Sciweavers

ICIP
2007
IEEE

Computer-Aided Grading of Neuroblastic Differentiation: Multi-Resolution and Multi-Classifier Approach

14 years 3 months ago
Computer-Aided Grading of Neuroblastic Differentiation: Multi-Resolution and Multi-Classifier Approach
In this paper, the development of a computer-aided system for the classification of grade of neuroblastic differentiation is presented. This automated process is carried out within a multi-resolution framework that follows a coarse-to-fine strategy. Additionally, a novel segmentation approach using the Fisher-Rao criterion, embedded in the generic Expectation-Maximization algorithm, is employed. Multiple decisions from a classifier group are aggregated using a twostep classifier combiner that consists of a majority voting process and a weighted sum rule using priori classifier accuracies. The developed system, when tested on 14,616 image tiles, had the best overall accuracy of 96.89%. Furthermore, multi-resolution scheme combined with automated feature selection process resulted in 34% savings in computational costs on average when compared to a previously developed single-resolution system. Therefore, the performance of this system shows good promise for the computer-aided pathologic...
Jun Kong, Olcay Sertel, Hiroyuki Shimada, Kim L. B
Added 17 Aug 2010
Updated 17 Aug 2010
Type Conference
Year 2007
Where ICIP
Authors Jun Kong, Olcay Sertel, Hiroyuki Shimada, Kim L. Boyer, Joel H. Saltz, Metin N. Gurcan
Comments (0)