Department of Digital Systems, University of Piraeus, M. Karaoli & A. Dimitriou 80, 18534 Piraeus, Greece.
Singular Logic EU Projects Department, Achaias 3, 14564 Kifisia, Greece.
Sensors (Basel). 2019 Apr 27;19(9):1978. doi: 10.3390/s19091978.
It is an undeniable fact that Internet of Things (IoT) technologies have become a milestone advancement in the digital healthcare domain, since the number of IoT medical devices is grown exponentially, and it is now anticipated that by 2020 there will be over 161 million of them connected worldwide. Therefore, in an era of continuous growth, IoT healthcare faces various challenges, such as the collection, the quality estimation, as well as the interpretation and the harmonization of the data that derive from the existing huge amounts of heterogeneous IoT medical devices. Even though various approaches have been developed so far for solving each one of these challenges, none of these proposes a holistic approach for successfully achieving data interoperability between high-quality data that derive from heterogeneous devices. For that reason, in this manuscript a mechanism is produced for effectively addressing the intersection of these challenges. Through this mechanism, initially, the collection of the different devices' datasets occurs, followed by the cleaning of them. In sequel, the produced cleaning results are used in order to capture the levels of the overall data quality of each dataset, in combination with the measurements of the availability of each device that produced each dataset, and the reliability of it. Consequently, only the high-quality data is kept and translated into a common format, being able to be used for further utilization. The proposed mechanism is evaluated through a specific scenario, producing reliable results, achieving data interoperability of 100% accuracy, and data quality of more than 90% accuracy.
物联网(IoT)技术已经成为数字医疗领域的一个里程碑式的进步,这是一个不可否认的事实,因为物联网医疗设备的数量呈指数级增长,预计到 2020 年,全球将有超过 1.61 亿台物联网医疗设备连接。因此,在持续发展的时代,物联网医疗面临着各种挑战,如数据的收集、质量评估,以及对现有大量异构物联网医疗设备所产生数据的解释和协调。尽管到目前为止已经开发了各种方法来解决这些挑战中的每一个,但没有一种方法提出了一种整体方法来成功实现来自异构设备的高质量数据之间的数据互操作性。出于这个原因,在本文中提出了一种机制来有效地解决这些挑战的交叉点。通过该机制,首先对不同设备的数据集进行收集,然后对其进行清理。接下来,利用清理结果来捕获每个数据集的整体数据质量水平,同时结合每个设备产生每个数据集的可用性测量和可靠性。因此,只保留高质量的数据,并将其转换为通用格式,以便进一步利用。通过一个特定的场景对所提出的机制进行评估,产生了可靠的结果,实现了 100%的准确性的数据互操作性和超过 90%的准确性的数据质量。