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Interleaved text/image Deep Mining on a large-scale radiology database

机译:在大型放射学数据库上的交错文本/图像深挖掘

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Despite tremendous progress in computer vision, effective learning on very large-scale (> 100K patients) medical image databases has been vastly hindered. We present an interleaved text/image deep learning system to extract and mine the semantic interactions of radiology images and reports from a national research hospital's picture archiving and communication system. Instead of using full 3D medical volumes, we focus on a collection of representative ~216K 2D key images/slices (selected by clinicians for diagnostic reference) with text-driven scalar and vector labels. Our system interleaves between unsupervised learning (e.g., latent Dirichlet allocation, recurrent neural net language models) on document- and sentence-level texts to generate semantic labels and supervised learning via deep convolutional neural networks (CNNs) to map from images to label spaces. Disease-related key words can be predicted for radiology images in a retrieval manner. We have demonstrated promising quantitative and qualitative results. The large-scale datasets of extracted key images and their categorization, embedded vector labels and sentence descriptions can be harnessed to alleviate the deep learning “data-hungry” obstacle in the medical domain.
机译:尽管计算机愿景中的巨大进展,但在非常大规模(> 100K患者)的有效学习中,医学图像数据库已经大大阻碍了。我们介绍了一个交错的文本/图像深度学习系统,以提取和挖掘放射学图像的语义相互作用和来自国家研究医院的图片归档和通信系统的报告。我们不是使用完整的3D医疗卷,而是专注于具有文本驱动的标量和矢量标签的代表〜216K 2D密钥图像/切片(由诊断参考选择的诊断参考)的集合。我们的系统在文档和句子级文本上进行无监督学习(例如,潜在的Dirichlet分配,经常性神经网络模型),以通过深度卷积神经网络(CNNS)来生成语义标签和监督学习,以从图像映射到标签空间。可以以检索方式预测与病态相关的关键词。我们展示了有希望的定量和定性结果。可以利用提取的关键图像的大规模数据集及其分类,嵌入式矢量标签和句子描述,以缓解医学领域的深度学习“数据饥饿”障碍。

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