Gastric Diagnosis Expert System using the Fuzzy Mamdani Method
DOI:
https://doi.org/10.35134/jcsitech.v9i4.87Keywords:
Expert System, Gastric Disease, Fuzzy Mamdani, Lifestyle, PatientsAbstract
The stomach is one of the important digestive organs in humans. Gastric disease is inflammation of the stomach lining caused by microorganisms, this disease is caused more by Helycobacterpylori bacteria, apart from being caused by bacteria, stomach disease can also be caused by irregular lifestyle and eating patterns. Diseases that attack the stomach are still considered trivial by the general public, so not many people know about stomach diseases and the symptoms that exist. This is what causes people to be reluctant to see a doctor when they suffer from pain that attacks the stomach. When a disease attacks the stomach, people only use experience or intuition to cure it, so it is not treated properly. By using an expert system, patients can save time going to the hospital and can improve service to patients. The results of the Mamdani fuzzy logic calculations require a report on the possibility of stomach disease suffered by the user/patient, examples of possibilities are small, somewhat large and large based on the highest value results. It is hoped that with this system, it will be easier for patients to diagnose gastric diseases to carry out prevention and early diagnosis and treatment.
References
Assyifa, MN (2020). Android-Based Expert System Application for Diagnosis of Gastroesophageal Reflux Disease (GERD) Using the Certainty Factor Method. Scientific Journal of Technology and Engineering, 24(2), 78-90. http://dx.doi.org/10.35760/tr.2019.v24i2.2387
Kartika, D., & Junaldi, A. (2018). Application for Diagnosis of Gastric Disease Using the Forward Chaining Method. Journal of Information & Computer Technology, 70-77.
Azwar, A., & Gorontalo, UI (2018). Expert System for Early Diagnosis of Gastric Disease Using the Bayes Method. Jupiter, 4(2), 1-10.
Annur, ARU, & Slamet Sudaryanto, N. DEVELOPMENT OF AN INFORMATION SYSTEM FOR DIAGNOSIS OF ENT DISEASES IN HUMAN USING THE FORWARD CHAINING METHOD.
Alfie, AN (2022). EXPERT SYSTEM TO DIAGNOSE HUMAN MENTAL HEALTH USING FUZZY. Journal of Smart Technology, 2(10).
Fadzlul Rahman, F., & Saputra, H. (2023). Artificial intelligence in health services.
Muthohar, A., & Rahayu, Y. (2016). Implementation of Fuzzy Mamdani Logic in Nursing Service Performance Assessment. Journal of Applied Intelligent Systems, 1(1), 67-76. https://doi.org/10.33633/jais.v1i1.1090
Athiyah, U., Handayani, AP, Aldean, MY, Putra, NP, & Ramadhani, R. (2021). Fuzzy Inference System: Definition, Application and Benefits. Journal of Dinda: Data Science, Information Technology, and Data Analytics, 1(2), 73-76. https://doi.org/10.20895/dinda.v1i2.201
Tamba, SP, Wibowo, YA, & Damanik, RT (2020). Application of the Fuzzy Mamdani Method to Analyze the Importance of Discipline and Communication to Improve Employee Work Performance. Prima Journal of Information Systems and Computer Science (JUSIKOM PRIMA), 3(2), 35-39. https://doi.org/10.34012/jusikom.v3i2.937
Priyo, W.T. (2017). Application of Fuzzy Logic in Optimizing Goods Production Using the Mamdani Method. Soulmath Scientific Journal: Educational Journal of Mathematics Education, 5(1), 14-21. https://doi.org/10.25139/sm.v5i1.453
Simanullang, A., & Sinaga, MS (2017). Determining Production Amounts Based on Demand and Supply Using Fuzzy Logic Using the Mamdani Method.
Wardani, AR, Nasution, YN, & Amijaya, FDT (2017). Application of Fuzzy Logic in Optimizing Palm Oil Production at PT. Waru Kaltim Plantation Using the Mamdani Method.
Rahmawati, S. (2017). Design of a fuzzy logic application in determining production volume using the Mamdani method. Journal of Information Technology and Education, 10(1), 1-10. https://doi.org/10.24036/tip.v10i1.38
Donda, TB, Montolalu, C., & Rindengan, AJ (2018). Prediction of the amount of furniture production at CV. Sinar Sukses Manado Using Fuzzy Inference System. d'CARTESIAN: Journal of Mathematics and Applications, 7(1), 35-43. https://doi.org/10.35799/dc.7.1.2018.19552
Oktaviani, L. (2014). System for Determining the Calculation of Folding Gate Production Quantities Using Fuzzy Logic at PT. Jihan Jaya. JSiI (Journal of Information Systems), 1. https://doi.org/10.30656/jsii.v1i0.74
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2023 Journal of Computer Scine and Information Technology

This work is licensed under a Creative Commons Attribution 4.0 International License.



