van Ginneken Bram, Baggerman Wouter, van Rikxoort Eva M
Image Sciences Institute, University Medical Center Utrecht, The Netherlands.
Med Image Comput Comput Assist Interv. 2008;11(Pt 1):219-26. doi: 10.1007/978-3-540-85988-8_27.
A method for automatic extraction and labeling of the airway tree from thoracic CT scans is presented and extensively evaluated on 150 scans of clinical dose, low dose and ultra-low dose data, in inspiration and expiration from both relatively healthy and severely ill patients. The method uses adaptive thresholds while growing the airways and it is shown that this strategy leads to a substantial increase in the number, total length and number of correctly labeled airways extracted. From inspiration scans on average 170 branches are found, from expiration scans 59.
本文提出了一种从胸部CT扫描中自动提取和标记气道树的方法,并在150例临床剂量、低剂量和超低剂量数据的扫描中进行了广泛评估,这些扫描数据来自相对健康和重症患者的吸气和呼气状态。该方法在气道生长时使用自适应阈值,结果表明,这种策略能显著增加提取的气道数量、总长度和正确标记的气道数量。在吸气扫描中平均发现170个分支,在呼气扫描中发现59个分支。