Authors
Xiantong Zhen, Zhijie Wang, Ali Islam, Mousumi Bhaduri, Ian Chan, Shuo Li
Publication date
2016/5/1
Journal
Medical image analysis
Volume
30
Pages
120-129
Publisher
Elsevier
Description
Direct estimation of cardiac ventricular volumes has become increasingly popular and important in cardiac function analysis due to its effectiveness and efficiency by avoiding an intermediate segmentation step. However, existing methods rely on either intensive user inputs or problematic assumptions. To realize the full capacities of direct estimation, this paper presents a general, fully learning-based framework for direct bi-ventricular volume estimation, which removes user inputs and unreliable assumptions. We formulate bi-ventricular volume estimation as a general regression framework which consists of two main full learning stages: unsupervised cardiac image representation learning by multi-scale deep networks and direct bi-ventricular volume estimation by random forests.
By leveraging strengths of generative and discriminant learning, the proposed method produces high correlations of around 0.92 with …
Total citations
201520162017201820192020202120222023202411414243121151262
Scholar articles