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Adaptive multi-level conditional random fields for detection and segmentation of small enhanced pathology in medical images

机译:自适应多级条件随机场用于医学图像中小的增强病理的检测和分割

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Detection and segmentation of large structures in an image or within a region of interest have received great attention in the medical image processing domains. However, the problem of small pathology detection and segmentation still remains an unresolved challenge due to the small size of these pathologies, their low contrast and variable position, shape and texture. In many contexts, early detection of these pathologies is critical in diagnosis and assessing the outcome of treatment. In this paper, we propose a probabilistic Adaptive Multi-level Conditional Random Fields (AMCRF) with the incorporation of higher order cliques for detecting and segmenting such pathologies. In the first level of our graphical model, a voxel-based CRF is used to identify candidate lesions. In the second level, in order to further remove falsely detected regions, a new CRF is developed that incorporates higher order textural features, which are invariant to rotation and local intensity distortions. At this level, higher order textures are considered together with the voxel-wise cliques to refine boundaries and is therefore adaptive. The proposed algorithm is tested in the context of detecting enhancing Multiple Sclerosis (MS) lesions in brain MRI, where the problem is further complicated as many of the enhancing voxels are associated with normal structures (i.e. blood vessels) or noise in the MRI. The algorithm is trained and tested on large multi-center clinical trials from Relapsing-Remitting MS patients. The effect of several different parameter learning and inference techniques is further investigated. When tested on 120 cases, the proposed method reaches a lesion detection rate of 90%, with very few false positive lesion counts on average, ranging from 0.17 for very small (3-5 voxels) to 0 for very large (50+ voxels) regions. The proposed model is further tested on a very large clinical trial containing 2770 scans where a high sensitivity of 91% with an average false positive count of 0.5 is achieved. Incorporation of contextual information at different scales is also explored. Finally, superior performance is shown upon comparing with Support Vector Machine (SVM), Random Forest and variant of an MRF. (C) 2015 Elsevier B.V. All rights reserved.
机译:在医学图像处理领域中,图像或感兴趣区域内大型结构的检测和分割已引起极大关注。然而,由于这些病理的尺寸小,它们的低对比度以及可变的位置,形状和质地,小病理检测和分割的问题仍然是未解决的挑战。在许多情况下,这些病理的早期发现对于诊断和评估治疗结果至关重要。在本文中,我们提出了一种概率自适应多级条件随机场(AMCRF),其中结合了用于检测和分割此类病理的高阶团。在图形模型的第一级中,基于体素的CRF用于识别候选病变。在第二级中,为了进一步去除错误检测的区域,开发了一种新的CRF,该CRF包含了高阶纹理特征,这些特征对于旋转和局部强度变形是不变的。在此级别上,可以考虑使用更高阶的纹理以及体素方向的小集团来完善边界,因此具有自适应性。在脑部MRI中检测增强多发性硬化(MS)病变的情况下测试了该算法,该问题由于许多增强体素与MRI中的正常结构(即血管)或噪声有关而变得更加复杂。该算法已在复发缓解型MS患者的大型多中心临床试验中进行了培训和测试。进一步研究了几种不同的参数学习和推理技术的效果。当对120例患者进行测试时,所提出的方法的病变检出率达到90%,平均假阳性病变计数很少,范围从非常小(3-5个体素的0.17)到非常大(50+体素)的0。地区。在包含2770次扫描的超大型临床试验中对提出的模型进行了进一步测试,在该试验中,实现了91%的高灵敏度和平均0.5%的假阳性数。还探讨了不同规模的上下文信息的合并。最后,与支持向量机(SVM),随机森林和MRF的变体进行比较后,显示出优异的性能。 (C)2015 Elsevier B.V.保留所有权利。

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