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Task-Based Assessment and Optimization of Digital Breast Tomosynthesis

机译:基于任务的数字化胸部断层合成评估与优化

摘要

Digital breast tomosynthesis (DBT) is a new technology for breast cancer screening that promises to complement mammography or supersede it to become the standard for breast imaging. DBT involves taking multiple images in order to synthesize a new image that represents a slice through the breast volume -- hence the term tomosynthesis. The primary advantage of this paradigm is that it can reduce the amount of overlapping anatomy in the data, leading to improved visualization of potentially-cancerous findings. The difficulty in DBT is quantifying the advantages of the technology and determining the optimal conditions for its clinical use. This dissertation describes a virtual trial framework for assessing and optimizing DBT technology for the specific task of detecting small, low-contrast masses in the breast. It addresses each component of the imaging chain to some degree, from the patients/phantoms to the imaging hardware to the model observers used to measure signal detectability. The main focus, however, is on quantifying tradeoffs between three key parameters that affect image quality: (1) scan angle, (2) number of projections, and (3) exposure. We show that in low-density breast phantoms, detectability generally increases with both scan angle and number of projections in the anatomical-variability-limited (high-exposure) regime. We also investigate how breast density affects the optimal DBT scan parameters. We show task-specific results that support using an adaptive paradigm in DBT, where the imaging system reconfigures itself in response to information about the patient's breast density. The virtual framework described in this dissertation provides a platform for further investigations of image quality in 3D breast imaging.
机译:数字乳腺断层合成(DBT)是一种用于乳腺癌筛查的新技术,有望与乳房X线照相术互补或取代,以成为乳房成像的标准。 DBT涉及拍摄多张图像,以便合成代表整个乳房体积切片的新图像-因此称为断层合成。这种范例的主要优势在于,它可以减少数据中重叠的解剖结构的数量,从而改善潜在癌发现的可视化。 DBT的困难在于量化该技术的优势并确定其临床使用的最佳条件。本文介绍了一种虚拟试验框架,用于评估和优化DBT技术,以实现检测乳腺小,低对比度肿块的特定任务。它从某种程度上解决了成像链中的每个组件,从患者/体模到成像硬件,再到用于测量信号可检测性的模型观察者。但是,主要重点是量化影响图像质量的三个关键参数之间的折衷:(1)扫描角度,(2)投影数量和(3)曝光。我们表明,在低密度的乳房幻像中,可检测性通常随扫描角度和解剖学变异性受限(高暴露)方案中投影的数量而增加。我们还研究了乳房密度如何影响最佳DBT扫描参数。我们显示了特定任务的结果,这些结果支持在DBT中使用自适应范式,其中成像系统会根据有关患者乳房密度的信息重新配置自身。本文所描述的虚拟框架为进一步研究3D乳房成像的图像质量提供了一个平台。

著录项

  • 作者

    Young Stefano;

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  • 年度 2012
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  • 原文格式 PDF
  • 正文语种 en
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