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首页> 外文期刊>Medical Imaging, IEEE Transactions on >Impact on Reader Performance for Lesion-Detection/ Localization Tasks of Anatomical Priors in SPECT Reconstruction
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Impact on Reader Performance for Lesion-Detection/ Localization Tasks of Anatomical Priors in SPECT Reconstruction

机译:SPECT重建中解剖学先验的病变检测/定位任务对阅读器性能的影响

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摘要

With increasing availability of multimodality imaging systems, high-resolution anatomical images can be used to guide the reconstruction of emission tomography studies. By measuring reader performance on a lesion detection task, this study investigates the improvement in image-quality due to use of prior anatomical knowledge, for example organ or lesion boundaries, during SPECT reconstruction. Simulated $^{67}{rm Ga}$ -citrate source and attenuation distributions were created from the mathematical cardiac-torso (MCAT) anthropomorphic digital phantom. The SIMIND Monte Carlo software was then used to generate SPECT projection data. The data were reconstructed using the De Pierro maximum a posteriori (MAP) algorithm and the rescaled-block-iterative (RBI) algorithm for comparison. We compared several degrees of prior knowledge about the anatomy: no knowledge about the anatomy; knowledge of organ boundaries; knowledge of organ and lesion boundaries; and knowledge of organ, lesion, and pseudo-lesion (non-emission uptake altering) boundaries. The MAP reconstructions used quadratic smoothing within anatomical regions, but not across any provided region boundaries. The reconstructed images were read by human observers searching for lesions in a localization receiver operating characteristic (LROC) study of the relative detection/localization accuracies of the reconstruction algorithms. Area under the LROC curve was computed for each algorithm as the comparison metric. We also had humans read images reconstructed using different prior strengths to determine the optimal trade-off between data consistency and the anatomical prior. Finally by mixing together images reconstructed with and without the prior, we tested to see if having an anatomical prior only some of the time changes the observer's detection/localization accuracy on lesions where no boundary prior is available. We found that anatomical prio-nrs including organ and lesion boundaries improve observer performance on the lesion detection/localization task. Use of just organ boundaries did not provide a statistically significant improvement in performance however. We also found that optimal prior strength depends on the level of anatomical knowledge, with a broad plateau in which observer performance is near optimal. We found no evidence that having anatomical priors use lesion boundaries only when available changes the observer's performance when they are not available. We conclude that use of anatomical priors with organ and lesion boundaries improves reader performance on a lesion-detection/localization task, and that pseudo-lesion boundaries do not hurt reader performance. However, we did not find evidence that a prior using only organ boundaries helps observer performance. Therefore we suggest prior strength should be tuned to the organ-only case, since a prior will likely not be available for all lesions.
机译:随着多模态成像系统可用性的提高,高分辨率解剖图像可用于指导放射断层扫描研究的重建。通过测量阅读器在病变检测任务上的表现,本研究调查了在SPECT重建过程中由于使用了先前的解剖学知识(例如器官或病变边界)而导致的图像质量改善。模拟的^^ {67} {rm Ga} $柠檬酸盐源和衰减分布是根据数学心脏躯干(MCAT)拟人数字体模创建的。然后使用SIMIND Monte Carlo软件生成SPECT投影数据。使用De Pierro最大后验(MAP)算法和重新缩放块迭代(RBI)算法重建数据以进行比较。我们比较了关于解剖学的几个先验知识:没有关于解剖学的知识;没有关于解剖学的知识。器官界限知识;器官和病变边界的知识;并了解器官,病变和假病变(不改变排放量)边界。 MAP重建在解剖区域内使用二次平滑,但未跨越任何提供的区域边界。人工观察者在重建接收机的相对检测/定位精度的本地化接收器操作特性(LROC)研究中搜索病变后,读取了重建的图像。计算每种算法在LROC曲线下的面积作为比较指标。我们还让人类读取使用不同先验强度重建的图像,以确定数据一致性和解剖先验之间的最佳折衷。最后,通过混合使用先验和不先验重建的图像,我们测试了是否只有解剖学先验会改变观察者对无边界先验的病变的检测/定位精度。我们发现,包括器官和病变边界在内的解剖学原理可以提高观察者在病变检测/定位任务上的表现。然而,仅使用器官边界并不能提供统计学上的显着改善。我们还发现最佳的先验强度取决于解剖学知识的水平,其中观察者的表现接近最佳。我们没有证据表明拥有解剖先验仅在可用时使用病变边界,而在不可用时会改变观察者的表现。我们得出的结论是,将解剖先验与器官和病变边界一起使用可提高病变检测/定位任务中的阅读器性能,而假病变边界不会损害阅读器性能。但是,我们没有发现证据表明先使用器官边界有助于观察者的表现。因此,我们建议先验强度应调整为仅器官的情况,因为先验可能不适用于所有病变。

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