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Intelligent optimization models for disease diagnosis using a service-oriented architecture and management science

机译:使用面向服务的体系结构和管理科学的疾病诊断智能优化模型

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The accuracy of disease diagnosis remains a significant challenge that medical and health care industries experience due to a relative lack of misdiagnosis studies and a difficulty of retrieving patients' information. Validation of diagnosis and certainty of its accuracy is the goal of this research. The research, as reported in this paper introduces an innovative solution to determine the accuracy of disease diagnosis. The solution is based on Intelligent Optimization Models (IOM) using integration of Service-Oriented Architecture (SOA) and Management Science (MS). These models enable medical doctors to make inference about disease diagnosis and allow a quick diagnosis of diseases at higher level of accuracy. The models also have the advantage of reducing health risk associated with experimenting with real patients. In particular, bad decisions that cause death or wrong treatment can be avoided. About 44,000 to 98,000 Americans die annually as the result of medical errors. Experimenting with these models requires less time and is less expensive than experimenting with studying patient's condition. In a SOA environment, the study of this research develops new intelligent concepts. These concepts integrate approaches of management science models including linear programming and network, search methodologies, information retrieval, clustering extended genetic algorithm, and intelligent agents. A prototype is created and examined in order to validate the concepts. The proposed concepts strengthen the capacity and quality of STEM undergraduate degree programs. The concepts also promote a vigorous STEM academic environment to increase the number of students entering STEM careers.
机译:由于相对缺乏错误诊断研究以及难以检索患者信息,疾病诊断的准确性仍然是医疗保健行业所面临的重大挑战。诊断的有效性及其准确性的确定性是本研究的目标。如本文所述,这项研究引入了一种创新的解决方案来确定疾病诊断的准确性。该解决方案基于智能优化模型(IOM),该模型使用了面向服务的体系结构(SOA)和管理科学(MS)的集成。这些模型使医生能够推断出疾病诊断,并能够以更高的准确性快速诊断疾病。该模型还具有降低与实际患者进行实验相关的健康风险的优势。特别是,可以避免导致死亡或错误治疗的错误决定。每年约有44,000至98,000名美国人因医疗错误而死亡。与研究患者的状况相比,使用这些模型进行实验所需的时间更少,成本也更低。在SOA环境中,本研究的研究开发了新的智能概念。这些概念集成了管理科学模型的方法,包括线性规划和网络,搜索方法,信息检索,聚类扩展遗传算法和智能代理。创建并检查了原型以验证概念。提出的概念可增强STEM本科学位课程的能力和质量。这些概念还促进了蓬勃的STEM学术环境,从而增加了进入STEM职业的学生数量。

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