Dalian Medical University, Dalian, China; Department of Radiology, Northern Jiangsu People's Hospital, Yangzhou, China.
Yizhun Medical AI, Beijing, China.
Clin Radiol. 2021 Feb;76(2):143-151. doi: 10.1016/j.crad.2020.10.005. Epub 2020 Nov 10.
To establish a machine-learning model to differentiate adenocarcinoma in situ (AIS) or minimally invasive adenocarcinoma (MIA) from invasive adenocarcinoma (IAC) appearing as pure ground-glass nodules (pGGNs).
This retrospective study enrolled 136 patients with histopathologically diagnosed with AIS, MIA, and IAC. All pGGNs were divided randomly into a training and a testing dataset at a ratio of 7 : 3. Radiomics features were extracted based on the unenhanced computed tomography (CT) images derived from the last preoperative CT examination of each patient. The F-test and least absolute shrinkage and selection operator (LASSO) logistic regression were applied to select the most valuable features to establish a support vector machine (SVM) model. The performance of the model was evaluated using the area under the receiver operating characteristic curve (AUROC), and the accuracy, sensitivity, and specificity were calculated to compare the diagnostic performance of radiologists and the SVM model.
Six significant radiomics features were selected to develop the SVM model and showed excellent ability to differentiate AIS/MIA from IAC in both the training dataset (AUROC=0.950, 95% confidence interval [CI]: 0.886-0.984) and the testing dataset (AUROC=0.945, 95% CI: 0.826-0.992). Compared with two radiologists, the proposed model possessed significant advantages with higher accuracy (90.24% versus 75.61% and 80.49%), sensitivity (91.67% versus 50% and 75%), and specificity (89.66% versus 86.21% and 82.76%).
A machine-learning model based on radiomics features exhibits superior diagnostic performance in differentiating AIS/MIA from IAC appearing as pGGNs.
建立一种机器学习模型,以区分表现为纯磨玻璃结节(pGGN)的原位腺癌(AIS)或微浸润性腺癌(MIA)与浸润性腺癌(IAC)。
本回顾性研究纳入了 136 例经组织病理学诊断为 AIS、MIA 和 IAC 的患者。所有 pGGN 均随机分为训练集和测试集,比例为 7:3。基于每位患者最后一次术前 CT 检查的平扫 CT 图像提取放射组学特征。采用 F 检验和最小绝对值收缩和选择算子(LASSO)逻辑回归选择最有价值的特征建立支持向量机(SVM)模型。采用受试者工作特征曲线下面积(AUROC)评估模型性能,并计算准确率、敏感度和特异度,以比较放射科医生和 SVM 模型的诊断性能。
选择 6 个有意义的放射组学特征来建立 SVM 模型,该模型在训练数据集(AUROC=0.950,95%置信区间[CI]:0.886-0.984)和测试数据集(AUROC=0.945,95%CI:0.826-0.992)中均具有良好的区分 AIS/MIA 与 IAC 的能力。与两名放射科医生相比,该模型具有更高的准确率(90.24%对 75.61%和 80.49%)、敏感度(91.67%对 50%和 75%)和特异度(89.66%对 86.21%和 82.76%),具有显著优势。
基于放射组学特征的机器学习模型在区分表现为 pGGN 的 AIS/MIA 与 IAC 方面具有较好的诊断性能。