Artificial Neural Networks in Medicine and Biology: Proceedings of the ANNIMAB-1 Conference, Göteborg, Sweden, 13-16 May 2000 / Edition 1

Artificial Neural Networks in Medicine and Biology: Proceedings of the ANNIMAB-1 Conference, Göteborg, Sweden, 13-16 May 2000 / Edition 1

by H. Malmgren
     
 

ISBN-10: 1852332891

ISBN-13: 9781852332891

Pub. Date: 05/11/2000

Publisher: Springer London

This volume comprises a selection of papers presented at ANNIMAB-1, the first conference to focus specifically on the topics of ANNs in medicine and biology. It covers three main areas:
The medical applications of ANNs, such as in diagnosis and outcome prediction, medical image analysis, and medical signal processing; The uses of ANNs in biology outside

Overview

This volume comprises a selection of papers presented at ANNIMAB-1, the first conference to focus specifically on the topics of ANNs in medicine and biology. It covers three main areas:
The medical applications of ANNs, such as in diagnosis and outcome prediction, medical image analysis, and medical signal processing; The uses of ANNs in biology outside clinical medicine, such as in data analysis, in molecular biology, and in simulations of biological systems; The theoretical aspects of ANNs, examining recent developments in learning algorithms and the possible role of ANNs in the medical decision process.
Summarising the state-of-the-art and analysing the relationship between ANN techniques and other available methods, it also points to possible future biological and medical uses of ANNs. Essential reading for all neural network theorists, it will also be of interest to biologists and physicians with an interest in modelling and advanced statistical techniques.

Product Details

ISBN-13:
9781852332891
Publisher:
Springer London
Publication date:
05/11/2000
Series:
Perspectives in Neural Computing Series
Edition description:
2000
Pages:
334
Product dimensions:
6.10(w) x 9.25(h) x 0.36(d)

Table of Contents

Invited Presentations:
Neural Computation in Medicine: Perspectives and Prospects; An Unsupervised Learning Method that Produces Organized Representations from Real Information; On Forgetful Attractor Network Memories; ART Neural Networks for Medical Data Analysis and Fast Distributed Learning; Discriminating Gourmets, Lovers and Enophiles? Neural Nets Tell All About Locusts, Toads and Roaches; Protein Beta-Sheet Partner Prediction by Neural Networks.- Medical Image Analysis: Cancerous Liver Tissue Differentiation Using LVQ; Quantification of Diabetic Retinopathy Using Neural Networks and Sensitivity Analysis; Internet Based Artificial Neural Networks for the Interpretation of Medical Images; Segmentation of Magnetic Resonance Images According to Contrast Agent Uptake Kinetics Using a Competitive Neural Network; Applications of Optimizing Neural Networks in Medical Image Registration; Detection of Features from Medical Images Using a Modular Network Approach that Relies on Learning by Sample; Neural Network Based Classification of Cell Images via Estimation of Fractal Dimensions.- Signal Processing in Medicine: Mutual Control Neural Networks for Sleep Arousal Detection; Extraction of Sleep-Spindles from the Electroencephalogram (EEG); Analyzing Brain Tumor Related EEG Signals with ICA Algorithms; Isolating Seizure Activity in the EEG with Independent Component Analysis; Seizure Detection with the Self-Organising Feature Map; Neural Network Approach to P Wave Detection in the Electrocardiogram; Graphical Analysis of Respiration in Postoperative Patients Using Self-Organising Maps.- Clinical Diagnosis and Medical Decision Support: Neural Network Predictions of Outcome from Posteroventral Pallidotomy; A Neural-Bayesian Approach to Survival Analysis; Identifying Discriminant Features in the Histopathology Diagnosis of Inflammatory Bowel Disease Using a Novel Variant of the Growing Cell Structure Network Technique; Classifying Pigmented Skin Lesions with Machine Learning Methods; An Assessment System of Dementia of Alzheimer Type Using Artificial Neural Networks; A New Artificial Neural Network Method for the Interpretation of ECGs; Use of a Kohonen Neural Network to Characterize Respiratory Patients for Medical Intervention; determination of Microalbuminuria and Increased Urine Albumin Excretion by Immunoturbidimetric Assay and Neural Networks; Using an Artificial neural network to Predict Postoperative nausea and Vomiting; Acute Myocardial Infarction: Analysis of the ECH Using Artificial Neural Networks; Bayesian Neural Networks Used to Find Adverse Drug Combinations and Drug Related Syndromes; Monitoring of Physiological Parameters of Patients and Therapists During Psychotherapy Sessions Using Self-Organizing Maps.- Biomolecular Applications and Biological Modelling: Neuronal Network Modelling of the Somatosensory Pathway and its Application to General Anaesthesia; Electronic Noses and their Applications; A Hybrid Classification Tree and Artificial Neural Network Model for Predicting the In Vitro Response of the Human Immunodeficiency Virus (HIV1) to Anti-Viral Drug Therapy; Neural Unit Sensitive to Modulation; On Methods for Combination of Results from Gene-Finding Programs for Improved Prediction Accuracy; A Simulation Model for Activated Sludge Process Using Fuzzy Neural Networks; A General Method for Combining Predictors Tested on Protein Secondary Structure Prediction; A Three-Neuron Model of Information Processing During Bayesian Foraging; Sensorimotor Sequential Learning by an Artificial Neural Network based on Re-Defined Hebbian Learning; On Synaptic Plasticity: Modelling Molecular Kinases Involved in Transmitter Release; Self-Organizing Networks for Mapping and Clustering Biological Macromolecule Images; A Neural Network Model for Muscle Force Control Based on the Size Principle and Recurrent Inhibition of Renshaw Cells; Prediction of Photosensitizer Activity in Photodynamic Therapy Using Artificial Neural Networks: A 3D-QSAR Study.- Learning Methods and Hybrid Algorithms: Providing Case-Based Explanations for Artificial Neural Nets; Double Growing Neural Gas for Disease Diagnosis; The Use of a Knowledge Discovery Method for the Development of a Multi-Layer Perceptron Network that Classifies Low Back Pain Patients; Kernel PCA Feature Extraction of Event -Related Potentials for Human Signal Detection Performance; Particle Swarm Optimisation in Feedforward Neural Networks.

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