Three techniques for automatic extraction of corpus callosum in structural midsagittal brain MR images: Valley Matching, Evolutionary Corpus Callosum Detection and …

ZA Dagdeviren, K Oguz, MG Cinsdikici - Engineering Applications of …, 2014 - Elsevier
Engineering Applications of Artificial Intelligence, 2014Elsevier
Corpus callosum (CC) is an important structure for medical image registration. We propose
three novel fully automated for the extraction of CC. Our first algorithm, Valley matching
(VM), is based on fixed searched range in histogram processing and uses prior anatomical
information for locating CC. The second one, Evolutionary CC Detection (ECD), based on
genetic algorithm presents a new fitness function that uses anatomical ratios, instead of fixed
prior knowledge without the need for preprocessing. The final one, called Evolutionary …
Abstract
Corpus callosum (CC) is an important structure for medical image registration. We propose three novel fully automated for the extraction of CC. Our first algorithm, Valley matching (VM), is based on fixed searched range in histogram processing and uses prior anatomical information for locating CC. The second one, Evolutionary CC Detection (ECD), based on genetic algorithm presents a new fitness function that uses anatomical ratios, instead of fixed prior knowledge without the need for preprocessing. The final one, called Evolutionary Valley Matching (EVM), takes advantages of the strong points of the first and second algorithms. The search space defined for ECD is reduced by VM which uses crowding method to find the peaks in the multi-modal histogram. Another important contribution of this study is that there is no existing method using genetic algorithm for extracting CC. Our proposed algorithms perform with the success rates up to 95.5%.
Elsevier
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