Paper
26 May 1999 Can knowledge discovery from databases enhance case-based reasoning for medical diagnosis support systems?
Binh Pham, John Yearwood, Andrew Stranieri
Author Affiliations +
Abstract
Case-based reasoning (CBR) which involves the representation of prior experience as cases, provides a natural approach for developing a medical diagnosis support system because medical practitioners usually solve new problems by comparing them to previously seen cases. We propose a general framework for such a system with the aim to assess the normality and abnormality of the cervical spine. Two distinct types of visual features are used for indexing the cases: a small set of basic features that is known to be useful by radiologists for diagnosis and a minimal set of salient generic visual features. The latter is obtained by using knowledge discovery from databases (KDD) techniques. Standard image analysis techniques are used to automatically extract both of these types of features from the images. The efficiency and adaptiveness of the system can be further improved by using KDD techniques to reduce the set of cases to the minimum as well as to extract appropriate adaptation rules.
© (1999) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Binh Pham, John Yearwood, and Andrew Stranieri "Can knowledge discovery from databases enhance case-based reasoning for medical diagnosis support systems?", Proc. SPIE 3658, Medical Imaging 1999: Image Display, (26 May 1999); https://doi.org/10.1117/12.349424
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KEYWORDS
Visualization

Feature extraction

Data mining

Spine

Databases

Image retrieval

Medical diagnostics

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