Abstract

This study employs a Bayesian framework to construct a Web-based decision support system for medical diagnosis. The purpose is to help users (patients and physicians) with issues pertinent to medical diagnosis decisions and to detect diseases with highest probability through the Bayesian framework. Users could perform a more accurate diagnosis with the prior/conditional probabilities obtained from selected data sets and compute the posterior probability using the Bayes theorem. The proposed system identifies diseases by analyzing symptoms or by analyzing medical test results. Currently the system detects different types of diseases that people suffer in their day-to-day lives (general diseases) with an average detection accuracy of 92.56%. System also detects complex diseases (e.g.: heart disease - 83.67%, breast cancer - 80.98%, liver disorders - 79.43%, lung cancer - 71.00%, primary tumor - 78.02%, etc.) based on the analysis of the medical test results. The proposed system enhances the quality, accuracy and efficiency of decisions in medical diagnosis since the use of Bayesian theorem allows this system to offer more accurate platform than the conventional systems. Other than that this web-based system provides value-added services in conjunction with CAD system, such as; e-Chat & e-Channeling. More importantly, the targeted user group will be able to access the system as a software element freely and quickly. In this way the goal of this study – which is to provide a web-based medical diagnosis system is effectively achieved. KEYWORDS: Bayesian framework, medical decision support systems, computer-aided medical diagnosis, probability distributions, diseases

Highlights

  • Computer-aided medical diagnosis (CAD) has become far more widespread in the world and provides real world business solutions to users in areas ranging from automated medical diagnosis (Chang, 1998) to the extended applications such as decision support tools, clinical diagnosis, prediction of diseases, etc

  • Selected twenty-five (25) diseases were categorized into two (2) sectors; general diseases and complex diseases

  • Data used for the general diseases category were collected over several medical centers in western province, Sri Lanka with relevant permissions from doctors and only the patients who were willing to contribute to this research were examined

Read more

Summary

Introduction

Bayes' theorem can be used as the logical process of performing medical diagnosis, in automated medical diagnosis decision support systems (Sahai, 1991). This research incorporates the theoretical framework of Bayesian classifier to implement a web based medical diagnosis decision support system to perform medical diagnosis and find appropriate recommendations and solutions when encountering medical diagnosis problems. This web-based system provides value-added services in conjunction with the CAD system, such as; e-Chat & e- Channeling. Accuracy of the computer-aided medical diagnosis depends on the wide range of information used to calculate the probability (Sahai, 1991; Chung & Lu, 2009)

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call