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NF-RCNN: Heart localization and right ventricle wall motion abnormality detection in cardiac MRI

Authors :
Saeed Kermani
Ali Mohammadzadeh
Raheleh Kafieh
Mostafa Ghelich Oghli
Source :
Physica Medica. 70:65-74
Publication Year :
2020
Publisher :
Elsevier BV, 2020.

Abstract

Convolutional neural networks (CNNs) are extensively used in cardiac image analysis. However, heart localization has become a prerequisite to these networks since it decreases the size of input images. Accordingly, recent CNNs benefit from deeper architectures in gaining abstract semantic information. In the present study, a deep learning-based method was developed for heart localization in cardiac MR images. Further, Network in Network (NIN) was used as the region proposal network (RPN) of the faster R-CNN, and then NIN Faster-RCNN (NF-RCNN) was proposed. NIN architecture is formed based on “MLPCONV” layer, a combination of convolutional network and multilayer perceptron (MLP). Therefore, it could deal with the complicated structures of MR images. Furthermore, two sets of cardiac MRI dataset were used to evaluate the network, and all the evaluation metrics indicated an absolute superiority of the proposed network over all related networks. In addition, FROC curve, precision-recall (PR) analysis, and mean localization error were employed to evaluate the proposed network. In brief, the results included an AUC value of 0.98 for FROC curve, a mean average precision of 0.96 for precision-recall curve, and a mean localization error of 6.17 mm. Moreover, a deep learning-based approach for the right ventricle wall motion analysis (WMA) was performed on the first dataset and the effect of the heart localization on this algorithm was studied. The results revealed that NF-RCNN increased the speed and decreased the required memory significantly.

Details

ISSN :
11201797
Volume :
70
Database :
OpenAIRE
Journal :
Physica Medica
Accession number :
edsair.doi.dedup.....56724c9089a13590398447e9c24246ef
Full Text :
https://doi.org/10.1016/j.ejmp.2020.01.011