Bin Zhao1, Hong Zhao2, Jiaxin Zhao3. 1. The Second Affiliated Hospital and Yuying Children's Hospital, Wenzhou Medical University, 109 Xueyuan West Rd, Wenzhou, 325035, China. 2. The Cancer Center of the Fifth Affiliated Hospital, Sun Yat-Sen University, Zhuhai, China. 3. The Second Affiliated Hospital & Yuying Children's Hospital, Wenzhou Medical University, Wenzhou, China.
Abstract
BACKGROUND: Inhibitors targeting programmed cell death 1 (PD-1) and programmed death-ligand 1 (PD-L1) have unprecedented effects in cancer treatment. However, the objective response rates (ORRs), progression-free survival (PFS), and overall survival (OS) of PD-1/PD-L1 blockade monotherapy have not been systematically evaluated. METHODS: We searched Embase, PubMed, and Cochrane database from inception to July 2019 for prospective clinical trials on single-agent PD-1/PD-L1 antibodies (avelumab, atezolizumab, durvalumab, cemiplimab, pembrolizumab, and nivolumab) with information regarding ORR, PFS, and OS. RESULTS: Totally, 28,304 patients from 160 perspective trials were included. Overall, 4747 responses occurred in 22,165 patients treated with PD-1/PD-L1 monotherapy [ORR, 20.21%; 95% confidence interval (CI), 18.34-22.15%]. Compared with conventional therapy, PD-1/PD-L1 blockade immunotherapy was associated with more tumor responses (odds ratio, 1.98; 95% CI, 1.52-2.57) and better OS [hazard ratio (HR), 0.75; 95% CI, 0.67-0.83]. The ORRs varied significantly across cancer types and PD-L1 expression status. Line of treatment, clinical phase and drug target also impacted the response rates in some tumors. A total of 2313 of 9494 PD-L1 positive patients (ORR, 24.39%; 95% CI, 22.29-26.54%) and 456 of 4215 PD-L1 negative patients (ORR, 10.34%; 95% CI, 8.67-12.14%) achieved responses. For PD-L1 negative patients, the ORR (odds ratio, 0.92; 95% CI, 0.70-1.20) and PFS (HR, 1.15; 95% CI, 0.87-1.51) associated with immunotherapy and conventional treatment were similar. However, PD-1/PD-L1 blockade monotherapy decreased the risk of death in both PD-L1 positive (HR, 0.66; 95% CI, 0.60-0.72) and PD-L1 negative (HR, 0.86; 95% CI, 0.74-0.99) patients compared with conventional therapy. CONCLUSION: The efficacies associated with PD-1/PD-L1 monotherapy vary significantly across cancer types and PD-L1 expression. This comprehensive summary of clinical benefit from immunotherapy in cancer patients provides an important guide for clinicians.
BACKGROUND: Inhibitors targeting programmed cell death 1 (PD-1) and programmed death-ligand 1 (PD-L1) have unprecedented effects in cancer treatment. However, the objective response rates (ORRs), progression-free survival (PFS), and overall survival (OS) of PD-1/PD-L1 blockade monotherapy have not been systematically evaluated. METHODS: We searched Embase, PubMed, and Cochrane database from inception to July 2019 for prospective clinical trials on single-agent PD-1/PD-L1 antibodies (avelumab, atezolizumab, durvalumab, cemiplimab, pembrolizumab, and nivolumab) with information regarding ORR, PFS, and OS. RESULTS: Totally, 28,304 patients from 160 perspective trials were included. Overall, 4747 responses occurred in 22,165 patients treated with PD-1/PD-L1 monotherapy [ORR, 20.21%; 95% confidence interval (CI), 18.34-22.15%]. Compared with conventional therapy, PD-1/PD-L1 blockade immunotherapy was associated with more tumor responses (odds ratio, 1.98; 95% CI, 1.52-2.57) and better OS [hazard ratio (HR), 0.75; 95% CI, 0.67-0.83]. The ORRs varied significantly across cancer types and PD-L1 expression status. Line of treatment, clinical phase and drug target also impacted the response rates in some tumors. A total of 2313 of 9494 PD-L1 positive patients (ORR, 24.39%; 95% CI, 22.29-26.54%) and 456 of 4215 PD-L1 negative patients (ORR, 10.34%; 95% CI, 8.67-12.14%) achieved responses. For PD-L1 negative patients, the ORR (odds ratio, 0.92; 95% CI, 0.70-1.20) and PFS (HR, 1.15; 95% CI, 0.87-1.51) associated with immunotherapy and conventional treatment were similar. However, PD-1/PD-L1 blockade monotherapy decreased the risk of death in both PD-L1 positive (HR, 0.66; 95% CI, 0.60-0.72) and PD-L1 negative (HR, 0.86; 95% CI, 0.74-0.99) patients compared with conventional therapy. CONCLUSION: The efficacies associated with PD-1/PD-L1 monotherapy vary significantly across cancer types and PD-L1 expression. This comprehensive summary of clinical benefit from immunotherapy in cancer patients provides an important guide for clinicians.
Immune checkpoint blockade therapy targeting programmed cell death 1 (PD-1) and
programmed cell death ligand 1 (PD-L1) has revolutionized cancer treatment in the
past decade.[1] Currently, three PD-1 monoclonal antibodies (cemiplimab, nivolumab, and
pembrolizumab) and three PD-L1 inhibitors (atezolizumab, avelumab, and durvalumab)
are approved by the United States (US) Food and Drug Administration (FDA) for dozens
of indications. These PD-1/PD-L1 inhibitors statistically improved the overall
survival (OS) of cancer patients and have emerged as the standard therapy for
multiple malignancies.[1,2]
It should be acknowledged that, in many clinical trials, because it usually takes a
long time to obtain OS information, the efficacies of immunotherapy were represented
by the independently confirmed objective response rates (ORRs) evaluated based on
the standard guidelines such as Response Evaluation Criteria in Solid Tumor
(RECIST).Although immunotherapy has unprecedented effects on cancer treatment, only a fraction
of patients can benefit from it.[1,2] Currently, a major challenge for
immunotherapy is to find ideal biomarkers that can identify patients who are
susceptible to treatment and avoid serious toxicities and unnecessary costs for
non-responders. Previous studies have revealed that PD-L1 immunohistochemistry
(IHC), microsatellite instability (MSI), tumor mutational burden (TMB), T-cell
receptor clonality, T-cell infiltration levels, gene expression signatures and
peripheral blood biomarkers were associated with clinical response in immunotherapy.[3] Among them, PD-L1 expression was treated as biologically plausible biomarker
for the prediction of treatment response to immunotherapy. Currently, companion
PD-L1 expression diagnostic assays were granted by FDA for use in patients with lung
cancer, urothelial cancer, renal cell cancer, and melanoma.[4] In fact, only two biomarkers, namely PD-L1 and MSI, were approved for
PD-1/PD-L1 based immunotherapy.[1,3] However, it is unclear whether
PD-L1 expression status is robustly predictive of clinical benefit across diverse
human cancers, or outside of these specific clinical trial populations.Understanding of these issues may have important public health and clinical
implications given the significant increase in the application of immunotherapy is
expected in the future. Here, with accumulated evidence, we conducted a
comprehensive meta-analysis to assess the clinical efficacies of PD-1/PD-L1
monotherapy in published clinical trials. In addition, we investigated the role of
PD-L1 expression status as a predict biomarker, and quantified the potential
differences in the incidences of tumor response, progress-free survival (PFS), and
OS among a variety of cancer types and treatment strategies.
Methods
Search strategy and study selection
A comprehensive search of PubMed, Embase, and Cochrane databases from inception
to July 2019 was performed to identify prospective clinical trials with
PD-1/PD-L1 blockade monotherapy. The major search keywords and medical subject
headings used were: atezolizumab, avelumab, cemiplimab, durvalumab, nivolumab,
pembrolizumab, checkpoint inhibitors, PD-1, programmed cell death receptor 1,
PD-L1, programmed cell death 1 ligand 1, clinical trial, and phase. The
references of published studies and reviews were also examined for additional
eligible trials. All the authors independently carried out the initial search,
screened the title and abstract for potentially relevant studies, and identified
trials as included, excluded, and uncertain. For uncertain studies, the
full-texts were reviewed for the confirmation of eligibility. Any discrepancy
was resolved by discussion and unanimous agreement.Both inclusion and exclusion criteria were pre-specified. To be eligible, trials
had to meet the following criteria: (a) population: prospective phase I, II, or
III trials recruiting adult subjects (>18 years old) with cancer; for
patients with reported PD-L1 expression status, the cutoff values for PD-L1
positivity/negativity and PD-L1 status were extracted from the original studies
directly; (b) intervention: patients were treated with PD-1/PD-L1 inhibitor
(avelumab, atezolizumab, cemiplimab, durvalumab, nivolumab, and pembrolizumab)
monotherapy irrespective of dosage and duration in at least one arm; (c)
outcomes: available information on ORR, PFS and OS. Trials published online
before print were included, but meeting abstracts were excluded. In addition,
studies were excluded if they were retrospective trials. Other publications,
including review articles, basic research, case reports, letters, comments,
correspondences, editorials, and cost effectiveness analyses were also excluded.
When multiple publications of the same trial occurred, only the most recent,
and/or most complete, reporting articles was selected. Any discrepancies were
settled by discussion until unanimous agreement was reached. All the included
articles represented unique studies.
Data extraction
For each study, the following items were exacted: name of study, first author and
year of publication, clinical phase, line of treatment, cancer type, PD-L1
detection assay, name of the PD-1 or PD-L1 inhibitor, dosing schedule, number of
patients recruited, median progression-free survival (PFS), median OS, median
treatment duration (range), median follow up (range), number of patients for
efficacy analysis, median time to response (range), median duration of response
(range), number of complete response (CR), number of partial response (PR),
number of objective response (OR), number of PD-L1 positive patients for
efficacy analysis, number of CR in PD-L1 positive patients, number of PR in
PD-L1 positive patients, number of OR in PD-L1 positive patients, number of
PD-L1 negative patients for efficacy analysis, number of CR in PD-L1 negative
patients, number of PR in PD-L1 negative patients, and number of OR in PD-L1
negative patients. All authors independently carried out the data
extraction.
Risk of bias
To evaluate the methodological quality of eligible studies, the seven-item Jadad
ranking system including randomization, double blinding, and the flow of
recruited subjects (withdrawals and dropouts) were applied.[5] As previously described, a controlled study could achieve a Jadad score
of between 5 (optimal methodological quality) and 0 (poor methodological
quality). Any disagreements were resolved by discussion and unanimous
agreement.
Statistical analysis
The primary purpose of this study was to investigate the overall incidence and
corresponding 95% confidence interval (CI) of objective response rates (ORRs) in
cancer patients treated by PD-1/PD-L1 inhibitors. ORR referred to the percentage
of patients whose tumor shrunk (partial response) or disappeared (complete
response) after treatment. To calculate the incidence, the number of subjects
for efficacy analysis and the number of responses were extracted from every
study. We compared the tumor response in PD-L1 positive patients and PD-L1
negative patients by calculating the odds ratios in each trial. To investigate
PFS and OS, we derived the hazard ratios (HRs) and their 95% CI from each trial,
separately for PD-L1 positive patients and PD-L1 negative patients.Statistical heterogeneity across studies was evaluated by Cochrane’s Q statistic.
The I2 statistic was calculated to assess the extent
of inconsistency contributable to the heterogeneity across different studies.[6] The assumption of homogeneity was considered invalid for
I2 > 25% and p < 0.05.
Summary ORs and incidences were calculated using fixed-effects model or
random-effects model depending on the heterogeneity. The heterogeneities of PFS
and OS between PD-L1 positive patients and PD-L1 negative patients were assessed
by an interaction test and expressed as P for interaction.Potential publication bias was assessed by visual inspection of a funnel plot,
and also evaluated using the tests of Egger et al. and Begg
et al.[7,8] Two-sided
p < 0.05 were considered statistically significant.
Results
Search results
We identified a total of 11,130 potentially relevant publications from the
initial search, including 5125 from PubMed, 5362 from Embase, and 643 from
Cochrane; 4893 records were removed due to duplication. After screening of the
titles and abstracts, 5885 articles did not meet our inclusion criteria.
Additional eligibility assessing the full-texts of the remaining studies, 160
prospective clinical trials involving 28,304 cancer patients were included in
the final analysis.[9-168] Among these patients,
22,165 subjects were treated by PD-1/PD-L1 inhibitors, the rest 6139 patients
were included in the control arms. A flow chart presenting the study selection
is shown in Figure
1.
Figure 1.
Flow-chart diagram of selected trials included in this study.
Flow-chart diagram of selected trials included in this study.
Study characteristics
The baseline characteristics of the eligible trials included in this study were
demonstrated in Supplemental Table S1. The median treatment duration of
PD-1/PD-L1 inhibitors lasted between 1.4 months and 11.9 months, and median
follow up ranged from 2.6 months to 49.9 months. The median time to response in
immunotherapy is relatively stable, with most response occurred within 3 months
after treatment (range, 1.4 months to 4.5 months). In some studies, several
different types of tumors or different clinical phases were investigated and
reported in one article. Accordingly, 185 arms of PD-1/PD-L1 blockade
immunotherapy arms were found in the 160 eligible records. Among these 185 arms,
the agents administrated were nivolumab (n = 68, 6403
patients), pembrolizumab (67, 8124), atezolizumab (22, 4094), avelumab (17,
1785), durvalumab (9, 1674), and cemiplimab (2, 85). The responses to PD-1/PD-L1
inhibitors were examined in lung cancer (n = 40, 7265
patients), melanoma (21, 3501), urothelial cancer (14, 3443), gastric or
gastro-esophageal junction cancer (10, 1265), lymphoma (10, 757), head and neck
cancer (9, 1166), renal cancer (9, 915), breast cancer (7, 652), ovarian cancer
(6, 573), mesothelioma (5, 200), sarcoma (5, 154), and other types of cancers
(49, 2274).Of all the eligible 185 arms, 108 arms (58.38%) revealed or partly revealed the
responses to immunotherapy based on PD-L1 expression status (Supplemental Table S2). In most cases, the cutoff value for
PD-L1 positivity or negativity was that PD-L1 stained cells accounted for 1% of
cancer cells, or cancer and immune cells, assayed by immunohistochemistry
staining techniques. However, the thresholds were 5% in 17 studies,[10,17-20,24,26,35,40,47,56,61,69,78,88,96,168] 10% in 3
articles,[31,127,159] 25% in 5 studies,[43-45,48,49] and 50% in 3
records.[121,131,155] In addition, only PD-L1 positive cancer patients were
recruited in 17 studies.[19,24,50,110,123,125,128,132,136,137,145,146,152,155,158,161,164] In the present study, we extracted the PD-L1
expression status directly from the original records.
ORR
Overall, the eligible 160 studies recorded 4747 responses to immunotherapy. The
summary ORRs in patients receiving PD-1/PD-L1 inhibitors was 20.21% (95% CI,
18.34–22.15%). 26 types of tumors were investigated in more than two trials.
Next, we calculated the pooled ORRs in these cancers. The incidences of
responses, in decreasing order, were shown in Figure 2. As expected, the overall
response rates varied significantly by tumor types, with the highest anti-cancer
activities were reported in carcinogen-induced tumors or malignancies driven by
viral infections, such as classic Hodgkin’s lymphoma, desmoplastic melanoma, and
the virally induced Merkel cell carcinoma of the skin. The second subgroup of
tumors with relatively high ORRs were cancer with a relative high immunogenicity,[1] such as melanoma and lung cancer, liver cancer and renal cancer. Some
tumors, such as prostate cancer, colorectal cancer, and ovarian cancer, only had
limited T-cell infiltration, and were considered immune excluded.[12] Accordingly, the response rates in these tumors were relatively low.
Figure 2.
The pooled ORRs in 26 different types of cancers. Vertical line indicates
the overall mean incidence of tumor responses calculated from all 22,165
patients in 160 eligible trials.
The pooled ORRs in 26 different types of cancers. Vertical line indicates
the overall mean incidence of tumor responses calculated from all 22,165
patients in 160 eligible trials.CI, confidence interval; GC/GEJC, gastric or gastro-esophageal junction
cancer; ORR, objective response rate.A total of 862 complete responses were observed in 19,418 cancer patients, and
the overall incidence of CRs was 3.85% (95% CI, 3.06–4.73%). Moreover, the
incidences of CR in 25 tumors are listed in Supplemental Figure S1. It was noted that the incidences were
relatively low in most types of tumors. In addition, 3400 partial responses were
reported and the pooled incidence of PR was 15.83% (95% CI, 14.36–17.35%). The
incidences of partial responses from 25 tumors were presented in Supplemental Figure S2. The most frequent PRs were found in
cutaneous cancer, Merkel cell cancer, and lymphoma.
Impact of clinicopathological characteristics on ORR
We further conducted the efficacy analysis based on PD-L1 expression status
(Figure 3). Among
9494 patients that were PD-L1 positive, 2313 responses were observed (ORR,
24.39%; 95% CI, 22.29–26.54%); whereas in 4215 PD-L1 negative patients, 456
responses were recorded (ORR, 10.34%; 95% CI, 8.67–12.14%). Overall, there was a
significant difference in ORRs between PD-L1 positive patients and PD-L1
negative patients (odds ratio, 2.65; 95% CI, 2.34–3.00;
p < 0.001). We further examined the impact of PD-L1
expression status on tumor responses in 12 types of cancers (Figure 3). The magnitudes
of efficacy of immunotherapy were greater for PD-L1 positive patients than for
PD-L1 negative patients in all types of tumors. However, the differences were
insignificant in breast cancer, renal cancer, Merkel cell cancer, liver cancer,
and ovarian cancer.
Figure 3.
Comparison of the ORRs between patients that were PD-L1 positive (blue)
and patients that were PD-L1 negative (red) in PD-1 or PD-L1 blockade
monotherapy.
Comparison of the ORRs between patients that were PD-L1 positive (blue)
and patients that were PD-L1 negative (red) in PD-1 or PD-L1 blockade
monotherapy.CI, confidence interval; GC/GEJC, gastric or gastro-esophageal junction
cancer; ORR, objective response rate; PD-1, programmed cell death 1;
PD-L1, programmed death-ligand 1.Next, we investigated the incidences of CR and PR based on PD-L1 expression
status, respectively. In total, 276 CRs were reported among 6904 PD-L1 positive
cancer patients, and the overall incidence was 4.03% (95% CI, 2.86–5.40%). In
contrast, only 84 CRs occurred in 2883 PD-L1 negative patients, and the
incidence was 2.37% (95% CI, 1.52–3.40%). PD-L1 positive patients had a higher
incidence of CRs compared with PD-L1 negative patients (odds ratio, 2.22; 95%
CI, 1.69–2.91; p < 0.001) (Supplemental Figure S3). The pooled incidence of PR in PD-L1
positive patients was 18.48% (95% CI, 16.61–20.43%) as 1310 partial responses
were discovered in 6845 subjects. By contrast, 224 PRs occurred in 2732 PD-L1
negative patients, and the incidence was 7.41% (95% CI, 5.91–9.05%). The overall
incidence of PR in PD-L1 positive patients and PD-L1 negative patients was
significantly different (odds ratio, 2.41; 95% CI, 2.02–2.86;
p < 0.001) (Supplemental Figure S4).We also examined the association between tumor response and some other features
including line of treatment, clinical phase, drug target, and numbers of
recruited patients in several major tumors (Figure 4). Line of treatment was an
important contributor to ORRs in lung cancer and melanoma, but not in urothelial
cancer. In all cancers except melanoma, the ORRs in phase I/II trials were
similar compared with the ORRs in phase III trials. In GC/GEJC, patients treated
with PD-L1-targeted agents showed higher ORRs than those treated with
PD-1-targeted agents. The impact of numbers of recruited patients on the
efficacies was insignificantly in all examined types of tumors.
Figure 4.
The association between tumor responses and several major
clinicopathological characteristics in lung cancer (A), melanoma (B),
urothelial cancer (C), GC/GEJC (D), head and neck cancer (E), and renal
cancer (F).
The association between tumor responses and several major
clinicopathological characteristics in lung cancer (A), melanoma (B),
urothelial cancer (C), GC/GEJC (D), head and neck cancer (E), and renal
cancer (F).CI, confidence interval; GC/GEJC, gastric or gastro-esophageal junction
cancer; ORR, objective response rate; PD-1, programmed cell death 1;
PD-L1, programmed death-ligand 1.
Immunotherapy versus conventional treatment
Next, we compared the efficacies of PD-1/PD-L1 blockade immunotherapy
versus conventional treatment in patients that were PD-L1
positive and PD-L1 negative (Figure 5). In total, 26 randomized, controlled trials (RCTs)
including 13,899 patients, were eligible (Supplemental Table S3). Among them, 21 studies were phase III
RCTs, four studies were phase II RCT, and one study was phase II/III RCT. In
all, 12 studies were conducted in lung cancer, 4 in melanoma, 3 in GC/GEJC, 2
each in urothelial cancer, renal cancer, and head and neck cancer, and 1 in
colorectal cancer. All studies were performed in solid tumors, and 6993 (50%) of
13,899 patients had lung cancer. Patients in the intervention arms received
nivolumab in nine studies, pembrolizumab in eight studies, atezolizumab in six
studies, avelumab in two studies, and durvalumab in one study. The
methodological qualities of the eligible trials were generally moderate to good.
Randomized treatment allocation sequence generated in all trials. The main issue
affecting quality was lack of blinding.
Figure 5.
Comparison of the ORRs between PD-1 or PD-L1 blockade monotherapy and
conventional therapy in (A) all recruited patients, (B) patients who
were PD-L1 positive, and (C) patients who were PD-L1 negative.
Comparison of the ORRs between PD-1 or PD-L1 blockade monotherapy and
conventional therapy in (A) all recruited patients, (B) patients who
were PD-L1 positive, and (C) patients who were PD-L1 negative.CI, confidence interval; GC/GEJC, gastric or gastro-esophageal junction
cancer; ORR, objective response rate; PD-1, programmed cell death 1;
PD-L1, programmed death-ligand 1.Among 7760 patients treated with PD-1/PD-L1 inhibitors, 1663 tumor responses
occurred, whereas in 6139 patients treated with conventional agents, 775
responses were recorded. The difference was significant (odds ratio, 1.98; 95%
CI, 1.52–2.57; p < 0.001). Comparisons between immunotherapy
and controls in seven types of tumors were shown in Figure 5A.For PD-L1 positive patients,1000 responses were reported from 3966 patients in
the PD-1/PD-L1 blockade arms; 563 responses occurred in 3275 patients in the
control arms (Figure
5B). More PD-L1 positive patients responded to PD-1/PD-L1 inhibitors than
to conventional agents (odds ratio, 1.81; 95% CI, 1.36–2.39;
p < 0.001). On the other hand, 2357 patient who had PD-L1
negative disease from 10 RCTs were included in our analysis. PD-1/PD-L1 blockade
immunotherapy did not increase the tumor responses compared with conventional
treatment (odds ratio, 0.92; 95% CI, 0.70–1.20; p = 0.50)
(Figure 5C).It was well known that some non-responders also derived significant benefit from
immunotherapy.[1,2] Accordingly, we evaluated PFS and OS in patients treated
with PD-1/PD-L1 inhibitors and explored their association with PD-L1 expression
status (Figure 6). Seven
RCTs with 1944 PD-L1 positive patients and 1788 PD-L1 negative patients were
included in PFS analysis (Figure 6A). Compared with controls, PD-1/PD-L1 blockade
immunotherapy could significantly improved PFS in patients that were PD-L1
positive (HR,0.76; 95% CI, 0.61–0.95), but not in patients that were PD-L1
negative (HR, 1.15; 95% CI, 0.87–1.51), and the difference between these two
groups were statistically significant
(Pinteraction < 0.001). Overall, the PFS values
were similar in patients treated with immunotherapy and patients treated with
conventional therapy (HR, 0.94; 95% CI, 0.76–1.16).
Figure 6.
Comparison of PFS (A) and OS (B) between PD-1 or PD-L1 blockade
monotherapy and conventional therapy. Blue, patients that were PD-L1
positive; red, patients that were PD-L1 negative; black, all recruited
patients.
Comparison of PFS (A) and OS (B) between PD-1 or PD-L1 blockade
monotherapy and conventional therapy. Blue, patients that were PD-L1
positive; red, patients that were PD-L1 negative; black, all recruited
patients.CI, confidence interval; GC/GEJC, gastric or gastro-esophageal junction
cancer; PFS, progression-free survival; ORR, objective response rate;
OS, overall survival; PD-1, programmed cell death 1; PD-L1, programmed
death-ligand 1.For OS, 14 studies including 3627 PD-L1 positive patient and 3209 PD-L1 negative
patients were investigated (Figure 6B). Compared with conventional therapy, PD-1/PD-L1 blockade
immunotherapy decreased the risk of death by 25% in cancer patients (HR, 0.75;
95% CI, 0.67–0.83). However, the OS in patients that were PD-L1 positive (HR,
0.66; 95% CI, 0.60–0.72) and patients that were PD-L1 negative (HR, 0.86; 95%
CI, 0.74–0.99) were significantly different
(Pinteraction < 0.001).
Publication bias
Potential publication biases were assessed by Begg’s funnel plots and Begg’s rank
correlation. Visual inspection of the Begg’s funnel plot did not identify
substantial asymmetry in all the analysis conduct in this study. The Begg’s rank
correlation test also indicated no evidence of publication bias.
Discussion
To our knowledge, this is the largest and most comprehensive meta-analysis
investigating the clinic benefit in cancer patients treated with PD-1/PD-L1 blockade
monotherapy. Previous studies included fewer trials and focused mainly on some
specific cancers, such as non-small cell lung cancer,[169] advanced urothelial carcinoma,[170] and malignant melanoma.[171] Here, with published data from over 28,000 subjects in 160 perspective
clinical trials, we report a meta-analysis evaluating the association between
PD-1/PD-L1 blockade monotherapy and tumor response, PFS, and OS in cancer patients.
Such a global overview of clinical efficacies is important, as the results
constitute a critical reference for clinicians, drug developers, and basic
scientists, and complementary information in drafting the clinical practice
guidelines.The development of immunotherapy has revolutionized the treatment of cancer and are
increasingly being used in earlier disease settings and in combination with other
therapies.[172,173] A key unmet need in immunotherapy is the development of
predictive biomarkers, which can identify patients that are likely to respond to
PD-1/PD-L1 inhibitors and therefore reduce exposure and risk of toxicities for those
patients with little potential for benefit of response. Given the high-cost of
immunotherapy, in the era of value-based cancer care this becomes even more
important. However, predictive biomarkers to PD-1/PD-L1 blockade immunotherapy are
difficult to develop. The potential markers are usually functional targets rather
than stable oncogenic targets; hence the expression is context-dependent and
transient, and can be influenced by various factors in the microenvironment. In
addition, clinical issues in evaluating any reliable biomarkers are often associated
with some inherent characteristics of immunotherapy such as limitations to evaluate
tumor responses with standard imaging methods, clinical response and survival
benefit are not necessarily related.Because PD-L1 participates in suppressing immunogenicity and is a direct or indirect
target of PD-1/PD-L1 antibodies, it was the first and most popular biomarker
routinely used for cancer patients treated with immunotherapy in clinical trials.
Indeed, accumulating evidences has revealed that PD-L1 expression was associated
with the efficacy of immunotherapy and clinical outcomes.[2,173] Moreover, several companion
IHC assays for PD-L1 expression has been approved by FDA (22C3 for pembrolizumab;
SP142 for atezolizumab).[174] However, some major pitfalls still remain for PD-L1 expression evaluation
such as different antibodies (22C3 for pembrolizumab, 28-8 for nivolumab, SP142 for
atezolizumab, and SP263 for durvalumab) and various labelling threshold for
positivity/negativity. In 2017, the Blueprint PD-L1 IHC Assay Comparison Project
showed that these assays had different performances: PD-L1 expression were
comparable for 22C3, 28-8, and SP263, but not for SP142.[175] Furthermore, despite similar analytical performance of 28-8, 22C3, and SP263,
interchanging assays and thresholds still led to “misclassification” of PD-L1 status
for some patients. Linear epitope mapping experiments revealed different binding
features for these four PD-L1 antibody clones. It could cause particular staining
patterns depending on PD-L1 conformation or isoform expression. Besides analytical
consideration, other issues exist for PD-L1 evaluation. For example, biopsies cannot
represent the entire tumor due to spatial heterogeneity. In addition, PD-L1
expression was regulated at transcriptional, post-transcriptional, and protein
levels.[1,172] In clinical practice, conventional treatments such as
chemotherapy and radiotherapy are also considered as potential regulators of PD-L1
expression as well as the antitumor immunity.[176] In the present study, considering the original researchers knows their trials
better than anybody else, we extracted and illustrated the IHC assay and cutoff
values from every eligible trial, and classified the PD-L1 positivity and negativity
based on the results from the original manuscripts. Hence, our study is subject to
any biases or errors of the original investigators, and the results are
generalizable only to the patient groups eligible for these trials.Given the limitations of PD-L1 expression evaluation, new strategies are developing
to select stable and reliable genomic biomarkers. Research in this field mostly
focused on TMB as a surrogate marker for tumor immunogenicity. For most tumors, it
is reported that higher TMB was association with improved OS in patients receiving
PD-1/PD-L1 inhibitors.[177] Moreover, a study across 27 tumors revealed that a correlation between TMB
and immunotherapy response rate by linear regression analysis.[178] However, TMB has not been approved as a companion biomarker because the ideal
quantification methods and threshold values have not been defined for clinical
application (i.e. sequencing approach, tumor tissue or blood TMB, whole-exome
sequencing or selected gene panel, and sequencing depth). On the other hand, tumor
with MSI showed impressive clinical benefit to immunotherapy.[179] In addition, mutations in DNA mismatch repair (MMR) genes such as MSH2, MSH6,
MLH1, and PMS2 were also associated with durable response to PD-1/PD-L1 inhibitors.[180] These studies led to the first tissue-agnostic approval for PD-1/PD-L1
blockade treatment across tumors with dMMR/MSI-H.[181] However, it should be note that the frequency of dMMR/MSI-H in tumors not
within colorectal, endometrial, or gastric cancer is only 0.8% based on one study
including 11,139 cancer samples from 39 cancer types.[182] Accordingly, all the available single biomarkers showed some limitations in
the real-world clinical application. Currently, it is believed that combinable
biomarkers and/or algorithms using multiplex ways and the support of artificial
intelligence will be more successful.[174] For example, in OAK trial,[183] a so-called “Teff signature” (IFN-γ, PD-L1, CXCL9) was applied as a surrogate
for pre-existing immunity. This signature was correlated with PD-L1 expression but
was more sensitive than PD-L1 in predicting OS from atezolizumab.Consist with previous findings,[2,169,184] our analysis here showed
that there was a statistically significant difference between PD-L1 positive and
PD-L1 negative patients in terms of ORR, PFS, and OS. PD-L1 significantly increased
the chance of tumor response in melanoma, urothelial cancer, head and neck cancer,
lung cancer, GC/GEJC, mesothelioma, and thymic cancer. In addition, compared with
conventional treatment, the ORRs were significantly higher in PD-L1 positive
patients but not in PD-L1 negative patients only in lung cancer, melanoma, and head
and neck cancer. These results suggested PD-L1 could be a valuable predictive
biomarker in selected tumors. However, about 10% of cancer patients who were PD-L1
negative showed tumor responses, and PD-1/PD-L1 monotherapy could decreased the risk
of death by 14% for PD-L1 negative patients. These data suggested that PD-L1
expression status neither guaranteed nor precluded response to PD-1/PD-L1
monotherapy in all cases. Recently, Davis et al. also evaluated the
role of PD-L1 expression as a predictive biomarker in 45 FDA approvals of immune
checkpoint inhibitors across 15 tumor types.[184] It should be noted that there were several differences between these two
studies. First, our primary aim was to assess the ORRs in cancer immunotherapy. Many
clinicopathological characteristics could impact the tumor responses including tumor
type, PD-L1 expression status, clinical phase, line of treatments. We further
examined the association between ORRs and these factors in our study, while Davis
et al. focused mainly on the predictive value of PD-L1
expression because nine FDA approvals linked to a specific PD-L1 threshold and
companion diagnostic biomarker. Second, our study included 160 perspective clinical
trials with over 28,000 patients. With the increased statistical power, our
meta-analysis was the most up-to-date and comprehensive study, and should be more
reliable and solid. In addition, the assessment of the response to immunotherapy is
insufficient regarding clinical value, it has been proven that patients treated with
immunotherapy have a significant benefit even if they do not respond to treatment.[2] Accordingly, we also examined PFS and OS in both PD-L1 positive patients and
PD-L1 negative patients. Our results revealed that PD-1/PD-L1 blockade monotherapy
significantly decrease the risk of death by 34% for PD-L1 positive patients and by
14% for PD-L1 negative patients. It should be acknowledged that the survival benefit
between cancer patients who were PD-L1 positive and those who were PD-L1 negative
were significantly different.The molecular basis underlying tumor resistance to immune checkpoint inhibitors is
not yet clear; it may be due partly to inadequate cancer specific T cells function,[185] insufficient anti-cancer T cell generation,[186] and development of T-cell memory impairments.[186] Lack of sufficient or suitable neoantigens, or impaired neoantigen processing
or presentation of neoantigens, can lead to dysfunctional impairments during the
development of cancer-reactive T cells.[187] It is well established that efficacious anti-cancer response followed by
PD-1/PD-L1 inhibitors need clonal-proliferation and reactivation of
antigen-experienced T cells in the tumor micro-environments, and eventually secret
the cytolytic effector to kill the cells showing tumor-associated antigen.[186,187] Accordingly,
it seems more critical to understand whether the PD-1/PD-L1 pathway was active
rather than focusing solely on the expression of PD-L1 during cancer immunotherapy.
Thereby, predicting tumor responses to PD-1/PD-L1 blockade immunotherapy remains the
greatest challenge, and considerable efforts should be made to profile the complex
and dynamic factors governing the strength and duration of immune response in the
immunotherapy, making treatment decisions on a personalized basis.From the standpoint of patient counseling, several results derived from this
meta-analysis are important. Although approximately one-fifth of patients respond to
PD-1/PD-L1 monotherapy in clinical trials, the tumor responses vary significantly
across different cancers and PD-L1 expression. These numbers could be critical to
share with patients before they began PD-1/PD-L1 blockade immunotherapy. In
addition, PD-L1 expression status can inform the proper selection of patients who
have a significantly increased chance of tumor responses in lung cancer, melanoma,
and head and neck cancer.This study is restricted by some limitations. First, this meta-analysis relied on
published results rather than on individual patients’ data. Accordingly, we cannot
exclude the fact that other clinicopathological characteristics can affect the
response and influence our results. Second, the majority of studies are phase I/II
trials, which add heterogeneity to our analysis. We adjusted this heterogeneity by
conducting random-effects models to achieve the overall ORRs. Furthermore, we
examined the ORRs in different phases in several major tumors. In most examined
cancers, ORRs in phase III are similar compared with ORRs in phase I/II. Even so, it
might underestimate the real incidences of tumor responses given that trials with
limited numbers of patients received disproportional weight in calculation. Third,
some included studies were open-label trials. Even for the double-blinded RCTs,
skillful clinicians can identify the tumor responses induced by PD-1/PD-L1
antibodies, which may cause potential bias. Fourth, these included studies are
conducted at various medical centers by different researches, and may have some
subjectivities in recording clinical outcomes. Our analysis is subject to any errors
or biases of the original researchers, and the conclusions are generalizable only to
recruited patients included in these trials.
Conclusion
With 28,304 cancer patients from 160 perspective trials, our comprehensive analysis
revealed the clinical benefit to PD-1/PD-L1 monotherapy in cancer patients. This
global overview can be used as a reference and may guide clinical practice and drug
development.Click here for additional data file.Supplemental material, supplement for Efficacy of PD-1/PD-L1 blockade monotherapy
in clinical trials by Bin Zhao, Hong Zhao and Jiaxin Zhao in Therapeutic
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