Title :
Interpretation and knowledge discovery from a MLP network that performs low back pain classification
Author :
Vaughn, M.L. ; Cavill, S.J. ; Taylor, S.J. ; Foy, M.A. ; Fogg, A.J.B.
Author_Institution :
Knowledge Eng. Res. Centre, Cranfield Univ., Shrivenham, UK
Abstract :
Artificial neural networks are being increasingly used as medical decision support tools but are currently undermined by their inability to explain or justify their output classifications. Using a new method published by Vaughn (1996), the paper discovers the key inputs used by a multilayer perceptron (MLP) network that diagnoses low back pain (LBP). The knowledge learned by the MLP network from an input training case is expressed as a data relationship from which a valid rule can be directly induced, obviating the need for a combinatorial search based approach. The validation of the data relationships and rules, with the assistance of domain experts, provides a method for validating the MLP network. The aim of the paper is to discover the key inputs that a LBP MLP network uses to classify selected training case examples using the knowledge discovery method and to present the top ranked key inputs that the LBP MLP uses to classify all training cases for each diagnostic class. It is shown how the validation of the top ranked key inputs by the domain experts can lead to the validation of the LBP network
Keywords :
pattern classification; artificial neural networks; combinatorial search based approach; data relationship; domain expert; input training case; interpretation; knowledge discovery; low back pain classification; low back pain diagnosis; medical decision support tools; multilayer perceptron network; output classifications; valid rule;
Conference_Titel :
Knowledge Discovery and Data Mining (1998/434), IEE Colloquium on
Conference_Location :
London
DOI :
10.1049/ic:19980642