| Literature DB >> 31998420 |
Erhu Fang1, Xiaolin Wang1, Jiexiong Feng1, Xiang Zhao1.
Abstract
BACKGROUNDS: Both pretreatment serum CRP (C-reactive protein) level and ALB (albumin) level have been found to be predictive of survival for multiple malignancies including sarcoma. Since both of the GPS (Glasgow prognostic score) and CAR (C-reactive protein to albumin ratio) are based on the combination of CRP and ALB, we conducted a meta-analysis to evaluate the prognostic role of these two parameters for sarcoma patients.Entities:
Mesh:
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Year: 2020 PMID: 31998420 PMCID: PMC6969993 DOI: 10.1155/2020/8736509
Source DB: PubMed Journal: Dis Markers ISSN: 0278-0240 Impact factor: 3.434
Figure 1PRISMA flowchart presenting the steps of record search and selection.
Basic characteristics of the included studies.
| Study (year) | Country | Study design | Sample size ( | Metastasis case ( | Histology | Histology subtypes | Follow-up period | Inflammation | NOS scores |
|---|---|---|---|---|---|---|---|---|---|
| Aggerholm-Pedersen et al. (2016) [ | Denmark | Rs | 172 | 0 | BS | Chondrosarcoma ( | Median: 8.8 y | NA | 8 |
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| Liu et al. (2016) [ | China | Rs | 162 | 19 | BS | Osteosarcoma ( | Median:28.2 m | Excluded | 8 |
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| Morhij et al. (2017) [ | UK | Rs | 111 | 0 | STS/BS | Soft tissue sarcoma ( | Median:50 m | NA | 8 |
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| Li et al. (1) (2017) [ | China | Rs | 216 | 32 | BS | Osteosarcoma ( | Median:31.5 m | Excluded | 9 |
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| Li et al. (2) (2017) [ | China | Rs | 122 | 17 | BS | Ewing's sarcomas ( | Median:35 m | Excluded | 9 |
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| Maretty-Kongstad et al. (2017) [ | Denmark | Rs | 888 | 0 | STS | Liposarcoma, UPS, leiomyosarcoma, dermatofibrosarcoma, synovial sarcoma, MPNST, and others | Mean: 5.7 y | NA | 7 |
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| Liang et al. (2017) [ | China | Rs | 206 | NA | STS | MFH ( | Median:75.5 m | Excluded | 9 |
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| Tsuda et al. (2017) [ | Japan | Rs | 202 | 0 | STS | UPS ( | Mean: 58 m | NA | 7 |
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| Jiang et al. (2017) [ | China | Rs | 165 | 97 | STS | Fibrohistiocytic tumor ( | Mean: 73.7 m | Excluded | 8 |
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| Sasaki et al. (2018) [ | Japan | Rs | 103 | NA | STS | Soft tissue spindle cell sarcomas ( | 60.6 ± 39.6 m | NA | 7 |
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| Aggerholm-Pedersen et al. (2019) [ | Denmark | Rs | 265 | 265 | STS/BS | STS ( | Median: 0.9 y | NA | 8 |
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| Xu et al. (2019) [ | China | Rs | 83 | 9 | BS | Ewing's sarcomas ( | Mean: 20.3 m | Excluded | 8 |
Rs: retrospective study; STS: soft tissue sarcoma; BS: bone sarcoma; m: month; y: year; NA: not available; UPS: undifferentiated pleomorphic sarcoma; MPNST: malignant peripheral nerve sheath tumor; MFH: malignant fibrous histiocytoma; ASPS; alveolar soft part sarcoma.
Risk of bias assessment according to ROBINS-I.
| Study | Bias due to confounding | Bias in selection of participants | Bias in classification of interventions | Bias due to deviations from intended interventions | Bias due to missing data | Bias in measurement of outcomes | Bias in selection of the reported result | Overall bias |
|---|---|---|---|---|---|---|---|---|
| Aggerholm-Pedersen et al. (2016) | Serious | Low | Low | Low | Moderate | Low | Low | Serious |
| Liu et al. (2016) | Moderate | Low | Low | Low | Serious | Low | Low | Serious |
| Morhij et al. (2017) | Serious | Low | Low | Low | Low | Low | Low | Serious |
| Li YJ et al. (1) (2017) | Low | Low | Low | Low | Low | Low | Moderate | Moderate |
| Li YJ et al. (2) (2017) | Low | Low | Low | Low | Low | Low | Moderate | Moderate |
| Maretty-Kongstad et al. (2017) | Serious | Low | Low | Low | Moderate | Low | Low | Serious |
| Liang et al. (2017) | Low | Low | Low | Low | Low | Low | Moderate | Moderate |
| Tsuda et al.(2017) | Moderate | Low | Low | Low | Moderate | Low | Moderate | Moderate |
| Jiang et al. (2017) | Moderate | Low | Low | Low | Low | Low | Low | Moderate |
| Sasaki et al. (2018) | Serious | Low | Low | Low | Low | Low | Serious | Serious |
| Aggerholm-Pedersen et al. (2019) | Serious | Low | Low | Low | Low | Low | Low | Serious |
| Xu et al. (2019) | Moderate | Low | Low | Low | Low | Low | Low | Moderate |
ROBINS-I is short for Risk Of Bias In Nonrandomized Studies of Interventions, which contains five levels of bias judgment: low, moderate, serious, critical, and no information.
Survival analysis data of the included studies.
| Study | Marker | Cut-off | Survival analysis | HR | 95% CI |
| Variables for multivariate analysis |
|---|---|---|---|---|---|---|---|
| Aggerholm-Pedersen et al. [ | GPS | — | DSSa | 3.367 | 1.993-5.688 | <0.001 | Age, tumor size, histology, margin, soft tissue extension, comorbidity |
| OSa | 3.387 | 2.062-5.564 | <0.001 | ||||
| Liu et al. [ | GPS | — | OS | 2.25 | 1.222-4.145 | 0.009 | Enneking stage, metastasis, tumor site, CRP, NLR, PLR, LMR |
| Morhij et al. [ | mGPS | — | CSS | 2.03 | 1.31-3.16 | 0.002 | Tumor size, grade, CRP, ALB, WCC |
| RFS | 1.92 | 1.31-2.83 | 0.001 | Tumor size, grade, CRP, ALB | |||
| Li et al. (1) [ | GPS | — | OS | 1.95 | 1.33-2.87 | 0.001 | Univariate analysis |
| CAR | 0.210 | OS | 2.62 | 1.70-4.03 | <0.001 | Metastasis, tumor site | |
| Li et al. (2) [ | GPS | — | OS | 2.27 | 1.28-4.02 | 0.006 | Univariate analysis |
| CAR | 0.225 | OS | 2.28 | 1.23-4.26 | 0.009 | Enneking stage, tumor site | |
| Maretty-Kongstad et al. [ | GPS | — | DSSa | 1.731 | 1.070-2.801 | 0.026 | Age, tumor size, grade, histology, tumor depth, comorbidity |
| Liang et al. [ | Hs-mGPS | — | OSa | 3.162 | 2.000-4.998 | <0.001 | Univariate analysis |
| DFSa | 2.232 | 1.542-3.231 | <0.001 | ||||
| CAR | 0.1035 | OS | 2.47 | 1.47-4.14 | 0.001 | Grade | |
| DFS | 1.88 | 1.22-2.91 | 0.004 | Age, grade | |||
| Tsuda et al. [ | Hs-mGPS | — | EFS | 1.74 | 1.01-2.99 | 0.046 | Age, sex, UICC stage, margin, ECOG PS |
| Jiang et al. [ | GPS | — | OS | 0.941 | 0.117-7.585 | 0.954 | mGPS, age, pathological grade, primary tumor depth |
| PFS | 0.312 | 0.047-2.664 | 0.353 | ||||
| mGPS | OS | 1.660 | 0.22-12.534 | 0.623 | GPS, age, pathological grade, primary tumor depth | ||
| PFS | 9.932 | 1.357-72.716 | 0.024 | ||||
| Sasaki et al. [ | GPS | — | OS | 2.098 | 1.229-3.388 | 0.002 | Univariate analysis |
| Aggerholm-Pedersen et al. [ | GPS | — | DSSa | 3.195 | 1.253-8.147 | 0.015 | Age, comorbidity, histology, site of metastasis |
| Xu et al. [ | CAR | 1.5 | OS | 1.930 | 1.040-3.579 | 0.037 | Age, Frankel score, resection mode, D-dimer, PLR |
| DFS | 1.687 | 0.916-3.106 | 0.093 | Age, Frankel score, metastasis, resection mode, D-dimer, PLR |
GPS: Glasgow prognostic score; mGPS: modified GPS; Hs-mGPS: high sensitive modified GPS; CAR: C-reactive protein to albumin ratio; OS: overall survival; DSS: disease-specific survival; DFS: disease-free survival; RFS: recurrence-free survival; EFS: event-free survival; PFS: progression-free survival; HR: hazard ratio; CI: confidence interval; CRP: C-reactive protein; NLR: neutrophil to lymphocyte ratio; PLR: platelet to lymphocyte ratio; LMR: lymphocyte to monocyte ratio; ALB: albumin; WCC: white cell counts; UICC: Union for International Cancer Control; ECOG PS: Eastern Cooperative Oncology Group performance status.aThese studies reported HRs for GPS 1 and GPS 2 separately. We combined these 2 groups and calculated a combined HR for the overall elevated GPS.
Figure 2The forest plot about the association between elevated GPS and OS. The pooled effect was calculated using a fixed-effects model.
Figure 3The plot of sensitivity analysis showing the influence of each one of the included study.
Subgroup analyses of the prognostic role of GPS for OS.
| Subgroup | No. of studies | No. of participants | HR | 95% CI |
|
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|---|---|---|---|---|---|---|
| Histology type | ||||||
| Bone sarcoma | 4 | 672 | 2.35 | 1.84-3.01 |
| 1.0% |
| Soft tissue sarcoma | 3 | 474 | 2.53 | 1.83-3.52 |
| 15.01% |
| Analysis method | ||||||
| Multivariate analysis | 3 | 449 | 2.78 | 1.90-4.05 |
| 5.2% |
| Univariate analysis | 4 | 647 | 2.29 | 1.82-2.89 |
| 0.0% |
| Ethnicity | ||||||
| Asian | 6 | 984 | 2.27 | 1.83-2.81 |
| 0.0% |
| Other | 1 | 162 | 3.39 | 2.06-5.56 |
| — |
| Inflammation diseases | ||||||
| Excluded | 5 | 881 | 2.31 | 1.82-2.94 |
| 0.0% |
| Not mention | 2 | 265 | 2.64 | 1.87-3.73 |
| 46.2% |
| Sample size | ||||||
| | 5 | 724 | 2.27 | 1.80-2.88 |
| 0.0% |
| | 2 | 422 | 2.78 | 1.94-3.97 |
| 0.0% |
| GPS subtype | ||||||
| GPS | 6 | 940 | 2.27 | 1.83-2.83 |
| 0.0% |
| Hs-mGPS | 1 | 206 | 3.16 | 2.00-5.00 |
| — |
| Metastasis status | ||||||
| With metastatic cases | 6 | 984 | 2.27 | 1.83-2.81 |
| 0.0% |
| Without metastatic cases | 1 | 162 | 3.39 | 2.06-5.57 |
| — |
Figure 4Forest plot showing the association between elevated GPS and DSS in patients with sarcoma. The pooled effect was calculated using a fixed-effects model.
Figure 5Forest plot showing the association between elevated GPS and DFS in patients with sarcoma. The pooled effect was calculated using a fixed-effects model.
Figure 6Forest plot showing the association between elevated CAR and OS in patients with sarcoma. The pooled effect was calculated using a fixed-effects model.
Figure 7Forest plot showing the association between elevated CAR and DFS in patients with sarcoma. The pooled effect was calculated using a fixed-effects model.
Figure 8Analysis of publication bias. (a) Begg's funnel plot about the association between GPS and OS. (b) Begg's funnel plot about the association between GPS and DSS. (c) Begg's funnel plot about the association between GPS and DFS. (d) Begg's funnel plot about the association between CAR and OS.