Classification of mammographic microcalcification clusters with machine learning confidence levels
Authors/Creators
- 1. School of Computing, Ulster University, Coleraine, Northern Ireland, UK
- 2. School of Computing, Ulster University, Jordanstown, Newtownabbey, Northern Ireland, UK
- 3. Department of Computer Science, Aberystwyth University, UK
Description
This paper presents a novel investigation of machine learning performance by examining probability outputs in conjunction with classification accuracy (CA) and area under the curve (AU C). One of the main issues in the deployment of computer-aided detection/diagnosis (CAD) systems is lack of ‘trust’ of clinicians in the CAD system, increasing the possibility of the system not being used. Whilst most authors evaluate the performance of their breast CAD systems based on CA and AU C, we study the distribution of the classifiers’ probability outputs and use it as an additional confidence level metric to indicate the reliability of a computer system. Experimental results suggest that although most classifiers produce similar results in terms of CA and AUC (less than 2%variation), their performances are significantly different when considering confidence level (10 to 25% difference).This study may provide opportunities for refining radiologists’ interaction with CAD systems and improving there liability of CAD systems as well as diagnostic decision making in medicine with high CA or AU C with high degree of certainty.
Files
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