Benharref Abdelghani, Serhani Mohamed Adel, Nujum Al Ramzana
Annu Int Conf IEEE Eng Med Biol Soc. 2014;2014:2698-701. doi: 10.1109/EMBC.2014.6944179.
Continuous sensing of health metrics might generate a massive amount of data. Generating clinically validated recommendations, out of these data, to patients under monitoring is of prime importance to protect them from risk of falling into severe health degradation. Physicians also can be supported with automated recommendations that gain from historical data and increasing learning cycles. In this paper, we propose a Fuzzy Expert System that relies on data collected from continuous monitoring. The monitoring scheme implements preprocessing of data for better data analytics. However, data analytics implements the loopback feature in order to constantly improve fuzzy rules, knowledge base, and generated recommendations. Both techniques reduced data quantity, improved data quality and proposed recommendations. We evaluate our solution through a series of experiments and the results we have obtained proved that our fuzzy expert system combined with the intelligent monitoring and analytic techniques provide a high accuracy of collected data and valid advices.
持续感知健康指标可能会产生大量数据。从这些数据中为受监测的患者生成经过临床验证的建议,对于保护他们避免陷入严重健康恶化的风险至关重要。医生也可以借助从历史数据和不断增加的学习周期中获得的自动化建议。在本文中,我们提出了一种基于从持续监测中收集的数据的模糊专家系统。监测方案对数据进行预处理以实现更好的数据分析。然而,数据分析实现了回送功能,以便不断改进模糊规则、知识库和生成的建议。这两种技术都减少了数据量、提高了数据质量并提出了建议。我们通过一系列实验对我们的解决方案进行了评估,我们获得的结果证明,我们的模糊专家系统与智能监测和分析技术相结合,提供了高精度的收集数据和有效的建议。