KNOWLEDGE BASED SYSTEM FOR THE DIAGNOSIS OF DENGUE DISEASE
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Keywords

Expert System, SL5, Delphi, Dengue, Diseases

How to Cite

Aysha I. Mansour. (2024). KNOWLEDGE BASED SYSTEM FOR THE DIAGNOSIS OF DENGUE DISEASE. "XXI ASRDA INNOVATSION TEXNOLOGIYALAR, FAN VA TAʼLIM TARAQQIYOTIDAGI DOLZARB MUAMMOLAR" Nomli Respublika Ilmiy-Amaliy Konferensiyasi, 2(6), 6–11. Retrieved from https://universalpublishings.com/index.php/itfttdm/article/view/6177

Abstract

Dengue Disease is a mosquito-borne tropical disease caused by the dengue virus, symptoms typically begin three to fourteen days after infection. This may include a high fever, headache, vomiting, muscle and joint pains, and a characteristic skin rash. Dengue serology is applied in different settings, such as for surveillance, in health care facilities in endemic areas and in travel clinics in non-endemic areas. The applicability and quality of serological tests in dengue endemic regions has to be judged against a background of potential cross reactivity with other flavi-viruses, difficulties in distinguishing primary from secondary infections and technological problems related to the fact that most dengue endemic regions are relatively poor of resources .Objectives: to help doctors and patients in diagnosing Dengue Disease and give them the  information of how to prevent Dengue Disease and to be able to understand the signs and symptoms of Dengue Disease. Methods:  We collected all relevant material for Dengue Disease.  Then we designed and implemented a knowledge based system for diagnosing Dengue Disease using SL5 Object Language. Results: The knowledge based system was evaluated by a group of Patients and specialized doctors and they found it very friendly and easy to use.

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