Department of Orthopaedic Surgery, Faculty of Medicine Siriraj Hospital, Mahidol University, 2 Wanglang Road, Bangkoknoi, Bangkok, 10700, Thailand.
Department of Radiology, Faculty of Medicine Siriraj Hospital, Mahidol University, Bangkok, 10700, Thailand.
J Orthop Surg Res. 2023 Mar 28;18(1):255. doi: 10.1186/s13018-023-03718-4.
To develop a machine learning model based on tumor-to-bone distance and radiomic features derived from preoperative MRI images to distinguish intramuscular (IM) lipomas and atypical lipomatous tumors/well-differentiated liposarcomas (ALTs/WDLSs) and compared with radiologists.
The study included patients with IM lipomas and ALTs/WDLSs diagnosed between 2010 and 2022, and with MRI scans (sequence/field strength: T1-weighted (T1W) imaging at 1.5 or 3.0 Tesla MRI). Manual segmentation of tumors based on the three-dimensional T1W images was performed by two observers to appraise the intra- and interobserver variability. After radiomic features and tumor-to-bone distance were extracted, it was used to train a machine learning model to distinguish IM lipomas and ALTs/WDLSs. Both feature selection and classification steps were performed using Least Absolute Shrinkage and Selection Operator logistic regression. The performance of the classification model was assessed using a tenfold cross-validation strategy and subsequently evaluated using the receiver operating characteristic curve (ROC) analysis. The classification agreement of two experienced musculoskeletal (MSK) radiologists was assessed using the kappa statistics. The diagnosis accuracy of each radiologist was evaluated using the final pathological results as the gold standard. Additionally, we compared the performance of the model and two radiologists in terms of the area under the receiver operator characteristic curves (AUCs) using the Delong's test.
There were 68 tumors (38 IM lipomas and 30 ALTs/WDLSs). The AUC of the machine learning model was 0.88 [95% CI 0.72-1] (sensitivity, 91.6%; specificity, 85.7%; and accuracy, 89.0%). For Radiologist 1, the AUC was 0.94 [95% CI 0.87-1] (sensitivity, 97.4%; specificity, 90.9%; and accuracy, 95.0%), and as to Radiologist 2, the AUC was 0.91 [95% CI 0.83-0.99] (sensitivity, 100%; specificity, 81.8%; and accuracy, 93.3%). The classification agreement of the radiologists was 0.89 of kappa value (95% CI 0.76-1). Although the AUC of the model was lower than of two experienced MSK radiologists, there was no statistically significant difference between the model and two radiologists (all P > 0.05).
The novel machine learning model based on tumor-to-bone distance and radiomic features is a noninvasive procedure that has the potential for distinguishing IM lipomas from ALTs/WDLSs. The predictive features that suggested malignancy were size, shape, depth, texture, histogram, and tumor-to-bone distance.
开发一种基于肿瘤与骨距离和术前 MRI 图像提取的放射组学特征的机器学习模型,以区分肌内(IM)脂肪瘤和非典型性脂肪肉瘤/高分化脂肪肉瘤(ALT/WDLS),并与放射科医生进行比较。
该研究纳入了 2010 年至 2022 年间诊断为 IM 脂肪瘤和 ALT/WDLS 的患者,并进行了 MRI 扫描(序列/场强:1.5 或 3.0 特斯拉 MRI 的 T1 加权(T1W)成像)。两名观察者基于三维 T1W 图像对肿瘤进行手动分割,以评估观察者内和观察者间的可重复性。提取放射组学特征和肿瘤与骨的距离后,用于训练机器学习模型以区分 IM 脂肪瘤和 ALT/WDLS。特征选择和分类步骤均采用最小绝对收缩和选择算子逻辑回归进行。使用十折交叉验证策略评估分类模型的性能,随后使用受试者工作特征曲线(ROC)分析进行评估。使用 Kappa 统计评估两位有经验的肌肉骨骼(MSK)放射科医生的分类一致性。使用最终的病理结果作为金标准评估每位放射科医生的诊断准确性。此外,我们还使用 Delong 检验比较了模型和两位放射科医生在接受者操作特征曲线(AUC)下的性能。
共有 68 个肿瘤(38 个 IM 脂肪瘤和 30 个 ALT/WDLS)。机器学习模型的 AUC 为 0.88 [95%CI 0.72-1](灵敏度为 91.6%,特异性为 85.7%,准确率为 89.0%)。对于放射科医生 1,AUC 为 0.94 [95%CI 0.87-1](灵敏度为 97.4%,特异性为 90.9%,准确率为 95.0%),而对于放射科医生 2,AUC 为 0.91 [95%CI 0.83-0.99](灵敏度为 100%,特异性为 81.8%,准确率为 93.3%)。放射科医生的分类一致性为 Kappa 值 0.89(95%CI 0.76-1)。尽管模型的 AUC 低于两位有经验的 MSK 放射科医生,但模型与两位放射科医生之间无统计学差异(均 P>0.05)。
基于肿瘤与骨距离和放射组学特征的新型机器学习模型是一种非侵入性方法,具有区分 IM 脂肪瘤和 ALT/WDLS 的潜力。提示恶性的预测特征是大小、形状、深度、纹理、直方图和肿瘤与骨的距离。