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Foundations of Biomedical Knowledge Representation: Methods and Applications

✍ Scribed by Arjen Hommersom, Peter J.F. Lucas (eds.)


Publisher
Springer International Publishing
Year
2015
Tongue
English
Leaves
336
Series
Lecture Notes in Computer Science 9521
Edition
1
Category
Library

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✦ Synopsis


Medicine and health care are currently faced with a significant rise in their complexity. This is partly due to the progress made during the past three decades in the fundamental biological understanding of the causes of health and disease at the molecular, (sub)cellular, and organ level. Since the end of the 1970s, when knowledge representation and reasoning in the biomedical field became a separate area of research, huge progress has been made in the development of methods and tools that are finally able to impact on the way medicine is being practiced.

Even though there are huge differences in the techniques and methods used by biomedical researchers, there is now an increasing tendency to share research results in terms of formal knowledge representation methods, such as ontologies, statistical models, network models, and mathematical models. As there is an urgent need for health-care professionals to make better decisions, computer-based support using this knowledge is now becoming increasingly important. It may also be the only way to integrate research results from the different parts of the spectrum of biomedical and clinical research.

The aim of this book is to shed light on developments in knowledge representation at different levels of biomedical application, ranging from human biology to clinical guidelines, and using different techniques, from probability theory and differential equations to logic. The book starts with two introductory chapters followed by 18 contributions organized in the following topical sections: diagnosis of disease; monitoring of health and disease and conformance; assessment of health and personalization; prediction and prognosis of health and disease; treatment of disease; and recommendations.

✦ Table of Contents


Front Matter....Pages I-XII
Front Matter....Pages 1-1
How to Read the Book β€œFoundations of Biomedical Knowledge Representation”....Pages 3-7
An Introduction to Knowledge Representation and Reasoning in Healthcare....Pages 9-32
Front Matter....Pages 33-33
Representing Knowledge for Clinical Diagnostic Reasoning....Pages 35-45
Automated Diagnosis of Breast Cancer on Medical Images....Pages 47-67
Front Matter....Pages 69-69
Monitoring in the Healthcare Setting....Pages 71-80
Conformance Verification of Clinical Guidelines in Presence of Computerized and Human-Enhanced Processes....Pages 81-106
Modelling and Monitoring the Individual Patient in Real Time....Pages 107-136
Front Matter....Pages 137-137
Personalised Medicine: Taking a New Look at the Patient....Pages 139-141
Graphical Modelling in Genetics and Systems Biology....Pages 143-158
Chain Graphs and Gene Networks....Pages 159-178
Front Matter....Pages 179-179
Prediction and Prognosis of Health and Disease....Pages 181-188
Trajectories Through the Disease Process: Cross Sectional and Longitudinal Studies....Pages 189-205
Dynamic Bayesian Network for Cervical Cancer Screening....Pages 207-218
Modeling Dynamic Processes with Memory by Higher Order Temporal Models....Pages 219-232
Front Matter....Pages 233-233
Treatment of Disease: The Role of Knowledge Representation for Treatment Selection....Pages 235-241
Predicting Adverse Drug Events from Electronic Medical Records....Pages 243-257
User Modelling for Patient Tailored Virtual Rehabilitation....Pages 259-278
Front Matter....Pages 279-279
Supporting Physicians and Patients Through Recommendation: Guidelines and Beyond....Pages 281-286
A Hybrid Approach to the Verification of Computer Interpretable Guidelines....Pages 287-315
Aggregation of Clinical Evidence Using Argumentation: A Tutorial Introduction....Pages 317-337
Back Matter....Pages 339-339

✦ Subjects


Artificial Intelligence (incl. Robotics); Health Informatics; Data Mining and Knowledge Discovery; Information Systems Applications (incl. Internet); Information Storage and Retrieval; Mathematical Logic and Formal Languages


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