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Blind CT image quality assessment via deep learning strategy: Initial Study

机译:通过深度学习策略进行盲CT图像质量评估:初步研究

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Computed Tomography (CT) is one of the most important, medical imaging modality. CT images can be used to assist in the detection and diagnosis of lesions and to facilitate follow-up treatment. However. CT images are vulnerable to noise. Actually, there are two major source intrinsically causing the CT data noise, i.e., the X-ray photo statistics and the electronic noise background. Therefore, it is necessary to doing image quality assessment (IQA) in CT imaging before diagnosis and treatment. Most of existing CT images IQA methods are based on human observer study. However, these methods are impractical in clinical for their complex and time-consuming. In this paper, we presented a blind CT image quality assessment via deep learning strategy. A database of 1500 CT images is constructed, containing 300 high-quality images and 1200 corresponding noisy images. Specifically, the high-quality images were used to simulate the corresponding noisy images at four different doses. Then, the images are scored by the experienced radiologists by the following attributes: image noise, artifacts, edge and structure, overall image quality, and tumor size and boundary estimation with five-point scale. We trained a network for learning the non-liner map from CT images to subjective evaluation scores. Then, we load the pre-trained model to yield predicted score from the test image. To demonstrate the performance of the deep learning network in IQA, correlation coefficients: Pearson Linear Correlation Coefficient (PLCC) and Spearman Rank Order Correlation Coefficient (SROCC) are utilized. And the experimental result demonstrate that the presented deep learning based IQA strategy can be used in the CT image quality assessment.
机译:计算机断层扫描(CT)是最重要的医学成像方法之一。 CT图像可用于协助病变的检测和诊断并促进后续治疗。然而。 CT图像易受噪音干扰。实际上,有两种主要的内在原因引起CT数据噪声,即X射线照片统计数据和电子噪声背景。因此,有必要在诊断和治疗之前在CT成像中进行图像质量评估(IQA)。现有的大多数CT图像IQA方法都是基于人类观察者的研究。然而,这些方法由于其复杂且耗时的临床意义而在实践中是不切实际的。在本文中,我们提出了通过深度学习策略进行的盲CT图像质量评估。构建了1500张CT图像的数据库,其中包含300张高质量图像和1200张相应的噪点图像。具体而言,高质量图像用于模拟四种不同剂量下的相应噪点图像。然后,由经验丰富的放射科医生根据以下属性对图像进行评分:图像噪声,伪影,边缘和结构,整体图像质量以及肿瘤大小和五点标度的边界估计。我们训练了一个网络来学习从CT图像到主观评估得分的非线性图。然后,我们加载预训练模型以从测试图像中产生预测分数。为了证明深度学习网络在IQA中的性能,使用了相关系数:皮尔森线性相关系数(PLCC)和Spearman秩次相关系数(SROCC)。实验结果表明,所提出的基于深度学习的IQA策略可用于CT图像质量评估。

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