Survival analysis algorithms in biomedical research using SPSS software package
https://doi.org/10.52485/19986173_2021_1_137
Abstract
The aim of the research. The subject of the research was to study the basics of using survival analysis, which allows predicting the time of the event onset on the basis of independent variables. The research’s topic was survival analysis in biomedical research. The aim of the study was to describe the main survival analysis algorithms in biomedical research using the SPSS software package.
Materials and methods. The scientific review of the main methods of survival analysis in biomedical research is carried out. The practical foundations of using survival analysis to determine the time of the event occurrence are considered on the example of the IBM SPSS Statistics Version 25.0 software package (International Business Machines Corporation, USA).
Results. The optimal algorithms for survival analysis application in biomedical research have been determined. The possibilities of survival analysis using in the SPSS program are described in detail, recommendations for the interpretation of the obtained analysis results are given.
Conclusion. The use of the described survival analysis algorithms will improve a presentation’s level of biomedical research results.
About the Author
V. A. MudrovRussian Federation
39А Gorky str., Chita, 672000
References
1. Buyul A., Cefel P. SPSS: the art of information processing. Moscow. DiaSoft. 2005. in Russian.
2. Levin I.A., Manukhin I.B., Ponomareva Yu.N., Shumetov V.G. Methodology and practice of data analysis in medicine: monograph. Moscow. Tel-Aviv. APLIT. 2010. in Russian.
3. Rebrova O.Yu. Statistical analysis of medical data. Application of the STATISTICA application software package. Moscow. Media Sphere. 2006. in Russian.
4. Peacock J.L., Peacock P.J. Oxford Handbook of Medical Statistics. Oxford University Press. 2011.
5. Sharashova E.E., Kholmatova K.K., Gorbatova M.A., Grjibovski A.M. Survival analysis in health sciences using SPSS software. Science &Healthcare. 2017. 5. 5-28. in Russian.
6. Sharashova E.E., Kholmatova K.K., Gorbatova M.A., Grjibovski A.M. Cox regression in health sciences using SPSS software. Science & Healthcare. 2017. 6. 5-27. in Russian.
7. Kulikov S.M., Parovitchnikova E.N., Savchenko V.G. Survival or time-to-event analysis: common pitfalls of retrospective approach. Clinical oncohematology. 2010. 3(2). 176-183.
8. Lang T.A., Altman D.G. Basic statistical reporting for articles published in Biomedical Journals: The “Statistical Analyses and Methods in the Published Literature” or the SAMPL Guidelines. International Journal of Nursing Studies. 2015. 52(1). 5-9. doi:10.1016/j.ijnurstu.2014.09.006.
9. Lang T.A., Altman D.G. Statistical analyses and methods in the published literature: The SAMPL guidelines. Medical Writing. 2016. 25(3). 31–36. doi: 10.18243/eon/2016.9.7.4.
10. Nasledov A. SPSS Statistics 20 and AMOS: professional statistical analysis of data. Saint- Petersburg. Peter. 2013. in Russian.
Review
For citations:
Mudrov V.A. Survival analysis algorithms in biomedical research using SPSS software package. Transbaikalian Medical Bulletin. 2021;(1):137-147. (In Russ.) https://doi.org/10.52485/19986173_2021_1_137