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Computer-aided interpretation of ICU portable chest images: automated detection of endotracheal tubes

机译:ICU便携式胸部图像的计算机辅助解释:自动检测气管管

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In intensive care units (ICU), endotracheal (ET) tubes are inserted to assist patients who may have difficulty breathing. A malpositioned ET tube could lead to a collapsed lung, which is life threatening. The purpose of this study is to develop a new method that automatically detects the positioning of ET tubes on portable chest X-ray images. The method determines a region of interest (ROI) in the image and processes the raw image to provide edge enhancement for further analysis. The search of ET tubes is performed within the ROI. The ROI is determined based upon the analysis of the positions of the detected lung area and the spine in the image. Two feature images are generated: a Haar-like image and an edge image. The Haar-like image is generated by applying a Haar-like template to the raw ROI or the enhanced version of the raw ROI. The edge image is generated by applying a direction-specific edge detector. Both templates are designed to represent the characteristics of the ET tubes. Thresholds are applied to the Haar-like image and the edge image to detect initial tube candidates. Region growing, combined with curve fitting of the initial detected candidates, is performed to detect the entire ET tube. The region growing or "tube growing" is guided by the fitted curve of the initial candidates. Merging of the detected tubes after tube growing is performed to combine the detected broken tubes. Tubes within a predefined space can be merged if they meet a set of criteria. Features, such as width, length of the detected tubes, tube positions relative to the lung and spine, and the statistics from the analysis of the detected tube lines, are extracted to remove the false-positive detections in the images. The method is trained and evaluated on two different databases. Preliminary results show that computer-aided detection of tubes in portable chest X-ray images is promising. It is expected that automated detection of ET tubes could lead to timely detection of malpositioned tubes, thus improve overall patient care.
机译:在重症监护单位(ICU)中,插入气管内(ET)管以帮助可能呼吸困难的患者。庭质的ET管可能导致坍塌的肺,这是危及生命的肺部。本研究的目的是开发一种新方法,可自动检测ET管在便携式胸部X射线图像上的定位。该方法确定图像中的感兴趣区域(ROI),并处理原始图像以提供边缘增强以进行进一步分析。 ET管的搜索是在ROI内进行的。基于对检测到的肺区的位置和图像中的脊柱的位置来确定ROI。生成两个特征图像:哈拉类似图像和边缘图像。通过将哈拉类似的模板应用于原始投资回报率或原始ROI的增强版本来生成哈尔样图像。通过应用方向特定的边缘检测器来生成边缘图像。两个模板都设计成代表ET管的特性。阈值应用于哈尔样图像和边缘图像以检测初始管候选。在初始检测到的候选者的曲线拟合结合曲线拟合的区域,以检测整个ET​​管。生长或“管生长”的区域由初始候选者的拟合曲线引导。进行管生长后的检测管的合并以结合检测到的破碎管。如果符合一组标准,可以合并预定空间内的管。提取诸如宽度,检测管的长度,相对于肺和脊柱的管位置的特征,以及从检测到的管线的分析中的统计数据,以去除图像中的假阳性检测。该方法培训并在两个不同的数据库上进行评估。初步结果表明,便携式胸部X射线图像中的管道检测是有前途的。预计ET管的自动检测可能导致及时检测呈现的管道,从而改善整体患者护理。

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