【24h】

Learning-Based Bone Quality Classification Method for Spinal Metastasis

机译:基于学习的脊柱转移骨质量分类方法

获取原文

摘要

Spinal metastasis is the most common disease in bone metastasis and may cause pain, instability and neurological injuries. Early detection of spinal metastasis is critical for accurate staging and optimal treatment. The diagnosis is usually facilitated with Computed Tomography (CT) scans, which requires considerable efforts from well-trained radiologists. In this paper, we explore a learning-based automatic bone quality classification method for spinal metastasis based on CT images. We simultaneously take the posterolateral spine involvement classification task into account, and employ multi-task learning (MTL) technique to improve the performance. MTL acts as a form of inductive bias which helps the model generalize better on each task by sharing representations between related tasks. Based on the prior knowledge that the mixed type can be viewed as both blastic and lytic, we model the task of bone quality classification as two binary classification sub-tasks, i.e., whether blastic and whether lytic, and leverage a multiple layer perceptron to combine their predictions. In order to make the model more robust and generalize better, self-paced learning is adopted to gradually involve from easy to more complex samples into the training process. The proposed learning-based method is evaluated on a proprietary spinal metastasis CT dataset. At slice level, our method significantly outperforms an 121-layer DenseNet classifier in sensitivities by +12.54%, +7.23% and +29.06% for blastic, mixed and lytic lesions, respectively, meanwhile + 12.33%, +23.2f% and +34.25% at vertebrae level.
机译:脊柱转移是骨转移中最常见的疾病,可能引起疼痛,不稳定和神经损伤。脊柱转移的早期检测对于准确的分期和最佳治疗至关重要。通常,计算机断层扫描(CT)扫描有助于诊断,这需要训练有素的放射科医生做出大量努力。在本文中,我们探索了一种基于CT的基于学习的脊柱转移的骨质量自动分类方法。我们同时考虑到后外侧脊柱受累分类任务,并采用多任务学习(MTL)技术来提高性能。 MTL是归纳偏差的一种形式,它通过在相关任务之间共享表示来帮助模型更好地概括每个任务。基于混合类型可以同时被视为弹力和溶血的先验知识,我们将骨骼质量分类的任务建模为两个二进制分类子任务,即是否是弹力和是否溶血的,并利用多层感知器进行组合他们的预测。为了使模型更健壮并更好地推广,我们采用了自定进度的学习方法,将从简单到更复杂的样本逐渐纳入训练过程。提出的基于学习的方法是在专有的脊柱转移CT数据集上进行评估的。在切片层面上,我们的方法在弹性,混合和溶解性病变上的敏感性分别显着优于121层DenseNet分类器,分别提高了+12.54%,+ 7.23%和+ 29.06%,同时,其敏感性分别提高了12.33%,+ 23.2f%和+34.25。椎骨水平的百分比。

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