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Multi-task learning based survival analysis for multi-source block-wise missing data

机译:基于多任务学习的多源逐块丢失数据生存分析

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摘要

There are many major diseases that remain incurable, such as cancer and Alzheimer's disease (AD). Therefore, the prevention for these diseases has more impact than diagnosis and treatment. Survival analysis aims at predicting the time of occurrence of specific events of interest. It can be used to identify patients of high risk, which helps healthcare system effectively allocate limited medical resources. In many realworld applications, such as healthcare analysis, a lot of datasets are collected from multiple data sources and exhibit a block-wise missing pattern, i.e., each patient takes different types of tests and receives various treatments, and each test/treatment associates with a set of corresponding features. However, the existing survival analysis methods such as the Cox proportional hazards model and its extensions are designed for fully observed datasets and can not be directly applied when such block-wise missing pattern presents. This paper addresses this challenge and enables the survival prediction models to deal with high-dimensional multi-source block-wise missing data. Specifically, we employ a partition method that decomposes the multi-source block-wise missing data into multiple completed sub-matrix; thus, the original problem is transformed into a series of related multi-source survival analysis problems. To deal with these problems, we propose a two-layer multi-task learning framework that achieves both feature-level and source-level analysis, and the proposed framework is able to take advantage of the structure information in the block-wise missing pattern. Based on the proposed framework, we formulate two concrete models for survival analysis to handle multi-source block-wise missing data. We apply the proposed method in the real-world benchmark Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset and The Cancer Genome Atlas (TCGA) dataset to study the stage conversion of AD patients and survival time of cancer patients, respectively. The results from our comprehensive evaluations show that our methods outperform the state-of-the-art methods. (C) 2019 Elsevier B.V. All rights reserved.
机译:许多主要疾病仍然无法治愈,例如癌症和阿尔茨海默氏病(AD)。因此,预防这些疾病比诊断和治疗具有更大的影响。生存分析旨在预测特定事件的发生时间。它可用于识别高风险患者,这有助于医疗保健系统有效分配有限的医疗资源。在许多现实世界的应用程序中,例如医疗保健分析,许多数据集是从多个数据源收集的,并且呈现出逐块丢失的模式,即,每个患者进行不同类型的测试并接受各种治疗,并且每个测试/治疗都与一组相应的功能。但是,现有的生存分析方法(例如Cox比例风险模型及其扩展)是为完全观察到的数据集设计的,因此当出现这种逐块缺失模式时,无法直接应用。本文解决了这一挑战,并使生存预测模型能够处理高维多源逐块丢失数据。具体来说,我们采用一种分区方法,将多源按块丢失的数据分解为多个完整的子矩阵。因此,原来的问题转化为一系列相关的多源生存分析问题。为了解决这些问题,我们提出了一个两层的多任务学习框架,该框架可以同时进行特征级和源级分析,并且该框架能够以逐块缺失模式利用结构信息。基于提出的框架,我们制定了两个具体的生存分析模型,以处理多源逐块丢失数据。我们将拟议的方法应用于现实世界的基准阿尔茨海默氏病神经影像学倡议(ADNI)数据集和癌症基因组图谱(TCGA)数据集,分别研究AD患者的阶段转换和癌症患者的生存时间。我们全面评估的结果表明,我们的方法优于最新方法。 (C)2019 Elsevier B.V.保留所有权利。

著录项

  • 来源
    《Neurocomputing》 |2019年第28期|95-107|共13页
  • 作者单位

    Univ Michigan Dept Computat Med & Bioinformat Ann Arbor MI 48109 USA|Alibaba Grp Machine Intelligence Technol Bellevue WA 98004 USA;

    Univ Toronto Dept Mech & Ind Engn Toronto ON M5S 3G8 Canada;

    Michigan State Univ Dept Comp Sci & Engn Lansing MI 48824 USA;

    Univ Michigan Dept Computat Med & Bioinformat Ann Arbor MI 48109 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Survival analysis; Multi-source; Multi-task learning; Block-wise missing data; Alzheimer's disease; Cancer;

    机译:生存分析;多源;多任务学习;逐块丢失数据;阿尔茨海默氏病;癌症;

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