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Type-2 fuzzy ontology-aided recommendation systems for IoT-based healthcare

机译:基于物联网的医疗保健的Type-2模糊本体辅助推荐系统

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The number of people with a chronic disease is rapidly increasing, giving the healthcare industry more challenging problems. To date, there exist several ontology and IoT-based healthcare systems to intelligently supervise the chronic patients for long-term care. The central purposes of these systems are to reduce the volume of manual work in recommendation systems. However, due to the increase of risk and uncertain factors of the diabetes patients, these healthcare systems cannot be utilized to extract precise physiological information about patient. Further, the existing ontology-based approaches cannot extract optimal membership value of risk factors; thus, it provides poor results. In this regards, this paper presents a type-2 fuzzy ontology-aided recommendation systems for IoT-based healthcare to efficiently monitor the patient's body while recommending diets with specific foods and drugs. The proposed system extracts the values of patient risk factors, determines the patient's health condition via wearable sensors, and then recommends diabetes-specific prescriptions for a smart medicine box and food for a smart refrigerator. The combination of type-2 Fuzzy Logic (T2FL) and the fuzzy ontology significantly increases the prediction accuracy of a patient's condition and the precision rate for drug and food recommendations. Information about the patient's disease history, foods consumed, and drugs prescribed is designed in the ontology to deliver decision-maldng knowledge using Protege Web Ontology Language (OWL)-2 tools. Semantic Web Rule Language (SWRL) rules and fuzzy logic are employed to automate the recommendation process. Moreover, Description Logic (DL) and Simple Protocol and RDF Query Language (SPARQL) queries are used to evaluate the ontology. The experimental results show that the proposed system is efficient for patient risk factors extraction and diabetes prescriptions.
机译:慢性病的人数正在迅速增加,这给医疗保健行业带来了更具挑战性的问题。迄今为止,已有几种基于本体和物联网的医疗保健系统可以智能地监督慢性病患者的长期护理。这些系统的主要目的是减少推荐系统中的手工工作量。但是,由于糖尿病患者的风险增加和不确定因素,这些医疗保健系统无法用于提取有关患者的精确生理信息。此外,现有的基于本体的方法无法提取风险因素的最优隶属度值。因此,结果不佳。在这方面,本文提出了一种用于基于物联网的医疗保健的2型模糊本体辅助推荐系统,以有效地监测患者的身体,同时推荐特定食物和药物的饮食。拟议的系统提取患者危险因素的值,通过可穿戴式传感器确定患者的健康状况,然后为智能药品盒和智能冰箱的食品推荐糖尿病特定的处方。 2型模糊逻辑(T2FL)和模糊本体的结合显着提高了患者病情的预测准确性以及药物和食物推荐的准确率。本体中设计了有关患者疾病史,食用食物和处方药的信息,以使用Protege Web本体语言(OWL)-2工具提供决策知识。语义Web规则语言(SWRL)规则和模糊逻辑用于使推荐过程自动化。此外,描述逻辑(DL)和简单协议以及RDF查询语言(SPARQL)查询用于评估本体。实验结果表明,该系统对患者危险因素的提取和糖尿病处方的提取是有效的。

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