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Machine Learning Approaches for Cancer Bone Segmentation from Micro Computed Tomography Images

机译:从微计算机断层扫描图像中进行癌骨分割的机器学习方法

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Many types of cancers such as multiple myeloma cause bone destruction, resulting in pain and fractures in patients and increased fatality. To quantify the degree of bone disease caused by cancer and analyse treatment response for bone repairing, accurate knowledge of the volumetry of all lesions is needed. To this end, this study proposes to apply two main approaches to the segmentation of bone lesions in cancer-induced bone disease from Micro Computed Tomography (μCT) images - structured forest-based edge detection approach and deep learning approach. A fast edge detection approach with structured forest, an extension of [1], is applied to identify the volumetry of all lesions in mice tibia, where the obtained results are evaluated against the manually labelled data, demonstrating the efficiency of the compared approaches. The Gaussian processes (Convnet GP) approach has achieved the best performance among the compared approaches, with 99.6% intersection of union and 99.7% precision. Our results demonstrate that the developed approach provides a reasonable delineation of the samples, showing the great potential towards fully automatic bone tumour segmentation.
机译:多发性骨髓瘤等许多类型的癌症会导致骨骼破坏,导致患者疼痛和骨折,并增加死亡人数。为了量化由癌症引起的骨疾病的程度并分析骨修复的治疗反应,需要准确了解所有病变的体积。为此,本研究建议从微计算机断层扫描(μCT)图像中应用两种主要方法对癌症诱发的骨病中的骨病变进行分割-结构化的基于森林的边缘检测方法和深度学习方法。使用结构化森林的快速边缘检测方法(扩展为[1])来识别胫骨小鼠中所有病变的体积,其中将获得的结果与手动标记的数据进行比较,证明了比较方法的效率。高斯过程(Convnet GP)方法在比较方法中取得了最佳性能,联合的交集为99.6%,精度为99.7%。我们的结果表明,开发的方法可以对样品进行合理的划分,显示出对全自动骨肿瘤分割的巨大潜力。

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