Weakly-Supervised Detection of Bone Lesions in CT.

Tao Sheng, Tejas Sudharshan Mathai, Alexander Shieh, Ronald M Summers
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Abstract

The skeletal region is one of the common sites of metastatic spread of cancer in the breast and prostate. CT is routinely used to measure the size of lesions in the bones. However, they can be difficult to spot due to the wide variations in their sizes, shapes, and appearances. Precise localization of such lesions would enable reliable tracking of interval changes (growth, shrinkage, or unchanged status). To that end, an automated technique to detect bone lesions is highly desirable. In this pilot work, we developed a pipeline to detect bone lesions (lytic, blastic, and mixed) in CT volumes via a proxy segmentation task. First, we used the bone lesions that were prospectively marked by radiologists in a few 2D slices of CT volumes and converted them into weak 3D segmentation masks. Then, we trained a 3D full-resolution nnUNet model using these weak 3D annotations to segment the lesions and thereby detected them. Our automated method detected bone lesions in CT with a precision of 96.7% and recall of 47.3% despite the use of incomplete and partial training data. To the best of our knowledge, we are the first to attempt the direct detection of bone lesions in CT via a proxy segmentation task.

CT 中骨病变的弱监督检测
骨骼部位是乳腺癌和前列腺癌转移扩散的常见部位之一。CT 是测量骨骼病变大小的常规方法。然而,由于病变的大小、形状和外观差异很大,因此很难发现。对这些病变进行精确定位可以可靠地跟踪病变的间隔变化(生长、缩小或状态不变)。为此,我们非常需要一种自动检测骨病变的技术。在这项试验性工作中,我们开发了一个管道,通过代理分割任务来检测 CT 卷中的骨病变(溶解性、疱疹性和混合性)。首先,我们使用放射科医生在几张二维 CT 片中前瞻性标记的骨病变,并将其转换为弱三维分割掩模。然后,我们利用这些弱三维注释训练了一个三维全分辨率 nnUNet 模型来分割病变,从而检测出病变。尽管使用的是不完整和部分的训练数据,我们的自动方法检测出 CT 中骨质病变的精确度为 96.7%,召回率为 47.3%。据我们所知,我们是首次尝试通过代理分割任务直接检测 CT 中的骨病变。
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