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Review

Pretherapeutic Imaging for Axillary Staging in Breast Cancer: A Systematic Review and Meta-Analysis of Ultrasound, MRI and FDG PET

by
Morwenn Le Boulc’h
1,
Julia Gilhodes
2,
Zara Steinmeyer
3,
Sébastien Molière
4 and
Carole Mathelin
5,*
1
Department of Oncologic Radiology, Claudius Regaud Institute, Institut Universitaire du Cancer de Toulouse-Oncopole, 31100 Toulouse, France
2
Clinical Trials, Institut Universitaire du Cancer de Toulouse-Oncopole, 31100 Toulouse, France
3
Internal Medicine and Oncogeriatry Unit, Geriatric Department, University Hospital, Place du Docteur Baylac, CEDEX 9, 31059 Toulouse, France
4
Department of Women’s Imaging, University Hospitals of Strasbourg, 67200 Strasbourg, France
5
Surgery at ICANS Cancer Institute (Institute of Cancerology Strasbourg Europe), CEDEX, 67033 Strasbourg, France
*
Author to whom correspondence should be addressed.
J. Clin. Med. 2021, 10(7), 1543; https://doi.org/10.3390/jcm10071543
Submission received: 31 January 2021 / Revised: 7 March 2021 / Accepted: 1 April 2021 / Published: 6 April 2021
(This article belongs to the Section Oncology)

Abstract

:
Background: This systematic review aimed at comparing performances of ultrasonography (US), magnetic resonance imaging (MRI), and fluorodeoxyglucose positron emission tomography (PET) for axillary staging, with a focus on micro- or micrometastases. Methods: A search for relevant studies published between January 2002 and March 2018 was conducted in MEDLINE database. Study quality was assessed using the QUality Assessment of Diagnostic Accuracy Studies checklist. Sensitivity and specificity were meta-analyzed using a bivariate random effects approach; Results: Across 62 studies (n = 10,374 patients), sensitivity and specificity to detect metastatic ALN were, respectively, 51% (95% CI: 43–59%) and 100% (95% CI: 99–100%) for US, 83% (95% CI: 72–91%) and 85% (95% CI: 72–92%) for MRI, and 49% (95% CI: 39–59%) and 94% (95% CI: 91–96%) for PET. Interestingly, US detects a significant proportion of macrometastases (false negative rate was 0.28 (0.22, 0.34) for more than 2 metastatic ALN and 0.96 (0.86, 0.99) for micrometastases). In contrast, PET tends to detect a significant proportion of micrometastases (true positive rate = 0.41 (0.29, 0.54)). Data are not available for MRI. Conclusions: In comparison with MRI and PET Fluorodeoxyglucose (FDG), US is an effective technique for axillary triage, especially to detect high metastatic burden without upstaging majority of micrometastases.

1. Introduction

Breast cancer is the most commonly diagnosed cancer among women worldwide [1], accounting for 25% of cancer cases and 15% of cancer-related deaths [2]. Axillary lymph node (ALN) metastases are detected in 30 to 40% of women with breast cancer and are associated with a less favorable prognostic [3,4]. Sentinel lymph node biopsy (SLNB) is the classical staging procedure for breast cancer patients with clinically and radiologically negative axilla [5,6,7,8]. Preoperative detection of ALN involvement by imaging may change management in several ways, from first-line ALN dissection to neoadjuvant chemotherapy [9]. However, it is now well established that axillary micro- and macrometastases do not have the same prognostic and therapeutic impact, and the detection of micrometastasis should not lead to an ALN dissection or an inappropriate chemotherapy. Consequently, the axillary staging by imaging should help selecting patients with macrometastatic ALN and patients with negative or micrometastatic ALN.
To our knowledge, no study has systematically evaluated the performance of each of the 3 main imaging techniques as a triage test for axilla staging for breast cancer patients, especially without palpable ALN, with a focus on the type of nodal involvement (micro-or macrometastases). Many of the previous analyses concerning axillary staging did not include nodal ultrastadification and were performed in a population in which a significant proportion of patients had palpable ALN. Palpable ALN constitute a contraindication for SLNB as grossly involved nodes may not retain the dye or the radio-colloid agent due to the replacement of macrophages by cancer cells [10,11,12,13]. Moreover, inclusion of a significant proportion of patients undergoing neoadjuvant chemotherapy may not allow an accurate evaluation, as node staging may change during neoadjuvant chemotherapy (false negative).
Hence, the role and performance of imaging (including ultrastadification) remains to be clarified for breast cancer patients without palpable ALN, as well as the choice of the adequate imaging modality.
In clinical routine, axillary ultrasound (US) is widely performed, followed by fine-needle aspiration or core needle biopsy of abnormal ALN [3]. In some patients, magnetic resonance imaging (MRI) and 2-[18F]-fluoro-2-deoxy-D-glucose positron emission tomography (PET) are performed, for local or distant staging, and are potential techniques to improve axillary staging [9,14,15,16].
This systematic review aimed at systematically evaluating the performances of US (with or without fine-needle aspiration or core needle biopsy), MRI, and fluorodeoxyglucose PET for axillary staging, with a focus on micro- or micrometastases in breast cancer patients without palpable axillary nodes, and to discuss their use in different clinical settings.

2. Materials and Methods

2.1. Search Strategy

This systematic review followed the recommendations in the PRISMA statement [17,18]. Two reviewers independently searched the relevant studies that assessed the accuracy and the utility of US, MRI, and PET in staging the axilla in patients with breast cancer. The MEDLINE database was used for all in vivo human studies. The discrepancies were resolved by consensus.

2.2. Inclusion and Exclusion Criteria

Studies with the following inclusion criteria were reviewed: (1) Published in English, (2) cohort studies (prospective or retrospective); (3) published between 1 January 2002 and 15 March 2018; (4) imaging was done to detect ALN involvement in patients with breast cancer, (5) imaging procedures were US, MRI, PET; (6) histopathological analysis of ALN obtained by SLNB or ALN dissection procedure were used as the reference standard test, and (7) true positive (TP), false positive (FP), true negative (TN), and false negative (FN) values were reported or, if there was sufficient data for them, were calculated.
We excluded studies with the following criteria: (1) Neoadjuvant chemotherapy was administered between imaging and axillary surgery; (2) patients with palpable ALN ipsilateral to the breast cancer; (3) no histopathological reference standard; (4) patients without breast cancer; (5) insufficient data available to calculate the TP, FP, TN, and FN values; (6) imaging was performed for the sole purpose of detecting sentinel ALN; (7) patients were shared with another study previously included; (8) experimental subject was an animal and ex vivo; (9) under 18 analyzable patients in the study, (10) the type of study was a case control study, review, case report, letter to the editor, and (11) we were unable to get the full text.
Some studies were also included if we could manually exclude patients with exclusion criteria—such as patients treated with neoadjuvant chemotherapy or with palpable node, or patients without breast cancer and if we could calculate VP, FP, VN, and FN in the new population.

2.3. Data Extraction and Quality Assessment

Data were extracted by one reviewer, checked by a second, and discrepancies resolved by discussion. Study quality was assessed using the QUality Assessment of Diagnostic Accuracy Studies (QUADAS) checklist [19]. All the 14 items in the checklist were used.

2.4. Data Synthesis and Statistical Analysis

Patients were classified as TP when both imaging techniques and the reference standard (e.g., ALN dissection or SLNB) detected axillary metastases; TN when neither imaging techniques nor reference standard detected metastasis; FN when the imaging technique failed to detect metastasis identified by the reference standard; and FP when the imaging technique incorrectly suggested metastasis not detected by the reference standard. Sensitivity was defined as TP/(TP + FN) and SP as TN/(TN + FP). The diagnostic odd ratio (DOR) values was obtained with different combinations of SE and SP and could be used as a single summary measure. It was defined as the ratio of odds of positivity in disease relative to non-diseased. The DOR value ranges from 0 to infinity and a higher value means better diagnostic performance. A value of 1 indicates that a test cannot distinguish between patients with or without the disease and values of <1 introduce more FN results among the diseased [20].
D O R   =   T P / F N / F P / T N =   s e n s / 1 s e n s / 1 s p e c / s p e c
Considering the correlation between sensitivity and specificity, a bivariate random effects model was used to summarize performance estimates and their 95% confidence intervals (CI) [21]. Heterogeneity was assessed using the quantity I2 that lies between 0 and 100% (a value of 0% indicates no observed heterogeneity, values lower than 50% were considered as an acceptable level of heterogeneity) [22]. When no significant heterogeneity was observed between studies or when the number of considered studies was too small, a pooled analysis was undertaken. For all statistical tests, differences were considered significant at the 0.05 level. All statistical analyses were conducted using STATA 13.0® software (copyright College Station, TX: StataCorp LP).
Forest plots were generated within Review Manager 5® (copyright The Cochrane Collaboration, Copenhagen: The Nordic Cochrane Centre).

2.5. Subgroup Analyses

Subgroup analyses were undertaken according to US technique; US grayscale, US + fine needle aspiration/core needle biopsy, fine needle aspiration, and elastosonography. Subgroup analyses were conducted according to which MRI technique was used; MRI without diffusion weighted imaging (DWI), MRI with DWI, and DWI alone. Subgroup analyses were conducted according to which PET technique was used; PET without computed tomography (CT), and PET with CT.
In some studies, several results for one imaging technique, like MRI, were available, for example, for each MRI subgroup (e.g., MRI without DWI, MRI with DWI, DWI alone). As these results came from the same population, only one result could be considered for the pool estimates. Additionally, the subgroup with the best accuracy result ((TP + TN)/(TP + FP + FN + TN)) was considered.
For US studies, the US + fine needle aspiration/core needle biopsy criterion was preferred over US grayscale, because in routine clinical practice, any suspicious ALN in breast cancer undergoes ultrasound guided fine needle aspiration ore core needle biopsy. In studies evaluating elastosonography, nodes were considered abnormal if either US grayscale, elastosonography, or both were abnormal (disjunctive method).
Subgroups analysis were undertaken according to ALN involvement (micrometastases versus macrometastases and less than 3 ALN metastases versus 3 or more ALN metastases) in patient with T1–T2 breast cancer.

3. Results

3.1. Number and Characteristics of Included Studies

The search identified 569 citations from the MEDLINE data base, 95 were examined for full text review analysis after primary screening of titles and abstracts. Study characteristics of each subgroup are described in Table 1A–D.
In total, 62 studies were suitable for inclusion (Figure 1). There were 30 studies assessing US with or without fine needle aspiration/core needle biopsy, including 7546 patients of which 2668 had ALN metastases (prevalence = 35.4%), 10 studies assessing MRI, including 652 patients of which 211 had ALN metastases (prevalence = 32.4%), and 24 studies assessing PET, including 2388 patients of which 909 had ALN metastases (prevalence = 38.1%).

3.2. Quality of Included Studies

Figure 2 summarizes the methodological quality of the 62 included studies.
In general, the reference standard was adequate, but was not the same for all patients (either SLNB or ALN dissection), and the choice of the reference standard depended on the index test results (for instance, ALN dissection was performed for biopsy-proven metastatic nodes). The reference standard and the index test were well described in every study.
The index test was interpreted by reviewers blinded to reference standard results in all studies. The index test was often interpreted by reviewers blinded to other clinical data, most of the cases for MRI and PET studies, but rarely in US studies. Uninterpretable results were discussed in only 5 studies.

3.3. Sensitivity and Specificity of US, MRI and PET

Of the 30 studies evaluating US, sensitivity was 55% (95% CI: 49–62%; range 24–94%) and specificity was 99% (95% CI: 97–100%; range 76–100%). Of the 10 studies evaluating MRI, sensitivity was 83% (95% CI: 72–91%; range 50–100%) and specificity was 85% (95% CI: 72–92%; range 44–100%). Of the 24 studies evaluating PET, sensitivity was 49% (95% CI: 39–59%; range 19–84%) and specificity was 94% (95% CI: 91–96%; range 74–100%).
Results are presented in Table 2 and Figure 3A–C.

3.4. US Subgroups Analysis

Of 24 studies evaluating US grayscale only (N = 5575, prevalence: 37.4%), sensitivity was 63% (95% CI: 56–69%; range 28–88%) and specificity was 88% (95% CI: 82–92%; range 38–100%). Of 20 studies evaluating US + fine needle aspiration/core needle biopsy (N = 4874, prevalence: 33.1%), sensitivity was 51% (95% CI: 43–59%; range 24–94%) and specificity was 100% (95% CI: 99–100%; range 89–100%). Across 14 studies evaluating fine needle aspiration (N = 2404 patients, prevalence: 42.1%), sensitivity was 78% (95% CI: 73–83%; range 47–90%) and specificity was 99% (95% CI: 96–100%; range 91–100%). Only 2 studies evaluated elastosonography, not allowing meta-analysis: They both demonstrated a better sensitivity for US + elastosonography (disjunctive method) than elastosonography alone, but a lesser specificity. Results are presented in Table 2.

3.5. MRI Subgroups Analysis

Of the 7 studies evaluating MRI without DWI (N = 375, prevalence: 35.2%), sensitivity was 81% (95% CI: 49–95%; range 24–82%) and specificity was 84% (95% CI: 74–91%; range 54–100%). Of the 4 studies evaluating MRI with DWI (N = 366, prevalence: 31.4%), sensitivity was 78% (95% CI: 60–89%; range 54–95%) and specificity was 90% (95% CI: 82–95%; range 84–97%). Of the 5 studies evaluating DWI only (N = 398, prevalence: 32.9%), sensitivity was 74% (95% CI: 50–89%; range 40–83%) and specificity was 78% (95% CI: 51–92%; range 44–100%). Results are presented in Table 2.

3.6. PET Subgroups Analysis

Of the 9 studies evaluating PET without CT (N = 553, prevalence: 48.3%), sensitivity was 44% (95% CI: 28–62%; range 20–84%) and specificity was 95% (95% CI: 91–97%; range 85–100%). Of the 15 studies evaluating PET with CT (N = 1835, prevalence: 35%), sensitivity was 51% (95% CI: 40–63%; range 19–81%) and specificity was 93% (95% CI: 89–96%; range 74–100%). Results are presented in Table 2.

3.7. Subgroup Analysis on Axillary Metastatic Burden

In 12 studies (1497 patients), data about axillary burden were presented, including the histological size of the largest ALN metastasis. The overall preoperative FN rate was 0.93 (0.87, 0.97) for micrometastasis and 0.56 (0.51, 0.61) for macrometastasis. For US (705 patients), the FN rate was 0.96 (0.86, 0.99) for micrometastasis, and 0.52 (0.45, 0.59) for macrometastasis. For PET (643 patients), the FN was 0.59 (0.46, 0.71) for micrometastasis, and 0.64 (0.56, 0.71) for macrometastasis. No subgroup analysis was possible for MRI due to the lack of data.
The number of involved ALN in early-stage breast cancer patients (T1 or T2) was given in 4 studies. For ultrasonography (632 patients), the FN rate was 0.63 (0.57, 0.68) for 1 or 2 involved node(s) and 0.28 (0.22, 0.34) when 3 or more nodes were involved.

4. Discussion

In this meta-analysis assessing the diagnostic performances of US, MRI, and PET for pretherapeutic ALN staging, we found that while MRI had a significant higher sensitivity than other imaging modalities, the performance of US significantly improved for macrometastases in more than 2 ALN. The association of US and fine needle aspiration had the highest diagnostic odd ratio, in part because of a specificity close to 100%.
Unlike other published meta-analysis, we chose to assess each of these 3 techniques to put in contrast their respective strengths and weaknesses and to offer an overview of the role of imaging for nodal staging and ultrastadification.
We did not include patients with clinically positive ALN, for which preoperative imaging is unlikely to change treatment plan [12]. We also chose not to include patients undergoing neoadjuvant chemotherapy, in order to have a gold-standard reference test available for every patient.
While previously published meta-analysis had a high prevalence of ALN metastasis [3,11], the metastasis rate in our study was in line with the commonly described rate of ALN metastasis in invasive breast cancer, between 30 and 40% [3,4].
Management of axilla has evolved with the increased use of neoadjuvant treatment. Furthermore, the ACOSOG Z0011 trial proved that women with micrometastases or less than 2 metastatic ALN and clinical T1-2 tumors undergoing lumpectomy and breast radiation therapy followed by systemic therapy, did not benefit from ALN dissection in terms of local control and 10-year overall survival [13]. An ideal preoperative axillary staging should therefore be able not only to detect macrometastasis with high accuracy, but also to evaluate the global axillary burden, in order to avoid unnecessary ALN dissection in low axillary burden.
We found that axillary US has a very high specificity (99%, 95% CI: 97–100%), in contrast with its much lower overall sensitivity [85,86], which indeed depends on the axillary burden: FN rate of US drops to 0.28 when more than 2 ALN are involved, while micrometastases are almost never detected. This data is fundamental to avoid over-treatment, as micrometastasis should not lead to an ALN dissection or the prescription of chemotherapy. A recent study on interobserver variability showed that the discrimination between low and high axillary burden on US is reliable and reproducible [87]. US should be used for first-line axillary triage, to detect high metastatic burden that could benefit from neoadjuvant chemotherapy, without diverting low-burden patients from SLNB procedure. Technical improvements, such as elastosonography [23,25] or the use of intradermal microbubbles to locate and biopsy the sentinel lymph node under ultrasound guidance [88] may further increase US sensitivity.
We found that MRI has a better sensitivity than US for detection of nodal metastasis. This is in line with the results of other meta-analysis, for example, Liang et al. [7] found a sensitivity of 82% (95%CI: 78–86). The main drawback of MRI is its relatively low specificity compared to other imaging modalities, which makes it unsuitable for surgical or oncological planning. The adjunction of diffusion-weighting imaging seems to significantly increase its specificity while only slightly decreasing its sensitivity. In one study by Hieken et al. [89], second-look US after abnormal axillary findings on MRI allowed detection of abnormal nodes not previously detected by US in only 10% of the cases. In the clinical situation of a positive MRI with negative US, there is a significant risk of axillary false positive.
In our study, PET shows a lower sensitivity than in Cooper’s less recent meta-analysis (49% vs. 63%) [4]. Indeed, performance of PET may vary depending on breast cancer histological subtypes, with higher performances in basal than luminal subtypes [90,91] and also depending on the histological gold standard (e.g., high rate of micrometastases in recent studies [15]). A functional, high-sensitivity imaging, PET has a much higher detection rate of micrometastases than US, which can theoretically lead to unnecessary ALN dissection or neoadjuvant chemotherapy. Yet, PET has the unique ability to detect extranodal distant metastasis and should be used preferentially in patients at high risk for extranodal disease. Further technical improvements, especially new markers for hormone-positive or HER2-positive breast tumors, may redefine the role of PET imaging in axillary staging.
Our study has some limits. A relatively low number of MRI studies were included in our metanalysis, as this imaging modality has only been studied more recently for axilla staging. Likewise, probably due to the lower availability of MRI and PET, these modalities are more widely used for T3-T4 than T1-T2 stages. It may explain why MRI and PET studies include fewer T1-T2 breast cancer than US studies. However, the prevalence of ALN metastases for each of 3 modalities was roughly the same, between 30 and 40%. High heterogeneity of MRI subgroup analysis was probably due to the lack of consensus on the criteria used to define a suspicious ALN on MRI, as well as difference in imaging protocol between centers (MRI field strength, imaging parameters). Finally, information about axillary burden was not widely available in MRI and PET studies.
Thus, future imaging studies should systematically include such parameters as the number of metastatic ALN, the presence of micrometastases versus macrometastases, and the presence of a capsular rupture to avoid over diagnosis and over treatment.

5. Conclusions

US is an effective technique for axillary triage, especially to detect high metastatic burden that could benefit from neoadjuvant chemotherapy or axillary clearance, without upstaging the majority of micrometastases.

Author Contributions

M.L.B. and J.G. wrote the manuscript, gathered, and analyzed the relevant studies that assessed the accuracy and utility of US, MRI, and PET in staging the axilla. J.G. did statistical analysis. Z.S., S.M., and C.M. reviewed the manuscript and suggested significant changes. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Flowchart depicting the inclusion and exclusion of the identified studies.
Figure 1. Flowchart depicting the inclusion and exclusion of the identified studies.
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Figure 2. Quality analysis of the included studies based on QUality Assessment of Diagnostic Accuracy Studies (QUADAS).
Figure 2. Quality analysis of the included studies based on QUality Assessment of Diagnostic Accuracy Studies (QUADAS).
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Figure 3. (A) Forest plot of sensitivity and specificity for US studies. TP = true positive, FP = false positive, FN = false negative, TN = true negative. Brackets show 95% confidence intervals. The figure shows the sensitivity and specificity for each study (squares) and 95% confidence intervals (horizontal lines). (B) Forest plot of sensitivity and specificity for MRI studies. TP = true positive, FP = false positive, FN = false negative, TN = true negative. Brackets show 95% confidence intervals. The figure shows the sensitivity and specificity for each study (squares) and 95% confidence intervals (horizontal lines). (C) Forest plot of sensitivity and specificity for PET studies. TP = true positive, FP = false positive, FN = false negative, TN = true negative. Brackets show 95% confidence intervals. The figure shows the sensitivity and specificity for each study (squares) and 95% confidence intervals (horizontal lines).
Figure 3. (A) Forest plot of sensitivity and specificity for US studies. TP = true positive, FP = false positive, FN = false negative, TN = true negative. Brackets show 95% confidence intervals. The figure shows the sensitivity and specificity for each study (squares) and 95% confidence intervals (horizontal lines). (B) Forest plot of sensitivity and specificity for MRI studies. TP = true positive, FP = false positive, FN = false negative, TN = true negative. Brackets show 95% confidence intervals. The figure shows the sensitivity and specificity for each study (squares) and 95% confidence intervals (horizontal lines). (C) Forest plot of sensitivity and specificity for PET studies. TP = true positive, FP = false positive, FN = false negative, TN = true negative. Brackets show 95% confidence intervals. The figure shows the sensitivity and specificity for each study (squares) and 95% confidence intervals (horizontal lines).
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Table 1. Study characteristics.
Table 1. Study characteristics.
(A) Characteristics of ultrasound included studies
AuthorYearCountryIndex TestSecond TestReference StandardProspective/RetrospectiveN AnalysedN with Axillary MetastasesPrevalence of Axillary MetastasesMean AgeYears of StudyOther Criteria
Chang W. [23]2018ChinaUSUS + ElastosonographyHistology (SLNB/ALND)Retrospective1407855.7%55.32013–2014Disjunctive method
Wallis M.G. [24]2017UKUSUS + CNBHistology (SLNB/ALND)Retrospective76913417.4%ND2008–2015
Zhao Q.L. [25]2017ChinaUSUS + ElastosonographyHistology (SLNB/ALND)Prospective784456.4%52.52012–2013Disjunctive method
Akinci M. [26]2016TurkeyUSUS + FNAHistology (SLNB/ALND)Prospective463065.2%ND2011–2013
Gipponi M. [27]2016ItalyUSUS + FNAHistology (SLNB/ALND)Prospective40012731.8%64.62013–2015Only T1-T2-T3 tumors
Zhu Y. [28]2016ChinaUSUS + FNAHistology (SLNB/ALND)Retrospective44516938.0%55.62013–2014Only T1-T2 tumors
Hyun S.J. [29]2015South KoreaUSUS + FNAHistology (SLNB/ALND)Retrospective49715932.0%522012–2013
Zhang Y.N. [30]2015ChinaUSUS grayscale Histology (SLNB/ALND)Retrospective104940238.3%50.32010–2011
Sohn Y.M.b[31] 2014South KoreaUSUS grayscale Histology (SLNB/ALND)Retrospective1074542.1%53.92009–2012
Cools Lartique J. [32]2013CanadaUSUS + FNAHistology (SLNB/ALND)Prospective2349038.5%57.82005–2007
Stachs A. [33]2013GermanyUSUS grayscale Histology (SLNB/ALND)Retrospective47016635.3%ND2008–2010
Riegger C. [34]2012GermanyUSUS grayscale Histology (SLNB/ALND)Retrospective913740.7%55.52007–2010
Davey P. [35]2011Northern IrelandUSUS + FNAHistology (SLNB/ALND)Retrospective1194033.6%ND2009
Schiettecatte A. [36]2011BelgiumUSUS + FNAHistology (SLNB/ALND)Retrospective1476745.6%56NDBreast tumors < 3cm
Baruah B.P. [37]2010UKUSUS + FNAHistology (SLNB/ALND)Retrospective50213727.3%612006–2009
Jung J. [38]2010South KoreaUSUS + FNAHistology (SLNB/ALND)Retrospective1896132.3%ND2005–2006
Luparia A. [39]2010ItalyUSUS grayscale Histology (SLNB/ALND)Retrospective42717039.8%60.92005–2008
Monzawa S. [40]2009JapanUSUS grayscale Histology (SLNB/ALND)Retrospective501530.0%592005–2006
Cowher M.S. [41]2008USAUSUS + FNAHistology (SLNB/ALND)Retrospective1255745.6%61.32004–2005
Moore A. [42]2008USAUSUS + FNAHistology (SLNB/ALND)Retrospective1125851.8%NDNDHigh risk of metastases
Ueda S. [43]2008JapanUSUS grayscale Histology (SLNB/ALND)Prospective1835932.2%572005–2007
Altomare V. [44]2007ItalyUSUS + FNAHistology (SLNB/ALND)Retrospective1003030.0%532004–2005Only T1-T2-T3 tumors. FNA performed for all patients
Davis J.T. [45]2006USAUSUS + FNAHistology (SLNB/ALND)Prospective372259.5%ND2004–2005High risk of metastases
Lumachi F. [46]2006ItalyUSUS grayscale Histology (SLNB/ALND)Prospective773748.1%54NDOnly T1-T2 tumors.
Popli M.B. [47]2006IndiaUSUS + FNAHistology (SLNB/ALND)Prospective302273.3%NDND
Podkrajsek M. [48]2005SloveniaUSUS + FNAHistology (SLNB/ALND)Retrospective1656539.4%562001–2003
Bedrosian I. [49]2003USAUSUS + FNAHistology (SLNB/ALND)Prospective2085325.5%55.41994–2000
Deurloo E.E. [50]2003The NetherlandsUSUS + FNAHistology (SLNB/ALND)Prospective26812145.1%561999–2001Only patients eligible for SLNB
Kuenen-Boumeester V. [51]2003The NetherlandsUSUS + FNAHistology (SLNB/ALND)Retrospective1838546.4%ND1998–2003
Sapino A. [52]2003ItalyUSUS + FNAHistology (SLNB/ALND)Prospective2988829.5%ND200031 in situ breast cancer
TOTAL 7546266835.4%56
(B) Characteristics of Magnetic Resonance Imaging included studies
AuthorYearCountryIndex TestSecond TestNumber of TestlaReference StandardProspective/RetrospectiveN AnalysedN with Axillary MetastasesPrevalence of Axillary MetastasesMEAN AGEPeriod of StudyOther Criteria
Kim S.H. [53]2017South KoreaMRIWith and without DWI + Gadolinium IV3THistology Retrospective1495033.6%49.22014–2015
(SLNB/ALND)
Yun S.J. [54]2016South KoreaMRIWith DWI + Gadolinium IV3THistology Retrospective1243427.4%59.82011–2014
(SLNB/ALND)
Schipper R.J. [55]2015The NetherlandsMRIWith and without DWI3THistology Retrospective501224.0%602012–2013Only T1-T2-T3
(SLNB/ALND)tumors
Ergul N. [56]2015TurkeyMRIWith and without DWI1.5THistology Prospective241562.5%472012–2013Only T1-T2
(SLNB/ALND)tumors
Kamitani T. [57]2013JapanMRIDWI alone1.5THistology Retrospective1102623.6%54.92006–2007
(SLNB/ALND)
Fornasa F. [58]2012ItalyMRIWith DWI + Gadolinium IV1.5THistology Prospective431944.2%582008–2010
(SLNB/ALND)
Scaranelo M. [59]2012CanadaMRIWith and without DWI1.5THistology Prospective652843.1%532008–2009
(SLNB/ALND)
Memarsadeghi M. [60]2006AustriaMRIWithout DWI + USPIO IV1THistology Prospective22627.3%625 months
(SLNB/ALND)
Michel S.C. [61]2002SwitzerlandMRIWithout DWI + USPIO IV1.5THistology Prospective181161.1%532000–2001
(SLNB/ALND)
Murray A.D. [62]2002UKMRIWithout DWI + Gadolinium IV0.95THistology ND471021.3%63ND
(SLNB/ALND)
TOTAL 65221132.4%55.4
(C) Characteristics of FDG Positron Emission Tomography included studies
AuthorYearCountryIndex TestSecond TestEvaluationReference StandardProspective/RetrospectiveN AnalysedN with Axillary MetastasesPrevalence of Axillary MetastasesMean AgeYears of StudyOther Criteria
Ergul N. [56]2015TurkeyFDG PETWith CTVisual and semi-quantitativeHistology Prospective241562.5%472012–2013Only T1-T2 tumors
(SLNB/ALND)
Jeong Y.J. [63]2014South KoreaFDG PETWith CTVisual and semi-quantitativeHistology Retrospective1784827.0%54.92010–2013
(SLNB/ALND)
Park J. [64]2014South KoreaFDG PETWith CTVisual and semi-quantitativeHistology Retrospective1367051.5%49.72009–20123 patients without FDG-avid breast tumors excluded
(SLNB/ALND)
Sohn Y.M. [31]2014South KoreaFDG PETWith CTVisualHistology Retrospective1074542.1%53.92009–2012
(SLNB/ALND)
Machida Y. [65]2013JapanFDG PETWith CTVisual and semi-quantitativeHistology Retrospective2275423.8%ND2005–2009
(SLNB/ALND)
Seok J.W. [66]2013South KoreaFDG PETWith CTVisual and semi-quantitativeHistology Retrospective1042120.2%49.42010–2012Only T1-T2 tumors
(SLNB/ALND)
Hahn S. [67]2012GermanyFDG PETWith CTVisual and semi-quantitativeHistology Retrospective381626.9%522008Only T1-T2 tumors
(SLNB/ALND)
Riegger C. [34]2012GermanyFDG PETWith CTVisualHistology Retrospective913740.7%55.52007–2010
(SLNB/ALND)
Choi W.H. [68]2011South KoreaFDG PETWith CTVisual and semi-quantitativeHistology Retrospective1717342.7%50.12003–2006
(SLNB/ALND)
Heusner T.A. [69]2009GermanyFDG PETWith CTVisualHistology Retrospective612439.3%562007–2008
(SLNB/ALND)
Kim J [70]2009South KoreaFDG PETWith CTVisualHistology Prospective1373525.5%50.52007–2008Only T1-T2 tumors
(SLNB/ALND)
Monzawa S. [40]2009JapanFDG PETWith CTVisualHistology Retrospective501530.0%592005–2006
(SLNB/ALND)
Taira N. [71]2008JapanFDG PETWith CTVisual and semi-quantitativeHistology Retrospective922729.3%54.62006–2007
(SLNB/ALND)
Ueda S. [43]2008JapanFDG PETWith CTVisualHistology Prospective1835932.2%572005–2007
(SLNB/ALND)
Veronesi U. [72]2007ItalyFDG PETWith CTVisual and semi-quantitativeHistology Retrospective23610343.6%492003–2005Only T1-T2-T3 tumors
(SLNB/ALND)
Kumar R. [73]2006USAFDG PETWithout CTNDHistology Prospective803645.0%52ND
(SLNB/ALND)
Weir L. [74]2005CanadaFDG PETWithout CTVisualHistology Retrospective401845.0%522000–2003
(SLNB/ALND)
Fehr M.K. [75]2004SwitzerlandFDG PETWithout CTVisualHistology Prospective241041.7%56NDTumors
(SLNB/ALND)< 3 cm (clinical)
Zornoza M.J. [76]2004SpainFDG PETWithout CTVisualHistology Prospective20010753.5%52.2NDTumors < 3.5 cm (ND)
(SLNB/ALND)
Barranger E. [77]2003FranceFDG PETWithout CTVisualHistology Prospective321546.9%582001Only T1-T2 tumors
(SLNB/ALND)
Guller U. [78]2002SwitzerlandFDG PETWithout CTNDHistology Prospective311445.2%64.8ND
(SLNB/ALND)
Nakamoto Y. [79]2002USAFDG PETWithout CTVisualHistology Prospective361541.7%50.6ND
(SLNB/ALND)
Rieber A. [80]2002GermanyFDG PETWithout CTNDHistology Retrospective402050.0%52.9ND
(SLNB/ALND)
Van der Hoeven J.M. [81]2002The NetherlandsFDG PETWithout CTVisualHistology (SLNB/ALND)Prospective703245.7%581997–2000
TOTAL 238890938.1%52.9
(D) Characteristics of Fine Needle Aspiration included studies
AuthorYearCountryIndex TestEvaluationProspective/Retrospective?N AnalysedN with Axillary MetastasesPrevalence of Axillary MetastasesMean AgeYears of StudiesOther Criteria
Zhu Y. [28]2016ChinaFNAHistology Retrospective44516938.0%55.62013–2014Only T1-T2 tumors
(SLNB/ALND)
Sohn Y.M. [31]2014South KoreaFNAHistology Retrospective1074542.1%53.92009–2012
(SLNB/ALND)
Ganott M.A. [82]2014USAFNAHistology Prospective442659.1%ND2008–2010
(SLNB/ALND)
Hayes B.D. [83]2011IrelandFNAHistology Retrospective1618653.4%ND2006–2009
(SLNB/ALND)
Schiettecatte A. [36]2011BelgiumFNAHistology Retrospective1476745.6%56ND
(SLNB/ALND)
Luparia A. [39]2010ItalyFNAHistology Retrospective42717039.8%60.92005–2008FNA was not performed for all suspicious axillary US
(SLNB/ALND)
Tahir M. [84]2008UKFNAHistology Prospective381744.7%56.72005–2006
(SLNB/ALND)
Cowher M.S. [41]2008USAFNAHistology Retrospective1255745.6%61.32004–2005
(SLNB/ALND)
Moore A. [42]2008USAFNAHistologyRetrospective1125851.8%NDNDOnly high risk of metastases
(SLNB/ALND)
Davis J.T. [45]2006USAFNAHistology Prospective372259.5%ND2004–2005Only high risk of metastases
(SLNB/ALND)
Popli M.B. [47]2006IndiaFNAHistology Prospective302273.3%NDND
(SLNB/ALND)
Podkrajsek M. [48]2005SloveniaFNAHistologyRetrospective1656539.4%562001–2003
(SLNB/ALND)
Deurloo E.E. [50]2003The NetherlandsFNAHistology Prospective26812145.1%561999–2001
(SLNB/ALND)
Sapino A. [52]2003ItalyFNAHistology Prospective2988829.5%ND2000
(SLNB/ALND)
TOTAL 2404101342.1%49.9
ALND: Axillary Lymph Nodes Dissection; SLNB: Sentinel Lymph Node Biopsy; CNB: Core Needle Biopsy; FNA: Fine Needle Aspiration; DWI: Diffusion Weighted Imaging; IV: Intravenous injection; MRI: Magnetic Resonance Imaging; CT: Computed Tomography; FDG: Fluorodeoxyglucose; PET: Positron Emission Tomography; USPIO: Ultrasmall Superparamagnetic Iron Oxide; US: Ultrasonography; N: Number of patients; ND: Not Determined; UK: United Kingdom; USA: United States of America.
Table 2. Summary estimates of sensitivity, specificity, diagnostic odds ratio, and their 95% confidence intervals of US, MRI, and FDG PET.
Table 2. Summary estimates of sensitivity, specificity, diagnostic odds ratio, and their 95% confidence intervals of US, MRI, and FDG PET.
Imaging TechniqueN StudiesSensitivityI2SpecificityI2DOR
US300.55 (0.49, 0.62)90.010.99 (0.97, 1.00)95.06112 (39, 320)
US grayscale240.63 (0.56, 0.69)88.860.88 (0.82, 0.92)93.9112 (8, 18)
US + FNA|CNB200.51 (0.43, 0.59)88.441.00 (0.99, 1.00)94.19752 (98, 5765)
FNA140.78 (0.73, 0.83)55.400.99 (0.96, 1.00)48.73560 (91, 3451)
MRI100.83 (0.72, 0.91)75.810.85 (0.72, 0.92)93.0028 (16, 51)
MRI without DWI70.81 (0.49, 0.95)89.170.84 (0.74, 0.91)89.0422 (7, 72)
MRI with DWI40.78 (0.60, 0.89)79.350.90 (0.82, 0.95)67.0733 (17, 65)
DWI alone50.74 (0.50, 0.89)83.540.78 (0.51, 0.92)93.6310 (5, 19)
PET FDG240.49 (0.39, 0.59)87.030.94 (0.91, 0.96)73.9815 (8, 26)
PET FDG without CT90.44 (0.28, 0.62)90.900.95 (0.91, 0.97)014 (5, 44)
PET FDG with CT150.51 (0.40, 0.63)86.040.93 (0.89, 0.96)79.5114 (8, 27)
CNB: Core Needle Biopsy; CT: Computed Tomography; DOR: Diagnostic Odds Ratio; DWI: Diffusion Weighed Imaging; FDG: Fluorodeoxyglucose; FNA: Fine Needle Aspiration; MRI: Magnetic Resonance Imaging; PET: Positron Emission Tomography; US: Ultrasonography. The diagnostic odd ratio (DOR) values obtained with different combinations of sensitivity and specificity could be used as a single summary measure. It was defined as the ratio of odds of positivity in disease relative to non-diseased. The DOR value ranges from 0 to infinity, and a higher value signifies better diagnostic performance. A value of 1 indicates that a test cannot distinguish between patients with or without the disease and values of <1 introduce more FN results among the diseased [22]. Confidence intervals consider the heterogeneity beyond chance between studies (random effects models). The impact of unobserved heterogeneity is traditionally assessed statistically using the quantity I2. It describes the percentage of total variation across studies that is attributable to the heterogeneity rather than chance [22]. Magnetic resonance imaging (MRI) had a significantly higher sensitivity than other imaging modalities, whereas Ultrasonography (US) had a significantly higher specificity than MRI and to a lesser extent than fluorodeoxyglucose positron emission tomography (PET). DOR estimated for US was significantly greater than those of MRI, which in turn was significantly greater than those of FDG PET. Further analysis revealed that for all imaging modality, US + fine needle aspiration (FNA) or core needle biopsy (CNB) had the highest DOR value. For MRI studies, MRI with diffusion weighted imaging (DWI) had the highest DOR value and for PET studies. PET with or without computed tomography (CT) had the same DOR value.
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Le Boulc’h, M.; Gilhodes, J.; Steinmeyer, Z.; Molière, S.; Mathelin, C. Pretherapeutic Imaging for Axillary Staging in Breast Cancer: A Systematic Review and Meta-Analysis of Ultrasound, MRI and FDG PET. J. Clin. Med. 2021, 10, 1543. https://doi.org/10.3390/jcm10071543

AMA Style

Le Boulc’h M, Gilhodes J, Steinmeyer Z, Molière S, Mathelin C. Pretherapeutic Imaging for Axillary Staging in Breast Cancer: A Systematic Review and Meta-Analysis of Ultrasound, MRI and FDG PET. Journal of Clinical Medicine. 2021; 10(7):1543. https://doi.org/10.3390/jcm10071543

Chicago/Turabian Style

Le Boulc’h, Morwenn, Julia Gilhodes, Zara Steinmeyer, Sébastien Molière, and Carole Mathelin. 2021. "Pretherapeutic Imaging for Axillary Staging in Breast Cancer: A Systematic Review and Meta-Analysis of Ultrasound, MRI and FDG PET" Journal of Clinical Medicine 10, no. 7: 1543. https://doi.org/10.3390/jcm10071543

APA Style

Le Boulc’h, M., Gilhodes, J., Steinmeyer, Z., Molière, S., & Mathelin, C. (2021). Pretherapeutic Imaging for Axillary Staging in Breast Cancer: A Systematic Review and Meta-Analysis of Ultrasound, MRI and FDG PET. Journal of Clinical Medicine, 10(7), 1543. https://doi.org/10.3390/jcm10071543

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