Literature DB >> 28977966

Clinicopathological and prognostic significance of circulating tumor cells in patients with lung cancer: a meta-analysis.

Tingjuan Xu1,2, Guodong Shen1,2, Min Cheng1,2, Weiping Xu1,2, Gan Shen1,2, Shilian Hu1,2.   

Abstract

BACKGROUND: The prognostic significance of circulating tumor cells in patients with lung cancer is controversial. Therefore, we aimed to comprehensively and quantitatively assess the prognostic role of CTCs in patients with lung cancer.
METHODS: The relevant literature was searched using PubMed, the Cochrane database and the China National Knowledge Internet database (up to June 2016). Using Review Manager 5.1.2, a meta-analysis was performed using hazard ratio (HR), odds ratio (OR) and 95% confidence interval (CI) as effect values.
RESULTS: Thirty studies comprising 2,060 patients with lung cancer were analyzed. The pooled HR values showed that circulating tumor cells were significantly correlated with overall survival (HR =2.63, 95% CI [2.04, 3.39]) and progression-free survival (HR =3.74, 95% CI [2.49, 5.61]) in these patients. Further subgroup analyses were conducted and categorized by sampling time, detection method, and histological type; these analyses showed the same trend. The pooled OR values showed that circulating tumor cells were associated with non small cell lung cancer stage(OR = 2.11, 95% CI [1.42, 3.14]), small cell lung cancer stage (OR = 10.91, 95% CI [4.10, 29.06]), distant metastasis (OR =7.06, 95%CI [2.82, 17.66]), lymph node metastasis (OR =2.31, 95% CI [1.19,4.46]), and performance status(OR =0.42, 95%CI [0.22, 0.78]).
CONCLUSION: The detection of circulating tumor cells in the peripheral blood of patients with lung cancer can be indicative of a poor prognosis.

Entities:  

Keywords:  circulating tumor cells; clinicopathological parameters; lung cancer; meta-analysis; prognosis

Year:  2017        PMID: 28977966      PMCID: PMC5617526          DOI: 10.18632/oncotarget.19122

Source DB:  PubMed          Journal:  Oncotarget        ISSN: 1949-2553


INTRODUCTION

Lung cancer is one of the deadliest diseases in the world. Less than 15% of lung cancer patients survive for more than 5 years after being diagnosed [1]. Due to its aggressive behavior and greater invasive ability than other types of cancer, the predominant cause of treatment failure in patients with lung cancer is believed to be distant metastases, even during early-stage disease. Approximately 25% to 50% of patients with early-stage non small cell lung cancer (NSCLC) show tumor recurrence, even after tumor resection [2, 3]. However, current staging methods are unable to detect such occult metastases prior to the emergence of clinical manifestations [4]. Thus, there is an urgent need for more-sensitive prognostic and predictive markers. Circulating tumor cells (CTCs) can be found in the peripheral blood of patients with cancer. Many studies have demonstrated the potential usefulness of CTCs in predicting patient prognosis for several cancer types [5-7]. Many studies have also shown associations between CTCs and poor survival in lung cancer [8-11]. However, the prognostic significance of CTCs in lung cancer remains controversial, as other studies have failed to show an association between CTCs and poor prognosis [12]. In addition, assessing the potential of using CTCs as a prognostic marker has been complicated by inter-study differences in aspects such as study population, methodology and sampling time. Thus, our meta-analysis aimed to examine the association of CTCs with survival and clinicopathological parameters, and to evaluate the prognostic role of CTCs in patients with lung cancer.

RESULTS

Characteristics of the included studies

After initial literature searches, 153 articles were retrieved, and 4 duplicate articles were excluded. After screening the titles and abstracts, 67 studies remained, and their full texts were assessed for eligibility. Of the eligible studies, 37 studies were excluded because they lacked an outcome of interest. Ultimately, 30 studies were selected for analysis; these comprised 24 studies published in English and 6 studies published in Chinese (Figure 1).
Figure 1

A flow chart of the study design

A systematic literature search yielded a total of 153 articles related to the relationship between CTCs and lung cancer. After the screening of titles, abstracts and full texts, 123 articles were excluded for reasons detailed in the main text. A meta-analysis was then performed on 30 studies to assess the clinicopathological and prognostic significance of CTCs in patients with lung cancer.

A flow chart of the study design

A systematic literature search yielded a total of 153 articles related to the relationship between CTCs and lung cancer. After the screening of titles, abstracts and full texts, 123 articles were excluded for reasons detailed in the main text. A meta-analysis was then performed on 30 studies to assess the clinicopathological and prognostic significance of CTCs in patients with lung cancer. The analyzed studies were from the Netherlands, the United Kingdom, America, Spain, Japan, Korea and China, and included a total of 2,060 patients. The median number of patients in each study was 69 (range, 28-208). Of these 30 studies, 2 studies addressed both NSCLC and small cell lung cancer (SCLC); 22 studies addressed NSCLC alone, and 6 addressed SCLC alone. The sampling time was divided into two time points: namely, pre- and post-treatment. Both time points were included in 12 studies [9–11, 13–21], pretreatment alone in 15 studies [8, 12, 22–34] and post-treatment alone in 3 studies [35-37]. Nine studies used the reverse-transcriptase polymerase chain reaction (RT-PCR) method, and 21 studies used other methods. Hazard ratio (HR) for overall survival (OS) and progression-free survival (PFS) could be extracted from 12 studies and 4 studies, respectively. The patient clinical characteristics and the design variables of the studies are summarized in Table 1. The quality of the 30 included studies was evaluated according to the Newcastle-Ottawa scale (NOS) (Table 2). Twenty-five studies were of high quality (NOS score ≥ 5), and 5 studies were of low quality (NOS score < 5).
Table 1

Characteristics and design variables of the including studies

AuthorcountryNo. of patientsAgeHistological featuresTreatmentSampling volumeMethodsMarkersSampling timeCutoff of CTC
Chen TF et alChina6762(40-75)ADC 32 SQC 32 Others 3chemo. and radio.8mlRT-PCRCK19 mRNApre and postNR
Hiltermann TJ et alHolland5964(47-84)SCLC 59chemo. and radio.7.5mlCellsearchEpCAM,CK8,18,19,DAPIpre and post2 CTCs
Hofman V et alNR20863(37-84)ADC 115 SQC 54 Others 39surg.10mlISETNRpre50
Hou JM et alUK9768(28-84)SCLC 97chemo.7.5mlCellsearch, ISETEpCAM,CK8,18,19,DAPIpre and post50 CTCs
Igawa S et alJapan3069(51-85)SCLC 30chemo.7.5mlIFGFPpre and post2 CTCs
Krebs MG et alUK10167(43-84)ADC 31 SQC 32 Other 38chemo. and radio.7.5mlCellsearchEpCAM,CK8,18,19,DAPIpre and post2 CTCs
Naito T et alJapan5167(34-92)SCLC 51chemo. or radio.7.5mlCellsearchEpCAM,CK8,18,19,DAPIpre8 CTCs
Nieva J et alAmerica2864(31-82)ADC 21 SQC 5 Others 2chemo. or biotherapyNRIFCK 1,4–8,10,13,18,19, DAPIpre1CTC
Shi WJ et alChina5559(41-75)SCLC 55chemo.10mlRTQ-PCRCK19 mRNApre and post3.8
Yamashita J et alJapan10368(35-83)ADC 66 SQC 37surg.NRRT-PCRCEA mRNApre and postNR
Yie SM et alChina14357(30-84)ADC 87 SQC 56surg. or chemo.2mlRT-PCRSurvivin mRNApre1.02pg/ml
Yoon SO et alKorea7966(42-87)ADC 45 SQC 27 Others 7surg.NRRT-PCRTTF-1,CK19 mRNApre and postNR
Juan O et alSpain3771(44-85)ADC 14 SQC 14 Others 9chemo.7.5mlCellsearchEpCAM,CK8,18,19,DAPIpre and post2 CTCs
Sher YP et alChina5465(28-81)ADC 35 SQC 14 Others 5surg. or chemo.3-4mlRT-PCRkeratin 19, Ubiquitin thiolesterase C, HSFIB1preNR
Bayarri-Lara C et alSpain5667.4(45-80)ADC 25 SQC 29 Others 2surg.10mlIFEGFR,CKpre and postNR
Chen X et alChina169NRADC 112 SQC 51 Others 6NR7.5mlCellsearchEpCAM,CK8,18,19,DAPIpre1CTC
Hirose T et alJapan3364(46-74)ADC 24 SQC 8 Others 1chemo.7.5mlCellsearchEpCAM,CK8,18,19,DAPIpre1CTC
Ji JL et alChina5668(38-80)NSCLCsurg.2mlICCEpCAMpost1CTC
Lou JT et alChina3358(33-76)ADC 16 SQC 11 Others 6chemo.3mlLT-PCRCK,FR,DAPIpre8.5
Peck K et alChina8666(26-82)ADC 47 SQC 17 SCLC 15 Others 7surg. or chemo. or radio.3-5mlRT-PCRCK19 mRNApreNR
Sheu CC et alChina10064(37-87)ADC 72 SQC 28NR5mlRT-PCR17genespreNR
Wang B et alChina4268(37-80)ADC 25 SQC 17surg.10mlICCEpCAMpost1CTC
Wu C et alChina47NRADC 27 SQC 7 SCLC 13chemo.7.5mlIFCK18,19,DAPIpre2CTCs
Xu YH et alChina6669(34-80)ADC 35 SQC 31chemo.7.5mlCellsearchEpCAM,CK8,18,19,DAPIpre and post1CTC
Feng YQ et alChina49NRADC 20 SQC 29NR7.5mlIFEpCAM,CK,DAPIpre1CTC
HuangTH et alChina5158.6(43-75)ADC 21 SQC 30surg. or chemo. or radio.4mlICCCKpre1CTC
Li J et alChina3067(43-79)ADC 12 SQC 18chemo.7.5mlIFCKpre and post1CTC
Lin XM et alChina6056(35-76)ADC 32 SQC 28surg.10mlICCCKpre1CTC
Qian Z et alChina3548(21-69)SCLC 35NR7.5mlCellsearchEpCAM,CK8,18,19,DAPIpre1CTC
Zhao SW et alChina3558(43-80)ADC 31 SQC 4surg.3.2mlIFDAPIpost2CTCs

ADC, adenocarcinoma; SQC, squamous cell carcinoma; SCLC, small-cell lung cancer; chemo., chemotherapy; radio., radiotherapy; surg., surgery; IF, immunofluorescence; ISET, isolation by size of epithelial tumor cells; ICC, immunocytochemistry; pre, pre-treatment; post, post-treatment; NR, not reported

Table 2

The assessment of the risk of bias in each Cohort study using the Newcastle–Ottawa scale

StudySelection(0-4)Comparablility (0-2)Outcome(0-3)Total
RECSNECAEDOSCAFAOFUAFU
Chen TF1111001117
Hiltermann TJ1111001117
Sher YP1111001117
Hofman V1111001106
Hou JM1111001016
Igawa S1111001016
Shi WJ1111001016
Yamashita Y1111000116
Yie SM1111001106
Yoon SO1111001106
Krebs MG0111001015
Naito T1111001005
Nieva J1111000015
Juan O0111001015
Bayarri-Lara C1111000015
Chen X1111001005
Hirose T0111001015
Ji JL1111001005
Peck K1111001005
Sheu CC1111001005
Wang B1111001005
Wu C1111001005
Feng YQ1111001005
Lin XM1111001005
Qian Z1111001005
Lou JT1111000004
Xu YH0111001004
Huang TH1111000004
Li J0111001004
Zhao SW1111000004
ADC, adenocarcinoma; SQC, squamous cell carcinoma; SCLC, small-cell lung cancer; chemo., chemotherapy; radio., radiotherapy; surg., surgery; IF, immunofluorescence; ISET, isolation by size of epithelial tumor cells; ICC, immunocytochemistry; pre, pre-treatment; post, post-treatment; NR, not reported

The prognostic effect (OS and PFS) of CTC detection

The pooled HR values showed a significant correlation between CTCs and OS in patients with lung cancer (HR =2.63, 95% confidence interval (CI) [2.04, 3.39], P<0.00001, I=19%) (Figure 2). Subsequently, subgroup analyses were conducted after categorization by sampling time, detection method, and histological type to further investigate the prognostic role of CTCs. We found a significant correlation between CTCs and OS in the NSCLC (HR =2.55, 95% CI [1.65, 3.93], P<0.0001, I=49%) and SCLC subgroups (HR =2.88, 95% CI [2.01, 4.11], P<0.00001, I=0%). In addition, the results of the analysis showed that CTCs could be a prognostic indicator of OS both pretreatment (HR =2.81, 95% CI [2.03, 3.89], P<0.00001, I=38%) and post-treatment (HR =3.68, 95% CI [2.39, 5.66], P<0.00001, I=30%), regardless of whether the RT-PCR method (HR =2.26, 95% CI [1.43, 3.58], P=0.0005, I=34%) or other methods (HR =2.85, 95% CI [2.09, 3.89], P<0.00001, I=12%) were used.
Figure 2

Forest plots evaluating the maximally adjusted association between CTC presence and OS

(A) A Forest plot assessing the effect of CTC presence on OS in subgroups divided by sampling time. (B) A Forest plot assessing the effect of CTC presence on OS in subgroups divided by detection method. (C) A Forest plot assessing the effect of CTC presence on OS in subgroups divided by histological type.

Forest plots evaluating the maximally adjusted association between CTC presence and OS

(A) A Forest plot assessing the effect of CTC presence on OS in subgroups divided by sampling time. (B) A Forest plot assessing the effect of CTC presence on OS in subgroups divided by detection method. (C) A Forest plot assessing the effect of CTC presence on OS in subgroups divided by histological type. The pooled HR values revealed a significant correlation between CTCs and PFS in patients with lung cancer (HR =3.74, 95% CI [2.49, 5.61], P<0.00001, I=0%) (Figure 3). The subgroup analyses showed a significant correlation between CTCs and PFS in the NSCLC (HR =3.91, 95% CI [2.32, 6.60], P<0.00001, I=0%) and SCLC subgroups (HR =3.49, 95% CI [1.84, 6.63], P=0.0001, I=0%). In addition, we found that CTCs could be a prognostic indicator of PFS both pretreatment (HR =2.73, 95% CI [1.68, 4.43], P<0.0001, I=27%) and post-treatment (HR =4.27, 95% CI [2.60, 7.02], P<0.00001, I=24%), regardless of whether the RT-PCR method (HR =3.38, 95% CI [2.06, 5.56], P<0.0001, I=0%) or other methods (HR =4.56, 95% CI [2.27, 9.17], P<0.0001, I=0%) were used.
Figure 3

Forest plots evaluating the maximally adjusted association between CTC presence and PFS

(A) A Forest plot assessing the effect of CTC presence on PFS in subgroups divided by sampling time. (B) A Forest plot assessing the effect of CTC presence on PFS in subgroups divided by detection method. (C) A Forest plot assessing the effect of CTC presence on PFS in subgroups divided by histological type.

Forest plots evaluating the maximally adjusted association between CTC presence and PFS

(A) A Forest plot assessing the effect of CTC presence on PFS in subgroups divided by sampling time. (B) A Forest plot assessing the effect of CTC presence on PFS in subgroups divided by detection method. (C) A Forest plot assessing the effect of CTC presence on PFS in subgroups divided by histological type.

Correlation between CTCs and clinicopathological parameters

The pooled odds ratio (OR) values showed that there was a significant correlation between CTCs and tumor stage in patients with lung cancer. As shown in Table 3, the incidence of CTC detection in patients with stage III/IV was higher than that in patients with stage I/II NSCLC (OR = 2.11, 95% CI [1.42,3.14], P=0.0002, I= 20%). Similarly, the incidence of CTC detection in extensive SCLC was higher than that in limited SCLC (OR = 10.91, 95% CI [4.10, 29.06], P<0.00001, I= 4%). However, the subgroup analyses of studies using the RT-PCR method showed no significant correlation between CTCs and tumor stage in either NSCLC patients or SCLC patients.
Table 3

Detailed results of meta-analyses for clinicopathological parameters

Clinicopathological parametersSample timeStudy no.Patient no.OR(95% CI), PHeterogeneity(I2, P)
NSCLCStage III/IV vs. I/IIoverall1511232.11 [1.42, 3.14], 0.000220%, 0.23
pre129901.77 [1.17, 2.68], 0.00716%, 0.29
post52483.72 [1.79, 7.72], 0.00040%, 0.85
PCR74641.25 [0.71, 2.19], 0.447%, 0.37
non-PCR86592.71 [1.78, 4.13], <0.000010%, 0.50
SCLC Extensive vs. Limitedoverall420210.91 [4.10, 29.06], <0.000014%, 0.37
pre420210.91 [4.10, 29.06], <0.000014%, 0.37
post1555.75 [1.58, 20.99], 0.008
PCR2706.30 [0.60, 65.68], 0.1249%, 0.16
non-PCR213213.87 [4.30, 44.77], <0.00010%, 0.39
Distant metastasis (+) vs. (-)overall55227.06 [2.82, 17.66], <0.000146%, 0.11
pre55227.06 [2.82, 17.66], <0.000146%, 0.11
post1555.75 [1.58, 20.99], 0.008
PCR21558.58 [2.07, 35.56], 0.0030%, 0.77
non-PCR43677.13 [1.80, 28.21], 0.00570%, 0.03
NSCLC33705.44 [1.40, 21.15], 0.0145%, 0.16
SCLC215211.41 [4.15, 31.39], <0.000010%, 0.54
Lymph node metastasis(+) vs. (-)overall54202.31 [1.19, 4.46], 0.0119%, 0.29
pre54202.31 [1.19, 4.46], 0.0119%, 0.29
post21041.60 [0.57, 4.46], 0.3720%, 0.26
PCR32392.98 [0.72, 12.29], 0.1358%, 0.09
non-PCR21812.17 [0.97, 4.88], 0.060%, 0.60
NSCLC54202.31 [1.19, 4.46], 0.0119%, 0.29
SCLC00
Performance status0-1 vs. 2overall42860.42 [0.22, 0.78], 0.0060%, 0.48
pre42860.42 [0.22, 0.78], 0.0060%, 0.48
post1550.85 [0.25, 2.83], 0.79
PCR1550.69 [0.16, 2.96], 0.62
non-PCR32310.37 [0.19, 0.74], 0.0050%, 0.39
NSCLC21340.59 [0.13, 2.80], 0.5131%, 0.23
SCLC21520.38 [0.18, 0.79], 0.010%, 0.36
Tumor size(<3cm) vs. (>3cm)overall64450.88 [0.55, 1.42], 0.600%, 0.54
pre43471.06 [0.62, 1.79], 0.830%, 0.70
post42020.53 [0.27, 1.03], 0.060%, 0.75
PCR21610.96 [0.39, 2.31], 0.9210%, 0.29
non-PCR42840.84 [0.47, 1.50], 0.560%, 0.41
NSCLC64450.88 [0.55, 1.42], 0.600%, 0.54
SCLC00
Gendermale vs. femaleoverall159301.37 [0.99, 1.89], 0.060%, 0.88
pre1410321.26 [0.93, 1.70], 0.140%, 0.81
post52681.21 [0.54, 2.73], 0.6436%, 0.18
PCR53371.29 [0.60, 2.79], 0.5134%, 0.19
non-PCR105931.40 [0.95, 2.06], 0.090%, 0.99
NSCLC148751.36 [0.97, 1.90], 0.070%, 0.84
SCLC1551.48 [0.40, 5.50], 0.56
Agenon-aged vs. agedoverall116950.80 [0.57, 1.13], 0.200%, 0.82
pre106530.79 [0.56, 1.13], 0.200%, 0.75
post31461.18 [0.56, 2.48], 0.670%, 0.90
PCR21390.63 [0.30, 1.33], 0.230%, 0.39
non-PCR95560.85 [0.58, 1.25], 0.420%, 0.79
NSCLC116950.80 [0.57, 1.13], 0.200%, 0.82
SCLC00
Smoking statusNever vs. former or currentoverall74970.66 [0.40, 1.07], 0.0919%, 0.29
pre74970.66 [0.40, 1.07], 0.0919%, 0.29
post0
PCR1540.67 [0.20, 2.27], 0.52
non-PCR64430.66 [0.37, 1.17], 0.1632%, 0.19
NSCLC74970.66 [0.40, 1.07], 0.0919%, 0.29
SCLC00
We found that the presence of CTCs was significantly increased in lung cancer patients with distant metastasis (OR =7.06, 95%CI [2.82, 17.66], P<0.0001, I= 46%). Further subgroup analyses conducted and categorized by sampling time, detection method, and histological type showed the same trend. The presence of CTCs was also significantly increased in lung cancer patients with lymph node metastasis (OR = 2.31, 95%CI [1.19, 4.46], P=0.01, I= 19%), but the subgroup analyses showed a significant correlation between CTCs and lymph node metastasis only in the pretreatment subgroup. Moreover, all the studies included in this analysis pertained to NSCLC. We also found that CTCs were associated with performance status (OR = 0.42, 95%CI [0.22, 0.78], P=0.006, I= 0%). Lower performance scores corresponded to lower CTC incidence. However, the subgroup analyses showed no significant correlation in the post-treatment, PCR or NSCLC subgroups. Furthermore, pooled analyses of tumor size, performance status, smoking status, and patient age revealed no significant correlation between these clinicopathological parameters and CTCs.

Test of heterogeneity

Except for the ‘non-PCR on distant metastasis’ subgroup (I= 70%) and the ‘PCR on lymph node metastasis’ subgroup (I= 58%), the heterogeneity among all the included studies was not significant. However, when one study [26] from the ‘non-PCR on distant metastasis’ subgroup was removed, the I value was reduced to 0%, while the correlation of CTCs with distant metastasis was unchanged (OR = 14.87, 95% CI [5.00, 44.29], P<0.00001). Similarly, when one study [17] from the ‘PCR on lymph node metastasis’ subgroup was removed, the I value was reduced to 0%, but the correlation of CTCs with lymph node metastasis was changed (OR = 5.92, 95% CI [1.76, 19.91], P =0.004).

Sensitivity analyses

We performed sensitivity analyses to test the robustness of the pooled results. The pooled HR was not significantly altered when any individual study was removed. Moreover, the pooled OR was not significantly influenced when any individual study was removed, with the exception of lymph node metastasis. The pooled OR of lymph node metastasis was significantly altered by removal of the study [17] that was the source of heterogeneity.

Publication bias

As shown in Figure 4, funnel plots showed no evidence of publication bias. In addition, Egger’s and Begg’s tests were examined to detect publication bias in our article. The results of both Egger’s and Begg’s tests showed no evidence of publication bias (P>0.05).
Figure 4

Assessment of publication bias using funnel plot analysis

Funnel plot analyses of studies on OS (A), PFS (B), NSCLC stage (C), SCLC stage (D), distant metastasis (E), lymph node metastasis (F), performance status (G), tumor size (H), gender (I), age (J) and smoking status (K).

Assessment of publication bias using funnel plot analysis

Funnel plot analyses of studies on OS (A), PFS (B), NSCLC stage (C), SCLC stage (D), distant metastasis (E), lymph node metastasis (F), performance status (G), tumor size (H), gender (I), age (J) and smoking status (K).

DISCUSSION

Although chemoradiotherapy and surgery have been widely used, lung cancer metastasis and recurrence frequently occur. The poor overall survival of patients and the complex heterogeneity of the disease are significant challenges for therapeutic intervention. Therefore, biomarkers that can be used to identify lung cancer recurrence or metastasis are needed to facilitate timely diagnosis and effective treatment strategies for lung cancer patients. CTCs, which are released by primary tumors or metastatic tumors, have been recognized as the cause of tumor metastasis or recurrence [38, 39]. However, the clinicopathological and prognostic significance of CTC detection in patients with lung cancer is not clear. In this meta-analysis, we provide strong evidence that CTCs are significantly associated with poor OS and PFS in lung cancer patients, irrespective of sampling time, detection method, and histological type. All the pooled HRs were above 2.0 in our study. These results demonstrate that a CTC-high status indicates poor prognosis in lung cancer patients; these patients may need more-aggressive treatment that is assessed frequently and closely monitored. According to the pooled ORs in our meta-analysis, CTCs were associated with tumor stage, lymph node metastasis, distant metastasis, and performance status in patients with lung cancer. The results indicated that CTCs can be predictors of disease progression, and may be used to estimate the degree of malignancy and metastatic ability in lung cancer. However, the analysis of lymph node metastasis showed that the correlation occurred only in the pretreatment subgroup. It is generally believed that lymph node metastasis occurs prior to blood-borne metastasis, but the detection of CTCs in patients with early tumors indicates that blood-borne metastasis can occur before lymph node metastasis. In one study [24], the incidence of CTC detection was higher in patients with lymph node metastasis than in those free of lymph node metastasis. However, in other studies [17, 19, 26, 29], the incidence of CTC detection was not correlated with lymph node metastasis. Thus, the correlation between CTCs and lymph node metastasis may require further investigation. We analyzed studies reporting the detection of CTCs in peripheral blood before and after treatment. The results from these two sampling time were consistent, except for the correlation of CTCs with lymph node metastasis and performance status. Therefore, CTC detection may offer doctors a simpler, less-invasive method that can be used at an earlier stage of disease (relative to other methods) to estimate disease progression and predict the prognosis of patients before treatment. In recent years, various new CTC assay metho-dologies have been developed, including RT-PCR, immunocytochemistry, and the CellSearch System, for example. Each method has its advantages and disadvantages. We obtained different results for the PCR and non-PCR subgroups in analyses of tumor stage, lymph node metastasis, and performance status. CTCs were not associated with these clinicopathological parameters in the PCR subgroup. It thus seems that non-PCR-based methods are best for CTC detection in this context. Several studies have been performed to compare CTC detection methods, but no conclusive results have been obtained as of yet [40]. Therefore, further studies within the same lung cancer patient populations are needed to provide comparative data on the clinical significance of CTCs detected by different methods. We found significant heterogeneity in the non-PCR subgroup on distant metastasis and in the PCR subgroup on lymph node metastasis. In these two subgroups, CTCs were detected before treatment using the same detection methods. However, the optimal cut-off values for CTC detection were obviously different for the two subgroups. In addition, the markers of CTC detection were not uniform in the PCR-subgroup studies that investigated the association between CTCs and lymph node metastasis. We propose that these two factors might be the principal causes of heterogeneity. This study has some notable limitations. First, our meta-analysis was limited to the published scientific literature, and univariate data were also included in the present meta-analysis because multivariate survival analysis data were not available. Second, the CTC detection assays varied in our study, and included different endpoints, cut-off values, and experimental designs. Moreover, we excluded some papers that did not calculate OS and PFS, which may have influenced the results to some degree [18, 25, 41]. In conclusion, this meta-analysis indicates that the detection of CTCs in peripheral blood may be an indicator of patient prognosis, and provides evidence that CTC detection can be used to estimate the degree of malignancy and metastatic ability in patients with lung cancer. In the future, high-quality, well-designed and large-scale multicenter studies are needed to further substantiate these findings.

METHODS

Literature search

PubMed, the Cochrane database and the China National Knowledge Internet database were searched for studies pertaining to the clinicopathological and prognostic relationship between CTCs and lung cancer without language, publication or time restrictions (up to June 2016). The main search terms were “lung or pulmonary or pulmonic or pneumonic or pneumal” and “cancer or tumor or tumour or carcinoma or neoplasm(s)” and “CTC(s) or circulating tumor cell(s) or circulating cancer cell(s) or circulating epithelial cell(s) or micrometastasis”. Furthermore, relevant articles were identified from references cited in the retrieved articles and in review articles by manual searching.

Selection criteria

Eligible studies were included if they met the following criteria: (i) CTCs were detected in lung cancer patients; (ii) samples were collected from peripheral blood; and (iii) at least one of the outcome measures of interest was reported in the study or calculated from published data. When several studies were reported from the same authors or organizations, the meta-analysis included the most recent study (or the highest-quality study if the most recent study did not fit the inclusion criteria). Studies were excluded if they met any of the following criteria: (i) the number of patients with lung cancer was fewer than 20; (ii) repeated studies were based on the same database or patients; or (iii) they provided insufficient data.

Data extraction and assessment of study quality

Two independent reviewers evaluated each study and extracted data independently, and any disagreements were resolved via discussion. We performed two types of analysis. The first type of analysis determined whether CTC status was associated with OS or PFS. The second type of analysis determined whether CTC status was correlated with clinicopathological parameters, which included tumor size, lymph node metastasis, distant metastasis, NSCLC stage(III/IV vs. I/II), SCLC stage (extensive disease vs. limited disease), gender, age, smoking and performance status. Data for multivariate survival analyses reported in the included articles were included in this meta-analysis. If these data were not available, then univariate analytical data were included. The quality of studies was evaluated according to the NOS [42], and studies with an NOS score≥ 5 were considered to be of high quality.

Statistical analysis

Statistical analysis was performed using Review Manager 5.1.2software. The estimated HR was used to evaluate the prognostic effect (OS and PFS), and the estimated OR was used to summarize the association between CTC detection and the clinicopathological characteristics of lung cancer. If the HR and its variance were not reported directly in the original study, then these values were calculated from the available reported data using software designed by Tierney et al. [43]. All statistical values were combined with a 95% CI, and the P-value threshold was set at 0.05. The random-effects mode was used to perform the analysis, as this model produced more conservative results than did the fixed-effects model, and it was a better fit for the multicenter clinical studies owing to the existence of heterogeneity [44]. Heterogeneity was calculated using a Q test, and the I2 value represented the degree of heterogeneity. Publication bias was tested using a funnel plot, and by Egger’s and Begg’s tests, in Stata 12.0 software. The overall analysis was completed by evaluating all the relevant studies according to different clinicopathological parameters and prognostic outcomes. Further subgroup analyses were conducted and categorized by sampling time (pretreatment and post-treatment), detection method (PCR and non-PCR), and histological type (NSCLC and SCLC). Sensitivity analyses were performed by excluding one study at a time to evaluate the influence of single studies on summary effect values.
  39 in total

1.  TTF-1 mRNA-positive circulating tumor cells in the peripheral blood predict poor prognosis in surgically resected non-small cell lung cancer patients.

Authors:  Sun Och Yoon; Young Tae Kim; Kyeong Cheon Jung; Yoon Kyung Jeon; Baek-Hui Kim; Chul-Woo Kim
Journal:  Lung Cancer       Date:  2010-05-14       Impact factor: 5.705

Review 2.  A perspective on cancer cell metastasis.

Authors:  Christine L Chaffer; Robert A Weinberg
Journal:  Science       Date:  2011-03-25       Impact factor: 47.728

3.  4-year mortality in patients with non-small-cell lung cancer: development and validation of a prognostic index.

Authors:  François Blanchon; Michel Grivaux; Bernard Asselain; François-Xavier Lebas; Jean-Pierre Orlando; Jacques Piquet; Mahmoud Zureik
Journal:  Lancet Oncol       Date:  2006-10       Impact factor: 41.316

4.  Lung cancer and its operable brain metastasis: survival rate and staging problems.

Authors:  József Furák; Imre Troján; Tamás Szöke; László Agócs; Attila Csekeö; József Kas; Egon Svastics; József Eller; László Tiszlavicz
Journal:  Ann Thorac Surg       Date:  2005-01       Impact factor: 4.330

5.  Preoperative evidence of circulating tumor cells by means of reverse transcriptase-polymerase chain reaction for carcinoembryonic antigen messenger RNA is an independent predictor of survival in non-small cell lung cancer: a prospective study.

Authors:  Jun-ichi Yamashita; Akinobu Matsuo; Yuji Kurusu; Tetsushi Saishoji; Naoko Hayashi; Michio Ogawa
Journal:  J Thorac Cardiovasc Surg       Date:  2002-08       Impact factor: 5.209

6.  Clinical significance of detecting survivin-expressing circulating cancer cells in patients with non-small cell lung cancer.

Authors:  Shang-mian Yie; Be Lou; Shang-rong Ye; Xu He; Mei Cao; Ke Xie; Nai-yao Ye; Rao Lin; Sheng-min Wu; Hai-bo Xiao; En Gao
Journal:  Lung Cancer       Date:  2008-07-07       Impact factor: 5.705

7.  Detecting circulating tumor cells in patients with advanced non-small cell lung cancer.

Authors:  Y H Xu; J Zhou; X F Pan
Journal:  Genet Mol Res       Date:  2015-09-01

8.  Circulating tumor cells predict survival benefit from treatment in metastatic castration-resistant prostate cancer.

Authors:  Johann S de Bono; Howard I Scher; R Bruce Montgomery; Christopher Parker; M Craig Miller; Henk Tissing; Gerald V Doyle; Leon W W M Terstappen; Kenneth J Pienta; Derek Raghavan
Journal:  Clin Cancer Res       Date:  2008-10-01       Impact factor: 12.531

9.  Practical methods for incorporating summary time-to-event data into meta-analysis.

Authors:  Jayne F Tierney; Lesley A Stewart; Davina Ghersi; Sarah Burdett; Matthew R Sydes
Journal:  Trials       Date:  2007-06-07       Impact factor: 2.279

10.  Quantification of rare circulating tumor cells in non-small cell lung cancer by ligand-targeted PCR.

Authors:  Jiatao Lou; Suqin Ben; Guohua Yang; Xiaohui Liang; Xiaoqian Wang; Songshi Ni; Baohui Han
Journal:  PLoS One       Date:  2013-12-06       Impact factor: 3.240

View more
  5 in total

1.  Prognostic Role of Circulating Tumor Cells in the Pulmonary Vein, Peripheral Blood, and Bone Marrow in Resectable Non-Small Cell Lung Cancer.

Authors:  Jeong Moon Lee; Woohyun Jung; Sungwon Yum; Jeong Hoon Lee; Sukki Cho
Journal:  J Chest Surg       Date:  2022-06-05

2.  Molecular Detection of EMT Markers in Circulating Tumor Cells from Metastatic Non-Small Cell Lung Cancer Patients: Potential Role in Clinical Practice.

Authors:  Annalisa Milano; Francesca Mazzetta; Sabatino Valente; Danilo Ranieri; Laura Leone; Andrea Botticelli; Concetta Elisa Onesti; Salvatore Lauro; Salvatore Raffa; Maria Rosaria Torrisi; Paolo Marchetti
Journal:  Anal Cell Pathol (Amst)       Date:  2018-02-27       Impact factor: 2.916

3.  The prognostic roles of circulating ALDH1+ tumor cell in the patients with non-small cell lung cancer.

Authors:  Shuang Tian; Ya-Nan Xing; Pu Xia
Journal:  Biosci Rep       Date:  2018-10-31       Impact factor: 3.840

4.  Diagnostic role of circulating extracellular matrix-related proteins in non-small cell lung cancer.

Authors:  Francesca Andriani; Elena Landoni; Mavis Mensah; Federica Facchinetti; Rosalba Miceli; Elda Tagliabue; Marta Giussani; Maurizio Callari; Loris De Cecco; Mario Paolo Colombo; Luca Roz; Ugo Pastorino; Gabriella Sozzi
Journal:  BMC Cancer       Date:  2018-09-18       Impact factor: 4.430

5.  Polymer nanofiber-based microchips for EGFR mutation analysis of circulating tumor cells in lung adenocarcinoma.

Authors:  Wenting Jiang; Han Wang; Yongmei Cui; Yiyan Lei; Yuefeng Wang; Di Xu; Neng Jiang; Yangshan Chen; Yu Sun; Yang Zhang; Jessica Cao; Zunfu Ke
Journal:  Int J Nanomedicine       Date:  2018-03-16
  5 in total

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