利用社交网络和可穿戴设备的大数据和Java进行医疗保健的精确监测

Rishabh Goel, Satish C J
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引用次数: 1

摘要

可穿戴传感器和社交网站有助于收集参与者信息,以进行医疗监控。可穿戴传感器产生大量医疗数据,用于持续监测患者。社交网站用户生成的医疗保健数据庞大且非结构化。现有的医疗监控系统在收集和评估传感器和社交网络数据方面存在困难,传统的机器学习方法也不足以预测大医疗数据中的异常情况。提出了一种新的基于云的医疗监控体系结构,以正确地保存和评估医疗数据,并提高分类结果。提出了一种基于无线传感器网络和大数据分析的智能健康监测系统。建议的大数据分析引擎使用数据挖掘、本体和双向长短期记忆(Bi-LSTM)。数据处理方法是对信息进行预处理和最小化维数。提出的本体提供了关于糖尿病和血压实体、方面和关系(BP)的语义信息。Bi-LSTM对信息进行适当分类,以预测药物副作用和患者异常情况。建议的方法使用糖尿病、BP、心理健康和医学评论来定义患者的健康,并且该模型使用Java和prot Web本体语言。研究结果表明,建议的系统准确地管理医疗信息和预测药物副作用。
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Precision Monitoring of Health-Care Using Big Data and Java from Social Networking and Wearable Devices
Wearable sensors and social networking sites help gather participant information for healthcare monitoring. Wearable sensors generate a lot of healthcare data for continuous patient monitoring. Social networking sites' user-generated healthcare data is huge and unstructured. Existing healthcare monitoring systems have trouble gathering and evaluating sensor and social network data, and traditional machine learning methods are insufficient to anticipate abnormalities in big healthcare data. A novel cloud-based healthcare monitoring architecture is presented to properly save and evaluate healthcare data and increase classification results. A Wireless Sensor Network and Big Data Analytics based Intelligent Health Monitoring System (IHMS) is suggested in this paper. The suggested large data analytics engine uses data mining, ontologies, and Bidirectional Long Short-Term Memory (Bi-LSTM). Data processing approaches preprocess information and minimize dimensionality. Proposed ontologies give semantic information about diabetes and blood pressure entities, aspects, and relationships (BP). Bi-LSTM categorizes information properly to forecast medication side effects and patient abnormalities. The suggested approach defines patients' health using diabetes, BP, mental health, and medicine reviews, and this model uses Java and Protégé Web Ontology Language. The findings demonstrate that the suggested system accurately manages healthcare information and predicts pharmacological side effects.
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