Department of Radiology, Shiga University of Medical Science, Otsu, Shiga, 520-2192, Japan.
Department of Thoracic Surgery, Kyoto Medical Center, Kyoto, Kyoto, 612-8555, Japan; Division of General Thoracic Surgery, Department of Surgery, Shiga University of Medical Science, Seta-tsukinowa-cho, Otsu, Shiga, 520-2192, Japan.
Eur J Radiol. 2020 Dec;133:109347. doi: 10.1016/j.ejrad.2020.109347. Epub 2020 Oct 22.
To assess the usefulness of software analysis using dynamic-ventilation CT for localized pleural adhesion (LPA).
Fifty-one patients scheduled to undergo surgery underwent both dynamic-ventilation CT and static chest CT as preoperative assessments. Five observers independently evaluated the presence and severity of LPA on a three-point scale (non, mild, and severe LPA) for 9 pleural regions (upper, middle, and lower pleural aspects on ventral, lateral, and dorsal areas) on the chest CT by three different methods by observing images from: static high-resolution CT (static image); dynamic-ventilation CT (movie image), and dynamic-ventilation CT while referring to the adhesion map (movie image with color map), which was created using research software to visualize movement differences between the lung surface and chest wall. The presence and severity of LPA was confirmed by intraoperative thoracoscopic findings. Parameters of diagnostic accuracy for LPA presence and severity were assessed among the three methods using Wilcoxon signed rank test in total and for each of the three pleural aspects.
Mild and severe LPA were confirmed in 14 and 8 patients. Movie image with color map had higher sensitivity (56.9 ± 10.7 %) and negative predictive value (NPV) (91.4 ± 1.7 %) in LPA detection than both movie image and static image. Additionally, for severe LPA, detection sensitivity was the highest with movie image with color map (82.5 ± 6.1 %), followed by movie image (58.8 ± 17.0 %) and static image (38.8 ± 13.9 %). For LPA severity, movie image with color map was similar to movie image and superior to static image in accuracy as well as underestimation and overestimation, with a mean value of 80.2 %.
Software-assisted dynamic-ventilation CT may be a useful novel imaging approach to improve the detection performance of LPA.
评估使用动态通气 CT 进行局限性胸膜粘连(LPA)的软件分析的有效性。
51 名计划接受手术的患者均接受了动态通气 CT 和静态胸部 CT 作为术前评估。5 名观察者分别通过三种方法独立评估 9 个胸膜区域(前、侧和后胸壁的上、中、下胸膜面)的 LPA 存在和严重程度(无、轻度和重度 LPA),观察范围为胸部 CT 上的静态高分辨率 CT(静态图像)、动态通气 CT(电影图像)和动态通气 CT 时参考粘连图(使用研究软件创建的彩色地图的电影图像)。术中胸腔镜发现确认了 LPA 的存在和严重程度。使用 Wilcoxon 符号秩检验在总病例和每个胸膜面评估三种方法中 LPA 存在和严重程度的诊断准确性参数。
14 例和 8 例患者被证实为轻度和重度 LPA。彩色地图电影图像在 LPA 检测中的敏感性(56.9±10.7%)和阴性预测值(NPV)(91.4±1.7%)均高于电影图像和静态图像。此外,对于重度 LPA,彩色地图电影图像的检测敏感性最高(82.5±6.1%),其次是电影图像(58.8±17.0%)和静态图像(38.8±13.9%)。对于 LPA 严重程度,彩色地图电影图像在准确性、低估和高估方面与电影图像相似,优于静态图像,平均值为 80.2%。
软件辅助的动态通气 CT 可能是一种有用的新型成像方法,可以提高 LPA 的检测性能。