生物医学数据稀疏方法。

Jieping Ye, Jun Liu
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引用次数: 0

摘要

随着最近的技术革命,对规模、多样性和复杂性日益增长的海量生物医学数据的研究已成为现代数据分析的中心。虽然复杂,但许多生物医学数据的底层表征往往是稀疏的。例如,对于某种疾病(如白血病)来说,尽管人类有数以万计的基因,但只有少数基因与疾病相关;基因网络是稀疏的,因为一个调控通路只涉及少数基因;许多生物医学信号是稀疏的或可压缩的,即在适当的基础上表达时具有简洁的表示。因此,寻找稀疏表示对于科学发现具有根本性的重要意义。基于[公式:见正文]规范的稀疏方法因其稀疏性、方便的凸性和强大的理论保证,在过去十年中吸引了大量的研究人员。它们在生物标记选择、生物网络构建和磁共振成像等各种应用中取得了巨大成功。本文回顾了最先进的稀疏方法及其在生物医学数据中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Sparse Methods for Biomedical Data.

Sparse Methods for Biomedical Data.

Following recent technological revolutions, the investigation of massive biomedical data with growing scale, diversity, and complexity has taken a center stage in modern data analysis. Although complex, the underlying representations of many biomedical data are often sparse. For example, for a certain disease such as leukemia, even though humans have tens of thousands of genes, only a few genes are relevant to the disease; a gene network is sparse since a regulatory pathway involves only a small number of genes; many biomedical signals are sparse or compressible in the sense that they have concise representations when expressed in a proper basis. Therefore, finding sparse representations is fundamentally important for scientific discovery. Sparse methods based on the [Formula: see text] norm have attracted a great amount of research efforts in the past decade due to its sparsity-inducing property, convenient convexity, and strong theoretical guarantees. They have achieved great success in various applications such as biomarker selection, biological network construction, and magnetic resonance imaging. In this paper, we review state-of-the-art sparse methods and their applications to biomedical data.

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