Neoadjuvant chemotherapy is an essential therapeutic approach for breast cancer patients, with the goal of improving pathological complete response rate (pCR) by decreasing staging and evaluating treatment response for prognostic purposes. Proliferation index estimated by Ki 67 has a significant impact on the tumour prognosis with cut off value 30%. However, data is still insufficient about the predictive cut-off value for pCR after neoadjuvant chemotherapy. The objective of this study is to evaluate the pathologic response after neoadjuvant chemotherapy in breast cancer patients, to examine the impact of Ki67 index on the rate of pathologic response with estimation of the proper predictive cut off value. We also studied the correlation of pCR rate with different prognostic histopathological parameters. Methods: The study included 84 cases of breast cancer patients received neoadjuvant chemotherapy. Baseline Ki67 immunohistochemical expression was evaluated. Results: 25% of the patients achieved pCR. The optimal cutoff point for Ki67 is 25%. There is a significant correlation between pCR and tumour infiltrating lymphocytes (TILS), T stage before therapy, lymph node metastasis and postmenopausal state. Linear regression analysis showed that Ki67 and TILs were associated with an increased rate of pCR after neoadjuvant therapy with a high significant correlation. Conclusion: In breast cancer patients, Ki67 expression with a cutoff threshold of 25% could be used to predict the probability of achieving a complete response to neoadjuvant therapy. TILs are strongly associated with pCR.
Keywords: Breast cancer, pCR, Ki67, neoadjuvant therapy, IHC, TILs.
2. chemotherapy treatment are not the same in every
patient. Individual differences in chemotherapy
response are not taken into account because standard
treatment guidelines are based on data from a large
sample size (Mukai et al., 2020).
Proliferation is the key driver of the prognostic
performance of the genomic tests that have been
developed to add prognostic information to
clinicopathological models and have a role in the
decision-making process (Wirapati et al., 2008).
Similarly, in addition to the traditional
histopathological variables, the assessment of
proliferation is one of the most important
parameters in making treatment decisions in patients
with breast cancer (Hayes, 2012).
Neoadjuvant chemotherapy is an essential therapeutic
approach for patients with breast cancer, with the goal
of improving pathological complete response (pCR)
rate by decreasing staging and evaluating treatment
response for prognostic purposes (Early Breast Cancer
Trialists’ Collaborative Group EBCTCG, 2018). In
patients with breast carcinoma, Ki67 LI
immunohistochemistry has recently been studied as a
potential predictive and prognostic biomarker in
attaining pCR after neoadjuvant chemotherapy (Lee
et al., 2013).
The International Ki67 in Breast Cancer Working
Group concluded that there is insufficient evidence
about Ki67 baseline prediction of chemotherapy
benefit (Nielsen et al., 2021).
Our study aimed to evaluate the cutoff predictive value
of baseline Ki67 for pCR after neoadjuvant
chemotherapy in patients with breast cancer and
correlate different prognostic clinicopathologic
parameters with the rate of pathologic response.
Material and method
Specimen collection
This cohort retrospective study was conducted on 84
cases of invasive mammary carcinoma that were
diagnosed on core biopsy specimens at the pathology
laboratory of Ain Shams University hospital and then
received neoadjuvant chemotherapy at the oncology
department of Ain Shams University. The protocol of
neoadjuvant chemotherapy was three or four cycles of
fluorouracil (500 mg/m2/21days), epirubicin (100 mg/
m2/21days) and cyclophosphamide (500 mg/m2/
21days). Thereafter, three to four cycles of docetaxel
(75–100 mg/m2/21days) were given. This was
followed by surgery either wide local excision,
simple, or radical mastectomy. All cases were
recruited in the period between 2017 and 2021.
Informed consent was obtained from all patients,
and the study was ethically approved by the research
ethical committee of Ain Shams University Hospital in
accordance with the 1964 Helsinki Declaration and its
later amendments.
Clinicopathological Features Evaluation
All patients’ data regarding age, menopausal state, and
imaging results for size of mass, laterality, and focality
were collected from patients’ medical records. Clinical
T (cT) was estimated according to the imaging results
and categorized according to the guidelines of AJCC
cancer staging manual (Hortobagyi et al., 2017).
Archival hematoxylin and eosin slides as well as
immunohistochemically stained slides for estrogen
(ER), progesterone (PR), Her2neu, and Ki67 were
retrieved. Examination was performed for
confirmation of the diagnosis, histopathologic type
of invasive component, the presence of ductal
carcinoma in situ (DCIS), and lymphovascular
invasion. All parameters were re-evaluated according
to the recent guidelines of WHO classification of
tumors of the breast (Rakha et al., 2019) and
(Fitzgibbons and Connolly, 2021).
Tumor-infiltrating lymphocyte (TILs) were classified
into low (<10%), intermediate (10-50%), and high
(more than 50%) groups. They identified a hotspot
within the tumor using a low-power field and the area
% of lymphocytes and plasma cells in both stromal and
intratumoral portions using a medium-power field
(×100) (Fujimoto et al., 2019). Nodal status either
positive or negative for metastatic deposits was
evaluated through core biopsy examination of any
enlarged suspicious axillary lymph node.
Immunohistochemistry
Immunohistochemistry was performed in cases when
immunohistochemical slides were unavailable, on the
core biopsy before therapy. Sections with a thickness of
4 μm were cut from paraffin blocks containing
formalin-fixed tumor tissue. The slides were stained
with the primary antibody (rabbit monoclonal anti
Ki67 human clone 30–09 Ventana Medical Systems)
utilizing a fully automated Benchmark Staining System
(Ventana Medical Systems, Oro Valley, Arizona,
USA).
Allred score was performed for ER and PR
immunostains considering the cutoff value between
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3. negative expression and positive of 3/8. Her2neu score
was considered negative for scores 0 and 1. Positive
her2neu is considered in score 3. Cases with score 2
were re-evaluated with silver in-situ hybridization
(Fitzgibbons and Connolly, 2021)
Ki67 scoring system was performed according to the
Recommendations for Ki67 assessment in breast
cancer from the International Ki67 in Breast Cancer
Working Group (Dowsett et al., 2011). At least 3 high-
power (×40 objective) fields were selected to represent
the spectrum of staining seen on initial overview of the
whole section. Only nuclear staining is considered
positive. Staining intensity is not relevant. Scoring
involved the counting of at least 500–1000
malignant invasive cells (cases with small areas
malignant cells were excluded). Then the number of
positive nuclei was divided by the total number to
obtain overall score.
Molecular subtypes were then categorized into four
groups as follows: luminal A for ER+ and/or PR+,
HER2−, and low Ki67 tumors; luminal B for ER+ and/
or PR+ and HER2+ or ER+ and/or PR+, Her2−, and
high Ki67 tumors; Her2 enriched for ER−, PR−, and
Her2+ tumors; and TNBC negative for ER, PR, and
Her2 tumors (Hortobagyi et al., 2017).
Evaluation of pCR
Identification of pCR was confirmed upon
examination of the corresponding surgical specimens
of the 84 cases. It was defined by complete absence of
any invasive tumor cells from breast tissue as well as
regional lymph nodes regardless of the presence of
DCIS (Sahoo and Leste, 2019).
Statistical analysis
All data were processed by IBM SPSS statistics (V.
26.0, IBM Corp., USA, 2019) (SPSS Inc., Chicago,
Illinois, USA). Date were expressed as median and
percentiles for quantitative nonparametric measures.
Comparison between two independent groups for
nonparametric data was done using Wilcoxon rank-
sum test. The relationship of different
clinicopathologic parameter and pCR was analyzed
by the χ2
test or Fisher’s exact test. Receiver operating
characteristic (ROC) curve analysis was performed to
assess the predictive value for Ki67 expression.
Logistic stepwise multi-regression analysis was used
to search for a panel of the most independent
parameters that can predict the pCR. The
probability of error at 0.05 was considered
significant, whereas at 0.01 and 0.001 are highly
significant.
Results
Clinicopathologic features of invasive mammary
carcinoma cases
A total of 84 cases of breast carcinoma receiving
neoadjuvant therapy were included in the study. Of
84 cases, 21 (25%) showed pCR. Partial response (PR)
and no response (NR) were reported in 46/84 (54.8%)
and 17/84 cases (20.2%), respectively. pCR in, luminal
A, luminal B, Her2neu-enriched, and triple-negative
phenotypes were of 0/16 (0%), 7/27 (25.9%), 12/35
(34.3%), and 2/6 (33.3%) cases, respectively
The median age for all cases was 52 years, with the
range from 28 to 83 years. The median ages for pCR,
PR, and NR were 60, 48, and 55 years, respectively.
The median size of the mass estimated by
ultrasonography at the time of presentation was
2.25 cm with ranges from 1 to 5.5 cm. The median
size of masses in cases with pCR, PR, and NR were 2,
2.5, and 3 cm, respectively.
The most common type of mammary carcinoma was
invasive ductal carcinoma, NST, representing 95.2% of
all cases. Hormone-positive tumors including luminal
A and luminal B together represented 43 (51.2%) of 84
cases. Most cases represented with T1 and T2 tumor
stage at the time of diagnosis, being 63.1 and 48.8%,
respectively. Of 84 cases of invasive mammary
carcinoma, 12 cases (14.2%) showed positive nodal
metastatic deposits. Tumor-infiltrating lymphocytes
were low, intermediate, and high in 54.8, 26.2, and
19%, respectively. All clinicopathologic characteristics
are listed in Table 1.
Predictive value of Ki67 in invasive mammary
carcinoma cases
The predictive value of Ki67 was estimated using ROC
curve. This study showed a predictivevalue of 25% for all
cases, with a sensitivity of81%and a specificity of96.8%.
The area under the curve was 0.858 (P<0.001, 95CI:
0.775-0.942). Of 84 cases, 26 have Ki67 percentages
above 25%, the predictive value for Ki67 (Fig. 1).
Estimation of the predictive value using ROC curve for
each molecular subtype shows percentages of 22% in
Her2-enriched and 25% in luminal B subtypes (Fig. 2).
No complete response was detected in patients with
luminal A molecular subtype. Only 6 cases showed
triple negativity, which were insufficient for evaluation
using ROC curve.
The association between predictive clinicopathologic
factors and pCR
No significant association was found between pCR and
median of both age and size of nodule as revealed by
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4. Wilcoxon rank sum test. However, comparing the
menopausal state and T stage regarding their
association with pathologic response revealed a
significantly higher rate of pCR in postmenopausal
status as well as low pathologic tumor stages (pT)
(P=0.014 and 0.005, respectively). No significant
association was found between pCR and tumor
laterality, focality, type, identified DCIS,
lymphovascular invasion, and molecular subtype. On
the contrary, pCR showed a significantly higher rate of
occurrence in association with higher Ki67 values and
TILs (<0.0001, each) and negative nodal status
(P=0.003). The association between predictive
clinicopathologic factors and pCR is shown in
Table 2.
Predicting factors of complete pathologic response
Among all of the studied cases, logistic stepwise multi-
regression analysis revealed that Ki67 value higher than
25% and high tumor-infiltrating lymphocytes were the
most independent predictive factors for pCR (Table 3).
Regarding Her2-enriched cases and luminal B
subtypes, Ki67 value and T stage before therapy for
the earlier and node stage and cT for the latter were the
most independent predictive factors for pCR. Only
model 3 of stepwise multi-regression for both subtypes
is displayed in Table 4.
Discussion
As has long been acknowledged, pCR after
neoadjuvant chemotherapy is well established as a
surrogate for beneficial long-term outcome (Wang-
Lopez et al., 2015; Pennisi et al., 2016). Neoadjuvant
chemotherapy was previously restricted to locally
advanced tumor or inflammatory breast carcinoma,
but now it is applied more extensively, as it has
several benefits, such as (1) converting an
unresectable, inoperable, locally advanced tumor to
an operable one; (2) downstaging operable tumors
can increase the likelihood of breast conservation
surgery; (3) providing prognostic information and
allowing for treatment changes or discontinuation in
the case of unresponsive tumors; and (4) providing an
ideal research setting for studying biomarkers and
intermediate end points (Pennisi et al., 2016).
In the current retrospective cohort study, the
pathologic response rate of 84 cases of breast
carcinoma that received neoadjuvant chemotherapy
was evaluated. We reported pCR in 25% of all the
cases.
Grover et al. (2021) and Rapoport et al. (2019) reported
33.8 and 45% pCR rates of the studied cases,
respectively. This disparity could be attributed to the
different proportion of each molecular subtype in
Table 1 Clinicopathologic parameters of the studied 84 cases
Clinicopathologic parameter (number of
cases=84)
Number of cases
(%)
Age, years
<50 36 (42.9)
≥50 48 (57.1)
Menopausal state
Postmenopausal 55(65.5)
Premenopausal 29 (34.5)
Laterality
Right side 38 (45.2)
Left side 46 (54.8)
Focality
Unifocal 77 (91.7)
multiple 7 (8.3)
Tumor type
IDC 80 (95.2)
ILC 3(3.6)
others 1 (1.2)
DCIS
Not identified 53 (63)
identified 31 (37)
Lymphovascular invasion
Not identified 75 (89.3)
identified 9 (10.7)
Tumor grade
Grade 1 4 (4.8)
Grade 2 68 (81%)
Grade 3 12 (14.4)
Molecular subtype
Luminal A 16 (19)
Luminal B 27 (32.1)
Her2 enriched 35 (41.7)
Triple negative 6 (7.1)
Ki67 value
<25 58 (69)
≥25 26 (31)
Tumor-infiltrating lymphocytes
low 46 (54.8)
Intermediate 22 (26.2)
high 16 (19)
cT stage at the time of presentation
T1 35 (20.8)
T2 41 (48.8)
T3 8 (16.7)
Nodal status at the time of presentation
Negative 72 (85.7)
Positive 12 (14.3)
Response to therapy
pCR 21 (25)
PR 46 (54.8)
NR 17 (20.2)
cT, clinical tumor stage; DCIS, ductal carcinoma in situ; IDC,
invasive duct carcinoma; ILC, invasive lobular carcinoma; LVI,
lymphovascular invasion; NR, no response; pCR, pathologic
complete response; PR, partial response.
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5. different studies, inequal number of chemotherapy
cycles, or different treatment regimens.
Our study reported a pCR rate of 25.9% in the luminal
B cases, 34.3% in Her2-enriched cases, and 33.3% in
Fig. 2
ROC curve analysis showing the predictive performance of Ki67 for discriminating pCR from those without among all studied groups.
Fig. 1
Breast carcinoma cases showing Ki67 immunohistochemical expression. (a, b) Low KI67 proliferative rate (×200 and ×400, respectively). (c, d)
High Ki67 proliferative rate (×200 and ×400, respectively).
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6. triple-negative (TN) cases. None of the luminal A cases
achieved pCR. The definition of pCR lacks uniformity,
and the prediction of outcome may vary according to
different biological subtypes (Pennisi et al., 2016).
Our results demonstrated that pCR is lower in luminal
B than in Her2-enriched and TN subtype. This is in
concordance with Grover et al. (2021) who reported
lower pCR in HR+ (13.8%) compared with TN
(45.5%) or HER2 enriched (52%). Another study
revealed that pCR was significantly elevated in the
HER2-enriched and TN subtypes (58.2% and 47.4%,
respectively) in relation to the luminal subtypes
(27.8%) (Li et al., 2016).
Omranipour et al. (2020) reported a pCR rate of 14.6%
in patients with ER+ / HER2− breast cancer which is
lower than our result. In the German population, von
Minckwitz et al. (2012) reported a pCR rate of 8.9 %
and 15.4% in luminal A and luminal B subtypes,
respectively.
Compared with the previous studies, the ACOSOG
Z1071 multicenter clinical trial with 317 cases reported
Table 2 Association between different clinicopathologic parameters and pathologic complete response
Clinicopathologic parameter (N=84) pCR, N (%) PR, N (%) NR, N (%) *χ2
Sig
Menopausal state
Postmenopausal (55) 16 (29.1) 24 (43.6) 15 (27.3) 8.563 0.014 (S)
Premenopausal (29) 5 (3.4) 22 (75.9) 2 (6.9)
Laterality
Right side (38) 16 (42.1) 21 (55.3) 9 (23.7) 5.456 0.065
Left side (46) 5 (10.9) 25 (54.3) 8 (17.4)
Focality
Unifocal (77) 21 (27.2) 49 (63.6) 7 (9.1) 6.308 0.177
Multiple (7) 0 7 (100) 0
Tumor type
IDC (80) 21 (26.3) 43 (53.8) 16 (20) 6.487 0.166
ILC (3) 0 3 (100) 0
Others (1) 0 0 1 (100)
DCIS
Not identified (52) 16 (30.8) 23 (44.2) 13 (25) 6.441 0.169
Identified (31) 5 (16.1) 22 (71) 4 (12.9)
Lymphovascular invasion
Not identified (75) 21 (28) 38 (50.7) 16 (21.3) 5.079 0.079
Identified (9) 0 8 (88.9) 1 (11.1)
Tumor grade
Grade 1/2 (72) 21 (29.2) 37 (51.4) 14 (19.4) 4.704 0.095
Grade 3 (12) 0 9 (75) 3 (25)
Molecular subtype
Luminal A (16) 0 12 (75) 4 (25) 9.867 0.13
Luminal B (27) 7 (25.9) 12 (44.4) 8 (29.6)
Her2 enriched (35) 12 (34.3) 19 (54.3) 4 (11.4)
Triple negative (6) 2 (33.3) 1 (16.7) 3 (50)
Ki67 value
<25 (58) 3 (5.2) 40 (69) 24 (41.3) 25.769 0.0001 (HS)
≥25 (26) 18 (69.2) 6 (23.1) 2 (7.7)
TILs
Low (46) 4 (8.7) 28 (60.9) 14 (30.4) 30.23 0.0001 (HS)
Intermediate (22) 5 (22.7) 14 (63.6) 3 (13.6)
High (16) 12 (75) 4 (25) 0
T stage at the time of presentation
T1 (35) 14 (40) 13 (37.1) 8 (22.9) 15.038 0.005 (HS)
T2 (41) 7 (17.1) 29 (70.7) 5 (12.2)
T3 (8) 0 4 (50) 4 (50)
Nodal status at the time of presentation
Negative (72) 21 (29.2) 34 (47.2) 17 (23.6) 11.565 0.003 (S)
Positive (12) 0 12 (100) 0
DCIS, ductal carcinoma in situ; IDC, invasive duct carcinoma; ILC, invasive lobular carcinoma; pCR, pathologic complete response; PR,
partial response; NR, no response; TILs, tumor-infiltrating lymphocytes. *χ2
test.
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7. a reduced rate of pCR (11.4%) (Boughey et al., 2014).
Moreover, another study reported a 9% pCR rate
(Esserman et al., 2012), the same rate which was
achieved by Caudle et al. (2012) in patients with
HR+ / HER2− subtype. A much lower rate
(5% and 4.3%, respectively) was also reported in
HR+ / HER2− subtype (Lips et al., 2012; Petruolo
et al., 2017).
Table 3 Logistic stepwise multi-regression analysis for the most predictive factor for pathologic complete response in all the 84
studied cases
Predictive clinicopathologic parameters
Model 1
Item Reg. Coef. t P Sig. F-ratio P Sig.
(Constant) 0.062 0.25 0.803 NS
Age 0 0.177 0.86 NS
Ki67 0.66 8.755 0 HS
Grade −0.02 −0.324 0.747 NS
Focality 0.016 0.228 0.821 NS
Type −0.105 −1.131 0.262 NS
DCIS 0.002 0.043 0.966 NS
LVI −0.134 −1.474 0.145 NS
Luminal B 0.011 0.132 0.895 NS
Her2 enriched 0.252 3.75 0 HS
Triple negative −0.01 −0.089 0.929 NS
TIL 0.192 5.065 0 HS
Node status −0.171 −1.915 0.06 NS
cT −0.123 −2.659 0.01 S
24.195 0 HS
Model 2
Item Reg. Coef. t P Sig. F-ratio P Sig.
(Constant) −0.038 −0.447 0.656 NS
Ki67 0.613 10.083 0 HS
MS3 0.291 5.508 0 HS
TIL 0.211 6.615 0 HS
Node status −0.252 −3.58 0.001 HS
cT. ?0.151 ? 4.01 0 HS
65.075 0 NS
Model 3
Item Reg. Coef. t P Sig. F-ratio P Sig.
(Constant) -0.16 -2.634 0.01 S
Ki67 0.723 10.739 0 HS
TIL 0.15 4.166 0 HS
99.225 0 HS
cT, clinical tumor stage; DCIS, ductal carcinoma in situ; HS, highly significant; IDC, invasive duct carcinoma; ILC, invasive lobular
carcinoma; LVI, lymphovascular invasion; Reg. Coef, regression coefficiency.
Table 4 Stepwise multi-regression analysis for the most predictive factor for pathologic complete response in Her2-enriched and
luminal B molecular subtypes (model 3)
Model 3 for Her2-enriched cases
Item Reg. Coef. t P Sig. F-ratio P Sig.
(Constant) 0.205 2.018 0.052 NS
Ki67 0.909 13.572 0 HS
cT. −0.083 −1.705 0.098 NS
127.622 0 HS
Model 3 for luminal B cases Reg. Coef t P Sig F-ratio
Item
Constant 1.192 5.894 0 HS
Node status −0.558 −3.934 0.001 HS
cT before therapy −0.423 −4.371 0 HS
13.278 0 HS
cT, clinical tumor stage; DCIS, ductal carcinoma in situ; HS, highly significant; IDC, invasive duct carcinoma; ILC, invasive lobular
carcinoma; LVI, lymphovascular invasion; Reg. Coef, regression coefficiency.
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8. A study was performed on patients with TNBC who
were divided into two groups according to the
chemotherapeutic agent. The pCR in both groups
was reported to be 41.8 and 50% (Gass et al., 2018).
Other studies reported a near pCR rate of 48%
(Jovanović et al., 2017; Georgy et al., 2021). These
results are higher than ours, and this discrepancy may
be owing to the limited number of TNBC in our study.
Oncologists can use predictive factors of chemotherapy
outcomes to determine whether neoadjuvant
chemotherapy is necessary. Because most
chemotherapy regimens have adverse side effects, it
is critical to avoid unneeded systemic chemotherapy
that causes other treatments to be delayed (Kim et al.,
2014). Many studies have reported that tumors with
more proliferative activity respond better to
chemotherapy and that Ki67 value can be used as a
predictive factor for a higher pCR rate (Yerushalmi
et al., 2010). Our study demonstrated that Ki67 is one
of the predictive factors of pathological response.
Calculation of the Ki67 cutoff value is a very important
step for accurate and meaningful results. The cutoff
value for Ki67 expression categorization in predicting
the response to neoadjuvant chemotherapy is
determined using ROC curve analysis. Because a
higher sensitivity is accompanied by a lower
specificity, and vice versa, there is always a trade-off
between sensitivity and specificity. The ideal cutoff
point was determined using ROC curve analysis, as it
had the largest sum of sensitivity and specificity (Kim
et al., 2014).
Using ROC curve analysis, we detected an optimal
cutoff point of 25% for Ki67 in all breast cancer cases.
This is agreeable with Kim et al., 2014, who reported
the same cutoff point using ROC curve (Kim et al.,
2014). Many other studies detected a cutoff value
ranging between 12 and 25% but without
explanation or depending on the median value
(Nishimura et al., 2010; Fasching et al., 2011; Li
et al., 2011).
We also reported a cutoff point of 22% and 25% for
Ki67 in Her2-enriched and luminal B subtypes,
respectively. Unfortunately, none of the luminal A
cases achieved pCR. Moreover, we had a limited
number of TNBC cases in our study, so ROC curve
analysis was not applicable.
In concordance with our results, Omranipour et al.
(2020) reported a 22.5% cutoff value of Ki67 in HR
+/HER? cases. Moreover, Kim et al. (2014) reported
that the 25% Ki67 expression cutoff value was useful for
predicting pCR, especially in the Her2-enriched
subgroup (P=0.019).
Arafah et al. (2021) reported a 30% cutoff value for
Ki67 in TNBC. A Ki67 value of more than 25% is
related to a higher mortality when compared with
lower expression rates (Petrelli et al., 2015).
Other predictive factors are reported by our study,
including TILs, T stage before therapy, lymph node
metastasis, and postmenopausal state. These factors
have a significant correlation with pCR. Many studies
reported a significant correlation between TILs and
pCR (Herrero-Vicent et al., 2017; El-Mahdy et al.,
2020).
It is recognized that high TIL tumors are significantly
and independently associated with pCR in breast
carcinoma treated with neoadjuvant chemotherapy
(Denkert et al., 2010). A meta-analysis of 13,100
patients across 23 studies reported that a high TIL
level is related to a significantly elevated pCR rate in
comparison with a low TIL level (Wang et al., 2016).
According to the subset analysis of the previous meta-
analysis, positive correlations between TILs and pCR
were consistently significant in TN and HER2-
enriched breast cancers. Similarly, marginal
significance between higher TILs level and elevated
pCR was found for the ER+ breast cancers (Mao et al.,
2014). These data may indicate that TILs are essential
to achieve pCR in chemotherapy treatment irrespective
of subtype.
In concordance with our results, Li et al. (2021)
reported a significant correlation between pCR and
tumor grade, TILs, and Ki67.
Our results showed a significant correlation between
pCR and absence of lymph node metastasis. This is in
concordance with Samiei et al. (2020) who reported
that pCR achieved after neoadjuvant therapy is
strongly associated with absence of lymph node
metastasis. These findings give information that may
be used in future clinical studies to determine if axillary
surgery can be safely avoided in these selected patients
when pathologic examination identifies a breast pCR.
Li et al. (2021) reported a significant correlation
between pCR and molecular subtype. Unfortunately,
we did not find any significance with this parameter.
We reported a significant correlation between pCR and
menopausal state and T stage of the tumor. Other
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