Description
Computational Intelligence in Biomedical Engineering
Authors: Begg Rezaul, Lai Daniel T.H., Palaniswami Marimuthu
Language: EnglishSubjects for Computational Intelligence in Biomedical Engineering:
Keywords
CI Technique; EEG Signal; Braincomputer Interface; Spinal Cord; ECG Waveform; ECG Signal; HMM; CI Application; EEG Waveform; EMG Waveform; EMG Signal; Membership Function; SVM Model; LMS Algorithm; Roc Area; Gait Cycle; Fuzzy Set; QRS Complex; RBF Kernel; BCI System; EEG Segment; MLP Network; Myosin Head; IEEE Trans; Power Density Spectrum
74.82 €
In Print (Delivery period: 14 days).
Add to cart the book of Begg Rezaul, Lai Daniel T.H., Palaniswami MarimuthuPublication date: 10-2019
· 15.6x23.4 cm · Paperback
208.65 €
Subject to availability at the publisher.
Add to cart the book of Begg Rezaul, Lai Daniel T.H., Palaniswami MarimuthuPublication date: 01-2008
440 p. · 15.6x23.4 cm · Hardback
Description
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As in many other fields, biomedical engineers benefit from the use of computational intelligence (CI) tools to solve complex and non-linear problems. The benefits could be even greater if there were scientific literature that specifically focused on the biomedical applications of computational intelligence techniques. The first comprehensive field-specific reference, Computational Intelligence in Biomedical Engineering provides a unique look at how techniques in CI can offer solutions in modelling, relationship pattern recognition, clustering, and other problems particular to the field.
The authors begin with an overview of signal processing and machine learning approaches and continue on to introduce specific applications, which illustrate CI?s importance in medical diagnosis and healthcare. They provide an extensive review of signal processing techniques commonly employed in the analysis of biomedical signals and in the improvement of signal to noise ratio. The text covers recent CI techniques for post processing ECG signals in the diagnosis of cardiovascular disease and as well as various studies with a particular focus on CI?s potential as a tool for gait diagnostics.
In addition to its detailed accounts of the most recent research, Computational Intelligence in Biomedical Engineering provides useful applications and information on the benefits of applying computation intelligence techniques to improve medical diagnostics.
Introduction. Biomedical Signal Processing. Computational Intelligence Techniques. Computational Intelligence in Cardiology and Heart Disease Diagnosis. Computational Intelligence in Analysis of Electromyography Signals. Computational Intelligence in Electroencephalogram Analysis. Computational Intelligence in Gait and Movement Pattern Analysis. Summary and Future Trends. Index.