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J Clin Oncol. 2020 Sep 20;38(27):3175-3184. doi: 10.1200/JCO.20.00174. Epub 2020 Aug 4.
2
Second-look surgery plus hyperthermic intraperitoneal chemotherapy versus surveillance in patients at high risk of developing colorectal peritoneal metastases (PROPHYLOCHIP-PRODIGE 15): a randomised, phase 3 study.二期手术加腹腔内热灌注化疗与监测在有发生结直肠腹膜转移高危患者中的对比(PROPHYLOCHIP-PRODIGE 15):一项随机、3 期研究。
Lancet Oncol. 2020 Sep;21(9):1147-1154. doi: 10.1016/S1470-2045(20)30322-3. Epub 2020 Jul 24.
3
Noninvasive imaging evaluation of tumor immune microenvironment to predict outcomes in gastric cancer.肿瘤免疫微环境的无创影像学评估预测胃癌结局。
Ann Oncol. 2020 Jun;31(6):760-768. doi: 10.1016/j.annonc.2020.03.295. Epub 2020 Mar 30.
4
MRI-based radiomics model for preoperative prediction of 5-year survival in patients with hepatocellular carcinoma.基于 MRI 的放射组学模型预测肝细胞癌患者 5 年生存率。
Br J Cancer. 2020 Mar;122(7):978-985. doi: 10.1038/s41416-019-0706-0. Epub 2020 Jan 15.
5
Cancer statistics, 2020.癌症统计数据,2020 年。
CA Cancer J Clin. 2020 Jan;70(1):7-30. doi: 10.3322/caac.21590. Epub 2020 Jan 8.
6
Development and validation of a CT-based radiomic nomogram for preoperative prediction of early recurrence in advanced gastric cancer.基于 CT 的影像组学列线图的开发与验证:用于预测晚期胃癌患者早期复发的术前预测。
Radiother Oncol. 2020 Apr;145:13-20. doi: 10.1016/j.radonc.2019.11.023. Epub 2019 Dec 21.
7
Prediction of Core Signaling Pathway by Using Diffusion- and Perfusion-based MRI Radiomics and Next-generation Sequencing in Isocitrate Dehydrogenase Wild-type Glioblastoma.利用扩散和灌注 MRI 放射组学及下一代测序对异柠檬酸脱氢酶野生型胶质母细胞瘤进行核心信号通路预测。
Radiology. 2020 Feb;294(2):388-397. doi: 10.1148/radiol.2019190913. Epub 2019 Dec 17.
8
LncRNA, a novel target biomolecule, is involved in the progression of colorectal cancer.长链非编码RNA(LncRNA)是一种新型的靶标生物分子,参与结直肠癌的进展。
Am J Cancer Res. 2019 Nov 1;9(11):2515-2530. eCollection 2019.
9
Establishment of a new non-invasive imaging prediction model for liver metastasis in colon cancer.建立一种用于结肠癌肝转移的新型非侵入性成像预测模型。
Am J Cancer Res. 2019 Nov 1;9(11):2482-2492. eCollection 2019.
10
A Machine-Learning Approach Using PET-Based Radiomics to Predict the Histological Subtypes of Lung Cancer.一种基于 PET 的放射组学的机器学习方法,用于预测肺癌的组织学亚型。
Clin Nucl Med. 2019 Dec;44(12):956-960. doi: 10.1097/RLU.0000000000002810.

基于影像组学和语义特征的深度人工神经网络预测结直肠癌肝转移患者的KRAS、NRAS和BRAF状态

Prediction of KRAS, NRAS and BRAF status in colorectal cancer patients with liver metastasis using a deep artificial neural network based on radiomics and semantic features.

作者信息

Shi Ruichuan, Chen Weixing, Yang Bowen, Qu Jinglei, Cheng Yu, Zhu Zhitu, Gao Yu, Wang Qian, Liu Yunpeng, Li Zhi, Qu Xiujuan

机构信息

Department of Medical Oncology, The First Hospital of China Medical University 110001, Liaoning, China.

Key Laboratory of Anticancer Drugs and Biotherapy of Liaoning Province, The First Hospital of China Medical University 110001, Liaoning, China.

出版信息

Am J Cancer Res. 2020 Dec 1;10(12):4513-4526. eCollection 2020.

PMID:33415015
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7783758/
Abstract

There is a critical need for development of improved methods capable of accurately predicting the RAS (KRAS and NRAS) and BRAF gene mutation status in patients with advanced colorectal cancer (CRC). The purpose of this study was to investigate whether radiomics and/or semantic features could improve the detection accuracy of RAS/BRAF gene mutation status in patients with colorectal liver metastasis (CRLM). In this retrospective study, 159 patients who had been diagnosed with CRLM in two hospitals were enrolled. All patients received lung and abdominal contrast-enhanced CT (CECT) scans prior to radiation therapy and chemotherapy. Semantic features were independently assessed by two radiologists. Radiomics features were extracted from the portal venous phase (PVP) of the CT scan for each patient. Seven machine learning algorithms were used to establish three scores based on the semantic, radiomics and the combination of both features. Two semantic and 851 radiomics features were used to predict the mutation status of RAS and BRAF using an artificial neural network method (ANN). This approach performed best out of the seven tested algorithms. We constructed three scores which were based on radiomics, semantic features and the combined scores. The combined score could distinguish between wild-type and mutant patients with an AUC of 0.95 in the primary cohort and 0.79 in the validation cohort. This study proved that the application of radiomics together with semantic features can improve non-invasive assessment of the gene mutation status of RAS (KRAS and NRAS) and BRAF in CRLM.

摘要

迫切需要开发能够准确预测晚期结直肠癌(CRC)患者RAS(KRAS和NRAS)和BRAF基因突变状态的改进方法。本研究的目的是调查放射组学和/或语义特征是否可以提高结直肠癌肝转移(CRLM)患者RAS/BRAF基因突变状态的检测准确性。在这项回顾性研究中,纳入了两家医院诊断为CRLM的159例患者。所有患者在放疗和化疗前均接受了肺部和腹部对比增强CT(CECT)扫描。语义特征由两名放射科医生独立评估。从每位患者CT扫描的门静脉期(PVP)提取放射组学特征。使用七种机器学习算法基于语义、放射组学以及两者特征的组合建立了三个评分。使用人工神经网络方法(ANN),利用两个语义特征和851个放射组学特征预测RAS和BRAF的突变状态。在七种测试算法中,这种方法表现最佳。我们构建了基于放射组学、语义特征和综合评分的三个评分。综合评分在主要队列中区分野生型和突变型患者的AUC为0.95,在验证队列中为0.79。本研究证明,放射组学与语义特征的联合应用可以改善对CRLM中RAS(KRAS和NRAS)和BRAF基因突变状态的无创评估。