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Detecting Intracranial Hemorrhage with Deep Learning

机译:通过深度学习检测颅内出血

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Initial results are reported on automated detection of intracranial hemorrhage from CT, which would be valuable in a computer-aided diagnosis system to help the radiologist detect subtle hemorrhages. Previous work has taken a classic approach involving multiple steps of alignment, image processing, image corrections, handcrafted feature extraction, and classification. Our current work instead uses a deep convolutional neural network to simultaneously learn features and classification, eliminating the multiple hand-tuned steps. Performance is improved by computing the mean output for rotations of the input image. Postprocessing is additionally applied to the CNN output to significantly improve specificity. The database consists of 134 CT cases (4,300 images), divided into 60, 5, and 69 cases for training, validation, and test. Each case typically includes multiple hemorrhages. Performance on the test set was 81% sensitivity per lesion (34/42 lesions) and 98% specificity per case (45/46 cases). The sensitivity is comparable to previous results (on different datasets), but with a significantly higher specificity. In addition, insights are shared to improve performance as the database is expanded.
机译:据报道,从CT自动检测颅内出血的初步结果在计算机辅助诊断系统中将很有帮助,该系统可帮助放射科医生发现细微的出血。先前的工作采用了经典方法,涉及对准,图像处理,图像校正,手工特征提取和分类的多个步骤。相反,我们当前的工作是使用深度卷积神经网络来同时学习特征和分类,从而消除了手动调整的多个步骤。通过计算输入图像旋转的平均输出可以提高性能。后处理还应用于CNN输出,以显着提高特异性。该数据库由134个CT病例(4,300张图像)组成,分为60、5和69个病例,以进行培训,验证和测试。每种情况通常包括多次出血。在测试组上的表现为每个病变的敏感性为81%(34/42个病变),每个病例的特异性为98%(45/46例)。灵敏度与以前的结果(在不同的数据集上)相当,但特异性更高。此外,随着数据库的扩展,可以共享见解以提高性能。

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