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A Comprehensive Survey on Machine Learning-Based Big Data Analytics for IoT-Enabled Smart Healthcare System

机译:启用IOT的智能医疗保健系统的基于机器学习大数据分析的全面调查

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The outbreak of chronic diseases such as COVID-19 has made a renewed call for providing urgent healthcare facilities to the citizens across the globe. The recent pandemic exposes the shortcomings of traditional healthcare system, i.e., hospitals and clinics alone are not capable to cope with this situation. One of the major technology that aids contemporary healthcare solutions is the smart and connected wearables. The advancement in Internet of Things (IoT) has enabled these wearables to collect data on an unprecedented scale. These wearables gather context-oriented information related to our physical, behavioural and psychological health. The big data generated by wearables and other healthcare devices of IoT is a challenging task to manage that can negatively affect the inference process at the decision centres. Applying big data analytics for mining information, extracting knowledge and making predictions/inferences has recently attracted significant attention. Machine learning is another area of research that has successfully been applied to solve various networking problems such as routing, traffic engineering, resource allocation, and security. Recently, we have seen a surge in the application of ML-based techniques for the improvement of various IoT applications. Although, big data analytics and machine learning are extensively researched, there is a lack of study that exclusively focus on the evolution of ML-based techniques for big data analysis in the IoT healthcare sector. In this paper, we have presented a comprehensive review on the application of machine learning techniques for big data analysis in the healthcare sector. Furthermore, strength and weaknesses of existing techniques along with various research challenges are highlighted. Our study will provide an insight for healthcare practitioners and government agencies to keep themselves well-equipped with the latest trends in ML-based big data analytics for smart healthcare.
机译:Covid-19等慢性疾病的爆发已经重新呼吁向全球公民提供紧急医疗保健设施。最近的大流行暴露了传统医疗保健系统的缺点,即单独的医院和诊所无法应对这种情况。艾滋病当代医疗解决方案的主要技术之一是智能和连接的可穿戴物。 Internet Internet(物联网)的进步使这些可穿戴物能够以前所未有的规模收集数据。这些可穿戴物可以收集与我们的身体,行为和心理健康有关的面向上下文的信息。 IOT的可穿戴设备和其他医疗设备生成的大数据是一个具有挑战性的任务,可以管理,可以对决定中心产生负面影响推动过程。应用大数据分析进行采矿信息,提取知识和预测/推论最近引起了重大关注。机器学习是另一个研究领域,已成功应用于解决各种网络问题,例如路由,流量工程,资源分配和安全性。最近,我们已经看到了应用ML的技术改善各种IOT应用的浪涌。虽然大数据分析和机器学习广泛研究,但缺乏研究,专注于IOT医疗部门大数据分析的基于ML基技技术的演变。在本文中,我们对机器学习技术进行了全面的审查,在医疗保健部门进行了大数据分析。此外,突出了现有技术的强度和弱点以及各种研究挑战。我们的研究将对医疗从业者和政府机构提供洞察力,以保持自己的智能医疗保健的ML基大数据分析的最新趋势。

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