Optimizing Prediabetes Diagnosis Through Knowledge-Based Systems

Siti Rohajawati
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Abstract

The escalating global prevalence of prediabetes highlights the urgency of preventive measures, particularly given its association with increased age, obesity, and additional risk factors. Addressing this concern, the explainability component of Artificial Intelligence (AI) emerges as a valuable asset in diabetes prevention strategies. This study adopts an experimental design grounded in knowledge-based systems, utilizing the knowledge engineering method to craft a web-based health tool for diabetes diagnosis. The process encompasses acquisition, representation, validation, inferencing, and explanation phases. The online diagnostic tool not only facilitates self-diagnosis but also delivers conclusive findings and enables user registration. Practical solutions and preventive recommendations are offered, aligning with the overarching goal of diabetes prevention. The study identifies three operational phases – self-diagnosis, presentation of final findings, and member registration. To enhance the application's efficacy, the analysis provides constructive suggestions for future refinements and advancements. This research underscores the potential of AI-driven, explainable systems in contributing to the global effort to combat the rising prevalence of diabetes.
通过基于知识的系统优化糖尿病前期诊断
全球糖尿病前期发病率的不断攀升凸显了采取预防措施的紧迫性,特别是考虑到糖尿病前期与年龄增长、肥胖和其他风险因素有关。针对这一问题,人工智能(AI)的可解释性成为糖尿病预防战略的宝贵资产。本研究采用了以知识系统为基础的实验设计,利用知识工程方法制作了一个基于网络的糖尿病诊断健康工具。这一过程包括获取、表示、验证、推理和解释等阶段。该在线诊断工具不仅有助于自我诊断,还能提供确凿的诊断结果,并允许用户注册。根据糖尿病预防的总体目标,提供了实用的解决方案和预防建议。研究确定了三个操作阶段--自我诊断、提供最终结果和会员注册。为了提高应用程序的功效,分析为未来的改进和进步提供了建设性建议。这项研究强调了人工智能驱动的可解释系统在促进全球应对糖尿病发病率上升方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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