Automatic Whole Brain MRI Segmentation of the Developing Neonatal Brain 论文

2014IEEE Transactions on Medical Imaging引用 411
Neonatal and fetal brain pathologyFetal and Pediatric Neurological DisordersMedical Image Segmentation Techniques

详细信息

发表期刊/会议
IEEE Transactions on Medical Imaging
发表日期
2014-05-06
发表年份
2014

关键词

Neonatal and fetal brain pathologyFetal and Pediatric Neurological DisordersMedical Image Segmentation Techniques

摘要

Magnetic resonance (MR) imaging is increasingly being used to assess brain growth and development in infants. Such studies are often based on quantitative analysis of anatomical segmentations of brain MR images. However, the large changes in brain shape and appearance associated with development, the lower signal to noise ratio and partial volume effects in the neonatal brain present challenges for automatic segmentation of neonatal MR imaging data. In this study, we propose a framework for accurate intensity-based segmentation of the developing neonatal brain, from the early preterm period to term-equivalent age, into 50 brain regions. We present a novel segmentation algorithm that models the intensities across the whole brain by introducing a structural hierarchy and anatomical constraints. The proposed method is compared to standard atlas-based techniques and improves label overlaps with respect to manual reference segmentations. We demonstrate that the proposed technique achieves highly accurate results and is very robust across a wide range of gestational ages, from 24 weeks gestational age to term-equivalent age.