Weisenfeld Neil I, Mewes Andrea U J, Warfield Simon K
Computational Radiology Laboratory, Brigham and Women's and Children's Hospitals, Harvard Medical School, Boston, MA.
Med Image Comput Comput Assist Interv. 2006;9(Pt 1):199-206. doi: 10.1007/11866565_25.
The segmentation of newborn brain MRI is important for assessing and directing treatment options for premature infants at risk for developmental disorders, abnormalities, or even death. Segmentation of infant brain MRI is particularly challenging when compared with the segmentation of images acquired from older children and adults. We sought to develop a fully automated segmentation strategy and present here a Bayesian approach utilizing an atlas of priors derived from previous segmentations and a new scheme for automatically selecting and iteratively refining classifier training data using the STAPLE algorithm. Results have been validated by comparison to hand-drawn segmentations.
新生儿脑磁共振成像(MRI)的分割对于评估和指导发育障碍、异常甚至死亡风险的早产儿的治疗方案非常重要。与从大龄儿童和成人获取的图像分割相比,婴儿脑MRI的分割尤其具有挑战性。我们试图开发一种全自动分割策略,并在此提出一种贝叶斯方法,该方法利用从先前分割中得出的先验图谱,以及一种使用STAPLE算法自动选择和迭代优化分类器训练数据的新方案。通过与手绘分割进行比较,验证了结果。