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From medical image to automatic medical report generation

机译:从医学图像到自动医学报告生成

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摘要

We present a novel method for automatic breast radiology report generation from image data. We formalize this problem as learning to map a set of diverse image measurements to a set of discrete semantic descriptor values that represent the standard radiology lexicon. We use a structured learning framework to model individual semantic descriptors and their relationships. The parameters of the learned model are efficiently learned based on a training set of images using the structured support vector machine (SVM). The output report for a new image is generated in the form of a set of radiological lexicon descriptors. If the proposed method is used in a computer aided diagnosis (CAD) system, radiologists should be able to easily understand the diagnosis decision of the system since the system output is the standard radiological lexicon used to make a diagnosis. We applied the method to breast imaging modalities, sonography, and mammography. Our experiments indicate that our method generalizes better than competing approaches. Although the proposed method is tested for breast imaging report generation, it should be useful in general doctors' practice, wherein there is a predefined set of medical descriptors to be acquired by a doctor during image investigation.
机译:我们提出了一种从图像数据自动生成放射影像报告的新颖方法。我们通过学习将一组不同的图像测量值映射到代表标准放射学词典的一组离散语义描述符值,来形式化此问题。我们使用结构化的学习框架为各个语义描述符及其关系建模。使用结构化支持向量机(SVM),可以基于图像的训练集有效地学习学习的模型的参数。新图像的输出报告以一组放射词典描述符的形式生成。如果将建议的方法用于计算机辅助诊断(CAD)系统,放射线医生应该能够轻松理解系统的诊断决策,因为系统输出是用于进行诊断的标准放射学词典。我们将该方法应用于乳腺影像学检查,超声检查和钼靶检查。我们的实验表明,我们的方法比竞争方法具有更好的概括性。尽管对所提出的方法进行了乳房成像报告生成的测试,但在一般医生的实践中应该是有用的,在医生的实践中,有一组预定义的医学描述符将由医生在图像调查期间获取。

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