Deep Learning Radiomics for Survival Prediction in Non-Small-Cell Lung Cancer Patients from CT Images.

IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Viet Huan Le, Tran Nguyen Tuan Minh, Quang Hien Kha, Nguyen Quoc Khanh Le
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引用次数: 0

Abstract

This study aims to apply a multi-modal approach of the deep learning method for survival prediction in patients with non-small-cell lung cancer (NSCLC) using CT-based radiomics. We utilized two public data sets from the Cancer Imaging Archive (TCIA) comprising NSCLC patients, 420 patients and 516 patients for Lung 1 training and Lung 2 testing, respectively. A 3D convolutional neural network (CNN) survival was applied to extract 256 deep-radiomics features for each patient from a CT scan. Feature selection steps are used to choose the radiomics signatures highly associated with overall survival. Deep-radiomics and traditional-radiomics signatures, and clinical parameters were fed into the DeepSurv neural network. The C-index was used to evaluate the model's effectiveness. In the Lung 1 training set, the model combining traditional-radiomics and deep-radiomics performs better than the single parameter models, and models that combine all three markers (traditional-radiomics, deep-radiomics, and clinical) are most effective with C-index 0.641 for Cox proportional hazards (Cox-PH) and 0.733 for DeepSurv approach. In the Lung 2 testing set, the model combining traditional-radiomics, deep-radiomics, and clinical obtained a C-index of 0.746 for Cox-PH and 0.751 for DeepSurv approach. The DeepSurv method improves the model's prediction compared to the Cox-PH, and models that combine all three parameters with the DeepSurv have the highest efficiency in training and testing data sets (C-index: 0.733 and 0.751, respectively). DeepSurv CT-based deep-radiomics method outperformed Cox-PH in survival prediction of patients with NSCLC patients. Models' efficiency is increased when combining multi parameters.

基于CT图像的非小细胞肺癌患者生存预测的深度学习放射组学。
本研究旨在应用基于ct的放射组学的深度学习方法的多模式方法来预测非小细胞肺癌(NSCLC)患者的生存。我们使用了来自癌症影像档案(TCIA)的两个公共数据集,其中包括NSCLC患者,420例患者和516例患者,分别用于肺1训练和肺2测试。3D卷积神经网络(CNN)生存应用于从每位患者的CT扫描中提取256个深度放射组学特征。特征选择步骤用于选择与总生存率高度相关的放射组学特征。深度放射组学和传统放射组学特征以及临床参数被输入DeepSurv神经网络。采用c指数评价模型的有效性。在Lung 1训练集中,结合传统放射组学和深度放射组学的模型比单参数模型表现更好,并且结合所有三种标记(传统放射组学,深度放射组学和临床)的模型最有效,Cox比例风险(Cox- ph)的c指数为0.641,DeepSurv方法的c指数为0.733。在Lung 2检测集中,结合传统放射组学、深度放射组学和临床的模型,Cox-PH方法的c指数为0.746,DeepSurv方法的c指数为0.751。与Cox-PH方法相比,DeepSurv方法提高了模型的预测能力,并且将所有三个参数与DeepSurv相结合的模型在训练和测试数据集方面具有最高的效率(C-index分别为0.733和0.751)。基于DeepSurv ct的深度放射组学方法在预测非小细胞肺癌患者的生存方面优于Cox-PH。多参数组合可以提高模型的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Medical Systems
Journal of Medical Systems 医学-卫生保健
CiteScore
11.60
自引率
1.90%
发文量
83
审稿时长
4.8 months
期刊介绍: Journal of Medical Systems provides a forum for the presentation and discussion of the increasingly extensive applications of new systems techniques and methods in hospital clinic and physician''s office administration; pathology radiology and pharmaceutical delivery systems; medical records storage and retrieval; and ancillary patient-support systems. The journal publishes informative articles essays and studies across the entire scale of medical systems from large hospital programs to novel small-scale medical services. Education is an integral part of this amalgamation of sciences and selected articles are published in this area. Since existing medical systems are constantly being modified to fit particular circumstances and to solve specific problems the journal includes a special section devoted to status reports on current installations.
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