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Image Quality Evaluation in Clinical Research: A Case Study on Brain and Cardiac MRI Images in Multi-Center Clinical Trials

机译:临床研究中的图像质量评估:以多中心临床试验中的脑部和心脏MRI图像为例

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摘要

Magnetic resonance imaging (MRI) system images are important components in the development of drugs because it can reveal the underlying pathology in diseases. Unfortunately, the processes of image acquisition, storage, transmission, processing, and analysis can influence image quality with the risk of compromising the reliability of MRI-based data. Therefore, it is necessary to monitor image quality throughout the different stages of the imaging workflow. This report describes a new approach to evaluate the quality of an MRI slice in multi-center clinical trials. The design philosophy assumes that an MRI slice, such as all natural images, possess statistical properties that can describe different levels of contrast degradation. A unique set of pixel configuration is assigned to each possible level of contrast-distorted MRI slice. Invocation of the central limit theorem results in two separate Gaussian distributions. The central limit theorem says that the mean and standard deviation of pixel configuration assigned to each possible level of contrast degradation will follow a normal distribution. The mean of each normal distribution corresponds to the mean and standard deviation of the underlying ideal image. Quality prediction processes for a test image can be summarized into four steps. The first step extracts local contrast feature image from the test image. The second step computes the mean and standard deviation of the feature image. The third step separately standardizes each normal distribution using the mean and standard deviation computed from the feature image. This gives two separate z-scores. The fourth step predicts the lightness contrast quality score and the texture contrast quality score from cumulative distribution function of the appropriate normal distribution. The proposed method was evaluated objectively on brain and cardiac MRI volume data using four different types and levels of degradation. The four types of degradation are Rician noise, circular blur, motion blur, and intensity nonuniformity also known as bias fields. Objective evaluation was validated using a proposed variation of difference of mean opinion scores. Results from performance evaluation show that the proposed method will be suitable to monitor and standardize image quality throughout the different stages of imaging workflow in large clinical trials. MATLAB implementation of the proposed objective quality evaluation method can be downloaded from ().
机译:磁共振成像(MRI)系统图像是药物开发中的重要组成部分,因为它可以揭示疾病的潜在病理。不幸的是,图像采集,存储,传输,处理和分析过程会影响图像质量,并有损害基于MRI的数据可靠性的风险。因此,有必要在成像工作流程的不同阶段监控图像质量。本报告介绍了一种在多中心临床试验中评估MRI切片质量的新方法。该设计原理假定MRI切片(例如所有自然图像)具有可以描述不同程度的对比度下降的统计属性。一组唯一的像素配置被分配给对比度失真MRI切片的每个可能级别。中心极限定理的调用导致两个独立的高斯分布。中心极限定理说,分配给每个可能的对比度下降水平的像素配置的均值和标准偏差将遵循正态分布。每个正态分布的平均值对应于基础理想图像的平均值和标准偏差。测试图像的质量预测过程可以概括为四个步骤。第一步是从测试图像中提取局部对比特征图像。第二步计算特征图像的均值和标准差。第三步使用从特征图像计算的平均值和标准偏差分别标准化每个正态分布。这给出了两个单独的z得分。第四步根据适当正态分布的累积分布函数预测明度对比度质量得分和纹理对比度质量得分。使用四种不同类型和级别的退化,对大脑和心脏MRI体积数据进行了客观评估。四种类型的降级是Rician噪声,圆形模糊,运动模糊和强度不均匀性,也称为偏置场。使用平均意见得分差异的拟议变化来验证客观评估。性能评估结果表明,该建议方法将适合在大型临床试验中,在整个成像工作流程的不同阶段监视和标准化图像质量。可以从()下载提出的客观质量评估方法的MATLAB实现。

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