Fan Yanghua, Jiang Shenzhong, Hua Min, Feng Shanshan, Feng Ming, Wang Renzhi
Department of Neurosurgery, Peking Union Medical College Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.
School of Electrical Engineering and Automation, East China Jiaotong University, Nanchang, China.
Front Endocrinol (Lausanne). 2019 Aug 27;10:588. doi: 10.3389/fendo.2019.00588. eCollection 2019.
Prediction of radiotherapeutic response before radiotherapy could help determine individual treatment strategies for patients with acromegaly. To develop and validate a machine-learning-based multiparametric MRI radiomics model to non-invasively predict radiotherapeutic response in patients with acromegaly. This retrospective study included 57 acromegaly patients who underwent postoperative radiotherapy between January 2008 and January 2016. Manual lesion segmentation and radiomics analysis were performed on each pituitary adenoma, and 1561 radiomics features were extracted from each sequence. A radiomics signature was built with a support vector machine using leave-one-out cross-validation for feature selection. Multivariable logistic regression analysis was used to select appropriate clinicopathological features to construct a clinical model, which was then combined with the radiomics signature to construct a radiomics model. The performance of this radiomic model was assessed using receiver operating characteristics (ROC) analysis and its calibration, discriminating ability, clinical usefulness. At 3-years after radiotherapy, 25 patients had achieved remission and 32 patients had not. The clinical model incorporating seven clinical features had an area under the ROC (AUC) of 0.86 for predicting radiotherapeutic response, and performed better than any single clinical feature. The radiomics signature constructed with six radiomics features had a significantly higher AUC of 0.92. The radiomics model showed good discrimination abilities and calibration, with an AUC of 0.96. Decision curve analysis confirmed the clinical utility of the radiomics model. Using pre-radiotherapy clinical and MRI data, we developed a radiomics model with favorable performance for individualized non-invasive prediction of radiotherapeutic response, which may help in identifying acromegaly patients who are likely to benefit from radiotherapy.
放疗前预测放射治疗反应有助于确定肢端肥大症患者的个体化治疗策略。开发并验证基于机器学习的多参数MRI放射组学模型,以无创预测肢端肥大症患者的放射治疗反应。这项回顾性研究纳入了2008年1月至2016年1月期间接受术后放疗的57例肢端肥大症患者。对每个垂体腺瘤进行手动病变分割和放射组学分析,从每个序列中提取1561个放射组学特征。使用支持向量机通过留一法交叉验证进行特征选择,构建放射组学特征。采用多变量逻辑回归分析选择合适的临床病理特征构建临床模型,然后将其与放射组学特征相结合构建放射组学模型。使用受试者操作特征(ROC)分析及其校准、鉴别能力、临床实用性来评估该放射组学模型的性能。放疗后3年,25例患者达到缓解,32例患者未缓解。纳入七个临床特征的临床模型预测放射治疗反应的ROC曲线下面积(AUC)为0.86,其表现优于任何单一临床特征。由六个放射组学特征构建的放射组学特征的AUC显著更高,为0.92。放射组学模型显示出良好的鉴别能力和校准,AUC为0.96。决策曲线分析证实了放射组学模型的临床实用性。利用放疗前的临床和MRI数据,我们开发了一个性能良好的放射组学模型,用于个体化无创预测放射治疗反应,这可能有助于识别可能从放疗中获益的肢端肥大症患者。