| Literature DB >> 30650562 |
Silvia Riondino1,2, Patrizia Ferroni3,4, Fabio Massimo Zanzotto5, Mario Roselli6, Fiorella Guadagni7,8.
Abstract
Risk prediction of chemotherapy-associated venous thromboembolism (VTE) is a compelling challenge in contemporary oncology, as VTE may result in treatment delays, impaired quality of life, and increased mortality. Current guidelines do not recommend thromboprophylaxis for primary prevention, but assessment of the patient's individual risk of VTE prior to chemotherapy is generally advocated. In recent years, efforts have been devoted to building accurate predictive tools for VTE risk assessment in cancer patients. This review focuses on candidate biomarkers and prediction models currently under investigation, considering their advantages and disadvantages, and discussing their diagnostic performance and potential pitfalls.Entities:
Keywords: biomarkers; clinical decision systems; machine learning; risk assessment models; venous thromboembolism
Year: 2019 PMID: 30650562 PMCID: PMC6356247 DOI: 10.3390/cancers11010095
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.639
Figure 1Graphical summary of the mechanism of tumor-induced coagulation cascade and relevant biomarkers at various stages of the pro-coagulant processes. Tumor cells express tissue factor (TF) and “cancer pro-coagulant” (CP). TF binds to activated factor VII (VIIa), forming a complex (TF/VIIa) that initiates coagulation cascade by activating factor IX and X, with consequent thrombin generation and fibrin formation. CP directly activates factor X. Thrombin, in turn, triggers platelet (PLT) activation with subsequent release of platelet granule content and amplification of the whole activatory process. Tumor cells may also interact with vascular cells (monocytes, platelets, endothelial cells) either directly (through membrane interactions) or indirectly (through cytokine release, prompted by activation of redox sensitive genes). Activated vascular cells release microparticles (MPs) with pro-coagulant activity in the circulation. Candidate biomarkers for VTE prediction are highlighted in red. aPCR: resistance to activated Protein C; F1+2: Prothrombin fragment; IL-1: interleukin-1; NLR: neutrophil/lymphocyte ratio; PLR: platelet/lymphocyte ratio; TNF-α: tumor necrosis factor-alpha; VEGF: vascular endothelial growth factor; WBC: white blood cells.
Figure 2Effects of chemotherapy on coagulation activation. Chemotherapy may cause incongruous activation of hemostasis through various mechanisms: direct endothelial cell toxicity and apoptosis; vascular cell activation, resulting in tissue factor (TF) exposure; production of reactive oxygen species (ROS); unbalance of factors involved in the control of the coagulation cascade, with an impairment of the protein C (PC)/protein S (PS) anticoagulant pathway; activation of the monocyte/macrophage system and platelets. aPC: activated Protein C; (O2•−): superoxide anion; (OH•): radical hydroxyl radical; (NO•): nitric oxide; TF: tissue factor.
Comparison of the characteristics of risk assessment models (RAM) for cancer-associated venous thromboembolism (VTE).
| RAM | Score Items | n. of Patients | Type of VTE | c-Statistic | HR | Reference |
|---|---|---|---|---|---|---|
| Khorana score (KS) | Site of cancer, platelet count, leukocyte count, hemoglobin level or use of red cell growth factors, BMI ≥35 | Derivation cohort, | Symptomatic | 0.7 for both cohorts | NA | [ |
| Validation cohort, | ||||||
| Vienna CATS score | Adds soluble P-selectin and D-dimer to KS | Symptomatic | NA | 1.9 per 1 point increase | [ | |
| PROTECHT score | Adds cisplatin/carboplatin-based chemotherapy or gemcitabine to KS | Placebo arm, | Unclear | NA | NA | [ |
| Nadroparin arm, | ||||||
| ONKOTEV score | Khorana score >2, personal history of VTE, metastatic disease, vascular/lymphatic macroscopic compression | Symptomatic/incidental | 0.719 at 3 months | Score = 1: 3.29 | [ | |
| COMPASS-CAT score | Anthracycline or anti-hormonal therapy, time since cancer diagnosis, central venous catheter, stage of cancer, presence of cardiovascular risk factors, recent hospitalization for acute medical illness, personal history of VTE and platelet count. | Symptomatic | 0.850 | NA | [ | |
| Tic-ONCO score | Adds genetic risk score to KS | Symptomatic | 0.73 | +LR = 1.69 | [ | |
| CATS nomogram | Site of cancer and D-dimer | CATS cohort, | Symptomatic/incidental | 0.66 in CATS | NA | [ |
| MICA cohort, | 0.68 in MICA |
HR: Hazard Ratio; +LR: Positive Likelihood Ratio; CATS: Vienna Cancer and Thrombosis Study; MICA: Multinational Cohort Study to Identify Cancer Patients at High Risk of Venous Thromboembolism; NA: Not Applicable.
Figure 3Kaplan–Meier curves of VTE-free survival time of chemotherapy-treated ambulatory cancer patients in the training (Panel A, n = 825), testing (Panel B, n = 354) and validation set (Panel C, n = 255). Comparison between patients with low (Group: 0; solid black line) or high (Group: 1; dotted red line) risk of VTE based on the combined model predictor. Patients stratification based on the Khorana score ≥2 is also given for comparison (Panel D).