Saratov JOURNAL of Medical and Scientific Research

Decision making support system in spine-and-pel-vic surgery as an instrument of branch control automation

Year: 2019, volume 15 Issue: №3 Pages: 677-682
Heading: Health Service Organization Article type: Original article
Authors: Fedonnikov A.S., Kolesnikova A.S., Rozhkova Yu.Yu., Kossovich L.Yu.
Organization: Saratov National Research University n.a. N. G. Chernyshevsky, Saratov State Medical University

Aim: to prove the use of decision making support system (DMSS) in spine-and-pelvic surgery as an instrument of control automation in health branch. Material and Methods. Development of DMSS presented in current work made at the base of methodology «planning-modeling-forecasting». For graphical analysis and description of DMSS performance applied the logic diagram method. Materials of DMSS performance evaluation were the data extracted from 22 protocols of its beta-testing processing. Results. Description of the development and beta-testing of organization tech- nology allowed to implement DMSS in healthcare at the base of Regional center (fulfilling medical and expert activity) and Technological center (fulfilling computational functions) interaction. Conclusion. Development and implementation of DMSS as an instrument of branch control automation allow influence the heath quality increasing by means of raising accuracy, specificity and personalizing of diagnostics, decreasing of complications and terms of rehabilitation. Besides this kind of systems allow reduce workload for medical personnel with rising of its labor efficiency that meets the needs of innovative development of medicine and healthcare.

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