Title
Clinical quality needs complex adaptive systems and machine learning.
Abstract
The vast increase in clinical data has the potential to bring about large improvements in clinical quality and other aspects of healthcare delivery. However, such benefits do not come without cost. The analysis of such large datasets, particularly where the data may have to be merged from several sources and may be noisy and incomplete, is a challenging task. Furthermore, the introduction of clinical changes is a cyclical task meaning that the processes under examination operate in an environment that is not static. We suggest that traditional methods of analysis are unsuitable for the task and identify complexity theory and machine learning as areas that have the potential to facilitate the examination of clinical quality. By its nature the field of complex adaptive systems deals with environments that change because of the interactions that have occurred in the past. We draw parallels between health informatics and bioinformatics, which has already started to successfully use machine learning methods.
Year
Venue
Keywords
2004
STUDIES IN HEALTH TECHNOLOGY AND INFORMATICS
clinical quality,complex adaptive systems,complexity,machine learning,clinical data
Field
DocType
Volume
Data science,Health care,Data mining,Parallels,Computer science,Artificial intelligence,Health informatics,Complex adaptive system,Machine learning
Conference
107
Issue
ISSN
Citations 
Pt 1
0926-9630
2
PageRank 
References 
Authors
1.01
3
4
Name
Order
Citations
PageRank
Stephen Marsland1146.33
Iain Buchan211713.63
Iain Buchan311713.63
Stephen Marsland465761.72