网络约束特征单细胞轮廓估计法揭示人类骨髓中关键的免疫基因调控系统

IF 1.4 4区 生物学 Q4 BIOCHEMICAL RESEARCH METHODS Journal of Computational Biology Pub Date : 2024-11-01 Epub Date: 2024-09-06 DOI:10.1089/cmb.2024.0539
Heewon Park, Satoru Miyano
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引用次数: 0

摘要

我们的研究重点是表征年轻细胞系和老年健康细胞系以及急性髓性白血病(AML)细胞系,我们的目标是找出与急性髓性白血病进展相关的关键标记物。为了描述急性髓细胞白血病细胞系中与年龄相关的表型,我们考虑采用 eigenCell 分析方法,它能有效概括各细胞系的主要表达水平模式。然而,早期利用特征基因和特征细胞分析的研究是基于所有特征的线性组合,从而导致噪声特征的干扰。此外,基于全密集载荷矩阵的分析也给解释特征细胞分析结果带来了挑战。为了应对这些挑战,我们开发了一种新颖的计算方法,称为网络约束特征细胞轮廓估计,它采用了稀疏学习策略。所提出的方法不仅基于套索,还基于网络约束惩罚来估计特征细胞。网络约束惩罚的使用使我们能够同时选择邻近基因。此外,中枢基因及其调控/目标基因也很容易被选中,作为估计特征细胞的关键标记。也就是说,我们的方法可以将网络生物学的见解融入稀疏载荷估计的过程中。通过我们的方法,我们可以估算出稀疏的特征细胞图谱,其中只有关键标记表现出表达水平。这样,我们就能确定与特定表型相关的关键标记物。蒙特卡罗模拟证明了我们的方法在重建稀疏的特征细胞图谱结构方面的功效。我们采用我们的方法揭示了年轻/高龄-健康细胞系和-AML 细胞系中免疫原的调控系统。我们在健康和急性髓细胞白血病细胞系中发现的年龄相关表型标记物得到了以往研究的有力支持。具体来说,我们的研究结果与现有文献相结合,表明 CD79A 子网络内的活动可能在阐明急性髓细胞性白血病进展的驱动机制方面起着关键作用,尤其是 CD79A 子网络内活动减少所起的重要作用。我们希望所提出的方法将成为表征与疾病相关的细胞系亚群(包括表型和克隆)的有用工具。
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Network-Constrained Eigen-Single-Cell Profile Estimation for Uncovering Crucial Immunogene Regulatory Systems in Human Bone Marrow.

We focus on characterizing cell lines from young and aged-healthy and -AML (acute myeloid leukemia) cell lines, and our goal is to identify the key markers associated with the progression of AML. To characterize the age-related phenotypes in AML cell lines, we consider eigenCell analysis that effectively encapsulates the primary expression level patterns across the cell lines. However, earlier investigations utilizing eigenGenes and eigenCells analysis were based on linear combination of all features, leading to the disturbance from noise features. Moreover, the analysis based on a fully dense loading matrix makes it challenging to interpret the results of eigenCells analysis. In order to address these challenges, we develop a novel computational approach termed network-constrained eigenCells profile estimation, which employs a sparse learning strategy. The proposed method estimates eigenCell based on not only the lasso but also network constrained penalization. The use of the network-constrained penalization enables us to simultaneously select neighborhood genes. Furthermore, the hub genes and their regulator/target genes are easily selected as crucial markers for eigenCells estimation. That is, our method can incorporate insights from network biology into the process of sparse loading estimation. Through our methodology, we estimate sparse eigenCells profiles, where only critical markers exhibit expression levels. This allows us to identify the key markers associated with a specific phenotype. Monte Carlo simulations demonstrate the efficacy of our method in reconstructing the sparse structure of eigenCells profiles. We employed our approach to unveil the regulatory system of immunogenes in both young/aged-healthy and -AML cell lines. The markers we have identified for the age-related phenotype in both healthy and AML cell lines have garnered strong support from previous studies. Specifically, our findings, in conjunction with the existing literature, indicate that the activities within this subnetwork of CD79A could be pivotal in elucidating the mechanism driving AML progression, particularly noting the significant role played by the diminished activities in the CD79A subnetwork. We expect that the proposed method will be a useful tool for characterizing disease-related subsets of cell lines, encompassing phenotypes and clones.

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来源期刊
Journal of Computational Biology
Journal of Computational Biology 生物-计算机:跨学科应用
CiteScore
3.60
自引率
5.90%
发文量
113
审稿时长
6-12 weeks
期刊介绍: Journal of Computational Biology is the leading peer-reviewed journal in computational biology and bioinformatics, publishing in-depth statistical, mathematical, and computational analysis of methods, as well as their practical impact. Available only online, this is an essential journal for scientists and students who want to keep abreast of developments in bioinformatics. Journal of Computational Biology coverage includes: -Genomics -Mathematical modeling and simulation -Distributed and parallel biological computing -Designing biological databases -Pattern matching and pattern detection -Linking disparate databases and data -New tools for computational biology -Relational and object-oriented database technology for bioinformatics -Biological expert system design and use -Reasoning by analogy, hypothesis formation, and testing by machine -Management of biological databases
期刊最新文献
Adaptive Arithmetic Coding-Based Encoding Method Toward High-Density DNA Storage. The Statistics of Parametrized Syncmers in a Simple Mutation Process Without Spurious Matches. A Hybrid GNN Approach for Improved Molecular Property Prediction. From Policy to Prediction: Assessing Forecasting Accuracy in an Integrated Framework with Machine Learning and Disease Models. Network-Constrained Eigen-Single-Cell Profile Estimation for Uncovering Crucial Immunogene Regulatory Systems in Human Bone Marrow.
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