作者
Andrew J Asman, Yuankai Huo, Andrew J Plassard, Bennett A Landman
发表日期
2015/12/1
期刊
Medical image analysis
卷号
26
期号
1
页码范围
82-91
出版商
Elsevier
简介
We propose multi-atlas learner fusion (MLF), a framework for rapidly and accurately replicating the highly accurate, yet computationally expensive, multi-atlas segmentation framework based on fusing local learners. In the largest whole-brain multi-atlas study yet reported, multi-atlas segmentations are estimated for a training set of 3464 MR brain images. Using these multi-atlas estimates we (1) estimate a low-dimensional representation for selecting locally appropriate example images, and (2) build AdaBoost learners that map a weak initial segmentation to the multi-atlas segmentation result. Thus, to segment a new target image we project the image into the low-dimensional space, construct a weak initial segmentation, and fuse the trained, locally selected, learners. The MLF framework cuts the runtime on a modern computer from 36 h down to 3–8 min – a 270× speedup – by completely bypassing the need for …
引用总数
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