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Evaluation of Collimation Prediction Based on Depth Images and Automated Landmark Detection for Routine Clinical Chest X-Ray Exams

机译:基于深度图像的准直预测和常规临床胸部X射线检查的准直预测评估

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The aim of this study was to evaluate the performance of a machine learning algorithm applied to depth images for the automated computation of X-ray beam collimation parameters in radiographic chest examinations including posterior-anterior (PA) and left-lateral (LAT) views. Our approach used as intermediate step a trained classifier for the detection of internal lung landmarks that were defined on X-ray images acquired simultaneously with the depth image. The landmark detection algorithm was evaluated retrospectively in a 5-fold cross validation experiment on the basis of 89 patient data sets acquired in clinical settings. Two auto-collimation algorithms were devised and their results were compared to the reference lung bounding boxes defined on the X-ray images and to the manual collimation parameters set by the radiologic technologists.
机译:本研究的目的是评估应用于深度图像的机器学习算法的性能,以便在射线胸部检查中的X射线束准直参数的自动计算中,包括后部(PA)和左侧(LAT)视图。我们的方法用作中间步骤的训练分类器,用于检测在与深度图像同时获取的X射线图像上定义的内部肺部地标。在临床环境中获取的89名患者数据集的基础上,回顾性地评估了地标检测算法在5倍的交叉验证实验中进行了评估。设计了两个自助准直算法,并将其结果与在X射线图像上定义的参考肺边界盒进行比较,并由放射技术专家设定的手动准直参数。

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