| Literature DB >> 32082998 |
Long-Qing Li1, Zhen-Hua Bai1, Liang-Hao Zhang2, Yan Zhang1, Xin-Chang Lu1, Yi Zhang1, Yong-Kui Liu1, Jia Wen1, Jia-Zhen Li1.
Abstract
Background: Several recent studies have reported the reliable prognostic effect of hematological biomarkers in various tumors. Yet, the prognostic value of these hematological markers in soft tissue sarcoma (STS) remains inconclusive. Thus, the aim of this meta-analysis was to check the effect of hematological markers on the prognosis of STS.Entities:
Keywords: biomarker; hematological markers; inflammation; meta-analysis; prognosis; soft tissue sarcoma
Year: 2020 PMID: 32082998 PMCID: PMC7002470 DOI: 10.3389/fonc.2020.00030
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 6.244
Figure 1Flow chart of the included studies.
Baseline characteristics of studies included in the meta-analysis.
| Idowu et al. ( | 2012 | UK | 83 | Surgery | Non-metastatic | 5 | NLR | OS RFS |
| Marshall et al. ( | 2017 | Japan | 75 | Mixed | Mixed | NA | CRP | OS |
| Nakamura et al. ( | 2012 | UK | 312 | Surgery | Non-metastatic | 10 | CRP | DSS RFS |
| Szkandera et al. ( | 2014 | Austria | 170T/170V | Surgery | Non-metastatic | 5/200/2.85 | NLR/PLR/LMR | OS DFS CSS |
| Panotopoulos et al. ( | 2015 | Austria | 85 | Surgery | Mixed | NA/8.7 | NLR/CRP | OS DSS |
| Jiang et al. ( | 2015 | China | 142 | Mixed | Metastatic | 1 | NLR | OS PFS |
| Nakamura et al. ( | 2017 | Japan | 47 | Mixed | Metastatic | 5,3,2 | CRP | DSS |
| Chan et al. ( | 2018 | Singapore | 529L/183M | Surgery/Mixed | Non/Metastatic | 2.5/184/2.4 | NLR/PLR/LMR | OS RFS |
| Park et al. ( | 2019 | Korea | 99 | Surgery | Non-metastatic | 1.95/1.4 | NLR/CRP | OS DFS |
| Sasaki et al. ( | 2018 | Japan | 103 | Mixed | Mixed | 5/NA/1 | NLR/PLR/GPS | OS |
| Liang et al. ( | 2017 | China | 206 | Surgery | Mixed | 1.64/151.9/1 | NLR/PLR/GPS | OS DFS |
| Maretty-Kongstad et al. ( | 2017 | Denmark | 818/403 | Mixed | Non-metastatic | NA/NA/1 | NLR/CRP/GPS | DSS |
| Nakamura et al. ( | 2015 | Japan | 139 | Surgery | Non-metastatic | 1 | GPS | DSS EFS |
| Szkandera et al. ( | 2013 | Austria | 304 | Surgery | Mixed | 6.9 | CRP | OS DFS CSS |
| Choi et al. ( | 2014 | Korea | 162 | Surgery | Non-metastatic | 2.5/2 | NLR/CRP | DSS |
| García-Ortega et al. ( | 2017 | Mexico | 169 | Mixed | Mixed | 3.5 | NLR | OS |
| Chen et al. ( | 2019 | China | 42 | Surgery | Mixed | 2.73/103.89/4.2 | NLR/PLR/LMR | OS DFS |
| Willegger et al. ( | 2017 | Austria | 132 | Surgery | Mixed | 8.7 | CRP | OS SSS RFS |
| Tsuda et al. ( | 2017 | Japan | 202 | Surgery | Non-metastatic | 1 | GPS | SSS EFS |
| Vasquez et al. ( | 2017 | Peru | 22 | Mixed | Mixed | 2/150 | NLR/PLR | OS |
| Nakamura et al. ( | 2017 | Japan | 81 | Surgery | Mixed | 2.8/14 | NLR/CRP | DSS |
| Nakamura et al. ( | 2012 | Japan | 102 | Mixed | Non-metastatic | 3 | CRP | DFS |
| Cheng et al. ( | 2019 | China | 103 | Mixed | Mixed | 2.7/154.99/4.16 | NLR/PLR/LMR | OS/PFS |
NA, not available; OS, overall survival; DSS, disease-specific survival; SSS, sarcoma-specific survival; CSS, cancer-specific survival; DFS, disease-free survival; PFS, progression-free survival; RFS, recurrence-free survival.
This study has validation set and training set, each set has 170 patients.
This study has non-metastatic and metastatic group.
Four hundred and three patients have data on CRP.
Figure 2Forest plots of the Prognostic effect of NLR for OS/DSS/DFS.
Figure 3Forest plots of the Prognostic effect of NLR for OS in different histological subtypes.
Subgroup analysis of the prognostic value of NLR.
| Total | 10 | 65% | 2.08 (1.60–2.69) | |
| Surgery | 6 | 14% | 1.97 (1.56–2.48) | |
| Mixed | 5 | 82% | 1.98 (1.27–3.08) | |
| Non-metastatic | 3 | 33% | 1.77 (1.34–2.33) | |
| Metastatic | 2 | 0% | 2.06 (1.45–2.92) | |
| Mixed | 6 | 80% | 2.33 (1.45–3.75) | |
| Asian | 5 | 59% | 1.72 (1.29–2.31) | |
| Latinos | 2 | 0% | 2.34 (1.84–2.98) | |
| Caucasian | 3 | 0% | 2.60 (1.66–4.06) | |
| Total | 5 | 0% | 1.46 (1.21–1.77) | |
| Surgery | 4 | 0% | 1.38 (1.11–1.71) | |
| Mixed | 1 | NA | 1.80 (1.20–2.70) | |
| Non-metastatic | 3 | 0% | 1.78 (1.29–2.46) | |
| Mixed | 2 | 45% | 1.32 (1.04–1.67) | |
| Asian | 2 | 0% | 1.26 (1.00–1.60) | |
| Caucasian | 3 | 0% | 1.92 (1.39–2.66) | |
| Total | 6 | 0% | 1.72 (1.43–2.08) | |
| Surgery | 4 | 0% | 1.76 (1.42–2.18) | |
| Mixed | 2 | 7% | 1.62 (1.11–2.36) | |
| Non-metastatic | 3 | 0% | 1.71 (1.37–2.13) | |
| Metastatic | 1 | NA | 1.53 (1.03–2.26) | |
| Mixed | 2 | 0% | 3.22 (1.43–7.27) | |
| Asian | 4 | 0% | 1.67 (1.37–2.04) | |
| Caucasian | 2 | 0% | 2.14 (1.25–3.65) | |
NA, not available.
Chan 2018's study has both surgery cohort and mixed treatment cohort.
Chan 2018's study has both metastatic group and non-metastatic group.
Figure 4Forest plots of the Prognostic effect of CRP for OS/DSS/DFS.
Subgroup analysis of the prognostic value of elevated CRP.
| Total | 5 | 0% | 1.92 (1.52–2.42) | |
| Surgery | 4 | 0% | 1.88 (1.48–2.40) | |
| Mixed | 1 | NA | 2.33 (1.08–5.00) | |
| Non-metastatic | 1 | NA | 1.59 (0.68–3.71) | |
| Metastatic | 4 | 0% | 1.95 (1.53–2.48) | |
| Asian | 2 | 0% | 1.96 (1.11–3.46) | |
| Caucasian | 3 | 0% | 1.91 (1.48–2.46) | |
| Total | 7 | 84% | 2.06 (1.32–3.22) | |
| Surgery | 5 | 0% | 2.57 (1.91–3.45) | |
| Mixed | 2 | 73% | 1.32 (0.83–2.10) | |
| Non-metastatic | 3 | 54% | 2.72 (1.57–4.69) | |
| Metastatic | 1 | NA | 1.10 (1.03–1.18) | |
| Mixed | 3 | 0% | 2.08 (1.44–3.01) | |
| Asian | 2 | 77% | 1.68 (0.62–4.54) | |
| Caucasian | 5 | 16% | 2.29 (1.76–2.97) | |
| Total | 5 | 0% | 1.75 (1.38–2.23) | |
| Surgery | 4 | 0% | 1.68 (1.31–2.16) | |
| Mixed | 1 | NA | 2.78 (1.19–6.48) | |
| Non-metastatic | 3 | 0% | 2.09 (1.31–3.31) | |
| Mixed | 2 | 0% | 1.64 (1.24–2.18) | |
| Asian | 2 | 2% | 2.01 (1.13–3.57) | |
| Caucasian | 3 | 0% | 1.70 (1.30–2.22) | |
NA, not available.
Figure 5Forest plots of the Prognostic effect of PLR for OS/DFS.
Subgroup analysis of the prognostic value of PLR.
| Total | 7 | 85% | 1.86 (1.32–2.64) | |
| Surgery | 4 | 0% | 1.90 (1.53–2.35) | |
| Mixed | 4 | 84% | 1.55 (0.93–2.58) | |
| Non-metastatic | 2 | 0% | 1.76 (1.38–2.26) | |
| Metastatic | 1 | NA | 1.70 (1.28–2.26) | |
| Mixed | 5 | 80% | 2.09 (1.08–4.04) | |
| Asian | 5 | 88% | 1.72 (1.17–2.52) | |
| Caucasian | 1 | 0% | 1.97 (1.20–3.25) | |
| Latinos | 1 | NA | 4.73 (1.01–22.17) | |
| Total | 5 | 0% | 1.61 (1.32–1.95) | |
| Non-metastatic | 2 | 40% | 1.56 (1.24–1.97) | |
| Mixed | 3 | 0% | 1.71 (1.19–2.44) | |
| Asian | 4 | 0% | 1.67 (1.36–2.06) | |
| Caucasian | 1 | NA | 1.01 (0.50–2.04) | |
NA, not available.
Szkandera 2014's study has validation set and training set, each set has 170 patients.
Figure 6Forest plots of the Prognostic effect of LMR for OS/DFS.
Figure 7Forest plots of the Prognostic effect of GPS for OS/DSS.
Figure 8Analyses of publication bias for the relationship between NLR/CRP/PLR and OS (A) Begger's funnel plot for NLR. (B) Begger's funnel plot for CRP. (C) Begger's funnel plot for PLR.
Figure 9Analyses of publication bias for the relationship between NLR/CRP/PLR and OS (A) Egger's publication bias plot for NLR. (B) Egger's publication bias plot for CRP. (C) Egger's publication bias plot for PLR.