MMOSurv: Meta-learning for few-shot survival analysis with multi-omics data.

Gang Wen, Limin Li
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Abstract

Motivation: High-throughput techniques have produced a large amount of high-dimensional multi-omics data, which makes it promising to predict patient survival outcomes more accurately. Recent work has showed the superiority of multi-omics data in survival analysis. However, it remains challenging to integrate multi-omics data to solve few-shot survival prediction problem, with only a few available training samples, especially for rare cancers.

Results: In this work, we propose a meta-learning framework for multi-omics few-shot survival analysis, namely MMOSurv, which enables to learn an effective multi-omics survival prediction model from a very few training samples of a specific cancer type, with the meta-knowledge across tasks from relevant cancer types. By assuming a deep Cox survival model with multiple omics, MMOSurv first learns an adaptable parameter initialization for the multi-omics survival model from abundant data of relevant cancers, and then adapts the parameters quickly and efficiently for the target cancer task with a very few training samples. Our experiments on eleven cancer types in TCGA datasets show that, compared to single-omics meta-learning methods, MMOSurv can better utilize the meta-information of similarities and relationships between different omics data from relevant cancer datasets to improve survival prediction of the target cancer with a very few multi-omics training samples. Furthermore, MMOSurv achieves better prediction performance than other state-of-the-art strategies such as multi-task learning and pre-training.

Availability and implementation: MMOSurv is freely available at https://github.com/LiminLi-xjtu/MMOSurv.

Supplementary information: Supplementary data are available at Bioinformatics online.

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MMOSurv:利用多组学数据的元学习(Meta-learning for few-shot survival analysis with multi-omics data)。
动机高通量技术产生了大量的高维多组学数据,因此有望更准确地预测患者的生存结果。最近的研究表明,多组学数据在生存分析中具有优越性。然而,在只有少量可用训练样本的情况下,特别是对于罕见癌症,整合多组学数据以解决少次生存预测问题仍具有挑战性:在这项工作中,我们提出了一种用于多组学少次生存分析的元学习框架,即 MMOSurv,它能利用相关癌症类型任务中的元知识,从特定癌症类型的极少数训练样本中学习有效的多组学生存预测模型。MMOSurv 假设有一个包含多个组学的深度考克斯生存模型,它首先从相关癌症的大量数据中为多组学生存模型学习一个可调整的参数初始化,然后针对目标癌症任务,用极少的训练样本快速有效地调整参数。我们在 TCGA 数据集中 11 种癌症类型的实验表明,与单一组学元学习方法相比,MMOSurv 能更好地利用相关癌症数据集中不同组学数据之间相似性和关系的元信息,以极少的多组学训练样本提高目标癌症的生存预测能力。此外,与多任务学习和预训练等其他最先进的策略相比,MMOSurv 的预测效果更好:MMOSurv 可在 https://github.com/LiminLi-xjtu/MMOSurv.Supplementary 网站上免费获取:补充数据可在 Bioinformatics online 上获取。
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