Hybrid Rough-Genetic Classification Model for IoT Heart Disease Monitoring System

Author(s):  
Mohammed M. Eisa ◽  
Mona H. Alnaggar
2018 ◽  
Vol 2018 ◽  
pp. 1-11 ◽  
Author(s):  
Ling Yang ◽  
V. Sarath Babu ◽  
Juan Zou ◽  
Xu Can Cai ◽  
Ting Wu ◽  
...  

To solve the problem of unreliability of traceability information in the traceability system, we developed an intelligent monitoring system to realize the real-time online acquisition of physicochemical parameters of the agricultural inputs and to predict the varieties of input products accurately. Firstly, self-developed monitoring equipment was used to realize real-time acquisition, format conversion and pretreatment of the physicochemical parameters of inputs, and real-time communication with the cloud platform server. In this process, LoRa technology was adopted to solve the wireless communication problems between long-distance, low-power, and multinode environments. Secondly, a deep belief network (DBN) model was used to learn unsupervised physicochemical parameters of input products and extract the input features. Finally, these input features were utilized on the softmax classifier to establish the classification model, which could accurately predict the varieties of agricultural inputs. The results showed that when six kinds of pesticides, chemical fertilizers, and other agricultural inputs were predicted through the system, the prediction accuracy could reach 98.5%. Therefore, the system can be used to monitor the varieties of agrarian inputs effectively and use in real-time to ensure the authenticity and accuracy of the traceability information.


Author(s):  
Vladimír Konečný ◽  
Milan Sepši ◽  
Oldřich Trenz

The ischemic heart disease represents a very common health issue which, thanks to its seriousness, impacts a big part of the population and is the cause of about one third of all death cases in the Czech Republic. For the analysis itself, data from medicinal practice of one of the authors of the article have been used and this study is a follow up of his PhD thesis. Concretely it was a set of patients which were being rehabilitated after a heart stroke; the results of the medical examination of these patients create 26 parameters. This data has been obtained in the course of the patients’ treatment. In the first phase of generating the classification model, the parameters that didn’t have a detrimental effect on the assessment of health condition of the patients have been removed from the data set and have been kept in the category of additional parameters. For the classification itself, an approach from artificial intelligence – applying a neural network - has been chosen. For the recording and transformation of the entering data a special application has been made. The classification and analysis of the data is performed on an experimental model of the self-learning of a neural network. The conclusions that arise from the initial analysis of this issue and the partial solution can be generalized and when using an appropriate software application they could even be used in medical practice. To do a complex analysis of the influence of all 26 parameters on the overall state of health of the patients is very difficult. A decision-making model appears to be a good solution. Last but not least, the proposed solution has to be verified on a bigger sample of patients afflicted by the ischemic heart disease.


1994 ◽  
Vol 134 (11) ◽  
pp. 270-273 ◽  
Author(s):  
I. Ekesbo ◽  
P. Oltenacu ◽  
B. Vilson ◽  
J. Nilsson

2020 ◽  
Vol 110 ◽  
pp. 772-780
Author(s):  
Jun Yang ◽  
Wenjing Xiao ◽  
Huimin Lu ◽  
Ahmed Barnawi

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