| Literature DB >> 35681656 |
Deniz Can Guven1, Taha Koray Sahin2, Enes Erul2, Saadettin Kilickap1,3, Thilo Gambichler4, Sercan Aksoy1.
Abstract
BACKGROUND: Prognostic scores derived from the blood count have garnered significant interest as an indirect measure of the inflammatory pressure in cancer. The recently developed pan-immune-inflammation value (PIV), an equation including the neutrophil, platelet, monocyte, and lymphocyte levels, has been evaluated in several cohorts, although with variations in the tumor types, disease stages, cut-offs, and treatments. Therefore, we evaluated the association between survival and PIV in cancer, performing a systematic review and meta-analysis.Entities:
Keywords: PIV; biomarker; cancer; immunotherapy; pan-immune-inflammation value; targeted therapy
Year: 2022 PMID: 35681656 PMCID: PMC9179577 DOI: 10.3390/cancers14112675
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.575
Baseline characteristics of included studies.
| Lead Author, Year | Country | Sample Size | Treatment | PIV Cut-Off Value | Cut-Off Selection | Tumor Type | Tumor Stage | Adjustment Factors | Outcome | Additional Comments |
|---|---|---|---|---|---|---|---|---|---|---|
| Fucà, 2020, [ | Italy | 438 | Tribe study: FOLFIRI + Bevacizumab vs. FOLFOXIRI + Bevacizumab | 390 | MSR | CRC | IV | - ECOG | - PFS | PIV outperformed the other immune-inflammatory biomarkers in regression model |
| Corti, 2021, [ | Italy | 163 | - Nivolumab plus ipilimumab (32.5%) | 492 | MSR | CRC | IV | - ECOG | - PFS | Early PIV increase was independently correlated with clinical benefit (aOR: 0.23, 95% CI 0.08–0.66, |
| Fucà, 2021, [ | Italy | 228 | ICI: | 600 | MSR | Melanoma | IV | - ECOG | - PFS | High PIV was associated with primary resistance to both targeted therapy (OR: 8.42; 95% CI 2.50–34.5, |
| Guven, 2021, [ | Turkey | 120 | - Nivolumab (78.3%) | 513.4 | Median value | RCC, NSCLC, Melanoma, Other | IV | - ECOG | - PFS | A model combining PIV, ECOG status, and LDH levels (PILE Score) was able to predict 12-week PFS and 24-week OS |
| Ligorio, 2021, [ | Italy | 57 | - Taxane-Transtuzumab | 285 | Median value | Breast Cancer | IV | - Number of metastatic sites | - PFS | PIV outperformed MLR, PLR, and NLR in predicting OS |
| Sahin, 2021, [ | Turkey | 743 | - Anthracycline plus taxane (68.6%) | 306.4 | ROC curve | Breast Cancer | I-IV | - Clinical T stage | - pCR | Pre-treatment PIV appears to be a predictor for pCR and survival, outperforming NLR, MLR, PLR in predicting pCR |
| Zeng, 2021, [ | China | 53 | Control group of NCT03041311 (53 patients): carboplatin, etoposide, and atezolizumab | 581.95 | Median value | SCLC | Extensive Stage | - LDH | - PFS | Higher PILE score was associated with worse treatment efficacy (DCR: 84.21% vs. 100%, |
| Efil, 2021, [ | Turkey | 304 | Adjuvant chemotherapy (52%) | 491 | Median | CRC | II-III | - Age | - DFS | A model combining PIV and CD8 + TIL density was able to predict DFS |
| Sato, 2022, [ | Japan | 758 | Adjuvant chemotherapy (30%) | 376 | ROC curve | CRC | I-III | - Age | - RFS | A high preoperative PIV was significantly associated with depth of tumor invasion and advanced TNM stage (II, III) |
| Gambichler, 2022, [ | Germany | 49 | N/A | 372 | ROC curve | MCC | I-III | - Age > 75 | - Recurrence | An association between PIV levels and stage was present |
| Susok, 2022, [ | Germany | 62 | - Nivolumab (38.7%) | 455 | ROC curve | Melanoma | III-IV | N/A | - PFS | SII and PIV were not significantly |
| Chen, 2022, [ | China | 94 | - Crizotinib (89.4%) | 364 | Median | Lung Cancer | III-IV | - Liver metastasis | - PFS | Although PIV, NLR, PLR, and SII were associated with poor median OS, only higher PIV was independently associated with poor survival outcomes (HR = 4.70, 95% Cl: 2.00–11.02, |
| Baba, 2022, [ | Japan | 433 (Validation Cohort) | N/A | 164.6 | ROC | Esophageal Cancer | I-IV | - Preoperative therapy | - OS | The PIV-high cases were significantly associated with a low TIL status ( |
| Lin, 2022, [ | China | 1312 | Adjuvant chemotherapy (81.3%) | 310.2 | MSR | Breast Cancer | I-III | - Stage (T and N) | - OS | The prognostic model showed a good discriminating ability for OS prediction, with a C-index of 0.759 (95% CI 0.715–0.802) |
| Perez-Martelo, 2022, [ | Spain | 130 | - Oxaliplatin-based regimen (74%) | 424.05 | MSR | CRC | IV | - CEA | - PFS | - Baseline PIV was not correlated either with DCR or ORR |
Abbreviations: MSR: maximally selected rank statistics; ECOG: Eastern Cooperative Oncology Group; mCRC: metastatic colorectal cancer; NLR: neutrophil-to-lymphocyte ratio; PLR: platelet-to-lymphocyte ratio; PLT: platelet count; MONO: monocyte count; SII: systemic immune-inflammation index; PIV: Pan-Immune-Inflammation Value; OR: odds ratio; CBR: Clinical Benefit Rate; DCR: Disease Control Rate; DCB: durable clinical benefit; DSS: disease specific survival; TIL: tumor-infiltrating lymphocytes; ROC: Receiver Operating Characteristic; MCC: Merkel cell carcinoma; BMI: body mass index; ICI: immune checkpoint inhibitor; HR: hazard ratio; CBC: complete blood count; CRP: C-reactive protein; ER: estrogen receptor; CEA: carcinoembriyonic antigen; TT: Targeted Therapy; PR: progesterone receptor.
Newcastle-Ottawa scores of included studies (Note: A star system was used for allow a semi quantitative assessment of study quality. A study was awarded a maximum of four stars for the selection and three stars for exposure/outcome categories. A maximum of two stars were awarded for comparability).
| Lead Author, Year | Selection | Comparability | Exposure/Outcome | Reference |
|---|---|---|---|---|
| Fucà, 2020 | **** | ** | ** | [ |
| Corti, 2021 | *** | ** | *** | [ |
| Fucà, 2021 | **** | ** | *** | [ |
| Guven, 2021 | **** | ** | *** | [ |
| Ligorio, 2021 | *** | ** | *** | [ |
| Sahin, 2021 | *** | ** | *** | [ |
| Zeng, 2021 | **** | ** | *** | [ |
| Efil, 2021 | No full-text data available | [ | ||
| Sato, 2022 | *** | ** | *** | [ |
| Gambichler, 2022 | *** | ** | *** | [ |
| Susok, 2022 | *** | * | ** | [ |
| Chen, 2022 | **** | ** | ** | [ |
| Baba, 2022 | **** | ** | ** | [ |
| Lin, 2022 | **** | ** | *** | [ |
| Perez-Martelo, 2022 | **** | ** | *** | [ |
Figure 1The association between PIV levels and OS (a) and DFS/PFS (b). Lines (○) indicate 95% CIs. Diamond (♦) indicates the pooled effect size.
Figure 2Subgroup analyses according to disease stage in OS (a) and DFS/PFS (b). Lines (○) indicate 95% CIs. Diamond (♦) indicates the pooled effect size.
Figure 3Subgroup analyses according to treatment type in OS (a) and DFS/PFS (b). Lines (○) indicate 95% CIs. Diamond (♦) indicates the pooled effect size.
Figure 4Subgroup analyses according to PIV cut-off in OS (a) and DFS/PFS (b). Lines (○) indicate 95% CIs. Diamond (♦) indicates the pooled effect size.