Modern approaches to the formation and implementation of methods for creating information systems of digital twins of patients
https://doi.org/10.37493/2307-910X.2025.1.12
Abstract
The main goal of the company's development is to increase the volume of buses produced. The article has developed a forecast of bus production volume for 2024-2025 based on data from the last 10 years. The upward trend of the company's development is noted. The results of a system analysis of the indicators of the automotive company PJSC NEFAZ are presented. A forecast of output volume for two reporting periods was built using trend models. Also, using the method of expert assessment and multidimensional correlation and regression analysis, the factors influencing the main indicators of the company have been identified. The results obtained make it possible to make informed management decisions, reduce time and money costs, and correctly assess risks based on forecasts.
About the Author
Z. A. ShogenovaRussian Federation
Zalina A. Shogenova, Senior Lecturer
Department of Computer Technologies and Information Security
Nalchik
tel.: +79969163092
References
1. Talkhestani BA, Jazdi N, Schlögl W, Weyrich M. Consistency check to synchronize the Digital Twin of manufacturing automation based on anchor points. In Proceedings of the 51<sup>st</sup> CIRP Conference on Manufacturing Systems; 2018;159-164. doi: 10.1016/j.procir.2018.03.166
2. Madni AM, Madni CC, Lucero SD. Leveraging Digital Twin Technology in ModelBased Systems Engineering. Systems. 2019;7(1):7. doi: 10.3390/systems7010007
3. Hu L, Nguyen N-T, Tao W, Leu MC, Liu XF, Shahriar MR, Sunny SMN. Modeling of Cloud-Based Digital Twins for Smart Manufacturing with MT Connect. Procedia Manufacturing. 2018;26:1193-1203 doi: 10.1016/j.promfg.2018.07.155
4. Modoni GE, Caldarola EG, Sacco M, Terkaj W. Synchronizing physical and digital factory: benefits and technical challenges. In Proceedings of the 12<sup>th</sup> CIRP Conference on Intelligent Computation in Manufacturing Engineering. 2018;472-477. doi: 10.1016/j.procir.2019.02.125
5. Kamel Boulos MN, Zhang P. Digital Twins: From Personalised Medicine to Precision Public Health. J Pers Med. 2021;11(8):745. PMID: 34442389; PMCID: PMC8401029. doi: 10.3390/jpm11080745
6. Shogenova ZA, Krymshokalova DA, Ketova FR, Dzamikhova FH. Methodologies for forming structures of information systems for storing patient data analysis. Modern Science and Innovations. 2024;(1):25-31. (In Russ).
7. Krymshokalova DA, Shogenova ZA, Tkhakumashev KR. Formalization and validation of user requirements in the development of information systems. In Collection of scientific papers based on the materials of the international scientific and practical conference "Digital transformation of science and education. Nalchik; 2022; 101-110. (In Russ).
8. Lipko YuYu, Shogenova ZA. On the issue of conceptual approaches to the formation and implementation of interface models for information systems to support medical decision–making. Modern Science and Innovations. 2023;(2):33-40. (In Russ).
9. U.S. FDA. Paving the Way for Personalized Medicine-Fda’s Role in a New Era of Medical Product Development; U.S. Food and Drug Administration: Silver Spring, MD, USA, 2013. Available from: https://www.fdanews.com/ext/resources/files/10/10–28–13-PersonalizedMedicine.pdf [Accessed 6 May 2025].
10. Gelernter D. Mirror Worlds: Or the Day Software Puts the Universe in A Shoebox. How It Will Happen and What It Will Mean; Oxford University Press: Oxford, UK; 1993.
11. Grieves M. ’Virtually intelligent product systems: Digital and physical twins. In: complex systems engineering: theory and practice. American Institute of Aeronautics and Astronautics, 2019;175-200.
12. Grieves M. Product Lifecycle Management: Driving the Next Generation of Lean Thinking: Driving the Next Generation of Lean Thinking: Driving the Next Generation of Lean Thinking; McGraw Hill Education: New York, NY, USA, 2005.
13. Grieves MW. Product lifecycle management: The new paradigm for enterprises. Int. J. Prod. Dev. 2005;2:71-84.
14. Piascik R, Vickers J, Lowry D., Scotti S., et al. ’Technology area 12: materials, structures, mechanical systems, and manufacturing road map. 2010.
15. Boulos KMN, Al-Shorbaji NM. On the internet of things, smart cities and the WHO healthy cities. Int. J. Health Geogr. 2014;13:10.
16. Piplani S, Singh PK, Winkler DA, Petrovsky N. In silico comparison of SARS-CoV-2 spike protein-ACE2 binding affinities across species and implications for virus origin. Sci. Rep. 2021;11:13063.
17. Telenti A, Pierce LCT, Biggs WH, di Iulio J, Wong EHM, Fabani MM, Kirkness EF, Moustafa A, Shah N, Xie C, et al. Deep sequencing of 10,000 human genomes. Proc. Natl. Acad. Sci. USA 2016;113:11901-11906.
18. Lehrach H, Ionescu A, Benhabiles N. The Future of Health Care: Deep Data, Smart Sensors, Virtual Patients and the Internet-of-Humans (White Paper-2016). Available from: https://docs.wixstatic.com/ugd/2b9f87_40d29af47a9742498cbbbd484e0174e0.pdf [Accessed 4 May 2025].
19. Cho SW, Byun SH, Yi S, Jang WS, Kim JC, Park IY, Yang BE. Sagittal relationship between the maxillary central incisors and the forehead in digital twins of korean adult females. J. Pers. Med. 2021;11:203.
20. Shogenova ZA, Krymshokalova DA, Ketova FR. Methodologies for the formation of structures of information systems for storing and analyzing patient data. Modern Science and Innovations. 2024;(1):25-31. (In Russ).
Review
For citations:
Shogenova Z.A. Modern approaches to the formation and implementation of methods for creating information systems of digital twins of patients. Modern Science and Innovations. 2025;(1):150-157. (In Russ.) https://doi.org/10.37493/2307-910X.2025.1.12