首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >Atlas-based automatic mouse brain image segmentation revisited: Model complexity vs. image registration
【24h】

Atlas-based automatic mouse brain image segmentation revisited: Model complexity vs. image registration

机译:重新基于Atlas的鼠标脑图像自动分割:模型复杂性与图像配准

获取原文
获取原文并翻译 | 示例
           

摘要

Although many atlas-based segmentation methods have been developed and validated for the human brain, limited work has been done for the mouse brain. This paper investigated roles of image registration and segmentation model complexity in the mouse brain segmentation. We employed four segmentation models [single atlas, multiatlas, simultaneous truth and performance level estimation (STAPLE) and Markov random field (MRF) via four different image registration algorithms (affine, B-spline free-form deformation (FFD), Demons and large deformation diffeomorphic metric mapping (LDDMM)] for delineating 19 structures from in vivo magnetic resonance microscopy images. We validated their accuracies against manual segmentation. Our results revealed that LDDMM outperformed Demons, FFD and affine in any of the segmentation models. Under the same registration, increasing segmentation model complexity from single atlas to multiatlas, STAPLE or MRF significantly improved the segmentation accuracy. Interestingly, the multiatlas-based segmentation using nonlinear registrations (FFD, Demons and LDDMM) had similar performance to their STAPLE counterparts, while they both outperformed their MRF counterparts. Furthermore, when the single-atlas affine segmentation was used as reference, the improvement due to nonlinear registrations (FFD, Demons and LDDMM) in the single-atlas segmentation model was greater than that due to increasing model complexity (multiatlas, STAPLE and MRF affine segmentation). Hence, we concluded that image registration plays a more crucial role in the atlas-based automatic mouse brain segmentation as compared to model complexity. Multiple atlases with LDDMM can best improve the segmentation accuracy in the mouse brain among all segmentation models tested in this study.
机译:尽管针对人脑开发并验证了许多基于图集的分割方法,但对于小鼠脑只做了有限的工作。本文研究了图像配准和分割模型复杂性在小鼠脑分割中的作用。我们通过四种不同的图像配准算法(仿射,B样条自由形式变形(FFD),恶魔和大图像)采用了四种分割模型[单图集,多图集,同时真相和性能水平估计(STAPLE)和马氏随机场(MRF)变形衍射图(LDDMM)用于从体内磁共振显微镜图像中描绘出19个结构,我们验证了其对手动分割的准确性,我们的结果表明,LDDMM在任何分割模型中均优于恶魔,FFD和仿射。 ,将分割模型的复杂度从单图集增加到多图集,STAPLE或MRF显着提高了分割准确度。 MRF对应者此外,当使用单图集仿射分割时d作为参考,由于单图集分割模型中的非线性配准(FFD,Demons和LDDMM)而导致的改进大于因模型复杂性增加(多图集,STAPLE和MRF仿射分割)而带来的改进。因此,我们得出的结论是,与模型复杂性相比,图像配准在基于图集的自动小鼠大脑分割中起着更为关键的作用。在本研究中测试的所有分割模型中,带有LDDMM的多个图集可以最好地提高小鼠大脑的分割精度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号