Web-based skin disease diagnosis expert system

Authors

  • Faiz Rafdhi Information System Study Program, Muhammadiyah Saintek University
  • Bary Falah Akbar Information System Study Program, Muhammadiyah Saintek University

DOI:

https://doi.org/10.47577/biochemmed.v9i.11401

Keywords:

Expert System, Diagnosis, Skin Disease

Abstract

. In tropical nations, such as Indonesia, skin diseases are a common ailment. Skin conditions are typically not lethal illnesses, thus patients frequently disregard them and don't take them seriously. Skin conditions can, however, become uncomfortable and threaten the sufferer's survival if they are left untreated for an extended period of time. The result of this research is the creation of a web-based expert system for identifying skin disorders, which can aid in more accurate and timely diagnosis of skin diseases as well as offer treatment advice.

The development of a web-based expert system for diagnosing skin diseases uses the forward chaining method. While the development methodology uses ESDLC (Expert System Development Life Cycle), with the phases of Assessment, Knowledge Acquisition, Design, Test, Documentation, and Maintenance

References

Agusriandi., Basics of Web Programming Mastery Theory + Practice (HTML, CSS, Javascript), Yogyakarta: Deepublish, 2018.

Anhar, Guide to Mastering PHP & MySQL Autodidactically, Jakarta: mediakita, 2010.

Bagiono, Bambang Judi & Arifin, Alfanikko Dwi Putra., Weight Loss Expert System, Journal VISUALIKA, STMIK Muhammadiyah Jakarta, 2022.

Codepolitan, Wireframe Concept, https://www.codepolitan.com/konsep-wireframe-pada-website-5b3db818441cf/. Diakses 25 Oktober 2021.

Harahap, Marwali, Penyakit Kulit, Jakarta: PT Gramedia, 1990.

Harti, Sri, Artificial Intelligencet on Knowledge Base, Yogyakarta: Gadjah Mada University Press, 2021.

Hayadi, B. Herawan, Expert System, Yogyakarta: Deepublish, 2018.

Henderi, Untung Rahardja & Rahwanto, Efana., UML Powered Design System Using Visual Paradigm, Malang: CV. Literasi Nusantara Abadi, 2021.

Huda, Asrul, et. all, Introduction to C/ C++ Based Coding, Padang: UNP Press, 2021.

Hutahaean, Jeperson, Information System Consept, Yogyakarta: Deepublish, 2014.

Kusrini, Expert System: Theory & Application, Yogyakarta: ANDI, 2006.

Laudon, Kenneth C. & Laudon, Jane P, Managemen Information System: Organization and Technology, 4th ed, New Jersey: Prentice Hall Inc, 1996.

Luger, George F. & Stubblefield, William A. Artificial Intelligence: Structure & Strategies for Complex Problem Solving”, 2nd ed., California: The Benjamin Publishing Company, 1993.

Maiyedra, Nico Alvio, Design of an Expert System for Diagnosing Skin Diseases in Children Using the Backward Chaining Method, Sistem Informasi dan Manajemen Journal, 2018.

Nurdiawan, Hermawan & Fatimah, Dini Destiani Siti., Development of an Expert System for Diagnosis of Tomato Plant Diseases Based on Visual Prolog, Journal Algoritma, Sekolah Tinggi Teknologi, Garut, 2016.

Rafdhi, Faiz, Sistem Pakar Penetapan Harta Waris, Thesis, Jakarta: STT Benarif Indonesia, 2004, hal. 29

Raharja University, Black Box Testing, https://raharja.ac.id/2020/10/20/black-box-testing/. Diakses 19 Agustus 2021.

Rerung, Rintho Rante, Basic Web Programming, Yogyakarta: Deepublish, 2018.

Rosnelly, Rika, Expert System: Concept & Theory, Yogyakarta: ANDI, 2012.

Tolle, Herman, et. all, Mobile Device Application Development (Concept and Implementation), Malang: Brawijaya University Press, 2017.

Warno & Fatihamli, Reja., Expert System for Diagnosis of Hypertension (Case Study at Sadar Medika Clinic in East Jakarta), Visualika Journal, Jakarta: Muhammadiyah Saintek University, 2022.

--------, dan Hady Purnomo, Web-Based Expert System for Recognizing Children's Talents and Personalitie, Sibernetika Journal, Jakarta: Muhammadiyah Saintek University, 2022.

Rich, Elaine & Knight, Kevin., Artificial Intelligence, International Edition, Singapore: McGraw-Hill Inc., 2nd ed, 1991.

Turban, Efraim, Expert System & Applied Artificial Intelligence, New York: Macmillan Publishing Company, 1992.

Downloads

Published

2024-07-10

How to Cite

Rafdhi, F., & Akbar, B. F. (2024). Web-based skin disease diagnosis expert system. Technium BioChemMed, 9, 8–22. https://doi.org/10.47577/biochemmed.v9i.11401