Repeated Decision Stumping Distils Simple Rules from Single-Cell Data.

IF 1.4 4区 生物学 Q4 BIOCHEMICAL RESEARCH METHODS Journal of Computational Biology Pub Date : 2024-01-01 Epub Date: 2024-01-04 DOI:10.1089/cmb.2021.0613
Ivan A Croydon-Veleslavov, Michael P H Stumpf
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Abstract

Single-cell data afford unprecedented insights into molecular processes. But the complexity and size of these data sets have proved challenging and given rise to a large armory of statistical and machine learning approaches. The majority of approaches focuses on either describing features of these data, or making predictions and classifying unlabeled samples. In this study, we introduce repeated decision stumping (ReDX) as a method to distill simple models from single-cell data. We develop decision trees of depth one-hence "stumps"-to identify in an inductive manner, gene products involved in driving cell fate transitions, and in applications to published data we are able to discover the key players involved in these processes in an unbiased manner without prior knowledge. Our algorithm is deliberately targeting the simplest possible candidate hypotheses that can be extracted from complex high-dimensional data. There are three reasons for this: (1) the predictions become straightforwardly testable hypotheses; (2) the identified candidates form the basis for further mechanistic model development, for example, for engineering and synthetic biology interventions; and (3) this approach complements existing descriptive modeling approaches and frameworks. The approach is computationally efficient, has remarkable predictive power, including in simulation studies where the ground truth is known, and yields robust and statistically stable predictors; the same set of candidates is generated by applying the algorithm to different subsamples of experimental data.

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从单细胞数据中提取简单规则的重复决策难题
单细胞数据提供了前所未有的分子过程洞察力。但事实证明,这些数据集的复杂性和规模具有挑战性,并催生了大量统计和机器学习方法。大多数方法都侧重于描述这些数据的特征,或对未标记的样本进行预测和分类。在这项研究中,我们引入了重复判定法(ReDX),作为一种从单细胞数据中提炼简单模型的方法。我们开发了深度为一的决策树--即 "树桩"--以归纳的方式识别参与驱动细胞命运转换的基因产物,在应用于已发表的数据时,我们能够在没有先验知识的情况下,以无偏见的方式发现参与这些过程的关键角色。我们的算法特意针对可以从复杂的高维数据中提取的最简单的候选假设。这样做有三个原因:(1) 预测成为可直接检验的假说;(2) 确定的候选假说为进一步的机理模型开发奠定了基础,例如用于工程和合成生物学干预;(3) 这种方法是对现有描述性建模方法和框架的补充。该方法计算效率高,预测能力强,包括在已知基本事实的模拟研究中,并能产生稳健且统计稳定的预测结果;将该算法应用于不同的实验数据子样本,可生成相同的候选集。
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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
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