Botta Francesca, Raimondi Sara, Rinaldi Lisa, Bellerba Federica, Corso Federica, Bagnardi Vincenzo, Origgi Daniela, Minelli Rocco, Pitoni Giovanna, Petrella Francesco, Spaggiari Lorenzo, Morganti Alessio G, Del Grande Filippo, Bellomi Massimo, Rizzo Stefania
Medical Physics, IEO European Institute of Oncology IRCCS, via Ripamonti 435, 20141 Milan, Italy.
Molecular and Pharmaco-Epidemiology Unit, Department of Experimental Oncology, IEO European Institute of Oncology IRCCS, via Ripamonti 435, 20141 Milan, Italy.
Cancers (Basel). 2020 May 31;12(6):1432. doi: 10.3390/cancers12061432.
To evaluate whether a model based on radiomic and clinical features may be associated with lymph node (LN) status and overall survival (OS) in lung cancer (LC) patients; to evaluate whether CT reconstruction algorithms may influence the model performance.
patients operated on for LC with a pathological stage up to T3N1 were retrospectively selected and divided into training and validation sets. For the prediction of positive LNs and OS, the Least Absolute Shrinkage and Selection Operator (LASSO) logistic regression model was used; univariable and multivariable logistic regression analysis assessed the association of clinical-radiomic variables and endpoints. All tests were repeated after dividing the groups according to the CT reconstruction algorithm. -values < 0.05 were considered significant.
270 patients were included and divided into training (n = 180) and validation sets (n = 90). Transfissural extension was significantly associated with positive LNs. For OS prediction, high- and low-risk groups were different according to the radiomics score, also after dividing the two groups according to reconstruction algorithms.
a combined clinical-radiomics model was not superior to a single clinical or single radiomics model to predict positive LNs. A radiomics model was able to separate high-risk and low-risk patients for OS; CTs reconstructed with Iterative Reconstructions (IR) algorithm showed the best model performance.
评估基于影像组学和临床特征的模型是否与肺癌(LC)患者的淋巴结(LN)状态及总生存期(OS)相关;评估CT重建算法是否会影响模型性能。
回顾性选取接受手术治疗且病理分期达T3N1的LC患者,并分为训练集和验证集。对于阳性LN和OS的预测,使用最小绝对收缩和选择算子(LASSO)逻辑回归模型;单变量和多变量逻辑回归分析评估临床影像组学变量与终点之间的关联。根据CT重建算法对组进行划分后,重复所有测试。P值<0.05被认为具有统计学意义。
纳入270例患者,分为训练集(n = 180)和验证集(n = 90)。叶间裂延伸与阳性LN显著相关。对于OS预测,根据影像组学评分划分的高风险和低风险组不同,根据重建算法对两组进行划分后也是如此。
在预测阳性LN方面,联合临床影像组学模型并不优于单一临床或单一影像组学模型。影像组学模型能够区分OS的高风险和低风险患者;采用迭代重建(IR)算法重建的CT显示出最佳的模型性能。