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CA Cancer J Clin. 2019 Mar;69(2):127-157. doi: 10.3322/caac.21552. Epub 2019 Feb 5.
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Deep learning for lung cancer prognostication: A retrospective multi-cohort radiomics study.深度学习在肺癌预后预测中的应用:一项回顾性多队列放射组学研究。
PLoS Med. 2018 Nov 30;15(11):e1002711. doi: 10.1371/journal.pmed.1002711. eCollection 2018 Nov.
3
A Deep Learning-Based Radiomics Model for Differentiating Benign and Malignant Renal Tumors.一种基于深度学习的用于鉴别肾肿瘤良恶性的影像组学模型。
Transl Oncol. 2019 Feb;12(2):292-300. doi: 10.1016/j.tranon.2018.10.012. Epub 2018 Dec 17.
4
Can CT-based radiomics signature predict KRAS/NRAS/BRAF mutations in colorectal cancer?基于 CT 的放射组学特征能否预测结直肠癌中的 KRAS/NRAS/BRAF 突变?
Eur Radiol. 2018 May;28(5):2058-2067. doi: 10.1007/s00330-017-5146-8. Epub 2018 Jan 15.
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Feasibility of opportunistic osteoporosis screening in routine contrast-enhanced multi detector computed tomography (MDCT) using texture analysis.利用纹理分析对常规增强多排螺旋 CT(MDCT)进行机会性骨质疏松症筛查的可行性。
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Radiomic analysis in contrast-enhanced CT: predict treatment response to chemoradiotherapy in esophageal carcinoma.增强CT中的影像组学分析:预测食管癌放化疗的治疗反应
Oncotarget. 2017 Nov 6;8(61):104444-104454. doi: 10.18632/oncotarget.22304. eCollection 2017 Nov 28.
7
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CT texture features are associated with overall survival in pancreatic ductal adenocarcinoma - a quantitative analysis.CT纹理特征与胰腺导管腺癌的总生存期相关——一项定量分析。
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10
High expression of HMGA2 predicts poor survival in patients with clear cell renal cell carcinoma.HMGA2的高表达预示着透明细胞肾细胞癌患者的不良生存结局。
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放射组学成像特征与基因表达谱作为胰腺导管腺癌预后因素的相关性

Association of radiomic imaging features and gene expression profile as prognostic factors in pancreatic ductal adenocarcinoma.

作者信息

Li Ke, Xiao Jingjing, Yang Jiali, Li Meng, Xiong Xuanqi, Nian Yongjian, Qiao Linbo, Wang Huaizhi, Eresen Aydin, Zhang Zhuoli, Hu Xianling, Wang Jian, Chen Wei

机构信息

Department of Radiology, Southwest Hospital, Third Military Medical University Chongqing, China.

Department of Medical Engineering, Xinqiao Hospital, Third Military Medical University Chongqing, China.

出版信息

Am J Transl Res. 2019 Jul 15;11(7):4491-4499. eCollection 2019.

PMID:31396352
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6684898/
Abstract

In this study, we investigated whether radiomic features of CT image data can accurately predict HMGA2 and C-MYC gene expression status and identify the patient survival time using a machine learning approach in pancreatic ductal adenocarcinoma (PDAC). A cohort of 111 patients with PDAC was enrolled in our study. Radiomic features were extracted using conventional (shape and texture analysis) and deep learning approaches following to segmentation of preoperative CT data. To predict patient survival time, significant radiomic features were identified using a log-rank test. After surgical resection, level of HMGA2 and C-MYC gene expressions of PDAC tumor regions were classified using a support vector machines method. The model was evaluated in terms of accuracy, sensitivity, specificity, and area under the curve (AUC). Besides, inter-reader reliability analysis was used to demonstrate the robustness of the proposed features. The identified features consistently achieved good performance in survival prediction and classification of gene expression status, on images segmented by different radiologists. Using CT data from 111 patients, six features in the segmented region of images were highly correlated with survival time. Using extracted deep features of excised lesions from 47 patients, we observed an average AUC score of 0.90 with an accuracy of 95% in C-MYC prediction (sensitivity: 92% and specificity: 98%). In HGMA2 group, using shape features, the average AUC score was measured as 0.91 with an accuracy of 88% (sensitivity: 89% and specificity: 88%). In conclusion, the radiomic features of CT image can accurately predict the expression status of HMGA2 and C-MYC genes and identify the survival time of PDAC patients.

摘要

在本研究中,我们调查了CT图像数据的放射组学特征是否能够在胰腺导管腺癌(PDAC)中使用机器学习方法准确预测HMGA2和C-MYC基因表达状态并识别患者生存时间。111例PDAC患者纳入我们的研究。在术前CT数据分割后,使用传统(形状和纹理分析)和深度学习方法提取放射组学特征。为了预测患者生存时间,使用对数秩检验识别显著的放射组学特征。手术切除后,使用支持向量机方法对PDAC肿瘤区域的HMGA2和C-MYC基因表达水平进行分类。该模型根据准确性、敏感性、特异性和曲线下面积(AUC)进行评估。此外,使用阅片者间可靠性分析来证明所提出特征的稳健性。在由不同放射科医生分割的图像上,所识别的特征在生存预测和基因表达状态分类方面始终表现良好。使用111例患者的CT数据,图像分割区域中的六个特征与生存时间高度相关。使用47例患者切除病变的提取深度特征,我们观察到在C-MYC预测中平均AUC评分为0.90,准确率为95%(敏感性:92%,特异性:98%)。在HGMA2组中,使用形状特征,平均AUC评分为0.91,准确率为88%(敏感性:89%,特异性:88%)。总之,CT图像的放射组学特征可以准确预测HMGA2和C-MYC基因的表达状态并识别PDAC患者生存时间。