医学成像中的诊断图像质量评估和分类:机遇与挑战。

Jeffrey J Ma, Ukash Nakarmi, Cedric Yue Sik Kin, Christopher M Sandino, Joseph Y Cheng, Ali B Syed, Peter Wei, John M Pauly, Shreyas S Vasanawala
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引用次数: 0

摘要

磁共振成像(MRI)存在多种伪影,其中最常见的是运动伪影。这些伪影通常会产生非诊断质量的图像。为了检测这些伪影,专家需要对图像的诊断质量进行前瞻性评估,这就要求在遇到非诊断质量的扫描时对患者进行复查和重新扫描。因此,我们需要开发一种能够获取医疗图像质量并检测诊断和非诊断图像的自动框架。在本文中,我们探讨了几种基于卷积神经网络的医学图像质量评估框架,并研究了其中的几个挑战。
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DIAGNOSTIC IMAGE QUALITY ASSESSMENT AND CLASSIFICATION IN MEDICAL IMAGING: OPPORTUNITIES AND CHALLENGES.

Magnetic Resonance Imaging (MRI) suffers from several artifacts, the most common of which are motion artifacts. These artifacts often yield images that are of non-diagnostic quality. To detect such artifacts, images are prospectively evaluated by experts for their diagnostic quality, which necessitates patient-revisits and rescans whenever non-diagnostic quality scans are encountered. This motivates the need to develop an automated framework capable of accessing medical image quality and detecting diagnostic and non-diagnostic images. In this paper, we explore several convolutional neural network-based frameworks for medical image quality assessment and investigate several challenges therein.

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