CNRS Paris Saclay, Telecom SudParis, SAMOVAR, France.
Artif Intell Med. 2018 Sep;91:57-71. doi: 10.1016/j.artmed.2018.06.001. Epub 2018 Jun 29.
As the world's population grows older, an increasing number of people are facing health issues. For the elderly, living alone can be difficult and dangerous. Consequently, smart homes are becoming increasingly popular. A sensor-rich environment can be exploited for healthcare applications, in particular, anomaly detection (AD). The literature review for this paper showed that few works consider environmental factors to detect anomalies. Instead, the focus is on user activity and checking whether it is abnormal, i.e., does not conform to expected behavior. Furthermore, reducing the number of anomalies using early detection is a major issue in many applications. In this context, anomaly-cause discovery may be helpful in recommending actions that may prevent risk. In this paper, we present a novel approach for detecting the risk of anomalies occurring in the environment regarding user activities. The method relies on anomaly-cause extraction from a given dataset using causal association rules mining. These anomaly causes are utilized afterward for real-time analysis to detect the risk of anomalies using the Markov logic network machine learning method. The detected risk allows the method to recommend suitable actions to perform in order to avoid the occurrence of an actual anomaly. The proposed approach is implemented, tested, and evaluated for each contribution using real data obtained from an intelligent environment platform and real data from a clinical datasets. Experimental results prove our approach to be efficient in terms of recognition rate.
随着世界人口老龄化,越来越多的人面临健康问题。对于老年人来说,独居可能既困难又危险。因此,智能家居越来越受欢迎。传感器丰富的环境可用于医疗保健应用,特别是异常检测 (AD)。本文的文献综述表明,很少有作品考虑环境因素来检测异常。相反,重点是用户活动,并检查其是否异常,即不符合预期行为。此外,在许多应用中,通过早期检测减少异常数量是一个主要问题。在这种情况下,异常原因发现可能有助于推荐可能预防风险的操作。在本文中,我们提出了一种新的方法,用于检测与用户活动相关的环境中异常发生的风险。该方法依赖于使用因果关联规则挖掘从给定数据集提取异常原因。然后,使用这些异常原因,使用马尔可夫逻辑网络机器学习方法进行实时分析,以检测异常的风险。检测到的风险允许该方法推荐适当的操作,以避免实际异常的发生。使用从智能环境平台获得的真实数据和从临床数据集获得的真实数据,针对每个贡献实施、测试和评估了所提出的方法。实验结果证明了我们的方法在识别率方面的效率。