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Developing a hybrid artificial intelligence model for outpatient visits forecasting in hospitals

机译:为医院门诊就诊开发混合人工智能模型

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Accurate forecasting of outpatient visits aids in decision-making and planning for the future and is the foundation for greater and better utilization of resources and increased levels of outpatient care. It provides the ability to better manage the ways in which outpatient's needs and aspirations are planned and delivered. This study presents a hybrid artificial intelligence (AI) model to develop a Mamdani type fuzzy rule based system to forecast outpatient visits with high accuracy. The hybrid model uses genetic algorithm for evolving knowledge base of fuzzy system. Actually it extracts useful patterns of information with a descriptive rule induction approach based on Genetic Fuzzy Systems (GFS). This is the first study on using a GFS to constructing an expert system for outpatient visits forecasting problems. Evaluation of the proposed approach will be carried out by applying it for forecasting outpatient visits of the department of internal medicine in a hospital in Taiwan and four big hospitals in Iran. Results show that the proposed approach has high accuracy in comparison with other related studies in the literature, so it can be considered as a suitable tool for outpatient visits forecasting problems.
机译:门诊就诊的准确预测有助于未来的决策和计划,并且是更好地利用资源和提高门诊服务水平的基础。它提供了更好地管理计划和交付门诊病人需求和愿望的方式的能力。这项研究提出了一种混合人工智能(AI)模型,用于开发基于Mamdani型模糊规则的系统,以高精度预测门诊病人。混合模型使用遗传算法发展模糊系统的知识库。实际上,它使用基于遗传模糊系统(GFS)的描述性规则归纳方法来提取有用的信息模式。这是关于使用GFS构建门诊就诊预测问题专家系统的第一项研究。将对该方法进行评估,将其用于预测台湾一家医院和伊朗四家大医院内科的门诊人次。结果表明,与文献中的其他相关研究相比,该方法具有较高的准确性,因此可以视为门诊就诊预测问题的合适工具。

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