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基于[F]FDG PET/CT的影像组学特征和机器学习在I期和II期非小细胞肺癌组织学分类中的作用:两台PET/CT扫描仪的比较

Role of Radiomics Features and Machine Learning for the Histological Classification of Stage I and Stage II NSCLC at [F]FDG PET/CT: A Comparison between Two PET/CT Scanners.

作者信息

Dondi Francesco, Gatta Roberto, Albano Domenico, Bellini Pietro, Camoni Luca, Treglia Giorgio, Bertagna Francesco

机构信息

Nuclear Medicine, ASST Spedali Civili Brescia, 25123 Brescia, Italy.

Dipartimento di Scienze Cliniche e Sperimentali, Università degli Studi di Brescia, 25123 Brescia, Italy.

出版信息

J Clin Med. 2022 Dec 29;12(1):255. doi: 10.3390/jcm12010255.

Abstract

The aim of this study was to compare two different PET/CT tomographs for the evaluation of the role of radiomics features (RaF) and machine learning (ML) in the prediction of the histological classification of stage I and II non-small-cell lung cancer (NSCLC) at baseline [F]FDG PET/CT. A total of 227 patients were retrospectively included and, after volumetric segmentation, RaF were extracted. All of the features were tested for significant differences between the two scanners and considering both the scanners together, and their performances in predicting the histology of NSCLC were analyzed by testing of different ML approaches: Logistic Regressor (LR), k-Nearest Neighbors (kNN), Decision Tree (DT) and Random Forest (RF). In general, the models with best performances for all the scanners were kNN and LR and moreover the kNN model had better performances compared to the other. The impact of the PET/CT scanner used for the acquisition of the scans on the performances of RaF was evident: mean area under the curve (AUC) values for scanner 2 were lower compared to scanner 1 and both the scanner considered together. In conclusion, our study enabled the selection of some [F]FDG PET/CT RaF and ML models that are able to predict with good performances the histological subtype of NSCLC. Furthermore, the type of PET/CT scanner may influence these performances.

摘要

本研究的目的是比较两种不同的PET/CT断层扫描仪,以评估影像组学特征(RaF)和机器学习(ML)在预测基线[F]FDG PET/CT上I期和II期非小细胞肺癌(NSCLC)组织学分类中的作用。总共回顾性纳入了227例患者,在进行容积分割后,提取了RaF。对所有特征进行了两种扫描仪之间的显著差异测试,并将两种扫描仪综合考虑,通过测试不同的ML方法(逻辑回归器(LR)、k近邻(kNN)、决策树(DT)和随机森林(RF))分析了它们在预测NSCLC组织学方面的性能。总体而言,所有扫描仪中性能最佳的模型是kNN和LR,而且kNN模型的性能优于其他模型。用于扫描采集的PET/CT扫描仪对RaF性能的影响很明显:与扫描仪1相比,扫描仪2的平均曲线下面积(AUC)值较低,且将两种扫描仪综合考虑时也是如此。总之,我们的研究能够选择一些能够很好地预测NSCLC组织学亚型的[F]FDG PET/CT RaF和ML模型。此外,PET/CT扫描仪的类型可能会影响这些性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2cff/9820870/eb0eaad45134/jcm-12-00255-g001.jpg

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