Eresen Aydin, Yang Jia, Shangguan Junjie, Li Yu, Hu Su, Sun Chong, Yaghmai Vahid, Benson Iii Al B, Zhang Zhuoli
Department of Radiology, Feinberg School of Medicine, Northwestern University Chicago, IL, USA.
Department of Gastrointestinal Surgery, Affiliated Hospital of Medical College, Qingdao University Qingdao, Shandong, China.
Am J Transl Res. 2020 May 15;12(5):2201-2211. eCollection 2020.
There is a lack of a well-established approach for assessment of early treatment outcomes for modern therapies for pancreatic ductal adenocarcinoma (PDAC) e.g. dinaciclib or dendritic cell (DC) vaccination. Here, we developed multivariate models using MRI texture features to detect treatment effects following dinaciclib drug or DC vaccine therapy in a transgenic mouse model of PDAC including 21 ; ; (KPC) mice used as untreated control subjects (n=8) or treated with dinaciclib (n=7) or DC vaccine (n=6). Support vector machines (SVM) technique was performed to build a linear classifier with three variables for detection of tumor tissue changes following drug or vaccine treatments. Besides, multivariate regression models were generated with five variables to predict survival behavior and histopathological tumor markers (Fibrosis, CK19, and Ki67). The diagnostic performance was evaluated using accuracy, area under the receiver operating characteristic curve (AUC) and decision curve analyses. The regression models were evaluated with adjusted -squared ( ). SVM classifier successfully distinguished changes in tumor tissue with an accuracy of 95.24% and AUC of 0.93. The multivariate models generated with five variables were strongly associated with histopathological tumor markers, fibrosis ( =0.82, <0.001), CK19 ( =0.92, <0.001) and Ki67 ( =0.97, <0.001). Furthermore, the multivariate regression model successfully predicted survival of KPC mice by interpreting tumor characteristics from MRI data ( =0.91, <0.001). The results demonstrated that MRI texture features had great potential to generate diagnosis and prognosis models for monitoring early treatment response following dinaciclib drug or DC vaccine treatment and also predicting histopathological tumor markers and long-term clinical outcomes.
对于胰腺导管腺癌(PDAC)的现代疗法,如地那西利或树突状细胞(DC)疫苗接种,目前缺乏一种成熟的早期治疗效果评估方法。在此,我们利用MRI纹理特征开发了多变量模型,以检测在PDAC转基因小鼠模型中接受地那西利药物或DC疫苗治疗后的治疗效果,该模型包括21只 ; ; (KPC)小鼠,用作未治疗的对照对象(n = 8)或接受地那西利治疗(n = 7)或DC疫苗治疗(n = 6)。采用支持向量机(SVM)技术构建了一个具有三个变量的线性分类器,用于检测药物或疫苗治疗后肿瘤组织的变化。此外,生成了具有五个变量的多变量回归模型,以预测生存行为和组织病理学肿瘤标志物(纤维化、细胞角蛋白19和Ki67)。使用准确性、受试者操作特征曲线下面积(AUC)和决策曲线分析来评估诊断性能。通过调整后的 -平方( )评估回归模型。SVM分类器成功区分了肿瘤组织的变化,准确率为95.24%,AUC为0.93。由五个变量生成的多变量模型与组织病理学肿瘤标志物、纤维化( = 0.82,< 0.001)、细胞角蛋白19( = 0.92,< 0.001)和Ki67( = 0.97,< 0.001)密切相关。此外,多变量回归模型通过解读MRI数据中的肿瘤特征成功预测了KPC小鼠的生存情况( = 0.91,< 0.001)。结果表明,MRI纹理特征在生成用于监测地那西利药物或DC疫苗治疗后早期治疗反应、预测组织病理学肿瘤标志物和长期临床结果的诊断和预后模型方面具有巨大潜力。