MGH Department of Radiology, Division of Nuclear Medicine and Molecular Imaging, 55 Fruit Street, Boston, MA 02114, USA.
MGH Department of Radiology, Division of Thoracic Imaging and Intervention, Founders House 202, 55 Fruit Street, Boston, MA 02114, USA.
Clin Radiol. 2019 Sep;74(9):692-696. doi: 10.1016/j.crad.2019.04.024. Epub 2019 Jun 12.
To assess the ability of artificial neural networks (ANNs) to predict the likelihood of malignancy of pure ground-glass opacities (GGOs), using observations from computed tomography (CT) and 2-[F]-fluoro-2-deoxy-d-glucose (FDG) positron-emission tomography (PET) images and relevant clinical information.
One hundred and twenty-five cases of pure GGOs described in a previous article were used to train and evaluate the performance of an ANN to predict the likelihood of malignancy in each of the GGOs. Eighty-five cases selected randomly were used for training the network and the remaining 40 cases for testing. The ANN was constructed from the image data and basic clinical information. The predictions of the ANN were compared with blinded expert estimates of the likelihood of malignancy.
The ANN showed excellent predictive value in estimating the likelihood of malignancy (AUC = 0.98±0.02). Employing the optimal cut-off point from the receiver operating characteristic (ROC) curve, the ANN correctly identified 11/11 malignant lesions (sensitivity 100%) and 27/29 benign lesions (specificity 93.1%). The expert readers found 23 lesions indeterminate and correctly identified 17 lesions as benign.
ANNs have potential to improve diagnostic certainty in the classification of pure GGOs, based upon their CT appearance, intensity of FDG uptake, and relevant clinical information, and may therefore, be useful to help direct clinical and imaging follow-up.
利用计算机断层扫描(CT)和 2-[F]-氟-2-脱氧-D-葡萄糖(FDG)正电子发射断层扫描(PET)图像及相关临床资料,评估人工神经网络(ANN)预测纯磨玻璃密度(GGO)恶性可能性的能力。
采用前文描述的 125 例纯 GGO 病例,训练并评估 ANN 预测每个 GGO 恶性可能性的性能。随机选择 85 例病例用于训练网络,其余 40 例病例用于测试。ANN 由图像数据和基本临床信息构建。ANN 的预测结果与盲法专家评估的恶性可能性进行比较。
ANN 在预测恶性可能性方面具有优异的预测价值(AUC=0.98±0.02)。采用 ROC 曲线的最佳截断点,ANN 正确识别出 11/11 例恶性病变(敏感性 100%)和 27/29 例良性病变(特异性 93.1%)。专家读者发现 23 个病变为不确定,正确识别出 17 个良性病变。
基于 CT 表现、FDG 摄取强度和相关临床资料,ANN 具有改善纯 GGO 分类诊断确定性的潜力,因此可能有助于指导临床和影像学随访。