[基于自我监督预训练和多任务学习的肺腺癌无复发生存率预测]。

Q4 Medicine
Lunyu Hu, Wei Xia, Qiong Li, Xin Gao
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引用次数: 0

摘要

计算机断层扫描(CT)成像是诊断和评估肺腺癌的重要工具,利用 CT 图像预测肺腺癌患者的术后无复发生存期(RFS)对于制定术后治疗方案至关重要。针对利用 CT 图像准确预测无复发生存率这一具有挑战性的任务,本文介绍了一种基于自监督预训练和多任务学习的创新方法。我们采用了一种称为 "图像转换到图像复原 "的自我监督学习策略,在公开的肺部 CT 数据集上预训练 3D-UNet 网络,从肺部图像中提取通用的视觉特征。随后,我们通过涉及分割和分类任务的多任务学习增强了网络的特征提取能力,引导网络提取与 RFS 相关的图像特征。此外,我们还设计了一个多尺度特征聚合模块,全面整合多尺度图像特征,最终借助前馈神经网络预测肺腺癌的 RFS 风险评分。通过十倍交叉验证评估了所提方法的预测性能。结果显示,所提方法预测RFS的一致性指数(C-index)和预测三年内是否复发的曲线下面积(AUC)分别达到0.691 ± 0.076和0.707 ± 0.082,预测性能优于现有方法。该研究证实了所提出的方法具有预测肺腺癌患者RFS的潜力,有望为制定个体化治疗方案提供可靠依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Prediction of recurrence-free survival in lung adenocarcinoma based on self-supervised pre-training and multi-task learning].

Computed tomography (CT) imaging is a vital tool for the diagnosis and assessment of lung adenocarcinoma, and using CT images to predict the recurrence-free survival (RFS) of lung adenocarcinoma patients post-surgery is of paramount importance in tailoring postoperative treatment plans. Addressing the challenging task of accurate RFS prediction using CT images, this paper introduces an innovative approach based on self-supervised pre-training and multi-task learning. We employed a self-supervised learning strategy known as "image transformation to image restoration" to pretrain a 3D-UNet network on publicly available lung CT datasets to extract generic visual features from lung images. Subsequently, we enhanced the network's feature extraction capability through multi-task learning involving segmentation and classification tasks, guiding the network to extract image features relevant to RFS. Additionally, we designed a multi-scale feature aggregation module to comprehensively amalgamate multi-scale image features, and ultimately predicted the RFS risk score for lung adenocarcinoma with the aid of a feed-forward neural network. The predictive performance of the proposed method was assessed by ten-fold cross-validation. The results showed that the consistency index (C-index) of the proposed method for predicting RFS and the area under curve (AUC) for predicting whether recurrence occurs within three years reached 0.691 ± 0.076 and 0.707 ± 0.082, respectively, and the predictive performance was superior to that of existing methods. This study confirms that the proposed method has the potential of RFS prediction in lung adenocarcinoma patients, which is expected to provide a reliable basis for the development of individualized treatment plans.

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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
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