Use of IoT in Biomedical Signal Analysis for Healthcare Systems

Author(s):  
Mihir Narayan Mohanty ◽  
Saumendra Kumar Mohapatra ◽  
Mohan Debarchan Mohanty
1999 ◽  
Author(s):  
Jiangsheng Yu ◽  
Qingming Luo ◽  
Dan Zhu ◽  
Qiang Lu ◽  
Ruan Yu

2021 ◽  
Author(s):  
Katarzyna J. Blinowska ◽  
Jarosław Żygierewicz

Author(s):  
Kamlesh Jha

The field of Biomedical engineering has brought two apparently diagonally placed poles of academia of excellence, i.e., field of medicine and the field of state of art engineering science to a closed proximity. Now a day most if not all of the state of art diagnostics in the field of medicine are almost totally dependent upon biomedical signal analysis. Whole of the biological systems are run by nothing but the bio-signals. The process of signal analysis depends upon the types of signals, recording methods, data types, need of compression and portability and possibility of artifacts. The important areas of the clinician's prime concern are the reliability of the data generated, the utility of the data produced in the real clinical settings in making a diagnosis and interference of the diverse type of equipment's signals with each other and its impact upon the final output. Physiologists act as a bridge between the biomedical engineering and the clinician's need assessment and product delivery process.


2011 ◽  
Vol 2011 ◽  
pp. 1-11
Author(s):  
R. M. Dünki ◽  
M. Dressel

Reducing a feature vector to an optimized dimensionality is a common problem in biomedical signal analysis. This analysis retrieves the characteristics of the time series and its associated measures with an adequate methodology followed by an appropriate statistical assessment of these measures (e.g., spectral power or fractal dimension). As a step towards such a statistical assessment, we present a data resampling approach. The techniques allow estimating σ2(F), that is, the variance of an F-value from variance analysis. Three test statistics are derived from the so-called F-ratio σ2(F)/F2. A Bayesian formalism assigns weights to hypotheses and their corresponding measures considered (hypothesis weighting). This leads to complete, partial, or noninclusion of these measures into an optimized feature vector. We thus distinguished the EEG of healthy probands from the EEG of patients diagnosed as schizophrenic. A reliable discriminance performance of 81% based on Taken's χ, α-, and δ-power was found.


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