Classificação de bifurcações em imagens de tomografia de coerência óptica intravascular utilizando redes neurais e máquinas de vetores de suporte
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Universidade Federal do Amazonas
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Studies in intravascular optical coherence tomography (IV-OCT) have demonstrated the
importance of coronary bifurcation regions in intravascular medical imaging analysis, as
plaques are more likely to accumulate in this region leading to coronary disease. A typical IVOCT
pullback acquires hundreds of frames, thus developing an automated tool to classify the
OCT frames as bifurcation or non-bifurcation can be an important step to speed up OCT
pullbacks analysis and assist automated methods for atherosclerotic plaque quantification. In
this work, we evaluate the performance of two state-of-the-art classifiers, SVM and Neural
Networks in the bifurcation classification task. The study included IV-OCT frames from 9
patients. In order to improve classification performance, we trained and tested the SVM with
different parameters by means of a grid search and different stop criteria were applied to the
Neural Network classifier: mean square error, early stop and regularization. Different sets of
features were tested, using feature selection techniques: PCA, LDA and scalar feature selection
with correlation. Training and test were performed in sets with a maximum of 1460 OCT
frames. We quantified our results in terms of false positive rate, true positive rate, accuracy,
specificity, precision, false alarm, f-measure and area under ROC curve. Neural networks
obtained the best classification accuracy, 98.83%, overcoming the results found in literature.
Our methods appear to offer a robust and reliable automated classification of OCT frames that
might assist physicians indicating potential frames to analyze. Methods for improving neural
networks generalization have increased the classification performance.
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PORTO, Carmina Dessana Nascimento. Classificação de bifurcações em imagens de tomografia de coerência óptica intravascular utilizando redes neurais e máquinas de vetores de suporte. 2017. 138 f. Dissertação (Mestrado em Engenharia Elétrica) - Universidade Federal do Amazonas, Manaus, 2017.
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