Wang Shuo, Liu Zhenyu, Chen Xi, Zhu Yongbei, Zhou Hongyu, Tang Zhenchao, Wei Wei, Dong Di, Wang Meiyun, Tian Jie
Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:2583-2586. doi: 10.1109/EMBC.2018.8512833.
Lung cancer overall survival analysis using computed tomography (CT) images plays an important role in treatment planning. Most current analysis methods involve hand-crafted image features for survival time prediction. However, hand-crafted features require domain knowledge and may lack specificity to lung cancer. Advanced self-learning models such as deep learning have showed superior performance in many medical image tasks, but they require large amount of data which is difficult to collect for survival analysis because of the long follow-up time. Although data with survival time is difficult to acquire, it is relatively easy to collect lung cancer patients without survival time. In this paper, we proposed an unsupervised deep learning method to take advantage of the unlabeled data for survival analysis, and demonstrated better performance than using hand-crafted features. We proposed a residual convolutional auto encoder and trained the model using images from 274 patients without survival time. Afterwards, we extracted deep learning features through the encoder model, and constructed a Cox proportional hazards model on 129 patients with survival time. The experiment results showed that our unsupervised deep learning feature gained better performance (C-Index = 0.70) than using hand-crafted features (C-Index = 0.62). Furthermore, we divided the patients into two groups according to their Cox hazard value. Kaplan-Meier analysis indicated that our model can divide patients into high and low risk groups and the survival time of these two groups had significant difference (p < 0.01).
使用计算机断层扫描(CT)图像进行肺癌总体生存分析在治疗规划中起着重要作用。当前大多数分析方法涉及用于生存时间预测的手工制作图像特征。然而,手工制作的特征需要领域知识,并且可能缺乏对肺癌的特异性。诸如深度学习之类的先进自学习模型在许多医学图像任务中已显示出卓越的性能,但它们需要大量数据,由于随访时间长,这些数据很难用于生存分析。尽管带有生存时间的数据难以获取,但收集没有生存时间的肺癌患者相对容易。在本文中,我们提出了一种无监督深度学习方法,以利用未标记数据进行生存分析,并证明其性能优于使用手工制作的特征。我们提出了一种残差卷积自动编码器,并使用来自274例无生存时间患者的图像训练该模型。之后,我们通过编码器模型提取深度学习特征,并在129例有生存时间的患者上构建Cox比例风险模型。实验结果表明,我们的无监督深度学习特征(C指数= 0.70)比使用手工制作的特征(C指数= 0.62)具有更好的性能。此外,我们根据患者的Cox风险值将其分为两组。Kaplan-Meier分析表明,我们的模型可以将患者分为高风险组和低风险组,并且这两组的生存时间有显著差异(p <0.01)。