A.I. BURNASYAN FMBC CLINICAL BULLETIN

ISSN 2782-6430 (print)

State Research Center −Burnasyan Federal Medical Biophysical
Center of Federal Medical Biological Agency

The journal is published in Russian.
Format – A4.
The periodicity of the journal is 4 times a year.

Issue №2 2025 год

A.I. Burnasyan  FMBC clinical bulletin. 2024 № 1

A.A. Zavialov

Modern Quality Control of Oncological Care Is Associated with the Development of Medical Informatics

International Office, State Research Center – Burnasyan Federal Medical Biophysical Center  of Federal Medical Biological Agency, Moscow, Russiа

Contact person: Zavialov Alexandr Alexandrovich: azavialov@fmbcfmba.ru

Abstract
Quality control is an integral aspect of the functioning of the medical industry. There is an increase in demand for cancer care worldwide, which is subject to new requirements. At the same time, the concept of a high-quality system of oncological care includes: accessibility, timeliness, efficiency, safety, patient orientation, etc. Compliance with these requirements is impossible without the widespread use of medical informatic sistems . The development of medical informatics has led to the digitalization of technologies for managing the organization of internal quality control of oncological care to the population. The presented material reflects innovative approaches to automated assessments of the quality of cancer care.
The search was conducted in the PubMed (Medline) database. In the search bar, queries were entered (“oncology”, “cancer”, “cancer treatment”, “oncology informatics”, “clinical audit”, etc.) on the topic of quality control of treatment of patients with ZNO using medical informatics tools. The material combines data from 18 sources. The creation of an information base, the variety of information entered, the use of big data processing principles, all this opens up additional opportunities for assessing the quality of cancer care. It is necessary to widely introduce innovative automated systems for the development and implementation of multi-criteria assessments of the quality of work of the oncological service. The integration of sources and means of technical support and information processing into a single information and digital circuit is a key condition for the establishment of a system of continuous automated monitoring of the quality of oncological care in real time.

Keywords: oncology, cancer, cancer treatment, quality control, medical informatics

For citation: Zavialov AA. Modern Quality Control of Oncological Care Is Associated with the Development of Medical Informatics. A.I. Burnasyan Federal Medical Biophysical Center Clinical Bulletin. 2024.1:61-65. (In Russian) DOI: 10.33266/2782-6430-2024-1-61-65

 

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Conflict of interest. The authors declare no conflict of interest. 
Financing. The study had no sponsorship.
Contribution. Article was prepared with equal participation of the authors.
Article received: 15.01.2024. Accepted for publication: 06.02.2024

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