Abstract:
The study is dedicated to the use of mivar expert systems for identifying bacterial resistance
to existing antibiotics. A modular architecture of the system was presented, which allows easy addition
and updating of individual components. A knowledge base consisting of 56 rules for working with the
expert system was created. It is proposed to implement the system using the KESMI software, which
allowed for logical conclusions to be drawn. The system was tested on three different cases. The first case
involved the presence of a mutation in the mecA gene, the second involved methylated ribosomes, and the
third involved Gram-positive bacteria. Testing of the Mivar expert system showed that the bacteria's
resistance results matched the established knowledge base. The impact of using Mivar expert systems on
the process of detecting antibiotic resistance has been studied. A description of the methodologies used to
evaluate the system's effectiveness was proposed. It was justified why the use of expert systems can
significantly improve the diagnosis and treatment of infectious diseases.
Keywords:mivar, mivar expert system, Wi!Mi, Big Knowledge, bacterial antibiotic resistance,
automated production control systems, smart production systems, automated process control systems