Analysis of Expert System for Early Diagnosis of Disorders During Pregnancy Using the Forward Chaining Method

Basiroh Basiroh(1*), Shahab Wahhab Kareem(2), Heri Nurdiyanto(3),

(1) Teknik Informatika, Universitas Nahdlatul Ulama Al Ghazali
(2) Information System Engineering, Erbil Polytechnic University
(3) STMIK Dharma Wacana
(*) Corresponding Author


Nowadays technological developments are increasingly having a positive influence on the development of human life, including in the health sector. One of them is an expert system that can transfer an expert's knowledge into a computer application to simplify and speed up the diagnosis of a disorder or disease in humans. The purpose of this final project is to design an application to diagnose diseases that occur during pregnancy which is caused by the existence of these pregnancies to simplify and speed up the diagnosis of diseases experienced by pregnant women. This study uses the forward chaining method. By involving experts in this expert system analysis according to current needs. Users are given easy access to information on several types of pregnancy disorders and their symptoms, as well as consultation through several questions that the user must answer to find out the results of the diagnosis. While experts are facilitated in system management, both the process of adding, updating and, deleting data.

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