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MildInt: Deep Learning-Based Multimodal Longitudinal Data Integration Framework

机译:MildInt:基于深度学习的多模式纵向数据集成框架

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摘要

As large amounts of heterogeneous biomedical data become available, numerous methods for integrating such datasets have been developed to extract complementary knowledge from multiple domains of sources. Recently, a deep learning approach has shown promising results in a variety of research areas. However, applying the deep learning approach requires expertise for constructing a deep architecture that can take multimodal longitudinal data. Thus, in this paper, a deep learning-based python package for data integration is developed. The python package deep learning-based multimodal longitudinal data integration framework (MildInt) provides the preconstructed deep learning architecture for a classification task. MildInt contains two learning phases: learning feature representation from each modality of data and training a classifier for the final decision. Adopting deep architecture in the first phase leads to learning more task-relevant feature representation than a linear model. In the second phase, linear regression classifier is used for detecting and investigating biomarkers from multimodal data. Thus, by combining the linear model and the deep learning model, higher accuracy and better interpretability can be achieved. We validated the performance of our package using simulation data and real data. For the real data, as a pilot study, we used clinical and multimodal neuroimaging datasets in Alzheimer’s disease to predict the disease progression. MildInt is capable of integrating multiple forms of numerical data including time series and non-time series data for extracting complementary features from the multimodal dataset.
机译:随着大量的异构生物医学数据变得可用,已经开发了用于整合此类数据集的多种方法,以从多个来源域中提取互补知识。最近,深度学习方法已在各种研究领域中显示出令人鼓舞的结果。但是,应用深度学习方法需要专业知识来构建可采用多模式纵向数据的深度架构。因此,在本文中,开发了用于数据集成的基于深度学习的python软件包。 python软件包基于深度学习的 m ult i 模态 l 纵向 d ata int egration框架(MildInt)为分类任务提供了预先构建的深度学习架构。 MildInt包含两个学习阶段:从每种数据模态中学习特征表示,并为最终决策训练分类器。在第一阶段采用深度架构会比线性模型学习更多与任务相关的特征表示。在第二阶段,线性回归分类器用于从多峰数据中检测和研究生物标志物。因此,通过组合线性模型和深度学习模型,可以实现更高的准确性和更好的可解释性。我们使用模拟数据和真实数据验证了包装的性能。对于真实数据,作为一项初步研究,我们使用了阿尔茨海默氏病的临床和多模式神经影像数据集来预测疾病的进展。 MildInt能够集成多种形式的数值数据,包括时间序列和非时间序列数据,以便从多峰数据集中提取互补特征。

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