Can the delayed phase of quantitative contrast-enhanced mammography improve the diagnostic performance on breast masses?
Original Article

Can the delayed phase of quantitative contrast-enhanced mammography improve the diagnostic performance on breast masses?

Weimin Xu1#, Bowen Zheng1#^, Weiguo Chen1, Chanjuan Wen1, Hui Zeng1, Zilong He1, Genggeng Qin1, Yingjia Li2

1Department of Radiology, Nanfang Hospital, Southern Medical University, Guangzhou, China; 2Department of Ultrasonic Medicine, Nanfang Hospital, Southern Medical University, Guangzhou, China

Contributions: (I) Conception and design: W Xu, B Zheng; (II) Administrative support: W Chen, G Qin, Y Li; (III) Provision of study materials or patients: C Wen, H Zeng; (IV) Collection and assembly of data: Z He, H Zeng; (V) Data analysis and interpretation: B Zheng, W Xu; (VI) Manuscript writing: All authors; (VII) Final approval of manuscript: All authors.

#These authors contributed equally to this work.

^ORCID: 0000-0001-8653-8060.

Correspondence to: Yingjia Li. Department of Ultrasonic medicine, Nanfang Hospital, Southern Medical University, Guangzhou 510515, China. Email: lyjia@smu.edu.cn; Genggeng Qin. Department of Radiology, Nanfang Hospital, Southern Medical University, Guangzhou 510515, China. Email: zealotq@smu.edu.cn.

Background: Contrast-enhanced mammography (CEM) is an imaging tool for breast cancer detection. Most quantitative analyses of CEM involve two phases, and it is unknown whether an added delayed phase can improve its diagnostic performance compared to dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI). This study aimed to evaluate whether the delayed phase improves the diagnostic performance of CEM in distinguishing malignant and benign masses.

Methods: This prospective study enrolled 111 women with 111 pathologically confirmed breast masses. CEM was performed after the injection of contrast agent between 2–3 minutes (T1, early phase), 4–5 minutes (T2, second phase), and 7–9 minutes (T3, delayed phase). The quantitative enhanced gray value of lesions (LGV) and the lesion to background grey value ratio (LBR) were measured within each phase’s corresponding region of interest (ROI). Based on their changes, the kinetic enhancement pattern was assessed among the three phases, and the diagnostic performance was subsequently measured.

Results: The LGV and LBR of malignant masses were significantly greater than those of benign lesions. The diagnostic performance of LGV and LBR at the delayed phase was consistent with that of the second phase but poorer than that of the early phase. The sensitivity of LGVT1 + LGVT2 + LGVT3 was less than that of LGVT1 + LGVT2 (86.5% vs. 95.1%) with a similar area under the curve (AUC), specificity, positive-predictive value (PPV), negative-predictive value (NPV), and accuracy. The sensitivity of LBRT1 + LBRT2 + LBRT3 increased by 19.6%, and specificity decreased by 20.7% compared with LBRT1 + LBRT2. The LGVT1 + LGVT2 + LGVT3 + kinetic enhancement (T1–T3) had the lowest sensitivity (67.0%), but the highest specificity (75.8%), and the sensitivity of LBRT1 + LBRT2 + LBRT3 + kinetic enhancement (T1–T3) was higher than that of LBRT1 + LBRT2 + kinetic enhancement (T1–T2) (90.2% vs. 63.4%, respectively).

Conclusions: The addition of a delayed CEM phase for breast cancer diagnosis yielded limited performance improvement. The quantitative analysis combined with enhancement patterns between the two consecutive phases has great potential to distinguish between malignant and benign lesions.

Keywords: Image enhancement; mammography; delayed-phase contrast-enhanced mammography (delayed-phase CEM)


Submitted Sep 23, 2020. Accepted for publication Apr 09, 2021.

doi: 10.21037/qims-20-1092


Introduction

Contrast-enhanced mammography (CEM) is a breast cancer detection technique that uses an iodinated contrast agent and could provide morphologic and physiologic information similar to dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI). CEM acquires low-energy, and high-energy images in the craniocaudal (CC) and mediolateral oblique (MLO) views based on dual-energy mammography. The low-energy images are similar to standard mammography without the presence of iodine acquired at a range of 26–32 peak kilovoltage (kVp), below the K-edge of iodine. The high-energy images are acquired at a range of 45–49 kVp, above the K-edge, and display the iodine uptake in the breast tissue (1-4). By suppressing the normal background tissue enhancement, recombined images display breast lesions characterized by hyper-angiogenesis due to the increased iodine uptake.

Morphological analysis is a fundamental method of breast lesion interpretation. However, certain malignant, precancerous, and benign lesions may share similar morphological characteristics (2,5). The combination of morphologic information from low-energy images and physiological (enhancement) information from recombined images provided by CEM has been shown to demonstrate better sensitivity and specificity compared to full-field digital mammography (FFDM) and ultrasound (US), and a similar performance compared to MRI (3,4,6-8). Moreover, the Breast Imaging Reporting and Data System (BI-RADS) MRI lexicon can be used to describe enhanced lesions in recombined images, such as background parenchymal enhancement (BPE), enhancement patterns, and kinetic and parametric analysis.

Like MRI, BPE in contrast-enhanced spectral mammography (CESM) may indicate breast cancer (9). Rudnicki et al. (1) measured BPE by placing a region of interest (ROI) within the area of the most homogeneous subcutaneous fatty tissue. By placing an ROI over the most homogeneous enhancement areas within the lesion on two phases, the researchers obtained the lesion’s quantitative enhancement. Further, they gained the percentage signal difference between enhancing the lesion and the background (%RS) that achieved 88.6% specificity in differentiating between malignant and benign lesions. Consequently, they demonstrated that the stronger the enhancement, the higher the possibility of malignancy, and that quantitative analysis of CEM could distinguish between invasive cancers and benign or in situ lesions. However, they selected a small area within the breast parenchyma and the lesion and did not consider the whole breast tissue.

Previous studies have reported that the enhancement value’s quantitative analysis can distinguish between benign and malignant lesions with high specificity (1,10-12). Deng et al. (10) analyzed the quantitative measurements and kinetic enhancement of benign and malignant lesions using CESM between two phases. They found that malignancies had stronger enhancement and depressed relative enhancement patterns than benign lesions. With an optimal cut-off enhanced value of 220.94 according to the Youden index, they achieved a 75.5% sensitivity, 88.6% specificity, and 82.1% accuracy.

As mentioned above, most quantitative analyses of CEM are based on two phases, which is not enough for kinetic enhancement analysis to achieve comparable diagnostic efficiency with MRI. Calibrated by a slab of breast tissue-equivalent plastic filled with varying iodine contrast medium concentrations, Jong et al. (13) represented the lesion enhancement by iodine concentration. They computed the lesion enhancement at six phases and found that the most common kinetic enhancement for benign lesions was persistent, while the washout pattern was most common for the malignancies. However, this study enrolled only 22 lesions, with 13 being enhanced. Huang et al. (14) explored the breast lesion kinetic patterns at 2, 3, 4, 7, and 10 min after the contrast agent injection. Classified as persistent, plateau, and washout, they found that benign and malignant lesions manifested the highest enhancement at 3 and 2 min, respectively, and the washout pattern was associated with the malignancies at 2–4 and 2–10 min periods. However, Huang et al. obtained the enhancement by visual and semi-quantitative analysis from three readers, resulting in a subjective bias.

By objectively analyzing the quantitative enhancement of breast lesions, this study aimed to explore whether the delayed phase improved the diagnostic performance of CEM in distinguishing malignant and benign lesions and attempted to facilitate the detection and characterization of breast lesions.


Methods

Selection of study participants

The study was conducted in accordance with the Declaration of Helsinki (as revised in 2013). The Ethics Committee of Nanfang Hospital, Southern Medical University approved this prospective study (NFEC-2017-136), and written informed consent was obtained from all enrolled participants.

From January 2018 to October 2019, all-female patients who underwent CEM at our hospital were enrolled in the study. The inclusion criteria were as follows: (I) patients with suspicious masses in the breast on FFDM or US or both, and those who then underwent CEM on a Senographe Essential (GE Healthcare CESM) at our institute. (II) CEM that was performed in the following order: (i) CC view, lateral projection of the abnormal side, (ii) CC view, lateral projection of the normal side, (iii) MLO view, lateral projection of the abnormal side, (iv) MLO view, projection of the normal side, (v) MLO view, lateral projection of the abnormal side. (III) Breast lesions demonstrating enhancement on recombined images; (IV) breast lesions that were confirmed pathologically after incisional biopsy or after complete excision. The MLO view was chosen over the CC view for the delayed phase projection as it involves more breast tissue and displays the lesion better. The exclusion criteria were as follows: (I) patients with an estimated glomerular filtration rate (eGFR) less than 30 mL/min according to previous blood biochemistry tests; (II) patients who were allergic to iodinated contrast agents; (III) patients with breast implants; and (IV) patients who had more than one enhanced lesion on recombined images.

Imaging acquisition

Before the imaging acquisition, a single bolus injection of non-ionic contrast medium (Omnipaque, Bayer, Whippany, NJ, USA; 300 mgI/mL) was administered via an intravenous catheter at an injection rate of 3 mL/s and a dose of 1.5 mL/kg. After considerable compression, the low-energy (26–30 kVp) and high-energy (45–49 kVp) exposures were performed in CC and MLO views for each breast. The recombined images were obtained by diminishing the attenuation differences between the low-energy and high-energy images and reducing the non-enhancing image’s noise. The abnormal breast was assessed first, followed by the normal breast. The average glandular radiation (AGD) of each view was calculated for further analysis.

The abnormal breasts were scanned three times in the following order (Figure 1): CC view, MLO view, and the second MLO view performed at 2, 4, and 7 minutes, and completed within 3, 5, and 9 minutes after the injection of the contrast medium. The early phase was defined as T1 (2–3 min after the injection of the contrast medium in CC views); the second phase was defined as T2 (4–5 min after injection in MLO views); the delayed phase was defined as T3 (7–9 min after injection in MLO views).

Figure 1 Imaging acquisition order. The abnormal breasts were scanned three times in the following order: CC view, MLO view, and the second MLO view, which were performed at 2, 4, and 7 minutes, and completed within 3, 5, and 9 minutes after the injection of the contrast medium, respectively. CC, craniocaudal; MLO, mediolateral oblique.

Imaging analysis

All images were transformed into 16-bit gray-level images (range, 0–65,536). A radiologist with 8 years of experience in breast imaging manually contoured and adjusted the ROI of each mass on recombined images using a free-hand dragging tool in ITK-SNAP (version 3.8.0; Cognitica, Philadelphia, PA, USA) along the edge of the lesion. Since we could not separately obtain the exact pixel values of the normal glandular tissue, which was superimposed over the enhanced lesions, the results of enhanced values were based on the bounded lesions (Figure 2). The background ROIs were obtained using the breast contour minus the lesion ROI and extreme high-density points, such as the nipple and skin folds, using a threshold enhanced value. The MLO view could reach other areas, minus the area of the pectoralis major. Using Simple ITK (version 1.2.0; Cognitica) and Open CV (version 4.1.2) in Python 3.7 (Python Software Foundation, https://www.python.org/) for matching the ROIs with corresponding recombined images, the BPE and quantitative enhanced gray value of lesions (LGV) were measured. The lesion to background grey value ratio (LBR) and the lesion enhanced value difference at different phases (LGVD) was further calculated utilizing the following equations {Eqs. [1] and [2]}:

Equcation1:LBR=GreyvaluelesionGreyvaluebackgroundGreyvaluebackground

Equcation2:LGVD=LesionGreyvaluelatterphaseLesionGreyvaluepreviousphaseLesionGreyvaluepreviousphase×100%

Figure 2 Measuring the enhancement of masses on a contrast-enhanced image achieved by weighted logarithmic subtraction. Lesion ROIs were manually contoured around the enhancing lesion edge while the background ROIs were obtained using the breast contour minus the lesion ROI and extreme high-density points such as the nipple and skin folds. The MLO view would go further minus the area of the pectoralis major. ROI, region of interest; MLO, mediolateral oblique.

According to the ACR-MRI recommendations (15), kinetic enhancement patterns based on the change in LGV and LBR between two adjacent phases were divided into three patterns as follows: (I) persistent, change >10%; (II) plateau, change of –10% to ≤10%; (III) washout, change <–10% (Figure 3).

Figure 3 Enhancement patterns of the early, second, and delay phases. Persistent pattern: the interval enhancement increased more than 10%. Plateau pattern: the interval enhancement changed within 10%. Washout pattern: the interval enhancement decreased more than 10%.

The lesions were classified based on the quantitative LGV and LBR values and the corresponding kinetic enhancement patterns between two consecutive phases and all three phases. The lesions classified as over BI-RADS 4B were judged to be malignant, and lesions over the BI-RADS 4A category would be pathologically confirmed by biopsy or by surgery.

Statistical analysis

All statistical analyses were performed using SPSS 22.0 statistical software (IBM Corp., Armonk, NY, USA). The diagnostic accuracy of CEM for discriminating between benign and malignant masses was analyzed statistically using Pearson’s χ2 test and receiver operating characteristic (ROC) curve analysis. The best cut-off value was determined according to the Youden index, in which Y = (sensitivity + specificity) – 1. Regarding the roles of the quantitative variables of lesions in differentiating malignancy from a benign lesion, sensitivity, specificity, and accuracy were calculated by regarding the variables as the discrimination criteria and cut-off points. The differences between LGV, LBR, and BPE in benign and malignant lesions among different phases were analyzed using a one-way analysis of variance. The enhanced degree of lesions, the lesions based on the quantitative LGV and LBR values, and the corresponding kinetic enhancement patterns between two phases and three phases were analyzed statistically by a Pearson’s χ2 test. A P value <0.05 was considered to indicate statistical significance.


Results

From January 2018 to October 2019, 124 female patients were enrolled based on the inclusion and exclusion criteria. Among them, eight patients were further excluded as they opted out due to poor economic conditions, and two patients were excluded because of blur and artifact in their diagnostic images. Further, three patients were excluded because of extreme BPE on their diagnostic images, resulting in 111 patients finally enrolled in the study. All lesions were confirmed pathologically by incisional biopsy or after excisional surgery. The predominant breast composition categories were c and d, with a combined 96/111 (86.4%). Remarkably, all lesions (111 single masses on 111 laterals breasts) were enhanced on the recombined images. The average time interval between the CC and the second lateral MLO views of the abnormal breast was 263 s, and the average time interval of the bilateral breast was 338 s (range 169 to 458 s).

Patients were subjected to a mean average glandular dose (AGD) of 1.92±0.05 mGy (range, 1.06–3.64 mGy) per view for a breast thickness of 48.57±0.43 mm under compression. The mean AGD of the second MLO view was 1.98±0.06 mGy (range, 1.05–3.76 mGy) per image for a breast thickness of 50.49±1.08 mm. Because of the addition of the second MLO view, we calculated the total AGD of the five projections to be 9.60±0.25 mGy, ranging from 5.32 to 18.20 mGy per patient.

Eighty-two (73.8%) breast masses were eventually confirmed as malignant on pathological examination comprising 72 invasive ductal carcinomas (IDCs), one ductal carcinoma in situ (DCIS), and 9 other subtypes. The remaining 29 (26.2%) masses were benign on pathological examination (Table 1).

Table 1
Table 1 Patient clinical characteristics
Full table

Quantitative variables between benign and malignant lesions

The mean LGV, LBR, and BPE were measured and compared. The LGV and LBR of breast cancer were higher than those of benign lesions in the early and second phases, and the mean LGV and LBR decreased for malignant lesions and increased for benign lesions over time. The LGV and LBR were significantly different between malignant and benign lesions in the early phase (P<0.05) instead of the second or the delayed phase (P>0.05, Table 2). The difference in LGV in malignant and benign lesions reached the maximum in the early phase, with a minimum LGV of benign lesions of 27,206.8 and a maximum LGV of malignancies of 31,934.4. Furthermore, the difference reached its minimum in the delayed phases, with benign lesions and malignancies having similar average LGVs (benign vs. malignant: 29,057.8 vs. 29,705.2). The LBR differences shared a similar pattern, with a maximum in the early phase (benign vs. malignant: 0.294 vs. 0.517) and a minimum in the delayed phase (benign vs. malignant: 0.437 vs. 0.413), and the BPE was not significantly different in malignant and benign lesions in each phase (P>0.05, Table 2). The average BPE of the benign versus malignant lesions was 20,995.5 vs. 21,032.1 for T1, 20,635.5 vs. 20,682.7 for T2, and 20,635.2 vs. 20,659.5 for T3.

Table 2
Table 2 Comparison of LGV, LBR, and BPE values between malignant and benign lesions in different phases
Full table

The diagnostic performance of LGV and LBR among different imaging phases based on ROC

Table 3 shows the diagnostic performance of LGV and LBR among different phases. For each of these, we ascertained that LGV and LBR could discriminate malignant from benign lesions based on ROC analysis [area under the curve (AUC) >0.5; Table 3, Figure 4].

Table 3
Table 3 Comparing the diagnostic performance of LGV and LBR alone among different imaging phases
Full table
Figure 4 The diagnostic value of the LGV and LBR for differential diagnosis of benign and malignant breast masses. LGV, quantitative enhanced gray value of lesions; LBR, lesion to background grey value ratio; ROC, receiver operating characteristic; AUC, area under the curve.

Based on the LGV, the AUC, sensitivity, positive-predictive value (PPV), negative-predictive value (NPV), and accuracy in the early phase were higher than those in the second and delayed phase, with 93.9% sensitivity and 81.9% accuracy. Based on LBR, the AUC, sensitivity, and accuracy in the early phase were higher than those in the second and delayed phases, with an AUC of 0.708, 86.5% sensitivity, and 77.4% accuracy (Table 3).

We further explored the diagnostic performance between two consecutive phases and three phases (Table 4). Compared with LGVT1 + LGVT2, the sensitivity of LGVT1 + LGVT2 + LGVT3 was lower (86.5% vs. 95.1%), while the AUC, specificity, PPV, NPV, and accuracy were similar. For LBRT1 + LBRT2 + LBRT3, the sensitivity was higher than that of LBRT1 + LBRT2 (93.9% vs. 74.3%), while the specificity was lower than that of LBRT1 + LBRT2 (37.9% vs. 58.6%).

Table 4
Table 4 Comparing the diagnostic performance of LGV and LBR combined among different imaging phases
Full table

Comparison of the enhancement value parameters with the qualitative evaluation by the reader

The qualitative assessment of enhancement and the quantitative assessment of LGV and LBR are shown in Figures 5,6, demonstrating equivalent conspicuity and confidence levels on qualitative evaluation by the reader and quantitative assessment of LGV and LBR. Therefore, the combination of qualitative assessment and kinetic enhancement patterns showed similar performance compared to LGV and LBR combined with kinetic enhancement patterns.

Figure 5 Comparison of the LGV enhancement value parameters with the qualitative evaluation by the reader. The asterisks represented the extremes more than three box lengths from the end of the box. The circles denoted the outliers between one and a half and three box lengths from the end of the box. LGV, quantitative enhanced gray value of lesions.
Figure 6 Comparison of the LBR enhancement value parameters with the qualitative evaluation by the reader. The asterisks represented the extremes more than three box lengths from the end of the box. The circles denoted the outliers between one and a half and three box lengths from the end of the box. LBR, lesion to background grey value ratio.

The diagnostic performance based on the LGV and LBR combined with kinetic enhancement patterns between malignant and benign lesions

We further explored the kinetic enhancement patterns of LGV of two consecutive phases and of three consecutive phases (Figure 7) and found the kinetic enhancement patterns of benign and malignant lesions were significantly different between the two consecutive phases (P<0.05). Between the early and second phases, 37.8% (31/82) of the malignant lesions exhibited the washout pattern, while 34.5% (10/29) of the benign lesions manifested as a persistent pattern. When the delayed phase was added, the washout pattern of malignant lesions and the persistent pattern of benign lesions decreased by 19.5% and 13.8%, respectively.

Figure 7 Enhancement patterns of two consecutive imaging phases based on the LGV. LGV, quantitative enhanced gray value of lesions.

Next, we explored the kinetic enhancement pattern of LBRs in consecutive phases (Figure 8). Between the early and second phases, malignant lesions commonly showed a washout enhancement pattern (45/82, 54.9%), whereas benign lesions mainly showed persistent enhancement patterns (17/29, 58.6%). Comparing the kinetic enhancement patterns in the early and second phase versus the second and delayed phase showed that the percentage of washout and persistent patterns decreased slightly in malignancies by 9.8% and in benign lesions by 7.9%.

Figure 8 Enhancement patterns of two consecutive imaging phases based on the LBR. LBR, lesion to background grey value ratio.

On combining LGV and LBR with kinetic enhancement patterns, the AUC showed improvement compared to an analysis based on LGV and LBR alone (AUC >0.7; Table 5), and LGV combined with kinetic enhancement achieved a higher specificity than LGV alone. LGV combined with the kinetic enhancementT1–T2 had a higher sensitivity, NPV, and accuracy (84.1%, 59.3%, and 79.2%, respectively) than those of the three phases. The LGV combined with kinetic enhancementT1–T3 achieved a higher specificity and PPV (75.8% and 88.7%, respectively) (Table 5).

Table 5
Table 5 The diagnostic performance of lesion LGV and LBR combined with enhancement and kinetic enhancement patterns
Full table

LBR combined with kinetic enhancementT1–T2 had the lowest sensitivity and accuracy (63.4% and 66.0%) compared to other combinations. However, LBR combined with kinetic enhancementT1–T3 achieved the highest sensitivity and accuracy (90.2% and 82.0%) (Table 5).


Discussion

This study showed that the mean LGV of malignant lesions was higher than that of benign lesions, consistent with previous studies (10,11). Tsutsui et al. reported that a high micro-vessel density was frequently found in breast cancers with vascular endothelial VEGF expression (12), which would explain the higher enhancement of signal we observed. Remarkably, the mean LGV of malignant lesions reached its peak in the early phase and decreased over time, which might be because of the many new vessel networks in malignant lesions reabsorbing/consuming contrast agent rapidly, resulting in a significantly enhanced lesion in the early phase (16). On the contrary, the mean LGV of benign lesions was lowest in the early phase and increased over time.

The LGV diagnostic performance was much better in the early phase than in the other two phases, especially in accuracy and sensitivity. Based on LGV alone, the AUC, sensitivity, and accuracy of CEM reached their peak in the early phase, and the specificity was lowest in the delayed phase. Further, the diagnostic performance of LGV in the delayed phase was consistent with that in the second phase. Our findings were similar to several studies, which found the first post-contrast acquisition was sufficient to distinguish between malignant and benign breast lesions (13,17,18).

The degree of enhancement depends on image acquisition time. LGV was combined with the change at different scan phases, and it was found that the diagnostic performance of LGVT1 + LGVT2 was similar to that of LGV in the early phase alone. Lv et al. (11) quantitatively measured the gray values within the lesion’s ROI for two phases, and using the grey value within the ROI for distinguishing benign and malignant breast lesions; they achieved a higher AUC and specificity (AUC: 0.795 vs. 0.695; specificity: 79.8% vs. 44.8%) and lower sensitivity (66.3% vs. 95.1%) than that of LGVT1 + LGVT2. The possible reason for this discrepancy was that our study only included breast masses, and the method of quantitative measurement was different. When the delayed phase was added, the sensitivity of LGVT1 + LGVT2 + LGVT3 was lower than that of LGVT1 + LGVT2 and higher than the previous study of Lv et al. (86.5% vs. 95.1% vs. 69.5%) (11), while the AUC, specificity, and PPV remained similar. We suggest distinguishing benign and malignant breast masses based on LGV alone, as the delayed phase does not improve diagnostic specificity.

Since we could not separate the exact pixel values of normal glandular tissue superimposed over enhanced lesions, the enhanced grey values were based on the bounded lesions. Therefore, we further explored the effect of BPEs at different phases and found that the difference in BPEs was not significantly different in malignant and benign lesions in each phase (P>0.05). The mean LBR of malignant lesions reached its peak in the early phase and decreased over time, while the mean LBR of benign lesions was lowest in the early phase and increased after that. Like LGV, the diagnostic performance of LBR was much better in the early phase than in the other two phases. Rudnicki et al. (1) found that the percentage signal difference between the enhancing lesion and background (%RS) was likely to distinguish invasive malignant lesions from benign and intraductal lesions, which is similar to our finding. Compared to Lv et al. (11), our study achieved a higher PPV based on LBR and a higher sensitivity based on LBRT1 and LBRT1 + LBRT2 + LBRT3. However, the AUC, specificity, and NPV of LBR alone and LBR with kinetic enhancement were lower than that reported by Lv et al. (11).

Analysis based on LBR alone revealed that while the AUC, sensitivity, NPV, and accuracy decreased over time, the specificity and PPV remained almost the same, indicating the early phase was still the best phase for breast masses. When the delayed phase was added, the sensitivity and PPV of LBRT1 + LBRT2 + LBRT3 increased by 19.6% and 24.0%, respectively, while the specificity decreased by 20.7%. The AUC, NPV, and accuracy did not differ between the LBRT1 + LBRT2 and LBRT1 + LBRT2 + LBRT3, and the diagnostic performance of all combinations of LBR was similar to that of the LGV combinations.

Using the time-signal intensity curves (TIC) of MRI as a model, we can understand better the kinetic enhancement patterns of CEM and comprehend its applications. TIC is useful for distinguishing between benign and malignant lesions in breast MRI studies (19-21). While malignant lesions commonly demonstrate a higher percentage of washout enhancement patterns in TIC, a persistent enhancement pattern is significantly more likely to indicate a benign lesion (19,22,23). In our study, based on the LGV, the most common enhancement patterns were consistent for both malignant and benign lesions between the early and second phases (52.4% vs. 48.3%) and the second and delayed phases (64.6% vs. 65.4%). However, our results are different from previous MRI studies because bilateral breasts were not scanned simultaneously, and we obtained images in three phases.

In terms of the kinetic enhancement of CEM, our results differ from those of Deng et al. (10), which may be attributed to the fact that we only enrolled female patients with breast masses. They found that when the CESM enhancement pattern was evaluated at two relative points between the early phase (2 min after the injection of the contrast medium on CC views) and the delayed phase (4 min after contrast medium injection on MLO views), the relative enhancement patterns of benign and malignant lesions were 15.91% vs. 17.92% in the elevated pattern, 2.27% vs. 12.26% in the steady pattern, 9.09% vs. 62.26% in the depressed pattern. Between the early and second phases, malignant and benign lesions in our study exhibited a lower proportion of the washout pattern (37.8%) and persistent pattern (34.5%), and when the delayed phase was added, the proportion of washout patterns (18.3%) and persistent patterns (20.7%) decreased. In terms of LBR kinetic enhancement (T1–T2; T2–T3), benign lesions manifested more persistent patterns between T1–T2 than that between T2–T3 (58.6% vs. 51.7%) and the proportion of washout patterns in malignant lesions between T1–T2 also exceeded that between T2–T3 (54.9% vs. 42.3%). It is difficult to distinguish benign from malignant lesions based on kinetic enhancement by LGV or LBR. Moreover, a delayed phase cannot improve the probability of typical kinetic enhancement patterns of benign and malignant masses with persistent and washout patterns.

We further explored whether the combination of LGV and kinetic enhancement patterns could increase breast masses’ diagnostic efficiency. Compared with the LGVT1 + LGVT2 + kinetic enhancementT1–T2 and LGV alone, LGVT1 + LGVT2 + LGVT3 + kinetic enhancementT1–T3 is likely to be the preferable combination with the highest specificity and greatest ability to separate the malignant masses from benign ones.

LBR combined with kinetic enhancement obtained higher specificity than LBRT1 + LBRT2 and LBRT1 + LBRT2 + LBRT3, and when the delayed phase was added, the LBRT1 + LBRT2 + LBRT3 + kinetic enhancementT1–T3 showed higher sensitivity and accuracy and lower specificity than LBRT1 + LBRT2 + kinetic enhancementT1–T2. We hypothesized that in terms of the BPE effect among different phases, the addition of the delayed phase severely reduces the specificity of LBR despite the increase in sensitivity, thus does not improve the ability to distinguish benign and malignant lesions.

AGD is related to cancer incidence. Although a second MLO view was added, the mean AGD was 1.92±0.05 mGy per view below the limits set by regulatory institutions (24) and was lower than that of previous studies (25,26). However, with a second MLO view in our study, the total AGD per patient increased. According to the Biological Effects of Ionizing Radiation VII committee (24), the CEM poses little additional risk for cancer incidence and mortality. However, the addition of a second MLO is not recommended, bearing in mind that it does not provide any additional help in reaching a diagnosis and will only increase the radiation dose.

Our study has several limitations. First, this study was an analysis of breast masses only. Second, the delayed phase scan increased the AGD of patients. Therefore, we only chose one delayed phase at 7 minutes instead of multiple phases, which may not fully reflect the delayed phase’s optimal efficiency. Third, this study lacked a comparison with MRI; for example, comparing the kinetic enhancement of the CEM delayed phase and the TIC of MRI. Fourth, this study only included single masses due to an insufficiency of cases.

Moreover, there was no subdivision of the internal enhancement features of the masses. Whole lesions were included within the ROIs, which means that the necrotic areas of uneven or circular enhancement were not excluded. Fifth, due to the automatic exposure mode, the consistency of each breast measurement’s time duration could not be guaranteed, and finally, we only used quantitative features of the masses, ignoring morphological features.


Conclusions

The diagnostic performance of LGV and LBR reached a peak at the early and second phases. The malignant and benign lesions had the highest characteristic kinetic enhancement rate between the early and second phases, such as washout patterns in malignancies and persistent patterns in benign lesions. In our study, the delayed phase’s addition did not significantly improve the diagnostic performance of CEM, indicating that a routine scan with two phases is sufficient for clinical diagnosis. The quantitative analysis combined with kinetic enhancement between the early and second phases has great potential for distinguishing malignant lesions from benign ones.


Acknowledgments

Funding: This work was supported by Clinical Research Start-up Program of Southern Medical University sponsored by High-Level University Construction Funding of Guangdong Provincial Department of Education (LC2016ZD018), Clinical Research Start-Up Program of Southern Medical University Nanfang Hospital (2020CR009), Natural Science Funding of Guangdong Province (2018A0303130215), Natural Science Funding of Guangdong Province (2019A1515011168) and National Key Research and Development Program of China (2019YFC0121903).


Footnote

Conflicts of Interest: All authors have completed the ICMJE uniform disclosure form (available at http://dx.doi.org/10.21037/qims-20-1092). The authors have no conflicts of interest to declare.

Ethical Statement: The authors are accountable for all aspects of the work in ensuring that questions related to the accuracy or integrity of any part of the work are appropriately investigated and resolved. The study was conducted following the Declaration of Helsinki (as revised in 2013). The Ethics Committee of Nanfang Hospital, Southern Medical University approved this prospective study (NFEC-2017-136), and written informed consent was received from all enrolled patients.

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 W, Zheng B, Chen W, Wen C, Zeng H, He Z, Qin G, Li Y. Can the delayed phase of quantitative contrast-enhanced mammography improve the diagnostic performance on breast masses? Quant Imaging Med Surg 2021;11(8):3684-3697. doi: 10.21037/qims-20-1092

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