Fusion Lasso and Its Applications to Cancer Subtype and Stage Prediction

Zhong Chen, Andrea Edwards, Kun Zhang
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引用次数: 1

Abstract

Effectively integrating and mining multi-view, high-dimensional omics data is instrumental to precision medicine. Numerous methods have been proposed for addressing this problem. However, they more or less neglect the challenges (e.g., interpretability, stability and consistency) pertaining to this integration process, whereby suffering from unstable or inconsistent variable selection and prediction accuracy deterioration. In this paper, we introduce a novel Fusion Lasso (FL) framework in which variable selection and data integration are formulated as a weighted constrained optimization problem. Specifically, four regularization constraints, i.e., sparsity, fusion penalty, instability and inconsistency, are simultaneously taken into account in the fusion model using multi-view data, while sparse features are revealed from data of each individual view through the ℓ1-norm minimization. We use the ADMM and Accelerated ADMM (AADMM) schemes to solve this optimization problem, leading to a scalable model convergence with solid theoretical guarantee. By applying FL to fve multi-omics cancer datasets collected by The Cancer Genome Atlas (TCGA), we demonstrate that FL outperforms popular variable selection and data integration approaches, such as Elastic Net, Precision Lasso, B-RAIL and MDBN, in cancer subtype and/or stage prediction. The proposed method is useful and can be further adopted to systems biology and other advanced clinical research areas where multi-view data integration is a necessity.
融合套索及其在肿瘤亚型和分期预测中的应用
有效整合和挖掘多视角、高维组学数据是实现精准医疗的重要手段。已经提出了许多方法来解决这个问题。然而,他们或多或少地忽视了与此集成过程相关的挑战(例如,可解释性,稳定性和一致性),从而遭受不稳定或不一致的变量选择和预测精度下降。在本文中,我们引入了一种新的融合Lasso (FL)框架,其中变量选择和数据集成被表述为一个加权约束优化问题。具体而言,该融合模型同时考虑了稀疏性、融合惩罚、不稳定性和不一致性四个正则化约束,并通过1范数最小化从每个单独视图的数据中揭示稀疏特征。我们使用ADMM和加速ADMM (AADMM)方案来解决这一优化问题,从而获得了具有坚实理论保证的可扩展模型收敛性。通过将FL应用于癌症基因组图谱(TCGA)收集的5个多组学癌症数据集,我们证明FL在癌症亚型和/或分期预测方面优于流行的变量选择和数据集成方法,如Elastic Net、Precision Lasso、B-RAIL和MDBN。该方法具有实用价值,可进一步应用于系统生物学和其他需要多视图数据集成的高级临床研究领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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