Literature DB >> 28415640

Accuracy of the urine UCA1 for diagnosis of bladder cancer: a meta-analysis.

Xiangrong Cui1,2,3, Xuan Jing4, Chunlan Long1,3,5, Qin Yi1,3,5, Jie Tian6, Jing Zhu1,3,5.   

Abstract

Urine UCA1 has been reported as a potential novel diagnostic biomarker for bladder cancer in several studies, but their results are inconsistent. As a result of this, a diagnostic meta-analysis to assess the diagnostic performance of urine UCA1 in detecting bladder cancer was conducted. A systematic electronic and manual search was performed for relevant literatures through PubMed, Cochrane library, Chinese Wan Fang and the China National Knowledge Infrastructure (CNKI) databases up to December 30, 2016. The quality of the studies included in this meta-analysis was assessed using the Quality Assessment of Diagnostic Accuracy Studies (QUADAS-2) tool. All analyses were conducted using stata12.0 software. Six studies collectively included 578 bladder cancer patients and 562 controls met the eligible criteria. The overall diagnostic accuracy was measured by the following: sensitivity 0.81 (95% CI = 0.75-0.86), specificity 0.86 (95% CI = 0.73-0.93), positive likelihood ratio 5.85 (95% CI = 2.72-12.57), negative likelihood 0.22 (95% CI = 0.15-0.32), diagnostic odds ratio 27.01 (95% CI = 8.69-83.97), and area under the curve 0.88 (95% CI = 0.85-0.91). Meta-regression analysis suggested that ethnicity significantly accounted for the heterogeneity of sensitivity. Deeks' funnel plot asymmetry test (P = 0.33) suggested no potential publication bias. According to our results, urine UCA1 has greater diagnostic value in diagnosing bladder cancer, however further research studies with more well-designed and large sample sizes are required to confirm our findings.

Entities:  

Keywords:  UCA1; biomarker; bladder cancer; noninvasive diagnosis; urinary marker

Mesh:

Substances:

Year:  2017        PMID: 28415640      PMCID: PMC5471048          DOI: 10.18632/oncotarget.16473

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


INTRODUCTION

Bladder cancer (BC) is the second most common urogenital malignancy, with 50% recurrence rate and 15-40% growing into muscle invasive disease [1, 2]. Early diagnosis and reliable follow-up for recurrences after conservative treatment are extremely important for improving treatment of BC [3-5]. Cystoscopy is currently considered the golden standard for diagnosing bladder cancer, often combined with urinary cytology [6]. However, the invasive nature of cystoscopy and low sensitivity of cytology restrict their application in the early diagnosis of BC [7, 8]. Therefore, exploring more reliable non-invasive detection of new or recurrent bladder cancer is the need of the hour. Long non-coding RNAs (lncRNAs) are a class of transcribed RNA molecules with more than 200 nucleotides in length and lack protein coding function [9-11]. Accumulating studies have shown that the dysregulation of lncRNAs was closely related to oncogenesis, metastasis, and prognosis in cancers [12-14]. Their expression patterns in various cancer types have been extensively identified, and many of these lncRNAs might be used as independent biomarkers for tumor diagnosis and treatment [15-17]. Recently, the lncRNAs, urothelial carcinoma associated 1 (UCA1), was firstly identified in the tissue and urine in 2006 and was found that it might play a crucial role in BC progression and embryogenesis [18]. In addition, UCA1 was also detected as a very sensitive and specific urine marker in BC diagnosis [19, 20]. Despite many studies have demonstrated the potential of urine UCA1 as a novel diagnostic marker for BC, the previous studies have been limited by relatively small sample size recruited in the individual studies, and no previous published meta-analysis have addressed this research question. Thus, we carried out this meta-analysis to review and assess the overall diagnostic test accuracy of UCA1 for BC diagnosis.

RESULTS

Study characteristics

As shown in the flow diagram (Figure 1), 351 potentially relevant articles were searched in the databases. After a detailed evaluation, 6 studies [18, 19, 21–24] were included in the current meta-analysis. The main characteristics of included studies were summarized in Table 1 ranging from 2003 to 2015. The total number of patients and controls were 578 and 562, respectively. Among the 6 studies, 3 studies were conducted in China [18, 23, 24], 1 in India [21], 1in Belgium [19], 1 in Egypt [22], which means three studies were conducted in Chinese populations, three studies were conducted in non-Chinese population. All the included studies used urine sediment as specimens and used reverse transcription polymerase chain reaction (RT-PCR) or quantitative RT-PCR method to determine the expression of UCA1 in urine sediment.
Figure 1

The flow diagram of this meta-analysis

Table 1

Characteristics of the included studies

Study IDCountryEthnicitySample sizeCancerSpecimenMethodDiagnostic power
CaseControlTPFPFNTN
Wang XS, 2006ChinaChinese9485BCurineRT-PCR7671878
Zhang Z, 2012ChinaChinese180144BCurineRT-PCR1521128133
Li F, 2012ChinaChinese2450BCurineqRT-PCR2120330
Srivastava AK, 2014Indianon-Chinese11774BCurineqRT-PCR93152459
Milowich D, 2015Belgiumnon-Chinese6993BCurineRT-PCR48272166
Eissa S, 2015Egyptnon-Chinese94116BCurineqRT-PCR8648112

BC: bladder carcinoma; TP: true positive; FP: false positive; TN: true negative; FN: false negative

BC: bladder carcinoma; TP: true positive; FP: false positive; TN: true negative; FN: false negative

Quality assessment of studies

The results of the QUADAS-2 study quality assessment were shown in Figure 2. The majority of all included articles in current meta-analysis met most items in QUADAS-2, suggesting that the overall quality of included studies were of moderate-high.
Figure 2

Quality assessments of included studies by using the QUADAS-2 tool

A. risk of bias summary: review authors’ judgments about each risk of bias item for each included study; B. risk of bias graph: review authors’ judgments about each item presented as percentages across all included studies.

Quality assessments of included studies by using the QUADAS-2 tool

A. risk of bias summary: review authors’ judgments about each risk of bias item for each included study; B. risk of bias graph: review authors’ judgments about each item presented as percentages across all included studies.

Diagnostic accuracy

The forest plot of data from included articles on sensitivity and specificity for UCA1 assay in diagnosing bladder cancer is shown in Figure 3. Significant heterogeneity was found for both sensitivity (I2 = 66%, 95% CI = 36.34%-95.67%) and specificity (I2 = 91.96%, 95% CI = 87.09%-96.83%). Therefore, the random effects model was applied for the further analysis. Overall, the sensitivity and specificity for the pooled data were 0.81 (95% CI = 0.75-0.86) and 0.86 (95% CI = 0.73-0.93), respectively. In addition, the pooled PLR was 5.85 (95% CI = 2.72-12.57), the NLR was 0.22 (95% CI = 0.15-0.32), and the DOR was 27.01 (95% CI = 8.69-83.97) (Figure 4 and 5). The SROC curve for the 6 included studies in shown in Figure 6. The AUC of urine UCA1 tests was 0.88 (95% CI = 0.85-0.91), thereby implying a relatively high diagnostic value. To evaluate the clinical utility of the index test, a Fagan's Nomogram was performed to predict the increasing inerrability about a positive diagnosis by using the value of the test and it is used for estimating post-test probabilities (Figure 7).
Figure 3

Forest plots of the sensitivity and specificity for UCA1 in the diagnosis of bladder cancer

Figure 4

Forest plots of estimated positive likelihood ratio (PLR) and negative likelihood ratio (NLR) for urine UCA1 in the diagnosis of bladder cancer

Figure 5

Forest plots of estimated pooled diagnostic odds ratio (DOR) for urine UCA1 in the diagnosis of bladder cancer

Figure 6

Summary receiver operating characteristic graph of included studies

Figure 7

Fagan's nomogram for calculation of post-test probabilities

Meta-regression and subgroup analysis

The sources of potential heterogeneity in sensitivity and specificity were explored by univariate meta-regression analysis and subgroup analysis. As shown in Figure 8, in the 3 Chinese studies, the pooled sensitivity and specificity was 0.81% (95% CI = 0.73-0.89) and 0.85% (95% CI = 0.71-1.00) respectively, and in 3 non-Chinese studies, the pooled sensitivity and specificity was 0.81 (95% CI = 0.74-0.89) and 0.87 (95% CI = 0.73-1.00) respectively. The ethnicity significantly accounted for the heterogeneity of sensitivity.
Figure 8

Univariable meta-regression and subgroup analysis

Threshold effect

Differences in cut-off values lead to the threshold effect. When there is a threshold effect, an inverse correlation is demonstrated among the sensitivity and specificity, leading to a typical ‘shoulder arm’ of the ROC plane distribution. Spearman correlation analysis is also suggests a strong positive correlation. In the current study, the representation of the sensitivity against the specificity of each study shown in an ROC plane (Figure 9), displayed a non-typical shoulder arm appearance, indicating the absence of the threshold effect. In addition, the calculated Spearman correlation coefficient value was -0.429 (P = 0.397), also suggesting that there was no threshold effect.
Figure 9

Receiver operating characteristics (ROC) space for the assessment of the threshold effect in UCA1 assays

Publication bias

In our meta-analysis, Deeks’ funnel plot asymmetry test was conducted to evaluate potential publication bias (Figure 10). No significant publication bias existed among the studies (P = 0.33).
Figure 10

Deeks’ funnel plot asymmetry test for publication

DISCUSSION

Bladder cancer is one of the most common male genitourinary tumors [25-27]. To date, although bladder cancer can be initial diagnosed by screening cystoscopy, random bladder biopsies, and voided urinary cytology, the first two methods are invasive and uncomfortable, and the low sensitivity and high variability of cytology creates a challenge that limits its application in the early diagnosis of bladder cancer due to inter-observer reproducibility [28-30]. Thus, searching a feasible, reliable, and minimally noninvasive method to detect new or recurrent bladder cancer is the need of the hour. In current meta-analysis, we conducted the first diagnostic meta-analysis to assess the accuracy of urine UCA1 as a biomarker for bladder cancer. An AUC of 0.88 (95% CI, 0.85-0.91), with pooled SEN of 0.81 (95% CI, 0.75-0.86) and SPE of 0.86 (95% CI, 0.73-0.93) showed that UCA1 in voided urine sediment may be a promising biomarker to discriminate bladder cancer patients from normal bladder. As a prevalence-independent indicator, DOR value could indicate the degree of the association between diagnostic results and disease. The pooled DOR of 27.01 (95% CI, 8.69-83.97) suggested that the overall accuracy of UCA1 for the diagnosis of bladder cancer is credible. The likelihood ratio (LR), including PLR and NLR, could also reflect the diagnostic accuracy. When positive likelihood ratio > 10 or negative likelihood ratio < 0.1, the likelihood of diagnosis or exclusion of a disease increased significantly. Nevertheless, in our meta-analysis, a pooled PLR of 5.85 (95% CI, 2.72-12.57) and NLR 0.22 (95% C, 0.15-0.32) indicated that patients with bladder cancer have an ~5.86-fold higher chance of testing positive using UCA1 compared with controls and 33% individuals with bladder cancer have an negative result. LR and post-test probabilities are correlation with clinicians, due to they provide information about the likelihood of a patient with a positive or negative test actually exhibiting bladder cancer. From the Fagan's Nomogram, we found that when a pre-test probability of 20% was specified, the post-test probability positivity would raise to 59% with a positive likelihood ratio of 6, and the post-test probability negativity would decreased to 5% with a negative likelihood ratio was 0.22. These outcomes suggest a stable value for UCA1 in the diagnosis of bladder cancer. Heterogeneity is a potential obstacle when interpreting the results for meta-analysis, which should be seriously considered [31]. Although rigorous approach has been adopted to retrieve documents, there was still potential heterogeneity in our current study. One source of heterogeneity is the threshold effect, which arises due to variable cut-off values adopted in different studies to determine whether the results were negative or positive. The ROC plane displayed a non-typical shoulder arm appearance, indicating the absence of the threshold effect. In addition, the calculated Spearman correlation coefficient value was -0.429 (P = 0.397), also suggesting that threshold effect is not the cause of heterogeneity. Then, we found that sample size and ethnicity may have partially led to such heterogeneity. Therefore, subgroup analyses were performed to evaluate the contribution of the factors above sources of potential heterogeneity in sensitivity and specificity was explored by univariate meta-regression analysis and subgroup analysis. Urine UCA1 has higher diagnostic accuracy for bladder cancer detection in non-Chinese persons than in Chinese persons, indicating that ethnicity may be one of the causes of heterogeneity. Due to there were insufficient eligible studies to fully elucidate the source of the heterogeneity, the possible reason for the heterogeneity need to be investigated in future studies. The current study has several limitations. First, despite extensive literature search were performed, the number of included studies and sample sizes were small, which may restrict our ability to evaluate the accuracy of urine UCA1. Second, we could not determine the ideal cut-off value for urine UCA1 test, due to different cut-off values were adopted in each study. Third, this meta-analysis was a retrospective analysis, which may limit the conclusion due to selection bias. Fourth, only articles published in English or Chinese were enrolled in our meta-analysis, which may cause inevitable bias. Despite these limitations, the present evidence suggests that urine UCA1 is potential to be a diagnosis biomarker for bladder cancer, due to this non-invasive method has good overall diagnostic performance. However, large-scale and comprehensive studies must be performed in the future to validate this finding.

MATERIALS AND METHODS

Search strategy

This meta-analysis as conducted under the diagnostic meta-analysis guidelines [32]. Studies regarding the diagnostic value of UCA1 in detecting bladder cancer were searched in PubMed, Cochrane library, Chinese Wan Fang and the China National Knowledge Infrastructure (CNKI) databases up to December 2016. Both MeSH terms and free-text words were used in the search strategy to increase sensitivity. The following search keywords were used in combination: “UCA1” or “urothelial carcinoma-associated 1”, “bladder cancer” or “bladder carcinoma” or “carcinoma of urinary bladder”. In addition, references of all articles in these eligible studies were also read to identify additional relevant literature.

Inclusion and exclusion criteria

The inclusion criteria were listed as follows: (1) articles were association between UCA1 and bladder cancer; (2) a diagnostic standard of bladder cancer was included; (3) sufficient data (true positive, false positive, false negative and true negative) for calculating sensitivity and specificity; (4) studies should base on humans; (5) studies were published in English or Chinese. Exclusion criteria were as follows: (1) studies without usable or overlapping data; (2) reviews, letters, case report and conference abstracts; (3) insufficient data for calculating sensitivity and specificity.

Data extraction

Two investigators (Xiangrong Cui and Xuan Jing) retrieved the eligible publications independently. Any disagreement between the two investigators was determined through a discussion with a third investigator. The following data were extracted: first author, year of publication, country, ethnicity of patients, sample size, type of specimen, true and false positive and negative.

Statistical analysis

For the diagnostic meta-analysis, the accuracy indicator include the pooled sensitivity (SEN), pooled specificity (SPE), positive likelihood ratio (PLR), negative likelihood ration (NLR), diagnostic odds ratio (DOR), and their 95% confidence interval (CI) were calculated using the random-effect model. PLR was on behalf of the odds of positive test results of bladder cancer patients, while NLR reflected the odds of positive results in those without bladder cancer. DOR was the outcome of the combination of PLR and NLR (DOR = PLR/NLR). Simultaneously, the summary receiver operator characteristic (SROC) curve was created and the under the SROC curve (AUC) was calculated [33]. The analysis of diagnostic accuracy was pursuant to a SROC curve and the AUC of the SROC. In addition, the I2 and Q test were performed to evaluate heterogeneity in SEN and SPE among included studies. If the tests show a P < 0.1 or I2 > 50%, the existence of significant heterogeneity would be verified, and then the random-effect model was employed. If not, the fixed-effect model was more appropriate [34, 35]. Subsequently, meta-regression and subgroup analyses were conducted to explore potential sources of between-study heterogeneity. Furthermore, Deeks’ funnel plots were adopted to test the publication bias [36]. All statistical analyses were performed using RevMan 5.3 (Revman, the Cochrane Collaboration) and Stata 12.0 (Stata, College Station).
  34 in total

Review 1.  A methodological review of how heterogeneity has been examined in systematic reviews of diagnostic test accuracy.

Authors:  J Dinnes; J Deeks; J Kirby; P Roderick
Journal:  Health Technol Assess       Date:  2005-03       Impact factor: 4.014

2.  Comment on: Heterogeneity in meta-analysis should be expected and appropriately quantified.

Authors:  Michael D Coory
Journal:  Int J Epidemiol       Date:  2009-04-06       Impact factor: 7.196

3.  BLCA-4 and UBC combined detection for early diagnosis of bladder cancer.

Authors:  L Cui; M M Sun; Z H Zhao; J P Yang; Y P Zheng; L L He; K S Chen; Q X Fan
Journal:  J Biol Regul Homeost Agents       Date:  2016 Apr-Jun       Impact factor: 1.711

4.  Integrative functional genetic-epigenetic approach for selecting genes as urine biomarkers for bladder cancer diagnosis.

Authors:  Sanaa Eissa; Marwa Matboli; Nada O E Essawy; Youssef M Kotb
Journal:  Tumour Biol       Date:  2015-07-03

5.  [Evaluation of novel gene UCA1 as a tumor biomarker for the detection of bladder cancer].

Authors:  Zheng Zhang; Han Hao; Cui-jian Zhang; Xin-yu Yang; Qun He; Jian Lin
Journal:  Zhonghua Yi Xue Za Zhi       Date:  2012-02-14

6.  Systematic reviews of diagnostic test accuracy.

Authors:  Mariska M G Leeflang; Jonathan J Deeks; Constantine Gatsonis; Patrick M M Bossuyt
Journal:  Ann Intern Med       Date:  2008-12-16       Impact factor: 25.391

7.  SETD6 regulates NF-κB signaling in urothelial cell survival: Implications for bladder cancer.

Authors:  Neelam Mukherjee; Eduardo Cardenas; Roble Bedolla; Rita Ghosh
Journal:  Oncotarget       Date:  2017-02-28

8.  A novel long noncoding RNA PILRLS promote proliferation through TCL1A by activing MDM2 in Retroperitoneal liposarcoma.

Authors:  Yebo Shao; Yong Zhang; Yingyong Hou; Hanxing Tong; Rongyuan Zhuang; Zhengbiao Ji; Binliang Wang; Yuhong Zhou; Weiqi Lu
Journal:  Oncotarget       Date:  2017-02-21

9.  Identification of long noncoding RNAs for the detection of early stage lung squamous cell carcinoma by microarray analysis.

Authors:  Zule Cheng; Yanan Bai; Ping Wang; Zhenhua Wu; Lin Zhou; Ming Zhong; Qinghui Jin; Jianlong Zhao; Hailei Mao; Hongju Mao
Journal:  Oncotarget       Date:  2017-02-21

10.  Highly sensitive and specific novel biomarkers for the diagnosis of transitional bladder carcinoma.

Authors:  Prashant Kumar; Sayantani Nandi; Tuan Zea Tan; Siok Ghee Ler; Kee Seng Chia; Wei-Yen Lim; Zentia Bütow; Dimitrios Vordos; Alexandre De la Taille; Muthafar Al-Haddawi; Manfred Raida; Burkhard Beyer; Estelle Ricci; Marc Colombel; Tsung Wen Chong; Edmund Chiong; Ross Soo; Mi Kyoung Park; Hong Koo Ha; Jayantha Gunaratne; Jean Paul Thiery
Journal:  Oncotarget       Date:  2015-05-30
View more
  6 in total

Review 1.  Epigenetic Alterations in Bladder Cancer.

Authors:  Sima P Porten
Journal:  Curr Urol Rep       Date:  2018-10-24       Impact factor: 3.092

Review 2.  Role of Non-Coding RNAs in the Etiology of Bladder Cancer.

Authors:  Caterina Gulìa; Stefano Baldassarra; Fabrizio Signore; Giuliano Rigon; Valerio Pizzuti; Marco Gaffi; Vito Briganti; Alessandro Porrello; Roberto Piergentili
Journal:  Genes (Basel)       Date:  2017-11-22       Impact factor: 4.096

3.  Screening and identification of key biomarkers in bladder carcinoma: Evidence from bioinformatics analysis.

Authors:  Meiqin Yan; Xuan Jing; Yina Liu; Xiangrong Cui
Journal:  Oncol Lett       Date:  2018-06-21       Impact factor: 2.967

4.  MiR-101 acts as a novel bio-marker in the diagnosis of bladder carcinoma.

Authors:  Xiaoyan Chen
Journal:  Medicine (Baltimore)       Date:  2019-06       Impact factor: 1.817

Review 5.  Epigenetics of Bladder Cancer: Where Biomarkers and Therapeutic Targets Meet.

Authors:  Victor G Martinez; Ester Munera-Maravilla; Alejandra Bernardini; Carolina Rubio; Cristian Suarez-Cabrera; Cristina Segovia; Iris Lodewijk; Marta Dueñas; Mónica Martínez-Fernández; Jesus Maria Paramio
Journal:  Front Genet       Date:  2019-11-18       Impact factor: 4.599

Review 6.  Liquid Biopsy Biomarkers in Bladder Cancer: A Current Need for Patient Diagnosis and Monitoring.

Authors:  Iris Lodewijk; Marta Dueñas; Carolina Rubio; Ester Munera-Maravilla; Cristina Segovia; Alejandra Bernardini; Alicia Teijeira; Jesús M Paramio; Cristian Suárez-Cabrera
Journal:  Int J Mol Sci       Date:  2018-08-24       Impact factor: 5.923

  6 in total

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