scholarly journals Tensometric tremorography in high-precision medical diagnostic systems

2018 ◽  
Vol Volume 11 ◽  
pp. 321-330
Author(s):  
Zoya Aleksanyan ◽  
Olga Bureneva ◽  
Nikolay Safyannikov
IEEE Access ◽  
2020 ◽  
Vol 8 ◽  
pp. 228049-228069
Author(s):  
Simarjeet Kaur ◽  
Jimmy Singla ◽  
Lewis Nkenyereye ◽  
Sudan Jha ◽  
Deepak Prashar ◽  
...  

1982 ◽  
Vol 21 (04) ◽  
pp. 210-220
Author(s):  
M. A. Woodbury ◽  
K. G. Manton

A number of classification techniques have been applied to the analysis of medical diagnostic systems and decision making. Commonly used approaches such as cluster analysis, linear discriminant analysis and Bayesian classification are subject to logical and statistical limitations. In this paper we present a methodology, called »grade of membership« analysis, which resolves many of those limitations. This methodology deals simultaneously with the dual problems of case clustering and estimation of discriminant coefficients. The methodology also permits the assessment of the reliability of externally defined medical diagnoses, multiple diagnoses for individuals, disease progression and severity, and permits the representation of patient heterogeneity within diagnostic category. Maximum likelihood principles are invoked both to obtain parameter estimates and as a basis for likelihood ratio testing of complex hypotheses about the model structure. The model is illustrated by an analysis of data on abdominal symptoms and disease.


Author(s):  
Anna Paleczek ◽  
Artur Maciej Rydosz

Abstract Currently, intensive work is underway on the development of truly noninvasive medical diagnostic systems, including respiratory analysers based on the detection of biomarkers of several diseases including diabetes. In terms of diabetes, acetone is considered as a one of the potential biomarker, although is not the single one. Therefore, the selective detection is crucial. Most often, the analysers of exhaled breath are based on the utilization of several commercially available gas sensors or on specially designed and manufactured gas sensors to obtain the highest selectivity and sensitivity to diabetes biomarkers present in the exhaled air. An important part of each system are the algorithms that are trained to detect diabetes based on data obtained from sensor matrices. The prepared review of the literature showed that there are many limitations in the development of the versatile breath analyser, such as high metabolic variability between patients, but the results obtained by researchers using the algorithms described in this paper are very promising and most of them achieve over 90% accuracy in the detection of diabetes in exhaled air. This paper summarizes the results using various measurement systems, feature extraction and feature selection methods as well as algorithms such as Support Vector Machines, k-Nearest Neighbours and various variations of Neural Networks for the detection of diabetes in patient samples and simulated artificial breath samples.


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