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使用非侵入性放射组学生物标志物评估实性肺腺癌间变性淋巴瘤激酶基因重排

Evaluating Solid Lung Adenocarcinoma Anaplastic Lymphoma Kinase Gene Rearrangement Using Noninvasive Radiomics Biomarkers.

作者信息

Ma De-Ning, Gao Xin-Yi, Dan Yi-Bo, Zhang An-Ni, Wang Wei-Jun, Yang Guang, Zhu Hong-Zhou

机构信息

Department of Colorectal Surgery, Cancer Hospital of the University of Chinese Academy of Sciences (Zhejiang Cancer Hospital), Hangzhou 310022, Zhejiang Province, People's Republic of China.

Institute of Cancer and Basic Medicine (ICBM), Chinese Academy of Sciences, Hangzhou 310022, Zhejiang Province, People's Republic of China.

出版信息

Onco Targets Ther. 2020 Jul 16;13:6927-6935. doi: 10.2147/OTT.S257798. eCollection 2020.

Abstract

PURPOSE

To develop a radiogenomics classifier to assess anaplastic lymphoma kinase (ALK) gene rearrangement status in pretreated solid lung adenocarcinoma noninvasively.

MATERIALS AND METHODS

This study consisted of 140 consecutive pretreated solid lung adenocarcinoma patients with complete enhanced CT scans who were tested for both EGFR mutations and ALK status. Pre-contrast CT and standard post-contrast CT radiogenomics machine learning classifiers were designed as two separate classifiers. In each classifier, dataset was randomly split into training and independent testing group on a 7:3 ratio, accordingly subjected to a 5-fold cross-validation. After normalization, best feature subsets were selected by Pearson correlation coefficient (PCC) and analysis of variance (ANOVA) or recursive feature elimination (RFE), whereupon a radiomics classifier was built with support vector machine (SVM). The discriminating performance was assessed with the area under receiver-operating characteristic curve (AUC), accuracy, sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV).

RESULTS

In classifier one, 98 cases were selected as training data set, 42 cases as independent testing data set. In classifier two, 87 cases were selected as training data set, 37 cases as independent testing data set. Both classifiers extracted 851 radiomics features. The top 25 pre-contrast features and top 19 post-contrast features were selected to build optimal ALK+ radiogenomics classifiers accordingly. The accuracies, AUCs, sensitivity, specificity, PPV, and NPV of pre-contrast CT classifier were 78.57%, 80.10% (CI: 0.6538-0.9222), 71.43%, 82.14%, 66.67%, and 85.19%, respectively. Those results of standard post-contrast CT classifier were 81.08%, 82.85% (CI: 0.6630-0.9567), 76.92%, 83.33%, 71.43%, and 86.96%.

CONCLUSION

Solid lung adenocarcinoma ALK+ radiogenomics classifier of standard post-contrast CT radiomics biomarkers produced superior performance compared with that of pre-contrast one, suggesting that post-contrast CT radiomics should be recommended in the context of solid lung adenocarcinoma radiogenomics AI. Standard post-contrast CT machine learning radiogenomics classifier could help precisely identify solid adenocarcinoma ALK rearrangement status, which may act as a pragmatic and cost-efficient substitute for traditional invasive ALK status test.

摘要

目的

开发一种放射基因组学分类器,以无创评估经预处理的实性肺腺癌中间变性淋巴瘤激酶(ALK)基因重排状态。

材料与方法

本研究纳入140例连续的经预处理的实性肺腺癌患者,均行完整的增强CT扫描,并检测EGFR突变和ALK状态。平扫CT和标准增强CT放射基因组学机器学习分类器设计为两个独立的分类器。在每个分类器中,数据集按7:3的比例随机分为训练组和独立测试组,随后进行5折交叉验证。归一化后,通过Pearson相关系数(PCC)、方差分析(ANOVA)或递归特征消除(RFE)选择最佳特征子集,然后用支持向量机(SVM)构建放射组学分类器。用受试者操作特征曲线下面积(AUC)、准确率、敏感性、特异性、阳性预测值(PPV)和阴性预测值(NPV)评估鉴别性能。

结果

在分类器一中,98例被选为训练数据集,42例为独立测试数据集。在分类器二中,87例被选为训练数据集,37例为独立测试数据集。两个分类器均提取了851个放射组学特征。分别选择前25个平扫特征和前19个增强后特征构建最佳ALK+放射基因组学分类器。平扫CT分类器的准确率、AUC、敏感性、特异性、PPV和NPV分别为78.57%、80.10%(CI:0.6538 - 0.9222)、71.43%、82.14%、66.67%和85.19%。标准增强CT分类器的这些结果分别为81.08%、82.85%(CI:0.6630 - 0.9567)、76.92%、83.33%、71.43%和86.96%。

结论

标准增强CT放射组学生物标志物的实性肺腺癌ALK+放射基因组学分类器的性能优于平扫CT分类器,表明在实性肺腺癌放射基因组学人工智能背景下应推荐增强CT放射组学。标准增强CT机器学习放射基因组学分类器有助于精确识别实性腺癌ALK重排状态,可作为传统侵入性ALK状态检测的实用且经济高效的替代方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7dbb/7371989/74d8cb37a100/OTT-13-6927-g0001.jpg

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