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Development of an automated detection algorithm for patient motion blur in digital mammograms

机译:开发用于数字乳房X线照片中患者运动模糊的自动检测算法

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The purpose is to develop and validate an automated method for detecting image unsharpness caused by patient motion blur in digital mammograms. The goal is that such a tool would facilitate immediate re-taking of blurred images, which has the potential to reduce the number of recalled examinations, and to ensure that sharp, high-quality mammograms are presented for reading. To meet this goal, an automated method was developed based on interpretation of the normalized image Wiener Spectrum. A preliminary algorithm was developed using 25 cases acquired using a single vendor system, read by two expert readers identifying the presence of blur, location, and severity. A predictive blur severity score was established using multivariate modeling, which had an adjusted coefficient of determination, R~2=0.63±0.02, for linear regression against the average reader-scored blur severity. A heatmap of the relative blur magnitude showed good correspondence with reader sketches of blur location, with a Spearman rank correlation of 0.70 between the algorithm-estimated area fraction with blur and the maximum of the blur area fraction categories of the two readers. Given these promising results, the algorithm-estimated blur severity score and heatmap are proposed to be used to aid observer interpretation. The use of this automated blur analysis approach, ideally with feedback during an exam, could lead to a reduction in repeat appointments for technical reasons, saving time, cost, potential anxiety, and improving image quality for accurate diagnosis.
机译:目的是开发和验证一种自动方法,用于检测由数字乳房X线照片中的患者运动模糊引起的图像不清晰。目的是使这种工具有助于立即重拍模糊的图像,从而有可能减少召回的检查次数,并确保呈现清晰,高质量的乳房X线照片以供阅读。为了实现此目标,基于对归一化图像维纳光谱的解释,开发了一种自动化方法。通过使用一个供应商系统获得的25个案例开发了一种初步算法,并由两名专家读者阅读,以确定模糊,位置和严重性的存在。使用多变量模型建立预测的模糊严重度评分,该变量具有相对于平均读者评分模糊严重度的线性回归调整系数R〜2 = 0.63±0.02。相对模糊量级的热图显示出与阅读器的模糊位置草图具有良好的对应关系,算法估计的带有模糊的区域分数与两个阅读器的最大模糊区域分数类别之间的Spearman等级相关系数为0.70。鉴于这些令人鼓舞的结果,建议使用算法估计的模糊严重性得分和热图来帮助观察者进行解释。这种自动模糊分析方法的使用,最好是在检查期间提供反馈,由于技术原因,可以减少重复约会,从而节省时间,成本,潜在的焦虑并提高图像质量以进行准确诊断。

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