An analysis of Ki-67 expression in stage 1 invasive ductal breast carcinoma using apparent diffusion coefficient histograms
Original Article

An analysis of Ki-67 expression in stage 1 invasive ductal breast carcinoma using apparent diffusion coefficient histograms

Maolin Xu1, Qi Tang1, Manxiu Li2, Yulin Liu1, Fang Li3

1Department of Radiology, 2Department of Breast Surgery, 3Department of Ultrasound, Hubei Cancer Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China

Correspondence to: Yulin Liu, PhD. Department of Radiology, Hubei Cancer Hospital, Tongji Medical College, Huazhong University of Science and Technology, 116 Zhuodaoquan South Road, Wuhan 430079, China. Email: liuyl26@163.com; Fang Li, MD. Department of Ultrasound, Hubei Cancer Hospital, Tongji Medical College, Huazhong University of Science and Technology, 116 Zhuodaoquan South Road, Wuhan 430079, China. Email: 178508491@qq.com.

Background: To investigate the value of apparent diffusion coefficient (ADC) histograms in differentiating Ki-67 expression in T1 stage invasive ductal breast carcinoma (IDC).

Methods: The records of 111 patients with pathologically confirmed T1 stage IDC who underwent magnetic resonance imaging prior to surgery were retrospectively reviewed. The expression of Ki-67 in tumor tissue samples from the patients was assessed using immunohistochemical (IHC) staining, with a cut-off value of 25% for high Ki-67 labeling index (LI). ADC images of the maximum lay of tumors were selected, and the region of interest (ROI) of each lay was delineated using the MaZda software and analyzed by histogram. The correlations between the histogram characteristic parameters and the Ki-67 LI were investigated. Additionally, the histogram characteristic parameters of the high Ki-67 group (n=54) and the low Ki-67 group (n=57) were statistically analyzed to determine the characteristic parameters with significant difference. Receiver operator characteristic (ROC) analyses were further performed for the significant parameters.

Results: The mean value, and the 1st, 10th, 50th, 90th, and 99th percentiles were found to be negatively correlated with the expression of Ki-67 (all P values <0.001), with a correlation coefficient of −0.624, −0.749, −0.717, −0.621, −0.500, and −0.410, respectively. In the high Ki-67 group, the mean value, and the 1st, 10th, 50th, 90th, and 99th percentiles extracted by the histogram were significantly lower (all P values <0.05) than that of the low Ki-67 group, with areas under the ROC curves ranging from 0.717–0.856. However, the variance, skewness, and kurtosis did not differ between the two groups (all P values >0.05).

Conclusions: Histogram-derived parameters for ADC images can serve as a reliable tool in the prediction of Ki-67 proliferation status in patients with T1 stage IDC. Among the significant ADC histogram values, the 1st and 10th percentiles showed the best predictive values.

Keywords: T1 stage; invasive ductal breast carcinoma; apparent diffusion coefficient histograms; Ki-67


Submitted Apr 26, 2020. Accepted for publication Nov 06, 2020.

doi: 10.21037/qims-20-615


Introduction

Breast carcinoma is one of the most frequent malignant tumors in females and a leading cause of mortality among women globally (1). Studies of breast carcinoma have shown that the size of the tumor depends not only on when it is detected, but also on its biological characteristics. Small tumors with poor biological characteristics may result in a poorer prognosis than large tumors with good biological characteristics (2). Tumor staging is mainly determined by the tumor size, and can provide some references for the surgical management of breast cancer and the selection of candidates for neoadjuvant chemotherapy (3,4). At present, due to increased public awareness and increased screening for breast cancer, the diagnosis rates of stage 1 or T1 breast cancer are increasing.

The Ki-67 proliferation index is associated with the biological characteristics of tumors. It reflects the extent of the proliferative activity of tumor cells and is a reliable identifier of more aggressive breast cancers (5-7). In patients with early-stage breast cancer, a high Ki-67 index is associated with a >50% increase in risk of death or higher and a 64% increased greater risk of recurrence (5). Thus, a non-invasive imaging assessment that can accurately predict the expression of Ki-67 prior to surgery would be beneficial in clinical practice.

Clinically, diffusion-weighted imaging (DWI) is widely used to describe and characterize breast tumors (8). Compared with normal tissues, restricted and hindered diffusion of water molecules in malignant tumors may lead to an increased signal on DWI images and a decreased signal on apparent diffusion coefficient (ADC) images (8). Numerous studies have reported that DWI can effectively reflect several histopathological features of malignant and benign lesions, and predict early response to treatment and clinical outcomes in different malignancies (9-13). Furthermore, as a quantitative value of diffusion restriction, the ADC can be obtained from DWI and has been correlated with the expression of Ki-67 in breast carcinoma (11,14). Some researchers have suggested that the ADC value is negatively correlated with Ki-67 expression (15,16), while others have failed to find any correlation between the two (17-19). Mori et al. (15) pointed out that one contributing factor to the discrepancies might be heterogeneity between subjects in different studies. Another factor to consider is necrosis within the lesion induced by prolonged hypoxia, which occurs when the tumor rapidly outgrows its vascular supply. Necrosis in a highly proliferative tumor may cause a decrease in cellularity and an increase in heterogeneity (20). As an emergent imaging analysis technique, histogram analysis can compile every voxel of a region of interest (ROI) into a histogram, from which information regarding tumor homogeneity/heterogeneity can be obtained (21). Histogram analysis includes several parameters including percentile values, kurtosis, and skewness (21). Previous studies examining different malignancies have shown that histogram analysis can provide more detailed information about tissue microstructure than conventional approaches performed using ROI-based analysis alone (22-26).

To our knowledge, there has been a paucity of studies demonstrating the relationship between ADC histograms and Ki-67 expression in stage 1 invasive ductal breast carcinomas (IDCs). The purpose of the present study was to explore the value of a histogram analysis method for ADC maps in distinguishing high Ki-67 groups from low Ki-67 groups in stage 1 IDC.


Methods

Patients

This study was approved by the ethics committee of the Hubei Cancer Hospital (No.: LLHBCH2020LW-016), and the requirement for written informed consent was waived due to its retrospective nature. All breast carcinoma patients at the Hubei Cancer Hospital (Wuhan, People’s Republic of China) between July 2013 and March 2018 were consecutively included in this study. A total of 309 patients with 382 breast carcinomas confirmed by postoperative pathology underwent preoperative breast magnetic resonance imaging (MRI) examinations. All patients were female and satisfied the following criteria: (I) no biopsy or medical treatment performed on the breast lesions before the MRI scan; (II) the MRI scan was performed in the second week of the menstrual cycle; and (III) the lesions were confirmed by histopathological and immunohistochemical examination of the specimens obtained from excisional biopsy. The exclusion criteria were as follows: (I) patients with multiple breast carcinomas (n=44), including bilateral breast carcinoma and ipsilateral breast carcinoma with multifocal lesions; (II) lesions less than 5 mm, or other histologic types or other stages of breast carcinoma (n=148); and (III) incomplete imaging acquisition or poor quality data (n=6). Finally, 111 patients with 111 IDC lesions and a mean age of 49.14 years (range, 23–74 years) were included in this study. Figure 1 provides a flowchart of the patient selection process.

Figure 1 Flowchart of the patient selection process used in this study.

Magnetic resonance imaging protocol

The images were acquired with a 3.0 Tesla (T) MR imaging system (Verio, Siemens Healthcare, Erlangen, Germany). A dedicated eight-channel phased array breast coil was used. A transverse T2-weighted turbo inversion recovery magnitude (TIRM) pulse sequence was performed with 5,600/56/170 ms [repetition time/echo time/inversion time (TR/TE/TI)], a 4-mm section thickness, a 0.8-mm intersection gap, a field of view (FOV) of 340 mm×340 mm, and a matrix of 314×320. A transverse T1-weighted fast low angle shot (FLASH) pulse sequence was performed with 6.1/2.6 ms (TR/TE), a 1.2-mm section thickness, a 0.24-mm intersection gap, a FOV of 340×340 mm, and a matrix of 384×365. DWI was acquired in the axial planes by using an echo-planar imaging sequence, parallel imaging with sensitivity encoding, volume shimming, b values of 50 and 800 s/mm2, TR/TE=7,300/83 ms, a 4-mm section thickness, a 2-mm intersection gap, a FOV of 320 mm×320 mm, and a matrix of 192×192. The ADC maps were created automatically by the system from the trace-weighted images and calculated according to the following formula: ADC = −(1/b) ln (S2/S1).

Dynamic contrast-enhanced MRI (DCE-MRI) images were acquired with eight phases, including one obtained before contrast and seven postcontrast phases. Axial dynamic imaging was performed (TR 4.67 ms, TE 1.66 ms, flip angle 10º, slice thickness 1.2 mm, matrix size 384×296, and FOV 360 mm×360 mm). The scanning time was 55 seconds per frame. Gadolinium (Magnevist; Beilu Pharmaceutical, BeiJin, China) was injected at a dose of 0.1 mmol/kg. Surgery was performed within 1 week following the MRI examination.

Region of interest selection

Image selection

Two radiologists (Maolin Xu and Yulin Liu, with 7 and 24 years of experience in MRI, respectively), who were blinded to the patients’ pathologic information, retrospectively reviewed the MRI images electronically on the picture archiving and communication system (PACS). In the case of disagreements, the two radiologists would reach a final decision by discussion and consensus. The final MRI images selected were exported from the PACS workstation in BMP format (bitmap image files) for histogram analysis. During export, the window width and window level were adjusted; thus, all images had consistent window width and window level, and they were saved on the hard disk.

Histogram analysis

The ADC histogram characteristics of the tumors were analyzed based on the magnetic resonance ADC image data. The MRI imaging data for the ADC maps were processed using the MaZda software (Version 4.6; www.eletel.p.lodz.pl/programy/mazda/). The largest lay of the selected lesions was analyzed. The software package ran stably in Windows 10. Based on the DWI, T1-weighted (T1WI), T2-weighted (T2WI), and T1WI enhanced images, two breast radiologists (Maolin Xu and Qi Tang, with 7 and 5 years of experience in breast MRI, respectively) delineated the ROIs manually along the edge of all 111 lesions on the ADC maps to calculate the histogram parameters. These parameters included mean value, variance, skewness, kurtosis, and the 1st, 10th, 50th, 90th, and 99th percentile values. All of the histogram parameters were defined according to Liang et al. (27) as follows. Mean was defined as the average pixel value. Variance was defined as variation from the mean gray-level value. Skewness was defined as asymmetry of the histogram. Kurtosis was defined as flatness of the histogram. The nth percentile was defined as the point at which n% of the voxel values that formed the histogram were found to the left. Gray-level normalization of each ROI was performed, using the limitation of dynamics to µ±3σ (µ, gray-level mean; and σ, gray-level standard deviation). The corresponding images before and after marking are shown in Figures 2 and 3. The x-axis of the histogram is the gray-level value, and the y-axis is the frequency of appearance corresponding to the gray-level value on the x-axis. The inter-observer reproducibility for the histogram parameter measurements was assessed by examining the data measured by each of the two radiologists.

Figure 2 A 61-year-old woman with stage 1 IDC in the right breast. (A) The ADC map showed decreased signal intensity in the tumor; (B) the method used for determining the ROIs to obtain the ADC histogram; (C) an ADC histogram of the tumor mass. The ADC histogram values are as follows: mean, 119.43; variance, 569.34; skewness, 0.40682; and kurtosis, −0.71162; 1st percentile, 76; 10th percentile, 93; 50th percentile, 116; 90th percentile, 154; and 99th percentile, 173. (D) Brown dots represent Ki-67 immunostaining, demonstrating a high proliferation LI of 70% (×400 magnification). IDC, invasive ductal breast carcinoma; ADC, apparent diffusion coefficient; ROI, region of interest; LI, labeling index.
Figure 3 A 48-year-old woman with stage 1 IDC in the left breast. (A) The ADC map showing the tumor with decreased signal intensity; (B) the method used for selecting ROIs to obtain the ADC histogram; (C) an ADC histogram of the tumor mass. The ADC histogram values are as follows: mean, 155.2; variance, 356.5; skewness, 1.3806; and kurtosis, −1.7227; 1st percentile, 128; 10th percentile, 138; 50th percentile, 149; 90th percentile, 181; and 99th percentile, 219. (D) Brown dots represent Ki-67 immunostaining, demonstrating a low proliferation LI of 15% (×400 magnification). IDC, invasive ductal breast carcinoma; ADC, apparent diffusion coefficient; ROI, region of interest; LI, labeling index.

Histopathological analysis

In all 111 cases, specimens of breast cancer and axillary lymph nodes were surgically resected. Histological tumor grading was determined using the Nottingham combined histological grading system. Immunohistochemical (IHC) analyses were performed to measure the expression levels of the estrogen receptor (ER), progesterone receptor (PR), human epidermal growth factor receptor 2 (HER2), and Ki-67 as previously described (28). Positive expression of the ER and PR was defined as >1% of tumor nuclei showing positive staining (29). HER2 positivity was defined as having an IHC score of 3+. When gene amplification by fluorescence in situ hybridization (FISH) (28), tumors with an IHC score of 2+ were considered as HER2 positive (20). Ki-67 was scored by counting the number of cells with positively stained nuclei (30). Blinded to the MRI findings, two pathologists evaluated the Ki-67 immunoreactivity by assessing the percentage of immunoreactive cells from 1,000 tumor cells.

Regarding the use of Ki-67 expression as a diagnostic indicator, some international experts in the field have proposed a Ki-67 cut-off value of 20–29% as being indicative of luminal B carcinomas (31). Therefore, in this study, 25% was adopted as the Ki-67 cut-off value, and the patients were divided into two groups according to Ki-67 proliferation status, with a labeling index (LI) <25% being considered as low proliferation, and an LI of ≥25% being considered as high proliferation.

Patients were classified into the following four breast cancer subtypes: luminal A (ER positive and/or PR positive, and HER2 negative), luminal B (ER positive and/or PR positive, and HER2 positive, or HER2 negative but high Ki-67 proliferation), HER2-positive (ER negative, PR negative, and HER2 positive), and triple-negative (ER negative, PR negative, and HER2 negative).

Statistical analysis

Categorical variables were analyzed using the chi-squared test or Fisher’s exact test. All quantitative data derived from the histogram were averaged and expressed as the mean ± standard deviation (SD). One-sample Kolmogorov–Smirnov normality tests and Levene tests were used to evaluate normality and homoscedasticity of the ADC histogram data, respectively. If the data conformed to a normal distribution, the two independent samples t-test was applied to each parameter; otherwise, the Mann–Whitney U test was used. Pearson’s correlation analysis was performed to analyze the relationship between the ADC histogram parameters and the expression of Ki-67.

Inter-observer reliability of the ADC histogram parameters was assessed using the intraclass correlation coefficient (ICC).

The effectiveness of the ADC histogram parameters in differentiating the low-proliferation group from the high-proliferation group was evaluated by performing receiver operating characteristic (ROC) analysis. The area under the ROC curve (AUC) was calculated. The optimal threshold value for differentiating the low Ki-67 group from the high Ki-67 group was chosen at the maximum Youden index. The AUC was expressed as a mean and 95% confidence interval (CI). The method developed by Delong et al. (32) was applied to compare the AUCs. The Bonferroni correction was used for multiple testing.

SPSS software package (version 22.0; Chicago, IL) and MedCalc (version 15.2; Mariakierke, Belgium) were used for all statistical analyses. An emerging package of the R language, named ggplot2 (version 3.2.1), was applied to assist with the drawings.


Results

Clinicopathological findings

A comparison of the clinicopathological characteristics in the low Ki-67 group and the high Ki-67 group, as defined by Ki-67 proliferation status, is summarized in Table 1. All 111 breast carcinomas were solitary tumors, diagnosed histologically from surgical specimens. Histology of the lesions revealed that all were invasive ductal carcinomas. The tumor size of the target lesions ranged from 6 mm to 20 mm, including 55 stage 1b and 56 stage 1c cancers. The histological grade was G1/2 in 82 patients (73.9%) and G3 in 29 patients (26.1%). Positive ER protein findings were detected in 65 patients (58.6%), while positive PR protein expression was observed in 64 patients (57.7%). A positive HER2 score of 3+ was observed in 19 patients (17.1%), and a score of 2+ was detected in 31 patients (27.9%), of which, 9 cases (8.1%) were amplified by FISH. Ki-67 analyses showed high proliferation in 54 cases (48.6%) and low proliferation in 57 cases (51.4%). The distribution of the molecular subtypes was as follows: luminal A (34/111), luminal B (44/111), HER2 positive (13/111), and triple-negative (20/111). Patients in the high Ki-67 group showed a significantly higher histological grade, a larger tumor size, and a significantly higher occurrence of axillary node metastasis than patients in the low Ki-67 group (all P<0.05). No significant differences were found in age, menopausal status, or ER, PR, or HER2 expression status between the two groups (all P>0.05).

Table 1
Table 1 Clinicopathologic characteristics of 111 stage 1 IDCs diagnosed by means of surgical specimens
Full table

Interobserver agreement assessment

Inter-reader consistency data derived from the histogram are summarized in Table 2. Overall, the mean, variance, and all percentile values showed excellent inter-reader consistency (ICC range, 0.897–0.989), while inter-reader consistencies data regarding the skewness and kurtosis were relatively lower (ICC, 0.756 and 0.734, respectively).

Table 2
Table 2 Interreader ICC values for the measurements of ADC histogram parameters by two readers
Full table

Correlation of ADC histogram parameters with Ki-67 expression

The correlation between the ADC histogram parameters and Ki-67 expression are shown in Table 3. The mean value, and the 1st, 10th, 50th, 90th, and 99th percentiles were negatively correlated with the expression of Ki-67 (all P<0.001), with a correlation coefficient of −0.624, −0.749, −0.717, −0.621, −0.500, and −0.410, respectively. However, neither variance, skewness, nor kurtosis showed a significant correlation with Ki-67 expression (P=0.197, 0.518, and 0.931, respectively).

Table 3
Table 3 Correlation between ADC histogram parameters and Ki-67 expression
Full table

ADC histogram parameters between low- Ki-67 group and the high- Ki-67 group

The results of the analysis of the ADC histogram parameters for the low Ki-67 group and the high Ki-67 group are shown in Table 4. The mean value, and the 1st, 10th, 50th, 90th, and 99th percentiles in the high-proliferation and low-proliferation groups, were significantly different (all P<0.05); however, no significant differences were found in variance, skewness, or kurtosis (P=0.258, 0.411, and 0.998, respectively). Examples are shown in Figures 2 and 3. In Figure 4, box plots of the significant ADC histogram parameters between the two groups are presented.

Table 4
Table 4 Comparison of ADC histogram parameters between low-Ki-67 group and high-Ki-67 group
Full table
Figure 4 Box plots show the mean value, and the 1st, 10th, 50th, 90th, and 99th percentiles for the low Ki-67 group (Ki-67 <25%) and the high Ki-67 group (Ki-67 25%). The whiskers extend to the largest and smallest observed values within 1.5 box lengths. Black dots represent individual gray-level values.

Comparison of ROC analysis of ADC histogram parameters in distinguishing low Ki-67 group from the high Ki-67 group

The results of the ROC analysis of the significant ADC histogram parameters are shown in Figure 5 and Table 5. The AUC values of the mean, and the 1st, 10th, 50th, 90th, and 99th percentiles for predicting Ki-67 proliferation status for patients with T1 stage IDC were 0.816, 0.856, 0.849, 0.815, 0.755, and 0.717, respectively. Using the method developed by Delong et al., pairwise AUC value comparisons among the mean, 1st percentile, 10th percentile, 50th percentile, 90th percentile, and 99th percentile were performed. As a result, the P-value of 0.05 was adjusted to 0.0033. The 1st and 10th percentiles had relatively higher AUC values, and the two values were not significantly different (P=0.6450). The 1st and 10th percentiles had higher AUC values than the mean or 50th percentile, but the difference was not significant (all P>0.0033). The mean and 50th percentile both demonstrated significantly higher AUC values than the 90th and 99th percentiles (all P<0.0033).

Figure 5 Receiver operating characteristic curves of significant ADC histogram parameters (mean; 1st, 10th, 50th, 90th, and 99th percentiles) for differentiating the low-Ki-67 group from the high-Ki-67 group. ADC, apparent diffusion coefficient.
Table 5
Table 5 ROC analysis of ADC histogram parameters for distinguishing Ki-67 proliferation status
Full table

Discussion

Our study demonstrated that certain ADC histogram values showed a correlation with the expression of Ki-67 in stage 1 IDC. There were significant differences in the mean value, and the 1st, 10th, 50th, 90th, and 99th percentiles according to different Ki-67 expression classifications. Furthermore, with excellent inter-observer reproducibility (0.989 and 0.988), the 1st percentile and 10th percentile showed a relatively higher correlation (−0.749 and −0.717) with Ki-67 expression, and demonstrated higher AUC values (0.856 and 0.849) for predicting Ki-67 proliferation status. Thus, in this study, ADC map histogram analysis could effectively reflect tumor heterogeneity, and it may have tremendous potential to serve as a predictor of Ki-67 expression level in stage 1 IDC.

The Ki-67 LI has been widely used as a prognostic indicator for many malignant tumors, including breast cancer, soft-tissue tumors, and lung cancer (33). A higher Ki-67 index is associated with a poor outcome in IDC patients and can be regarded as a candidate biomarker for luminal B tumors (34). In contrast to previous research (5,15,35,36), in this study, the patients’ age, menopausal status, and ER, PR, and HER2 expression status were not significantly different between the Ki-67 high-proliferation and low-proliferation groups. This could be due to the low-stage IDCs and cutoff value of 25% for Ki-67 expression used in our study. Moreover, statistically significant differences were found between the low-proliferation group and the high-proliferation group with regard to tumor size, histological grade, and axillary node metastasis, which might be associated with the cell proliferation and cancer progression in the high-proliferation group (15,36). Ryu et al. (37) supposed that many clinicians might underestimate the risks in patients with smaller breast tumors, but the possibility of biologically aggressive characteristics might actually be increased for patients with small tumors with lymph node metastases. Considering this, more attention should be given to a T1 IDCs with a high Ki-67 index in clinical practice.

As the most influential factor of ADC value, the Ki-67 index is closely associated with the degree of cellularity and disease recurrence (38,39). Due to necrosis or degenerative components in the tumor, traditional ADC values cannot fully reflect the degree of cellularity (15,20). Voxel-based histogram analysis is broadly recognized as a reproducible technique for the analysis of ADC maps, which can provide comprehensive and objective information on intralesional heterogeneity and texture (40). ADC histograms can show the frequency of ADC values and provide more descriptive information to analyze the whole tumor, and are less dependent on the tumor microstructure (41). Previously, Hirata et al. (42) supposed that ADC histogram analysis could be an imaging biomarker for esophageal cancer patients treated with chemoradiotherapy. Numerous studies have also indicated that ADC histogram analysis can be applied in the differential diagnosis, lesion’s histological subtype, evaluation of therapeutic response, and prognostic prediction of tumor patients (23,25,26,43,44).

Most previous studies have use manual contouring of the entire tumor for histogram analyses, which might be more objective and better reflect the heterogeneity of the lesion. Nevertheless, histogram analysis of the entire tumor is cumbersome and may be impractical in daily clinical practice. Emulating some investigators in recent years, our histogram analysis was based on the largest representative cross section of tumors on ADC maps; therefore, some information about the rest of the volume was potentially excluded. However, the inclusion of several first and last slices would inevitably bring about a partial volume effect, because all of the tumors in this study were relatively small.

Histogram analysis of the largest cross section of the tumor has previously been used to differentiate between the various stages of bladder cancer and cervical cancer, as well as between medulloblastomas and pilocytic astrocytomas (41,45,46). In the current study, histogram analysis of pixel-based ADC maps of the largest cross section of the tumor was performed to acquire various parameters, including the mean value, variance, skewness, kurtosis, and the 1st, 10th, 50th, 90th, and 99th percentiles, which were used to determine the Ki-67 proliferation status in T1 stage IDC. The methodology of our histogram analysis was different from that reported by most previous studies, but was similar to that reported by Liang et al. (27) and Wang et al. (41). In this study, the ADC maps for the histogram analysis were not in DICOM (Digital Imaging and Communications in Medicine) format but in BMP format, due to the limitations of the MaZda software. As a result, the value of the horizontal axis of the histogram was just a gradation value of gray-scale maps between 1 and 256, and the mean and nth percentile values were not ADC values. Nevertheless, the gradation values of ADC maps could be assumed to correspond to a certain ADC value in this study because the window width and window level were fixed. Furthermore, most parameters, except skewness and kurtosis, showed almost perfect inter-observer reliability (ICC range, 0.897–0.989), suggesting the reproducibility of this ADC histogram method. Therefore, we hypothesized that the ADC histogram parameters from the part of the tumor with the largest diameter could also reliably reflect some characteristics of the entire lesion in stage 1 IDC.

Many studies have revealed a correlation between the ADC value and Ki-67 expression in breast carcinoma. Both Shen et al. (47) and Molinari et al. (48) proposed that lower ADC values are associated with Ki-67 proliferation index, with the cutoff value of 0.97×10−3 and 0.95×10−3 mm2/s able to differentiate the high-proliferation group and the low-proliferation group, respectively. In contrast, Kim et al. (20) reported there was no significant correlation between ADC value and Ki-67 expression because of necrosis in tumors that. However, the ADC values of all these previous studies were based on selected ROIs drawn on parts of the tumor for analysis, and therefore, characteristics of the whole tumor were not sufficiently reflected.

Using ADC histogram parameters from the part of the tumor with the largest diameter, our study indicated that the 1st and 10th percentiles showed a strong negative correlation with Ki-67 expression and had a better predictive value. When cancer cells grow rapidly, tumor necrosis is increased and the tumor becomes more heterogeneous (49). It is possible that the T1 stage IDCs could present a little necrosis, hemorrhage, and cysts, which might have contributed to higher ADC values (50). Therefore, lower percentiles could have better association with high cell compositions in the tumor. In partial disagreement with our research, Mori et al. (15) revealed that each of the minimum ADC, the mean ADC, and the 25th, 50th, and 75th percentile values all showed similar negative correlations with the Ki-67 LI in luminal-type breast cancers. They suggested that this might be attributable to the relatively homogeneous histologic components of luminal-type breast cancers. Also, You et al. (51) reported that a high proliferation of Ki-67 was significantly correlated with lower 50th and 95th percentile ADCs in HER2-positive breast cancers. It is possible that HER2-positive tumors have higher ADC values due to the increased tumor blood flow and a greater volume of extracellular fluid (17,38). The discrepancies in these studies may be associated with the sample size, method of histogram analysis, cutoff value of Ki-67, MRI system, and b values.

The asymmetry and peak of ADC distribution are visually reflected by skewness and kurtosis, respectively (40). Variance refers to the variation from mean gray-level value. Histogram skewness describes the distribution symmetry of variable values, indicating the degree of distribution asymmetry relative to the mean value. The histogram kurtosis can be used to reflect the relative sharpness or flatness of a distribution (41). Kurtosis can be regarded as a quantitative surrogate marker of tumor heterogeneity. Low kurtosis reflects a wide distribution linked to high variation in voxel value (44). Hu et al. (33) reported that neither standard deviation, skewness, nor kurtosis had any significant difference between low and high Ki-67 groups of hepatocellular carcinoma patients. Nevertheless, You et al. (51) demonstrated that kurtosis of the ADC histogram was positively correlated with the Ki-67 index in HER2-positive breast cancers. Our study found that the variance, skewness, and kurtosis showed no significant differences between the two groups, and there was no significant correlation with Ki-67 expression. These results were consistent with reports by Kim et al. (38). The reasons for the discrepancies among different investigators are difficult to explain. A potential explanation may be the smaller tumors featured in our study, which might have brought a certain partial volume effect and affected the measurement of tumor heterogeneity. The relatively inferior inter-observer reliability, especially for skewness and kurtosis, may also affect the results. Further studies are certainly warranted to clarify these results.

This study has some limitations. Firstly, this work was a retrospective study. Our study only included patients with stage 1b and 1c IDC, and did not include lesions measuring 5 mm or less due to possible partial volume artifacts and limited DWI resolution. Secondly, we adopted the LI of 25% as the cutoff value for Ki-67, and although similar research has suggested that a cutoff value of 25% for Ki-67 expression is a good classification tool for prognosis in colorectal cancer (52), the optimal LI cutoff value is still under debate. Thirdly, DWI was obtained at b values of 50 and 800 s/mm2 rather than multiple b value combinations, which can provide more accurate data about perfusion or diffusion. Fourthly, we manually drew ROIs within the part of the tumors with the largest diameter, which may not accurately reflect characteristics of the entire tumor. However, two-dimensional and three-dimensional measurements of single lesions have previously shown fairly similar results (53). Fifthly, this study used BMP-format ADC maps for histogram analysis. As a result, the mean and nth percentile values were not ADC values, which might reduce the usefulness of these values in the clinical setting. Future research should analyze the differences in predictive efficiency for Ki-67 expression between ADC histogram parameters (including mean and nth percentile values) and ADC values with different measurements. Finally, this investigation only examined Ki-67 expression and ADC histogram parameters, but other prognostic factors and molecular profiles of breast carcinomas were not explored.

In conclusion, ADC histograms are a particularly practical and useful non-invasive imaging method for assessing Ki-67 expression status in stage 1 IDC. The 1st and 10th percentiles derived from our ADC histogram showed a strong negative correlation with Ki-67 expression and provided a better predictive value.


Acknowledgments

Funding: None.


Footnote

Conflicts of Interest: All authors have completed the ICMJE uniform disclosure form ((available at http://dx.doi.org/10.21037/qims-20-615). The authors have no conflicts of interest to declare.

Ethical Statement: This study was approved by the Ethics Committee of our hospital. Informed consent was waived due to the retrospective nature of this study.

Open Access Statement: This is an Open Access article distributed in accordance with the Creative Commons Attribution-NonCommercial-NoDerivs 4.0 International License (CC BY-NC-ND 4.0), which permits the non-commercial replication and distribution of the article with the strict proviso that no changes or edits are made and the original work is properly cited (including links to both the formal publication through the relevant DOI and the license). See: https://creativecommons.org/licenses/by-nc-nd/4.0/.


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Cite this article as: Xu M, Tang Q, Li M, Liu Y, Li F. An analysis of Ki-67 expression in stage 1 invasive ductal breast carcinoma using apparent diffusion coefficient histograms. Quant Imaging Med Surg 2021;11(4):1518-1531. doi: 10.21037/qims-20-615

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