2017
DOI: 10.1155/2017/7838464
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Fuzzy Intelligent System for Patients with Preeclampsia in Wearable Devices

Abstract: Preeclampsia affects from 5% to 14% of all pregnant women and is responsible for about 14% of maternal deaths per year in the world. This paper is focused on the use of a decision analysis tool for the early detection of preeclampsia in women at risk. This tool applies a fuzzy linguistic approach implemented in a wearable device. In order to develop this tool, a real dataset containing data of pregnant women with high risk of preeclampsia from a health center has been analyzed, and a fuzzy linguistic methodolo… Show more

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Cited by 24 publications
(19 citation statements)
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“…At present, high hopes are placed on the use of artificial intelligence and machine learning for use in the diagnosis and control of the therapeutic process [17][18][19]. us, in our early work on the clinical example of arterial hypertension, it was shown that the application of quadratic discriminant analysis and methods for selecting diagnostic features of heart rate variability signals allows not only to perform express diagnostics of arterial hypertension, but also to evaluate the effectiveness of the therapeutic process with the use of neuro-electrostimulation [20].…”
Section: Discussion: Prospects Of Artificial Intelligence Applicationmentioning
confidence: 99%
“…At present, high hopes are placed on the use of artificial intelligence and machine learning for use in the diagnosis and control of the therapeutic process [17][18][19]. us, in our early work on the clinical example of arterial hypertension, it was shown that the application of quadratic discriminant analysis and methods for selecting diagnostic features of heart rate variability signals allows not only to perform express diagnostics of arterial hypertension, but also to evaluate the effectiveness of the therapeutic process with the use of neuro-electrostimulation [20].…”
Section: Discussion: Prospects Of Artificial Intelligence Applicationmentioning
confidence: 99%
“…The authors have mainly emphasized over energy efficiency factor in this presented system. Espinilla et al [16] has discussed about the decision making framework that is capable of extracting knowledge over the bio-signals captured from the wearable applications in IoT. Study towards integration of wearbale device and IoT was also carried out by Monton et al [17] using hardware-based approach in order to offer reduction in delay.…”
Section: Introductionmentioning
confidence: 99%
“…Both IoT paradigm and fuzzy linguistic models have been successfully proposed for managing uncertainty and vagueness in an interpretable way, which is a key issue to obtain high performance and results [10]. So, the use of protoforms and fuzzy logic has provided brilliant results in IoT systems in multiple areas with sensor data streams, such as weather forecasting [11], predicting of demand for urgent care in smart cities [12], fever medication control [13], visual scenes [14], or monitoring of patients with preeclampsia in wearable devices [15]. So, the fuzzy logic has been demonstrated as 2 Complexity a useful tool to deal with the uncertainty in the complex Internet of Things systems.…”
Section: Introductionmentioning
confidence: 99%