Department of Otolaryngology-Head and Neck Surgery.
Department of Radiation Oncology, University of Texas Southwestern Medical Center, Dallas, Texas.
Otol Neurotol. 2021 Mar 1;42(3):e348-e354. doi: 10.1097/MAO.0000000000002938.
Determine if vestibular schwannoma (VS) shape and MRI texture features predict significant enlargement after stereotactic radiosurgery (SRS).
Retrospective case review.
Tertiary referral center.
Fifty-three patients were selected who underwent SRS and had a contrast-enhanced T1 sequence planning MRI scan and a follow-up contrast enhanced T1 MRI available for review. Median follow-up of 6.5 months (interquartile range/IQR, 5.9-7.4). Median pretreatment tumor volume was 1,006 mm3 (IQR, 465-1,794).
Stereotactic radiosurgery.
Texture and shape features from the SRS planning scans were extracted and used to train a linear support vector machine binary classifier to predict post-SRS enlargement >20% of the pretreatment volume. Sensitivity, specificity, area under the receiver-operating-characteristic curve (AUC), and positive likelihood ratio were computed. A stratified analysis based on pretreatment tumor volume greater or less than the median volume was also performed.
The model had a sensitivity of 92%, specificity of 65%, AUC of 0.75, and a positive likelihood ratio of 2.6 (95% CI 1.4-5.0) for predicting post-SRS enlargement of >20%. In the larger tumor subgroup, the model had a sensitivity of 87%, specificity of 73%, AUC of 0.76, and a positive likelihood ratio of 3.2 (95% CI 1.2-8.5). In the smaller tumor subgroup, the model had a sensitivity of 95%, specificity of 50%, AUC of 0.65, and a positive likelihood ratio of 1.9 (95% CI 0.8-4.3).
VS shape and texture features may be useful inputs for machine learning models that predict VS enlargement after SRS.
确定听神经鞘瘤(VS)形状和 MRI 纹理特征是否可预测立体定向放射外科(SRS)后显著增大。
回顾性病例研究。
三级转诊中心。
选择了 53 名接受 SRS 治疗的患者,他们有增强 T1 序列的计划 MRI 扫描和可供回顾的增强 T1 MRI 随访。中位随访时间为 6.5 个月(四分位距/IQR,5.9-7.4)。中位预处理肿瘤体积为 1006mm3(IQR,465-1794)。
立体定向放射外科。
从 SRS 计划扫描中提取纹理和形状特征,并使用线性支持向量机二分类器对其进行训练,以预测 SRS 后体积增大超过预处理体积的 20%。计算灵敏度、特异性、受试者工作特征曲线(ROC)下面积(AUC)和阳性似然比。还进行了基于预处理肿瘤体积大于或小于中位数的分层分析。
该模型预测 SRS 后体积增大超过 20%的灵敏度为 92%,特异性为 65%,AUC 为 0.75,阳性似然比为 2.6(95%CI,1.4-5.0)。在较大肿瘤亚组中,该模型的灵敏度为 87%,特异性为 73%,AUC 为 0.76,阳性似然比为 3.2(95%CI,1.2-8.5)。在较小肿瘤亚组中,该模型的灵敏度为 95%,特异性为 50%,AUC 为 0.65,阳性似然比为 1.9(95%CI,0.8-4.3)。
VS 形状和纹理特征可能是用于预测 SRS 后 VS 增大的机器学习模型的有用输入。