Skip to main content
Advertisement
Browse Subject Areas
?

Click through the PLOS taxonomy to find articles in your field.

For more information about PLOS Subject Areas, click here.

  • Loading metrics

C-reactive protein to albumin ratio predicts the outcome in renal cell carcinoma: A meta-analysis

  • Wei Zhou,

    Roles Conceptualization, Data curation, Formal analysis, Investigation, Methodology, Project administration, Resources, Software, Supervision, Validation, Visualization, Writing – original draft, Writing – review & editing

    Affiliation Department of Urology, Huangshi Central Hospital (Pu Ai Hospital), Affiliated Hospital of Hubei Polytechnic University, Edong Healthcare Group, Huangshi, Hubei,China

  • Guang-lin Zhang

    Roles Conceptualization, Data curation, Formal analysis, Investigation, Methodology, Project administration, Resources, Software, Supervision, Validation, Visualization, Writing – original draft, Writing – review & editing

    guanglinzhang@yeah.net

    Affiliation Department of Abdominal and Pelvic Medical Oncology II ward, Huangshi Central Hospital (Pu Ai Hospital), Affiliated Hospital of Hubei Polytechnic University, Edong Healthcare Group, Huangshi, Hubei, China

Abstract

Background

Growing evidence has revealed that pretreatment C-reactive protein to albumin ratio (CAR) are associated with prognosis for patients with renal cell carcinoma (RCC). However, inconsistent findings have been reported, which promote us to summarize the global predicting role of CAR for survival in RCC patients.

Methods

Two reviewers independently retrieved the literature on EMBASE, MEDLINE, and Cochrane Library databases for eligible studies evaluating the associations of CAR with survival. Data related to the overall survival (OS), disease-free survival (DFS), progress-free survival (PFS), and clinicopathological features were extracted and pooled using meta-analysis with fixed or random- effect models when applicable.

Results

Eight studies including 2,829 patients were analyzed in the present study. High pretreatment CAR was associated with worse OS (pooled HR: 2.14, 95% CI = 1.64–2.79, p < 0.001) and DFS/PFS (pooled HR: 1.75, 95% CI: 1.31–2.35, P < 0.001). Moreover, high CAR was correlated with performance status (≥ 1), tumor location (left), Fuhrman grade (3–4), TNM stage (III-IV), T stage (T3-4), N stage (N1), M stage (M1), tumor necrosis (yes), venous thrombus (positive), metastasis at diagnosis (yes), NLR (> median), and PLR (> median).

Conclusion

High pretreatment CAR is effectively predictive of worse survival in patients with RCC and could be a prognostic biomarker for those patients.

Introduction

Renal cell carcinoma (RCC) is the most lethal urologic malignancy with incidence rates increase approximately 2% annually [1]. Despite recent efforts in multimodal approaches, RCC remains a huge health burden worldwide and a major cause of mortality due to the high frequent metastasis and recurrence after surgery [2, 3]. At present, there is no effective biomarker for early detection, diagnosis and prognosis of renal tumors. Therefore, there is an urgent need to find a reliable biomarker of RCC to individualized treatment.

It has been reported that cancer-associated inflammation can promote cancer development and angiogenesis [4]. Several inflammatory markers, such as modified Glasgow Prognostic Score (mGPS), C-reactive protein (CRP), and the combination of neutrophil, lymphocyte, monocyte count plays a key role in prognosis in RCC [57]. Recently, the C-reactive protein to albumin ratio (CAR) as a novel inflammation-based prognostic score, combination of CRP and albumin, has shown significant prognostic value in RCC [810]. However, most of these studies include only small study populations and their conclusions remain inconclusive [11, 12]. The inconsistent findings prompted us to perform this study to provide a comprehensive overview of all reported clinical studies investigating the impact of CAR on prognosis and clinicopathological feature of RCC patients.

Materials and methods

Search strategy

The present study was conducted and reported under the guidelines formulated in Preferred Reporting Items for Systematic Reviews and Meta-analyses. A comprehensive literature search was carried out on the basis of the electronic databases including MEDLINE, Embase, and Cochrane Library databases. The literature search was conducted up to June 2019. The key words used included: (“C-reactive protein to Albumin ratio” or “C-reactive protein-to-Albumin ratio” or “C-reactive protein Albumin ratio” or “C-reactive protein/Albumin ratio” or “CRP/Alb ratio”) and (“renal” or “kidney” or “nephron*”) and (“carcinoma” or “cancer” or “tumor” or “neoplasms” or “cancer”). Detailed search strategies refer to S1 Text.

Inclusion and exclusion criteria

The studies qualified to be included had to meet the following criteria: (1) studies investigating the relationship between pretreatment CAR and RCC prognosis; (2) patients did not receive any treatment (such as surgery or chemotherapy) before obtaining samples; and (3) the study directly provided HRs with 95% CIs or exhibited adequate data which can be used to calculate these statistics. The studies were excluded according to exclusion criteria: (1) duplicated studies, (2) studies provided inadequate survival data for further quantification, and (3) conference abstracts, letters, or case reports.

Data extraction

Data were extracted using pre-designed standardized forms as following: study characteristics (first author’s name, publication year, region, and sample size); patients information (gender and age, performance status), pathological characteristics (tumor location, histology type, Fuhrman grade, TNM stage, tumor necrosis, venous thrombus, and metastasis at diagnosis), and clinical features (symptoms, type of treatment applied, CAR cut-off values, neutrophil-lymphocyte ratio (NLR), platelet-lymphocyte ratio (PLR), patient’s survival outcome, and follow-up period).

Quality assessment

The quality assessment of enrolled study was conducted following the guidelines of the Newcastle-Ottawa Scale (NOS), which assessed studies with 9 items including selection, comparability, outcome of interest, follow-up et al [13]. Studies with NOS values greater than 6 are considered high quality studies.

Statistical analysis

We combined HRs with their corresponding 95% CIs from each eligible study to evaluate the prognostic value of pretreatment CAR in RCC patients. As for clinical features, ORs and associated 95% CI were used. In this meta-analysis, the HRs and 95% CIs were directly extracted if a study reported the survival analysis, otherwise, they were computed from the Kaplan-Meier graph using the software of Engauge Digitizer (version 4.1) [14, 15]. The heterogeneity was tested with Cochran’s Q test and Higgins’s I2 statistic. For the presence of heterogeneity (P < 0.05 or/and I2 > 50%), a random-effect model was employed to calculate the pooled HRs; otherwise, a fixed effect model was selected (P > 0.05 or/and I2 < 50%) [16]. Potential sources of heterogeneity were identified by performing subgroup and sensitivity analyses. All statistical analyses were conducted using Review Manager 5.3 software (Cochrane Collaboration, Copenhagen, Denmark).

Results

Included literature

Literature research identified 21 records, including 9 from Medline, 11 from Embase, and 1 from Cochrane Library. As shown in the flow diagram for the literature (Fig 1), 11 articles were left after removing duplications. After screening titles and abstracts, 10 full-text articles remained for further assessment. Two articles were excluded according to the inclusion criteria. A total of 8 articles were finally enrolled for the evidence synthesis [812, 1719].

thumbnail
Fig 1. Flowchart describing the literature search and study selection.

https://doi.org/10.1371/journal.pone.0224266.g001

Study characteristics

The main features of all the eligible studies are summarized in Table 1. Most of included studies were from China and Japan. There were 6 studies were reported at mixed disease, and 2 studies were reported in metastatic disease. All the eligible studies assessed prognostic value of CAR on OS, and 5 studies for DFS or PFS. Cutoff values of CAR ranged from 0.05 to 1.5. The HR and 95% CI data were evaluated using univariate analysis in 1 study and multivariate analysis in 7 studies. The Newcastle-Ottawa Scale (NOS) score of each study included ranged from 7 to 9, suggesting that the methodological qualities were overall moderate to high.

thumbnail
Table 1. Characteristics of the studies included in the meta-analysis.

https://doi.org/10.1371/journal.pone.0224266.t001

CAR and OS in RCC

All included studies including 2,829 patients reported the relationship between CAR and OS in RCC. A random-effects model was applied to estimate the pooled HR and corresponding 95% CI as the significant heterogeneity (I2 = 82%, P < 0.001). As a result, high pretreatment CAR was predictive of a short OS (pooled HR: 2.95, 95% CI: 1.76–4.95, p < 0.001, Fig 2).

thumbnail
Fig 2. Forest plots of the correlation between CAR and OS in RCC patients.

https://doi.org/10.1371/journal.pone.0224266.g002

To explore the source of heterogeneity, subgroup study was performed (Table 2).

The pooled HRs for all subgroups were not significantly altered by the study characteristics. For example, exploratory subgroup analysis, based on tumor stage, indicated that patients with mixed stage (pooled HR: 3.54; 95% CI = 1.99–6.29; P < 0.001) and metastatic stage (pooled HR: 1.71; 95% CI = 1.25–2.32; P < 0.001) were all significantly associated with worse OS. Similarly, stratified analysis by cut-off for CAR showed that significant poor OSS was observed in both CAR < 0.08 (pooled HR: 2.00; 95% CI = 1.62–2.47; P < 0.001) and patients with CAR > 0.08 (pooled HR: 6.01; 95% CI = 4.45–8.13; P < 0.001). Moreover, histology type, sample size, treatment, and analysis method also did not affect the significant predictive impact of CAR in RCC patients.

thumbnail
Table 2. Pooled hazard ratios (HRs) for OS according to subgroup analyses.

https://doi.org/10.1371/journal.pone.0224266.t002

CAR and DFS/PFS in RCC

Five studies involving 1,382 patients investigated the correlation between pretreatment CAR and DFS/RFS. According to the final pooled HR of 1.75 (95% CI = 1.31–2.35, P < 0.001, Fig 3), it indicated that high CAR was associated with worse DFS/RFS in patients with RCC.

thumbnail
Fig 3. Forest plots of the correlation between CAR and DFS/PFS in RCC patients.

https://doi.org/10.1371/journal.pone.0224266.g003

CAR and clinicopathological characteristics

A total of 16 variables were investigated in the meta-analysis, including age, gender, performance status, tumor location, symptoms, histology type, Fuhrman grade, TNM stage, T stage, N stage, M stage, tumor necrosis, venous thrombus, metastasis at diagnosis, NLR, and PLR. The results demonstrated that high CAR was related to performance status (≥ 1 vs. 0; OR = 3.86, 95% CI: 2.51–5.95, P < 0.001), tumor location (left vs. right; OR = 1.92, 95% CI: 1.04–3.54, P = 0.04), Fuhrman grade (3–4 vs. 1–2; OR = 3.29, 95% CI: 2.21–4.90, P < 0.001), TNM stage (III-IV vs. I-II; OR = 5.17, 95% CI: 3.58–7.49, P < 0.001), T stage (T3-4 vs. T1-2; OR = 3.46, 95% CI: 1.91–6.25, P < 0.001), N stage (N1 vs. N0; OR = 4.02, 95% CI: 2.77–5.83, P < 0.001), M stage (M1 vs. M0; OR = 12.09, 95% CI: 4.60–31.77, P < 0.001), tumor necrosis (yes vs. no; OR = 2.31, 95% CI: 1.26–4.24, P = 0.007), venous thrombus (positive vs. negative; OR = 16.46, 95% CI: 4.61–58.83, P < 0.001), metastasis at diagnosis (yes vs. no; OR = 3.30, 95% CI: 1.12–9.71, P = 0.03), NLR (> median vs. < median; OR = 2.90, 95% CI: 1.47–5.71, P = 0.002), and PLR (> median vs. < median; OR = 2.92, 95% CI: 1.66–5.15, P < 0.001). However, there was no obvious correlation between CAR and age (> median vs. < median; OR = 1.28, 95% CI: 0.76–2.14, P = 0.36), gender (male vs. female; OR = 1.05, 95% CI: 0.83–1.33, P = 0.70), symptoms (symptomatic vs. asymptomatic; OR = 3.20, 95% CI: 0.67–15.31, P = 0.14), and histology type (clear vs. others; OR = 0.31, 95% CI: 0.07–1.35, P = 0.12). Table 3 lists the details of the relationship between CAR and clinicopathologic parameters.

thumbnail
Table 3. Meta-analysis of the association between CAR and clinicopathological features of RCC.

https://doi.org/10.1371/journal.pone.0224266.t003

Sensitivity analysis

Sensitivity analyses were further carried out to investigate the effect of single study on the overall conclusion. After removing Komura's study, the heterogeneity between studies was significantly reduced (I2 = 19%, P = 0.28). However, there is no significant influence on the pooled results of OS (pooled HR: 2.14; 95% CI = 1.64–2.79; P < 0.001), which indicated the robustness of the results described above.

Discussion

A previous meta-analysis was conducted to evaluate the prognostic value of CAR in patients with variety types of cancer, in which only 2 studies of RCC were included [20]. In addition, they only assessed the prognostic value of CAR in OS without assessing the association between CAR and DFS/PFS and clinicopathological features. To the best of our knowledge, our study is the first and most comprehensive systematic evaluation of the literatures exploring the prognostic impact of pretreatment CAR in RCC survivors. According to the pooled results, there was a significant correlation of high CAR with worse survival of RCC patients, with a combined HR of 2.95 (95% CI 1.76–4.95) for OS, 1.75 (95% CI 1.31–2.35) for DFS/PFS. Subgroup analysis indicated that the predictive efficacy for OS were more significant, regardless of tumor stage, histology type, sample size, treatment, cut-off value for OS, and analysis method. To further explore the source of heterogeneity, we performed sensitive analyses. The results showed that the heterogeneity between the studies was significantly reduced after the removal of Komura’s study. The prognostic value of CAR has not been significantly affected, with HR of 2.14. Moreover, high pretreatment CAR were correlated with advanced clinicopathological characteristics, such as performance status (≥ 1), tumor location (left), Fuhrman grade (3–4), TNM stage (III-IV), T stage (T3-4), N stage (N1), M stage (M1), tumor necrosis (yes), venous thrombus (positive), metastasis at diagnosis (yes), NLR (> median), and PLR (> median). Therefore, CAR provides a potential new prognostic biomarker for cancer control that will help counteract the burden of this disease.

There is a well-documented correlation between the inflammation and cancer, although the exact mechanism is still not fully understood. Inflammatory response can promote tumorigenesis and progression by affecting the tumor microenvironment [21]. Tumor-associated inflammatory response consists of inflammatory cells and a range of inflammatory mediators, such as acute phase proteins, chemokines, and cytokines, which stimulate tumor cell growth, promote angiogenesis, resist cell death and apoptosis, and enhance invasion ability of tumor cells [4, 22]. There is increasing evidence that high levels of systemic inflammatory cells have the potential to serve as prognostic markers in RCC patients. Chen et al. [23] found that patients with high systemic inflammation response index have worse OS and cancer-specific survival (CSS) in RCC. Kim et al. [24] performed a retrospective study with 309 non-metastatic clear cell renal cell carcinoma patients, found that elevated NLR and PLR are indicative of a poor RFS.

Accumulating evidence has indicated that nutrition status and systemic inflammation are involved in tumor progression [8]. Serum CRP and albumin are indicators of chronic inflammation and poor nutritional status of cancer patients [25, 26]. The CAR calculated from the serum CRP and albumin levels. It was originally studied as a prognostic marker for patients with sepsis [27] and was later used as a marker for patients with tumors [28]. Recently, CAR has been reported to predict oncological outcomes in patients with RCC. However, the exact mechanism regarding its prognostic ability have not been clearly elaborated. CRP is an acute-phase protein that is synthesized in the liver, together with cytokines such as interleukin (IL)-1, IL-6, and tumor necrosis factor α [29, 30]. Research has discovered that CRP produces inflammatory cytokines and chemokines, which lead to cancer progression [31]. Several studies have shown that high CRP level was linked to worse survival of RCC patients [32, 33]. Serum albumin is an objective indicator of nutritional status and clinical inflammation that is downregulated in inflammation [34]. Since both proteins are synthesized in hepatocytes, the combination of up-regulated acute phase inflammatory protein and down-regulated chronic phase inflammatory protein may be effective in predicting prognosis.

Several limitations of this study should be considered. First, most of included studies were carried out in Asia. Hence, it is possible that our findings may not extend to other populations across the world. Second, there is a lack of unified cut-off values of CAR. An appropriate definition of the cut-off values is for increased improve survival risk. To a large extent, inconsistencies in methodologies have led to differences in contemporary findings on the prognostic value of CAR. Therefore, determining the standard cut-off value of CAR will significantly promote a final consensus on the prognostic value of CAR. Third, when performing multivariate analysis, the risk factors for adjustment are not exactly the same. Finally, all included studies were retrospective studies.

Conclusions

Our study demonstrated that pretreatment CAR is significant determinants of shorter OS, DFS, and PFS in patients with RCC.

Supporting information

S1 Table. PRISMA checklist.

Completed checklist of PRSIMA guidelines.

https://doi.org/10.1371/journal.pone.0224266.s001

(DOC)

S2 Table. Study characteristics.

Characteristics of the studies included in the meta-analysis.

https://doi.org/10.1371/journal.pone.0224266.s002

(XLSX)

S1 Text. Search strategies.

Search strategy used in meta-analysis.

https://doi.org/10.1371/journal.pone.0224266.s003

(DOC)

References

  1. 1. Kuusk T, Grivas N, de Bruijn R, Bex A. The current management of renal cell carcinoma. Minerva Med. 2017;108(4):357–69. pmid:28176516
  2. 2. Cella D, Grunwald V, Nathan P, Doan J, Dastani H, Taylor F, et al. Quality of life in patients with advanced renal cell carcinoma given nivolumab versus everolimus in CheckMate 025: a randomised, open-label, phase 3 trial. Lancet Oncol. 2016;17(7):994–1003. Epub 2016/06/11. pmid:27283863; PubMed Central PMCID: PMC5521044.
  3. 3. Wu Y, Wang YQ, Weng WW, Zhang QY, Yang XQ, Gan HL, et al. A serum-circulating long noncoding RNA signature can discriminate between patients with clear cell renal cell carcinoma and healthy controls. Oncogenesis. 2016;5:e192. Epub 2016/02/16. pmid:26878386; PubMed Central PMCID: PMC5154346.
  4. 4. Grivennikov SI, Greten FR, Karin M. Immunity, inflammation, and cancer. Cell. 2010;140(6):883–99. Epub 2010/03/23. pmid:20303878; PubMed Central PMCID: PMC2866629.
  5. 5. Ohmura H, Uchino K, Kajitani T, Sakamoto N, Baba E. Predictive value of the modified Glasgow Prognostic Score for the therapeutic effects of molecular-targeted drugs on advanced renal cell carcinoma. Mol Clin Oncol. 2017;6(5):669–75. Epub 2017/05/19. pmid:28515920; PubMed Central PMCID: PMC5431320.
  6. 6. Nakayama T, Saito K, Kumagai J, Nakajima Y, Kijima T, Yoshida S, et al. Higher Serum C-reactive Protein Level Represents the Immunosuppressive Tumor Microenvironment in Patients With Clear Cell Renal Cell Carcinoma. Clin Genitourin Cancer. 2018;16(6):e1151–e8. Epub 2018/09/15. pmid:30213543.
  7. 7. Fukuda H, Takagi T, Kondo T, Shimizu S, Tanabe K. Predictive value of inflammation-based prognostic scores in patients with metastatic renal cell carcinoma treated with cytoreductive nephrectomy. Oncotarget. 2018;9(18):14296–305. Epub 2018/03/28. pmid:29581844; PubMed Central PMCID: PMC5865670.
  8. 8. Komura K, Hashimoto T, Tsujino T, Muraoka R, Tsutsumi T, Satake N, et al. The CANLPH Score, an Integrative Model of Systemic Inflammation and Nutrition Status (SINS), Predicts Clinical Outcomes After Surgery in Renal Cell Carcinoma: Data From a Multicenter Cohort in Japan. Annals of surgical oncology. 2019. Epub 2019/06/27. pmid:31240592.
  9. 9. Konishi S, Hatakeyama S, Tanaka T, Ikehata Y, Tanaka T, Hamano I, et al. C-reactive protein/albumin ratio is a predictive factor for prognosis in patients with metastatic renal cell carcinoma. International journal of urology: official journal of the Japanese Urological Association. 2019. Epub 2019/07/26. pmid:31342557.
  10. 10. Tsujino T, Komura K, Hashimoto T, Muraoka R, Satake N, Matsunaga T, et al. C-reactive protein-albumin ratio as a prognostic factor in renal cell carcinoma—A data from multi-institutional study in Japan. Urol Oncol. 2019. Epub 2019/05/06. pmid:31053528.
  11. 11. Barua SK, Singh Y, Baruah SJ, T PR, Bagchi PK, Sarma D, et al. Predictors of Progression-Free Survival and Overall Survival in Metastatic Non-Clear Cell Renal Cell Carcinoma: A Single-Center Experience. World J Oncol. 2019;10(2):101–11. Epub 2019/05/10. pmid:31068990; PubMed Central PMCID: PMC6497011.
  12. 12. Agizamhan S, Qu F, Liu N, Sun J, Xu W, Zhang L, et al. Preoperative neutrophil-to-lymphocyte ratio predicts the surgical outcome of Xp11.2 translocation/TFE3 renal cell carcinoma patients. BMC Urol. 2018;18(1):60. Epub 2018/06/13. pmid:29890986; PubMed Central PMCID: PMC5996532.
  13. 13. Stang A. Critical evaluation of the Newcastle-Ottawa scale for the assessment of the quality of nonrandomized studies in meta-analyses. Eur J Epidemiol. 2010;25(9):603–5. pmid:20652370.
  14. 14. Parmar MK, Torri V, Stewart L. Extracting summary statistics to perform meta-analyses of the published literature for survival endpoints. Stat Med. 1998;17(24):2815–34. pmid:9921604.
  15. 15. Tierney JF, Stewart LA, Ghersi D, Burdett S, Sydes MR. Practical methods for incorporating summary time-to-event data into meta-analysis. Trials. 2007;8:16. pmid:17555582; PubMed Central PMCID: PMC1920534.
  16. 16. DerSimonian R, Laird N. Meta-analysis in clinical trials. Control Clin Trials. 1986;7(3):177–88. Epub 1986/09/01. pmid:3802833.
  17. 17. Guo S, He X, Chen Q, Yang G, Yao K, Dong P, et al. The C-reactive protein/albumin ratio, a validated prognostic score, predicts outcome of surgical renal cell carcinoma patients. BMC Cancer. 2017;17(1):171. Epub 2017/03/08. pmid:28264659; PubMed Central PMCID: PMC5339967.
  18. 18. Gao J, Agizamhan S, Zhao X, Jiang B, Qin H, Chen M, et al. Preoperative C-reactive protein/albumin ratio predicts outcome of surgical papillary renal cell carcinoma. Future Oncol. 2019;15(13):1459–68. Epub 2019/04/13. pmid:30977386.
  19. 19. Chen Z, Shao Y, Fan M, Zhuang Q, Wang K, Cao W, et al. Prognostic significance of preoperative C-reactive protein: albumin ratio in patients with clear cell renal cell carcinoma. Int J Clin Exp Pathol. 2015;8(11):14893–900. Epub 2016/01/30. pmid:26823819; PubMed Central PMCID: PMC4713605.
  20. 20. Xu HJ, Ma Y, Deng F, Ju WB, Sun XY, Wang H. The prognostic value of C-reactive protein/albumin ratio in human malignancies: an updated meta-analysis. Onco Targets Ther. 2017;10:3059–70. pmid:28790840.
  21. 21. Hanahan D, Weinberg RA. Hallmarks of cancer: the next generation. Cell. 2011;144(5):646–74. Epub 2011/03/08. pmid:21376230.
  22. 22. Diakos CI, Charles KA, McMillan DC, Clarke SJ. Cancer-related inflammation and treatment effectiveness. Lancet Oncol. 2014;15(11):e493–503. Epub 2014/10/05. pmid:25281468.
  23. 23. Chen Z, Wang K, Lu H, Xue D, Fan M, Zhuang Q, et al. Systemic inflammation response index predicts prognosis in patients with clear cell renal cell carcinoma: a propensity score-matched analysis. Cancer Manag Res. 2019;11:909–19. Epub 2019/01/31. pmid:30697081; PubMed Central PMCID: PMC6342149.
  24. 24. Kim TW, Lee JH, Shim KH, Choo SH, Choi JB, Ahn HS, et al. Prognostic significance of preoperative and follow-up neutrophil-to-lymphocyte ratio and platelet-to-lymphocyte ratio in patients with non-metastatic clear cell renal cell carcinoma. Investigative and clinical urology. 2019;60(1):14–20. Epub 2019/01/15. pmid:30637356; PubMed Central PMCID: PMC6318207.
  25. 25. McMillan DC. Systemic inflammation, nutritional status and survival in patients with cancer. Curr Opin Clin Nutr Metab Care. 2009;12(3):223–6. Epub 2009/03/26. pmid:19318937.
  26. 26. Coussens LM, Werb Z. Inflammation and cancer. Nature. 2002;420(6917):860–7. Epub 2002/12/20. pmid:12490959; PubMed Central PMCID: PMC2803035.
  27. 27. Ranzani OT, Zampieri FG, Forte DN, Azevedo LC, Park M. C-reactive protein/albumin ratio predicts 90-day mortality of septic patients. PloS one. 2013;8(3):e59321. Epub 2013/04/05. pmid:23555017; PubMed Central PMCID: PMC3595283.
  28. 28. Kinoshita A, Onoda H, Imai N, Iwaku A, Oishi M, Tanaka K, et al. The C-reactive protein/albumin ratio, a novel inflammation-based prognostic score, predicts outcomes in patients with hepatocellular carcinoma. Annals of surgical oncology. 2015;22(3):803–10. Epub 2014/09/06. pmid:25190127.
  29. 29. Nakazaki H. Preoperative and postoperative cytokines in patients with cancer. Cancer. 1992;70(3):709–13. Epub 1992/08/01. pmid:1320454.
  30. 30. Ruscetti FW. Hematologic effects of interleukin-1 and interleukin-6. Curr Opin Hematol. 1994;1(3):210–5. Epub 1994/05/01. pmid:9371284.
  31. 31. Asegaonkar SB, Asegaonkar BN, Takalkar UV, Advani S, Thorat AP. C-Reactive Protein and Breast Cancer: New Insights from Old Molecule. Int J Breast Cancer. 2015;2015:145647. Epub 2015/12/23. pmid:26693355; PubMed Central PMCID: PMC4674617.
  32. 32. Wang Z, Peng S, Wang A, Xie H, Guo L, Jiang N, et al. C-reactive protein is a predictor of prognosis in renal cell carcinoma patients receiving tyrosine kinase inhibitors: A meta-analysis. Clin Chim Acta. 2017;475:178–87. Epub 2017/10/31. pmid:29080691.
  33. 33. Takamatsu K, Mizuno R, Omura M, Morita S, Matsumoto K, Shinoda K, et al. Prognostic Value of Baseline Serum C-Reactive Protein Level in Intermediate-Risk Group Patients With Metastatic Renal-Cell Carcinoma Treated by First-Line Vascular Endothelial Growth Factor-Targeted Therapy. Clin Genitourin Cancer. 2018;16(4):e927–e33. Epub 2018/04/22. pmid:29678472.
  34. 34. Caraceni P, Tufoni M, Bonavita ME. Clinical use of albumin. Blood Transfus. 2013;11 Suppl 4:s18–25. Epub 2013/12/18. pmid:24333308; PubMed Central PMCID: PMC3853979.