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Clinical image benefits after model-based reconstruction for low dose dedicated breast tomosynthesis

机译:基于模型的重建后的临床形象效益为低剂量专用乳房断层合成

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Model-based iterative reconstruction (MBIR) is implemented to process full clinical data sets of dedicated breast tomosynthesis (DBT) in a low dose condition and achieves less spreading of anatomical structure between slices. MBIR, is a statistical based reconstruction which can control the trade-off between data fitting and image regular-ization. In this study, regularization is formulated with anisotropic prior weighting that independently controls the image regularization between in-plane and out-of-plane voxel neighbors. Studies at complete and partial convergence show that the appropriate formulation of data-fit and regularization terms along with anisotropic prior weighting leads to a solution with improved localization of objects within a more narrow range of slices. This result is compared with the solutions using simultaneous iterative reconstruction technique (SIRT), which is one of the state of art reconstruction in DBT. MBIR yields higher contrast-to-noise for medium and large size microcalcifications and diagnostic structures in volumetric breast images and supports opportunity for dose reduction for 3D breast imaging.
机译:基于模型的迭代重建(MBIR)被实施,以处理低剂量条件的全临床数据集(DBT),并达到切片之间解剖结构的较少扩散。 MBIR,是一种基于统计的重建,可以控制数据拟合和图像常规级别之间的权衡。在该研究中,规则化具有通过各向异性的先前加权配制,其独立地控制平面内和平面外体素邻居之间的图像正规化。完整和部分收敛的研究表明,数据配合和正则化术语的适当配方以及各向异性先前加权导致溶液,其具有改进的物体定位在更窄的切片范围内。使用同时迭代重建技术(SIRT)与解决方案进行比较,这是DBT中的最新重建状态之一。 MBIR在体积乳房图像中的培养基和大尺寸微钙化和诊断结构中产生更高的对比度对比度和诊断结构,并支持3D乳房成像的剂量减少的机会。

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