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Estimation of the volume of the left ventricle from MRI images using deep neural networks

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arxiv 1702.03833 v1 pith:L65X5MEX submitted 2017-02-13 cs.CV

Estimation of the volume of the left ventricle from MRI images using deep neural networks

classification cs.CV
keywords volumeimagesneuralnetworkcompetitiondatasetdeepdifferent
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Segmenting human left ventricle (LV) in magnetic resonance imaging (MRI) images and calculating its volume are important for diagnosing cardiac diseases. In 2016, Kaggle organized a competition to estimate the volume of LV from MRI images. The dataset consisted of a large number of cases, but only provided systole and diastole volumes as labels. We designed a system based on neural networks to solve this problem. It began with a detector combined with a neural network classifier for detecting regions of interest (ROIs) containing LV chambers. Then a deep neural network named hypercolumns fully convolutional network was used to segment LV in ROIs. The 2D segmentation results were integrated across different images to estimate the volume. With ground-truth volume labels, this model was trained end-to-end. To improve the result, an additional dataset with only segmentation label was used. The model was trained alternately on these two datasets with different types of teaching signals. We also proposed a variance estimation method for the final prediction. Our algorithm ranked the 4th on the test set in this competition.

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