003247 | ||||
LoG uniformity (σ = 3.5) | −4.079 | 1.1 | 0.0002087 | −2.2418 | 1.0026 | 0.0254 | |
LoG skewness (σ = 0.5) | −0.5456 | 0.1797 | 0.002397 | −0.4953 | 0.1768 | 0.0051 | |
LoG kurtosis (σ = 1) | −0.3122 | 0.1191 | 0.008781 |
GLCM, gray level co‐occurrence matrix‐based features; LoG, Laplacian of Gaussian Features in bold are those that were selected from the multiple generalized estimating equation; NGTDM, neighborhood gray tone difference matrix‐based features; SE, standard error.
Coefficient estimated by generalized estimating equation.
The results of subgroup analysis according to tumor growth pattern are presented in Table 3 and Table S3. Majority of patients had tumors with a GP I (n = 41, 78.8%), and the selected radiomic features for predicting tumor DT from GEE analysis were similar to those for total subjects: surface‐to‐volume ratio, contrast, LoG uniformity (σ = 3.5), and LoG skewness (σ = 0.5) (Table S3). However, in the GP II group (n = 11, 21.2%), the final selected radiomic features for tumor DT prediction were different: roundness factor, solidity, max3D diameter, energy, max probability, intensity variability, LoG kurtosis (σ = 0.5), and fractal signature dissimilarity (Table 3, all P‐value <0.01). After analyzing the data using multiple GEEs with backward stepwise variable selection, solidity, energy, and busyness were found to be predictive of DT in the GP II group (Table 3).
Table 3.
Radiomic features | Simple | Multiple ‡ | |||||
Coefficient † | SE | P‐value | Coefficient † | SE | P‐value | ||
Shape features | Roundness factor | −3.06 | 1.15 | 0.00786 | |||
Solidity ‡ | −4.58 | 1.53 | 0.00279 | −11.119 | 1.65 | 1.60E‐11 | |
Surface area | 0.000956 | 0.000406 | 0.0187 | ||||
Max3D diameter | 0.0527 | 0.0168 | 0.00176 | ||||
Local features (texture‐based) | Auto correlation (GLCM) | −0.0000321 | 0.0000147 | 0.0295 | |||
Cluster tendency (GLCM) | −0.00000812 | 0.00000369 | 0.0277 | ||||
Dissimilarity (GLCM) | −0.0428 | 0.0238 | 0.0721 | ||||
Entropy (GLCM) | 0.285 | 0.149 | 0.0552 | ||||
Energy (GLCM) ‡ | −243 | 86.3 | 0.0048 | 297.929 | 62.323 | 1.70E‐06 | |
Homogeneity (GLCM) | 16.4 | 5.6 | 0.00345 | ||||
Max probability (GLCM) | −100 | 34.5 | 0.0037 | ||||
Variance (GLCM) | −0.0000329 | 0.0000148 | 0.0262 | ||||
Intensity variability (ISZM) | 0.0156 | 0.00479 | 0.00111 | ||||
Size zone variability (ISZM) | 0.0721 | 0.0283 | 0.0108 | ||||
Contrast (NGTDM) | −1.68 | 0.858 | 0.0504 | ||||
Busyness (NGTDM) ‡ | −54.661 | 15.476 | 0.00041 | ||||
Filter‐based features | LoG entropy (σ = 1.5) | 0.403 | 0.232 | 0.0829 | |||
LoG entropy (σ = 2) | 0.505 | 0.298 | 0.0906 | ||||
LoG uniformity (σ = 1.5) | −38.5 | 18.2 | 0.0351 | ||||
LoG uniformity (σ = 2) | −29.5 | 13.6 | 0.0303 | ||||
LoG uniformity (σ = 3) | −7.46 | 3.23 | 0.0208 | ||||
LoG uniformity (σ = 3.5) | −4.53 | 2.28 | 0.0465 | ||||
LoG kurtosis (σ = 0.5) | 0.835 | 0.257 | 0.00113 | ||||
Fractal model‐based features | Lacunarity | 0.336 | 0.146 | 0.0213 | |||
Fractal signature dissimilarity | −0.536 | 0.187 | 0.00409 |
Coefficient estimated by generalized estimating equation.
Variables were selected using a backward stepwise variable selection method.
Variables in bold are those that had clinical significance without redundancy within the radiomic information as well as a P‐value < 0.01 after multiple generalized estimating equation analysis.
GLCM, gray level co‐occurrence matrix‐based features; ISZM, intensity size zone matrix‐based features; LoG, Laplacian of Gaussian; NGTDM, neighborhood gray tone difference matrix‐based features; SE, standard error.
Comparison of prediction models
The results of Spearman's correlation analysis of three prediction models are presented in Fig 3. The Spearman correlation coefficients between the observed and predicted DTs were 0.556, 0.606, and 0.887 in total subjects, GP I, and GP II, respectively.
Survival outcomes
Discussion
In this study, we investigated the utility of margin‐related radiomic features to predict the tumor DT of lung ADC. Margin‐related radiomic characteristics used in this study comprised 76 of 94 total CT radiomic features of three main types: 10 shape features, 63 filter‐based features (LoG filter), and three fractal model‐based features. Shape features describe the three‐dimensional size and shape of the tumor region. Filter‐based features are composed of histogram‐based features of the Laplacian of Gaussian. The Laplacian of an image brings out areas of rapid intensity change and is typically used for edge detection. A Gaussian filter is applied prior to the Laplacian to smooth the image and reduce noise. Scale of texture in LoG (fine to coarse) was specified by modifying the Gaussian radius parameter (from 0.5 to 3.5 in 0.5 voxel increments). Histogram‐based features for LoG (mean, maximum, median, minimum, entropy, uniformity, standard deviation, skewness, and kurtosis) were also investigated. Fractal model‐based features are composed of a fractal dimension (box‐counting), lacunarity, and fractal signature dissimilarity. They describe the heterogeneity of the tumor margin or shape (Appendix S1). 27 , 28 , 29 , 30
Using these features, we found two distinct tumor growth patterns that had specific margin‐related radiomic features that were predictive of tumor DT. Our major findings were: (i) for all ADCs, the combination of eccentricity, surface‐to‐volume ratio, LoG uniformity (σ = 3.5), and LoG skewness (σ = 0.5) had predictive ability for tumor DT; (ii) the majority of subjects were assigned to the GP I group (n = 41) because they had gradually growing tumors without a temporary decrease in tumor volume, and the finally selected radiomic features for predicting tumor DT in this group were similar to those found for total subjects, namely surface‐to‐volume ratio, contrast, LoG uniformity (σ = 3.5), and LoG skewness (σ = 0.5). The only difference between radiomic features predictive of total DT in all subjects versus the GP I group was eccentricity, which was predictive for total subjects. Eccentricity is a measure of how close a shape is to an ellipse on the 2D image; thus, this feature may reflect an increase in tumor margin irregularity in accordance with tumor evolution. We also performed a calibration test using Spearman's correlation analysis by comparing predicted values from the prediction models and observed values. The Spearman correlation coefficients for the observed and predicted DT values were high: 0.606 and 0.887 for groups GP I and GP II, respectively. Based on these results, it appears that margin‐ or shape‐related radiomic features extracted from the initial CT scan might reflect the growth kinetics of lung ADCs.
Several previous studies have investigated the microenvironment of the tumor perimeter. 31 , 32 , 33 Tumor‐infiltrating lymphocytes, often found in the stroma around the tumor, play an important role in immunosurveillance and tumor rejection. 31 In lung cancers, the density of stromal macrophage infiltration has been shown to be associated with tumor stage and the likelihood of metastasis. 32 Tripathi et al. found that neoplastic infiltration of malignant nodules distorted the neighboring tissue. 33 Thus, histopathological tumor margin or peritumoral characteristics, which may contribute to the imaging appearance of a tumor, could reflect changes to the microenvironment based on interactions between the tumor and surrounding parenchyma. We therefore hypothesized that margin‐related radiomic features might predict tumor behavior and/or growth of lung ADCs.
Lung ADCs may grow due to multistep progression from atypical adenomatous hyperplasia (AAH) through AIS or MIA to ADC. 6 , 34 It is generally accepted that a GGO nodule increases in size, then a solid portion appears, and finally the solid portion increases in extent. 34 Kakinuma et al. 22 however, found that malignant GGO nodules did not always increase in size or attenuation but sometimes decreased in size. Interestingly, in our study, during the follow‐up period prior to surgical resection, a temporary decrease in tumor volume on serial CT scans occurred in 11 (21.2%) cases of tumors with a GGO component. This temporary decrease in tumor volume, which corresponds to a negative DT, is likely due to tumor volume shrinkage caused by alveolar collapse and central fibrosis with tumor progression. 21 , 22 Honda et al. 35 and Koike et al. 20 determined the volumetric DTs of lung cancers and reported negative DTs for five of 40 (12.5%) and 11 of 70 (15.7%) adenocarcinomas, respectively, similar to our observations. Interestingly, in the 11 tumors with a negative DT (GP II group), the final radiomic features selected for DT prediction were quite different from those of the total and GP I group. They were solidity, energy, and busyness (Table 3), with solidity being the most significant feature. This finding is meaningful because a temporary decrease in tumor volume (GP II) tends to occur in some adenocarcinomas with a predominant GGO (negative solidity) that becomes denser and smaller due to alveolar collapse or central fibrosis. 21 , 22 This explains why solidity on the initial CT scan is relevant to DT prediction in GP II tumors. Based on our findings, if a lung ADC has a prominent GGO portion and a temporary negative DT on serial CT, DT prediction modeling should be performed separately according to growth pattern.
For radiomic analysis, we focused more on margin‐related features than intratumoral features. Shape‐ or margin‐based classification of lung tumors is different from textural analysis. Nonshape features such as textural‐ and intensity‐based features may be more affected by intensity and scanner variability. 18 In other words, different CT scanners and scanning parameters such as slice thickness and reconstruction algorithms could affect the resulting textural features. 36 By contrast, margin‐related features tend to be less sensitive to differences in image intensity and scanner platforms and potentially more predictive of lesion diagnosis than texture features. Our use of margin‐related radiometric features is one of the strengths of our study.
However, reproducibility of margin‐related radiomic features might be a critical issue because all radiomic features were extracted from manually derived ROIs. For this reason, two readers independently performed manual segmentation of ROIs on axial CT images, and we evaluated the stability of various radiomic features by calculating ICC as a measure of interobserver reliability. Most radiomic features showed very good or excellent reproducibility, and the mean ICC value was 0.91, indicating excellent agreement. The exception was kurtosis‐related filter‐based features, which showed a relatively lower level of agreement (ICC = 0.62–0.90) (Table S2). The reason for the lower ICC values of kurtosis‐related filter‐based features is unclear, and there is no previous research that can shed light on this issue. Further study of this finding is needed in the future.
In the survival analysis, the OS and DFS were slightly better in GP II than those of GP I (Appendix S2 and Figure S1). We assumed that DT was in inverse proportion to the prognosis, thus, GP I with shorter DT (888 days) might have worse prognosis than GP II with longer DT (2171 days). Even though the study population was relatively small to have statistical power, and GP I had some advanced stage cases, these tumor DT might have an effect on survival outcomes.
Our study had several limitations. First, the data were retrospective and limited to 52 patients from a single institution. Furthermore, we only selected tumors that were histologically proven after surgical resection. This might have caused selection bias. Nevertheless, 52 subjects is a reasonable subject size because it is difficult to find patients who have relatively long‐term, preoperative, serial follow‐up CT scans prior to surgery. This deficiency could be addressed in future work by using a larger patient cohort. Second, we did not perform external validation using an independent population. However, we conducted this study with a calibration test using Spearman's correlation analysis to verify our results. Third, because of differences in subgroup sizes, the generalizability of our findings is limited. Finally, a negative DT could result from uncertainties in tumor volume determination. In cases where the tumor volume did not change much, the second volume could be smaller than the initial volume based on absolute numbers, but might be the same or vice versa within the error bars. To avoid calculation errors, we double‐checked the DT results and minimized such cases.
In conclusion, we analyzed the associations between margin‐related radiomic features and tumor DT and found a relationship between radiomic features and tumor growth rate. This study demonstrates the potential of margin‐related radiomic features to capture properties of the tumor microenvironment that in turn reflect tumor growth. These margin‐related radiomic features can potentially be used as noninvasive biomarkers to predict tumor DT in lung ADC and inform treatment strategies.
Disclosure
The authors declare that they have no competing interests.
Supporting information
Acknowledgments
This research was supported by the Korea Health Technology R&D Project through the Korea Health Industry Development Institute (KHIDI), which was funded by the Ministry of Health & Welfare (HI17C0086). In addition, this work was supported by National Research Foundation of Korea (NRF) grants funded by the Korean government (MSIP; Ministry of Science, ICT, & Future Planning) (NRF‐2016R1A2B4013046 and NRF‐2017M2A2A7A02018568). The sponsors had no role in the study design, data collection and analysis, or manuscript preparation. We would like to thank Sook Lee for performing the experimental work.
Contributor Information
Hyun Jung Yoon, Email: pinnari@hanmail.net.
Ho Yun Lee, Email: hoyunlee96@gmail.com.
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