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Detection of Abnormal Shadows on Temporal Subtraction Images Based on Multi-phase CNN

机译:基于多相CNN的时间相减图像异常阴影检测

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Recently, visual screening based on CT images become useful tools in the medical fields. However, due to the large number of images and the complexity of the image processing algorithms, image processing technique for the high screening quality is still required. To overcome this problem, some computer aided diagnosis (CAD) algorithms are proposed. Cancer is a leading cause of death both in Japan and worldwide. Detection of cancer region in CT images is the most important task to early detection and early treatment. We have designed and developed a framework combining machine learning based on multi-phase convolutional neural networks (CNN) and temporal subtraction techniques based on non-rigid image registration algorithm. Our main classification method can be built into three main steps; i) preprocessing for image segmentation, ii) image matching for registration, and iii) classification of abnormal regions based on machine learning algorithms. We performed our proposed technique to 25 thoracic MDCT sets and obtained true positive rates of 93.55%, false positive rates of 10.93 /case.
机译:近来,基于CT图像的视觉筛查已成为医学领域中的有用工具。然而,由于图像的数量众多并且图像处理算法的复杂性,仍然需要用于高筛选质量的图像处理技术。为了克服这个问题,提出了一些计算机辅助诊断(CAD)算法。癌症是日本乃至全世界的主要死亡原因。 CT图像中癌症区域的检测是早期发现和早期治疗的最重要任务。我们已经设计和开发了一个框架,该框架结合了基于多相卷积神经网络(CNN)的机器学习和基于非刚性图像配准算法的时间减法技术。我们的主要分类方法可以分为三个主要步骤: i)用于图像分割的预处理,ii)用于配准的图像匹配,以及iii)基于机器学习算法的异常区域分类。我们对25例胸部CTCT进行了我们提出的技术,获得了93.55%的真实阳性率,10.93个/例的假阳性率。

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