MICSurv:用于生存风险组识别的医学图像聚类

G. Marinos, Chrvsostomos Symvoulidis, D. Kyriazis
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引用次数: 1

摘要

医学图像处理是一种特殊的方法,为癌症诊断以及指导医疗干预,如手术计划。一些研究已经引入了使用医学图像的生存风险预测,然而,利用医学图像识别具有相似生存概率分布的受试者群体的研究论文数量非常有限。在本研究中,我们展示了一种简单而强大的方法,可用于一组生物医学图像数据集以及生存注释,以便识别与受试者生存相关的各种风险组。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MICSurv: Medical Image Clustering for Survival risk group identification
Medical image processing is an exceptional method-ology for cancer diagnosis as well as for the guidance of medical interventions such as surgical planning. Some studies have introduced the survival risk prediction using medical images, however, the number of research papers that address the problem of identifying groups of subjects that have similar survival probability distributions utilizing medical images is very limited. In this study, we demonstrate a simple yet powerful approach that can be used in a set of biomedical images dataset along with survival annotations in order to identify various risk groups with regards to the survival of the subjects.
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