| Literature DB >> 31598370 |
Ali Guner1,2,3, Hyoung-Il Kim1,4,5.
Abstract
Inflammation can be a causative factor for carcinogenesis or can result from a consequence of cancer progression. Moreover, cancer therapeutic interventions can also induce an inflammatory response. Various inflammatory parameters are used to assess the inflammatory status during cancer treatment. It is important to select the most optimal biomarker among these parameters. Additionally, suitable biomarkers must be examined if there are no known parameters. We briefly reviewed the published literature for the use of inflammatory parameters in the treatment of patients with cancer. Most studies on inflammation evaluated the correlation between host characteristics, effect of interventions, and clinical outcomes. Additionally, the levels of C-reactive protein, albumin, lymphocytes, and platelets were the most commonly used laboratory parameters, either independently or in combination with other laboratory parameters and clinical characteristics. Furthermore, the immune parameters are classically examined using flow cytometry, immunohistochemical staining, and enzyme-linked immunosorbent assay techniques. However, gene expression profiling can aid in assessing the overall peri-interventional immune status. The checklists of guidelines, such as STAndards for Reporting of Diagnostic accuracy and REporting recommendations for tumor MARKer prognostic studies should be considered when designing studies to investigate the inflammatory parameters. Finally, the data should be interpreted after adjusting for clinically important variables, such as age and cancer stage.Entities:
Keywords: Biomarkers; Cancer; Immune system; Inflammation; Outcome assessment
Year: 2019 PMID: 31598370 PMCID: PMC6769371 DOI: 10.5230/jgc.2019.19.e29
Source DB: PubMed Journal: J Gastric Cancer ISSN: 1598-1320 Impact factor: 3.720
Studies on inflammatory response parameters in cancer
| Host | Intervention | Outcomes | ||||
|---|---|---|---|---|---|---|
| Inherence | Behavior | Disease | Surgical | Medical | Prediction | Prognosis |
| Sex [ | Immunosuppressive medication [ | Chronic disease [ | Open surgery vs MIS [ | Anesthesia, analgesia [ | Morbidity and mortality [ | Recurrence [ |
| Age [ | Nutritional status [ | Cancer progression [ | Major vs minor surgery [ | Fast track protocol [ | Infection [ | Survival [ |
| Obesity [ | Smoking [ | Psychiatric disease [ | Emergency surgery [ | Transfusion [ | Prediction of neoadjuvant response [ | |
| Exercise [ | Ischemia [ | Surgical stress [ | Nutritional support* [ | |||
| Sepsis [ | Steroid and other immune modulators [ | |||||
| Adjuvant/neoadjuvant treatment [ | ||||||
| NSAID [ | ||||||
| Statin [ | ||||||
MIS = minimally invasive surgery; NSAID = non-steroid anti-inflammatory drug.
*Includes enteral, parenteral, and immune-enhancing nutrition.
Laboratory parameters
| Parameters | ||
|---|---|---|
| Single value | Combined values | |
| Positive APPs | ||
| CRP [ | NRS-2002 [ | |
| High sensitivity CRP [ | MUST [ | |
| Erythrocyte sedimentation rate [ | Skeletal muscle index [ | |
| Alpha 1-acid glycoprotein levels [ | NRI [ | |
| Serum amyloid A levels [ | SIRS criteria [ | |
| Alpha-1-antitrypsin levels [ | CRP/Albumin ratio [ | |
| Procalcitonin levels [ | GPS, modified GPS, hepatic GPS [ | |
| Fibrinogen levels [ | PNI [ | |
| Complement-C3 and C4 levels [ | Prognostic index [ | |
| APRI [ | ||
| Negative APPs | CONUT [ | |
| Albumin levels [ | Naples prognostic score [ | |
| Prealbumin levels [ | Canton score [ | |
| Retinol-binding protein levels [ | PLR [ | |
| Transferrin levels [ | NLR [ | |
| COP-NLR [ | ||
| NMLR [ | ||
| GLR [ | ||
| LMR [ | ||
| SII [ | ||
APP = acute phase protein; CRP = C-reactive protein; NRS = nutritional risk screening; MUST = malnutrition universal screening tool; NRI = nutritional risk index; SIRS = systemic inflammatory response syndrome; GPS = Glasgow prognostic score; PNI = prognostic nutritional index; APRI = aspartate aminotransferase/platelet count ratio index; CONUT = controlling nutritional status; PLR = platelet-to-lymphocyte ratio; NLR = neutrophil-to-lymphocyte ratio; COP-NLR = combination of platelet count and neutrophil-to-lymphocyte ratio; NMLR = neutrophil-monocyte-to-lymphocyte ratio; GLR = granulocyte-to-lymphocyte ratio; LMR = lymphocyte-to-monocyte ratio; SII = systemic immune-inflammation index.
Fig. 1Relationship among parameters. Parameters with continuous values (Green boxes) and with categorical values (Orange boxes). Detail of values are presented in Appendix 1.
BMI = body mass index; MUST = malnutrition universal screening tool; NRS = nutritional risk screening; NRI = nutritional risk index; AST = aspartate transaminase; CRP = C-reactive protein; GPS = Glasgow prognostic score; CAR = C-reactive protein-to-albumin ratio; CONUT = controlling nutritional status; PI = prognostic index; PNI = prognostic nutritional index; WBC = white blood cell; APRI = aspartate aminotransferase/platelet count ratio index; NLR = neutrophil-to-lymphocyte ratio; NMLR = neutrophil-monocyte-to-lymphocyte ratio; LMR = lymphocyte-to-monocyte ratio; SII = systemic immune-inflammation index; GLR = granulocyte-to-lymphocyte ratio; PLR = platelet-to-lymphocyte ratio; COP-NLR = combination of platelet count and neutrophil-to-lymphocyte ratio.
Fig. 2Relationship of albumin level with age according to stage. Each point represents age and albumin level of a patient. Linear regression of each stage group shows that mean albumin level at same age decrease as the disease progresses. Dataset from Lee et al. [115].
Immune parameters
| Parameter | ||
|---|---|---|
| Immune cells | Peripheral blood | |
| Lymphocyte counts [ | ||
| Neutrophil counts [ | ||
| Monocyte counts [ | ||
| Dendritic cell counts [ | ||
| NK cell counts [ | ||
| T lymphocyte subpopulation counts [ | ||
| B lymphocyte counts [ | ||
| Tissue | ||
| Tumor-infiltrating lymphocyte levels [ | ||
| Tumor-associated macrophage levels [ | ||
| Mast cell density positive to tryptase [ | ||
| Other fluid | ||
| Peritoneal fluid: Lymphocyte subsets and HLA-DR expression [ | ||
| Cytokines | Peripheral blood | |
| TNF-α levels [ | ||
| IFN-γ levels [ | ||
| Th1/Th2 ratio [ | ||
| IL-1 levels [ | ||
| IL-2 levels [ | ||
| IL-4 levels [ | ||
| IL-5 levels [ | ||
| IL-6 levels [ | ||
| IL-8 levels [ | ||
| IL-9 levels [ | ||
| IL-10 levels [ | ||
| IL-12 levels [ | ||
| IL-13 levels [ | ||
| IL-15 levels [ | ||
| IL-17 levels [ | ||
| IL-18 levels [ | ||
| Levels of multiple cytokines [ | ||
| TNF-R levels [ | ||
| TNF-R inhibitor levels [ | ||
| IL-2 receptor levels [ | ||
| IL-1 receptor antagonist levels [ | ||
| IL-6 soluble receptor levels [ | ||
| Adipocytokine leptin levels [ | ||
| Immunosuppressive acidic protein levels [ | ||
| Neopterin levels [ | ||
| Levels of globulins including IgG, IgA, and IgM [ | ||
| Proapoptotic protein-soluble Fas levels [ | ||
| MCP-1 levels [ | ||
| Calprotectin levels [ | ||
| Levels of DAMPs (HSP-S100A-HMGB) [ | ||
| Neutrophil elastase levels [ | ||
| Other fluid | ||
| Alveolar lavage: levels of multiple cytokines [ | ||
| Peritoneal lavage: levels of multiple cytokines [ | ||
| Gene expression | Peripheral blood | |
| HLA-DR expression on monocytes [ | ||
| mRNA expression of TLR2-TLR4 [ | ||
| Expression of histamine receptors [ | ||
| Other fluid | ||
| Alveolar lavage: RT-PCR for proinflammatory cytokines [ | ||
| Others | NK activity [ | |
| Lymphocyte oxidative activity [ | ||
| Lymphocyte proliferation [ | ||
| Phagocytic capacity [ | ||
| Skin-prick tests [ | ||
| Oxidative stress-antioxidant capacity [ | ||
NK = natural killer; HLA-DR = human leukocyte antigen-DR isotype; TNF = tumor necrosis factor; INF, interferon; Th = T helper; IL = interleukin; Ig = immunoglobulin; MCP-1 = monocyte chemoattractant protein-1; DAMP = damage-associated molecular patterns; TLR = Toll-like receptors; RT-PCR = real-time polymerase chain reaction.
Representative cytokines of each classification
| Representative cytokine | Th1/2 | Receptor structure | Example* |
|---|---|---|---|
| IL-2† | Th1 | Type 1, common r-chain† | IL-7,9,15,21 |
| IL-6 | Th1 | Type 1, IL-6 like cytokines | IL-11,30 |
| IL-12 | Th1 | Type 1, IL-12 subfamilies | IL-23, 27, 35 |
| IL-17 | Th1 | Type 1, IL-17R | |
| TNF-α | Th1 | Type 1, TNF | TNF-β |
| IFN-γ | Th1 | Type 2, IFN | |
| IL-8 | Th1 | Chemokine R | |
| IL-3 | Th1 & Th2 | Type 1, common-b-chain | IL-5, GM-CSF |
| IL-4† | Th2 | Type 1, common r-chain† | IL-13 |
| IL-1 | Th2 | Type 1, IG | IL-18, 33, 36, 37, 38 |
| IL-10 | Th2 | Type 2, IL-10 subfamily | IL-19, 20, 22, 24, 26 |
| MCP-1 | Th2 | Chemokine R | |
| TGF-β | Th2 | TGF receptor family |
IL = interleukin; Th = T helper; TNF = tumor necrosis factor-alpha; IFN, interferon; GM-CSF = granulocyte-macrophage colony-stimulating factor; MCP-1 = monocyte chemoattractant protein-1; TGF = transforming growth factor.
*Examples according to receptor structure; may not show the same Th1/2 balance as representative cytokines; †IL-2 and IL-4 share the same receptor structure but show opposite Th1/2 balance.
Fig. 3Associations of interventions with response patterns
INF = interferon; IL = interleukin; TNF = tumor necrosis factor; NK = natural killer; HLA-DR = human leukocyte antigen-DR isotype; ERAS = enhanced recovery after surgery; Th = T helper; DC = dendritic cell; CIK = cytokine-induced killer; GM-CSF = granulocyte-macrophage colony-stimulating factor.
Fig. 4Unsupervised clustering of inferred immune fraction using leukocyte signature matrix in the cancer genome atlas stomach adenocarcinoma (TCGA-STAD) transcriptomic dataset (n=450). Integrative transcriptomic analysis enables the identification of distinct immune landscapes associated clinical phenotypes using the fraction of infiltrated immune subsets in each sample as well as the evaluation of oncogenic pathway specific to each sample.
Guidelines for biomarker studies
| Structure | Common guidelines | STARD-specific guidelines | REMARK-specific guidelines |
|---|---|---|---|
| Introduction | Background, objective, and hypothesis | ||
| Methods | • Eligibility criteria | • Participant identification methods | • Description of biological material used |
| • Participants chosen for the study | • Rationale for reference standard | • Clinical endpoints examined | |
| • Detailed protocol sufficient to replicate | • List of all candidate variables initially examined | ||
| • Study performer, readers, or assessors blinded to identifying information | |||
| • Data collection methods (retrospective vs prospective) | |||
| • Sample size determination | |||
| • Missing data handling | |||
| • Rationale for cut-offs | |||
| Results | • Study flow | • Time interval between index test and reference standard | • Univariable analyses revealing the correlation between the marker and outcome |
| • Characteristics of patients | • Adverse events due to the index test or the reference standard | • Confidence intervals from an analysis in which the marker and standard prognostic variables are included | |
| • Relation of index test (marker) and reference standard (prognosis) | • Results of further investigations | ||
| • Estimation of accuracy and precision (STARD) or confidence intervals (REMARK) | |||
| Discussion | • Limitations, implications for practice, and future research | • Interpret the results in the context of the pre-specified hypotheses |
STARD = STAndards for Reporting of Diagnostic accuracy studies; REMARK = REporting recommendations for tumor MARKer prognostic studies.