4.7 Article

Convolutional neural network regression for short-axis left ventricle segmentation in cardiac cine MR sequences

期刊

MEDICAL IMAGE ANALYSIS
卷 39, 期 -, 页码 78-86

出版社

ELSEVIER
DOI: 10.1016/j.media.2017.04.002

关键词

Cardiac MRI; LV segmentation; Deep learning; Convolutional neural networks

资金

  1. University of Malaya Research Grant [RP028A/B/C-14HTM]
  2. National Health and Medical Research Council, Australia
  3. Australian Research Council
  4. South Australian Premier's Research and Industry Fund Fellowship

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Automated left ventricular (LV) segmentation is crucial for efficient quantification of cardiac function and morphology to aid subsequent management of cardiac pathologies. In this paper, we parameterize the complete (all short axis slices and phases) LV segmentation task in terms of the radial distances between the LV centerpoint and the endo- and epicardial contours in polar space. We then utilize convolutional neural network regression to infer these parameters. Utilizing parameter regression, as opposed to conventional pixel classification, allows the network to inherently reflect domain-specific physical constraints. We have benchmarked our approach primarily against the publicly-available left ventricle segmentation challenge (LVSC) dataset, which consists of 100 training and 100 validation cardiac MRI cases representing a heterogeneous mix of cardiac pathologies and imaging parameters across multiple centers. Our approach attained a.77 Jaccard index, which is the highest published overall result in comparison to other automated algorithms. To test general applicability, we also evaluated against the Kaggle Second Annual Data Science Bowl, where the evaluation metric was the indirect clinical measures of LV volume rather than direct myocardial contours. Our approach attained a Continuous Ranked Probability Score (CRPS) of .0124, which would have ranked tenth in the original challenge. With this we demonstrate the effectiveness of convolutional neural network regression paired with domain-specific features in clinical segmentation. (C) 2017 Elsevier B.V. All rights reserved.

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