从全切片图像估算上皮样腹膜间皮瘤患者的总生存时间

Kleanthis Marios Papadopoulos, P. Barmpoutis, Tania Stathaki, V. Kepenekian, Peggy Dartigues, S. Valmary-Degano, Claire Illac-Vauquelin, G. Avérous, A. Chevallier, M. Lavérriere, L. Villeneuve, Olivier Glehen, Sylvie Isaac, J. Hommell-Fontaine, Francois Ng Kee Kwong, N. Benzerdjeb
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引用次数: 0

摘要

背景:深度学习(Deep Learning)的出现开创了一个新时代,在这个时代中,神经网络只需依靠整体滑动图像就能估算出癌症患者的生存时间。值得注意的是,尽管深度学习在这一领域大有可为,但此前还没有专门针对腹膜间皮瘤进行基于图像的生存分析研究。之前的研究进行了统计分析,以确定影响患者生存时间的疾病因素。方法:因此,我们引入了 MPeMSupervisedSurv,这是一种卷积神经网络,旨在预测确诊为该疾病的患者的生存时间。随后,我们根据腹膜癌指数和患者是否接受化疗等因素对患者进行分层。结果与同类方法相比,MPeMSupervisedSurv 有所改进。利用我们提出的模型,我们对患者进行了分层,以评估临床变量对生存时间的影响。值得注意的是,加入辅助化疗的相关信息能显著提高模型的预测能力。相反,对其他因素重复这一过程并不能显著提高性能。结论总的来说,MPeMSupervisedSurv 是一种有效的神经网络,可以预测腹膜间皮瘤患者的生存时间。我们的研究结果还表明,辅助化疗可能是影响生存时间的一个因素。
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Overall Survival Time Estimation for Epithelioid Peritoneal Mesothelioma Patients from Whole-Slide Images
Background: The advent of Deep Learning initiated a new era in which neural networks relying solely on Whole-Slide Images can estimate the survival time of cancer patients. Remarkably, despite deep learning’s potential in this domain, no prior research has been conducted on image-based survival analysis specifically for peritoneal mesothelioma. Prior studies performed statistical analysis to identify disease factors impacting patients’ survival time. Methods: Therefore, we introduce MPeMSupervisedSurv, a Convolutional Neural Network designed to predict the survival time of patients diagnosed with this disease. We subsequently perform patient stratification based on factors such as their Peritoneal Cancer Index and on whether patients received chemotherapy treatment. Results: MPeMSupervisedSurv demonstrates improvements over comparable methods. Using our proposed model, we performed patient stratification to assess the impact of clinical variables on survival time. Notably, the inclusion of information regarding adjuvant chemotherapy significantly enhances the model’s predictive prowess. Conversely, repeating the process for other factors did not yield significant performance improvements. Conclusions: Overall, MPeMSupervisedSurv is an effective neural network which can predict the survival time of peritoneal mesothelioma patients. Our findings also indicate that treatment by adjuvant chemotherapy could be a factor affecting survival time.
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