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Automatic detection of the anterior and posterior commissures on MRI scans using regression forests

机译:使用回归森林在MRI扫描中自动检测前后连合

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Identification of the anterior and posterior commissure is crucial in stereotactic and functional neurosurgery, human brain mapping, and medical image processing. We present a learning-based algorithm to automatically and rapidly localize these landmarks using random forests regression. Given a point in the image, we extract a set of multi-scale long-range textural features, and associate a probability for this point to be the landmark. We build random forests models to learn the relationship between the value of these features and the probability of a point to be a landmark point. Three-stage coarse-to-fine models are trained for AC and PC separately using down-sampled by 4, down-sampled by 2, and the original images. Testing is performed in a hierarchical approach to first obtain a rough estimation at the coarse level and then fine-tune the landmark position. We extensively evaluate our method in a leave-one-out fashion using a large dataset of 100 T1-weighted images. We also compare our method to the state-of-art AC/PC detection methods including an atlas-based approach with six well-established nonrigid registration algorithms and a publicly available implementation of a model-based approach. Our method results in an overall error of 0.84±0.41mm for AC, 0.83±0.36mm for PC and a maximum error of 2.04mm; it performs significantly better than the model-based AC/PC detection method we compare it to and better than three of the nonrigid registration methods. It is much faster than nonrigid registration methods.
机译:在立体定向和功能性神经外科手术,人脑标测和医学图像处理中,前后连合的鉴定至关重要。我们提出了一种基于学习的算法,可以使用随机森林回归自动快速地定位这些地标。给定图像中的一个点,我们提取了一组多尺度的远距离纹理特征,并将该点成为界标的概率与之关联。我们建立随机森林模型,以了解这些特征的价值与某个点成为地标性点的可能性之间的关系。通过使用4的下采样率和2的下采样率以及原始图像,分别针对AC和PC训练三阶段的粗到精模型。以分层方法执行测试,以首先在粗略级别获得粗略估计,然后微调界标位置。我们使用一个包含100个T1加权图像的大型数据集,以留一劳永逸的方式广泛评估了我们的方法。我们还将我们的方法与最新的AC / PC检测方法进行比较,其中包括基于Atlas的方法和六种公认的非刚性注册算法以及基于模型的方法的公开可用实现。我们的方法导致AC的整体误差为0.84±0.41mm,PC的整体误差为0.83±0.36mm,最大误差为2.04mm。它的性能明显优于我们基于模型的AC / PC检测方法,并且优于三种非刚性配准方法。它比非刚性注册方法快得多。

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