Department of Radiology, Osaka University Graduate School of Medicine, 2-2 Yamadaoka, Suita-city, Osaka 565-0871, Japan.
Lung Cancer. 2010 Dec;70(3):286-94. doi: 10.1016/j.lungcan.2010.03.009. Epub 2010 Apr 14.
To evaluate a custom-developed software for analyzing malignant degrees of small peripheral adenocarcinomas on volumetric CT data compared to pathological prognostic factors.
Forty-six adenocarcinomas with a diameter of 2cm or less from 46 patients were included. The custom-developed software can calculate the volumetric rates of solid parts to whole nodules even though solid parts show a punctate distribution, and automatically classify nodules into the following six types according to the volumetric rates of solid parts: type 1, pure ground-glass opacity (GGO); type 2, semiconsolidation; type 3, small solid part with a GGO halo; type 4, mixed type with an area that consisted of GGO and solid parts which have air-bronchogram or show a punctate distribution; type 5, large solid part with a GGO halo; and type 6, pure solid type. The boundary between solid portion and GGO on CT was decided using two threshold selection methods for segmenting gray-scale images. A radiologist also examined two-dimensional rates of solid parts to total opacity (2D%solid) which was already confirmed with previous reports.
There were good agreements between the classification determined by the software and radiologists (weighted kappa=0.778-0.804). Multivariate logistic regression analyses showed that both 2D%solid and computer-automated classification were significantly useful in estimating lymphatic invasion (p=0.0007, 0.0027), vascular invasion (p=0.003, 0.012), and pleural invasion (p=0.021, 0.025).
Using our custom-developed software, it is feasible to predict the pathological prognostic factors of small peripheral adenocarcinomas.
评估一种用于分析体积 CT 数据中小周边腺癌恶性程度的定制软件与病理预后因素的相关性。
共纳入 46 例直径 2cm 或以下的腺癌患者,共 46 例患者。定制软件可以计算实性部分与整个结节的体积比,即使实性部分呈点状分布,也可以自动根据实性部分的体积比将结节分为以下六种类型:1 型,纯磨玻璃密度(GGO);2 型,半固体型;3 型,有 GGO 晕的小实性部分;4 型,由 GGO 和实性部分组成的混合类型,该区域具有空气支气管征或呈点状分布;5 型,大实性部分伴 GGO 晕;6 型,纯实性型。CT 上实性部分和 GGO 之间的边界使用两种灰度图像分割阈值选择方法确定。放射科医生还检查了二维实性部分与总不透明度的比例(2D%solid),该比例已在先前的报告中得到证实。
软件确定的分类与放射科医生的分类具有良好的一致性(加权 Kappa=0.778-0.804)。多变量逻辑回归分析表明,2D%solid 和计算机自动分类在预测淋巴管侵犯(p=0.0007,0.0027)、血管侵犯(p=0.003,0.012)和胸膜侵犯(p=0.021,0.025)方面均具有显著意义。
使用我们开发的定制软件可以预测小周边腺癌的病理预后因素。