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Medical Knowledge-Guided Deep Curriculum Learning for Elbow Fracture Diagnosis from X-Ray Images

机译:医学知识引导的深度课程学习X射线图像的肘部骨折诊断

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Elbow fractures are one of the most common fracture types. Diagnoses on elbow fractures often need the help of radiographic imaging to be read and analyzed by a specialized radiologist with years of training. Thanks to the recent advances of deep learning, a model that can classify and detect different types of bone fractures needs only hours of training and has shown promising results. However, most existing deep learning models are purely data-driven, lacking incorporation of known domain knowledge from human experts. In this work, we propose a novel deep learning method to diagnose elbow fracture from elbow X-ray images by integrating domain-specific medical knowledge into a curriculum learning framework. In our method, the training data are permutated by sampling without replacement at the beginning of each training epoch. The sampling probability of each training sample is guided by a scoring criterion constructed based on clinically known knowledge from human experts, where the scoring indicates the diagnosis difficultness of different elbow fracture subtypes. We also propose an algorithm that updates the sampling probabilities at each epoch, which is applicable to other sampling-based curriculum learning frameworks. We design an experiment with 1865 elbow X-ray images for a fracture/normal binary classification task and compare our proposed method to a baseline method and a previous method using multiple metrics. Our results show that the proposed method achieves the highest classification performance. Also, our proposed probability update algorithm boosts the performance of the previous method.
机译:肘部骨折是最常见的骨折类型之一。肘部骨折上的诊断通常需要通过一年多年培训的专业放射科学专员读取和分析射线照相成像的帮助。由于最近深入学习的进步,一种可以分类和检测不同类型的骨折需要的模型只需要几小时的培训,并显示出现有前途的结果。然而,大多数现有的深度学习模型纯粹是数据驱动的,缺乏从人类专家的已知领域知识的纳入。在这项工作中,通过将域特定的医学知识集成到课程学习框架中,提出了一种新的深度学习方法来诊断弯头X射线图像的肘部骨折。在我们的方法中,培训数据通过对每个训练时代开始时进行采样而无需更换。每个训练样本的采样概率由基于人类专家的临床知识构建的评分标准指导,其中评分表明不同肘部骨折亚型的诊断困难。我们还提出了一种算法,可以在每个时代更新采样概率,这适用于其他基于样本的课程学习框架。我们设计了一个用于骨折/正常二进制分类任务的1865个弯头X射线图像的实验,并将我们的提出方法与基线方法和使用多个度量的先前方法进行比较。我们的结果表明,该方法达到了最高分类性能。此外,我们提出的概率更新算法提高了先前方法的性能。

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