The Russian prognostic scale "PHOENIX" — a novel domestic tool for cardiovascular risk assessment
https://doi.org/10.15829/1728-8800-2025-4510
EDN: VRSPIN
Abstract
3Pavlov Ryazan State Medical University. Ryazan, Russia
Aim. To develop a national cardiovascular risk prediction score based on the prevalence of risk factors (RFs), their contribution to survival, and the occurrence of a composite endpoint.
Material and methods. The prevalence of risk factors was studied in the cross-sectional studies ESSE-RF and ESSE-RF2. The prognostic value of risk factors was assessed during subsequent prospective follow-up. The algorithm was developed using a sample without prior myocardial infarction, stroke, or diabetes at baseline. Validation was performed using the MERIDIAN-RO study. Statistical analysis was performed in R (version 4.2). Kaplan-Meier curves and Cox models were used. Sex and region were included in the stratified model, while the remaining covariates were included in the regression equation. Multicollinearity was assessed using a variance inflation factor. The resulting relative risk scores were converted to an absolute 10-year probability of the composite endpoint using the Fine-Gray model. Validation was performed using the Cox model and C-indexes. Differences were considered significant at p<0,05.
Results. We excluded factors that were not modifiable by prevention and treatment, factors requiring special training for collection, biomarkers, and RFs without a significant association with the endpoint. The risk score for men included smoking, high blood pressure, tachycardia, hyperglycemia, poor self-rated health, adding extra salt to food, and a visual analog scale score <70. For women, we additionally excluded hyperuricemia, obesity, and high stress levels. The beta coefficients of the multivariate model were transformed into integers (0100). The 10-year probability of cardiovascular events was calculated in the following risk categories: "low", "moderate", "high", "very high", and "extremely high". External validation confirmed the scale prognostic significance (C-index 0,65).
Conclusion. Russian 10-year cardiovascular risk prognostic scale PHOENIX was developed as a tool for cardiovascular risk stratification in primary prevention.
Keywords
About the Authors
O. M. DrapkinaRussian Federation
Petroverigsky Lane, 10, bld. 3, Moscow, 101990
S. A. Shalnova
Russian Federation
Petroverigsky Lane, 10, bld. 3, Moscow, 101990
Yu. A. Balanova
Russian Federation
Petroverigsky Lane, 10, bld. 3, Moscow, 101990
V. A. Kutsenko
Russian Federation
Petroverigsky Lane, 10, bld. 3, Moscow, 101990
A. E. Imaeva
Russian Federation
Petroverigsky Lane, 10, bld. 3, Moscow, 101990
A. V. Kapustina
Russian Federation
Petroverigsky Lane, 10, bld. 3, Moscow, 101990
S. E. Evstifeeva
Russian Federation
Petroverigsky Lane, 10, bld. 3, Moscow, 101990
G. A. Muromtseva
Russian Federation
Petroverigsky Lane, 10, bld. 3, Moscow, 101990
L. I. Gomanova
Russian Federation
Petroverigsky Lane, 10, bld. 3, Moscow, 101990
S. A. Maksimov
Russian Federation
Petroverigsky Lane, 10, bld. 3, Moscow, 101990
B. M. Nazarov
Russian Federation
Altufevskoe Highway, 82, Moscow, 127349
E. V. Filippov
Russian Federation
Vysokovoltnaya St., 9, Ryazan, 390026, Ryazan region
I. L. Berezenko
Russian Federation
Vysokovoltnaya St., 9, Ryazan, 390026, Ryazan region
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Supplementary files
What is already known about the subject?
- Existing SCORE and SCORE2 risk scales are widely used to assess cardiovascular risk, but have limitations in their application to the Russian population due to differences in epidemiology and risk factor profiles.
- The high prevalence of cardiovascular diseases and their risk factors in Russia requires accurate tools for risk stratification and optimization of preventive measures.
What might this study add?
- The developed PHOENIX score is a domestic tool for assessing the 10-year cardiovascular risk, adapted for the Russian population, differentiated for men and women.
- The PHOENIX score includes behavioral risk factors, psychosocial, and clinical parameters.
- The PHOENIX score offers a evidence-based, practical, and locally adapted method for cardiovascular risk stratification.
Review
For citations:
Drapkina O.M., Shalnova S.A., Balanova Yu.A., Kutsenko V.A., Imaeva A.E., Kapustina A.V., Evstifeeva S.E., Muromtseva G.A., Gomanova L.I., Maksimov S.A., Nazarov B.M., Filippov E.V., Berezenko I.L. The Russian prognostic scale "PHOENIX" — a novel domestic tool for cardiovascular risk assessment. Cardiovascular Therapy and Prevention. 2025;24(9):4510. (In Russ.) https://doi.org/10.15829/1728-8800-2025-4510. EDN: VRSPIN

















































