使用机器学习方法在有噪声的细胞内网络中建模和测量影响决策的信号结果。

IF 1.5 4区 生物学 Q4 CELL BIOLOGY Integrative Biology Pub Date : 2020-05-21 DOI:10.1093/intbio/zyaa009
Mustafa Ozen, Tomasz Lipniacki, Andre Levchenko, Effat S Emamian, Ali Abdi
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引用次数: 4

摘要

表征细胞响应接收信号的决策对于理解细胞命运是如何决定的很重要。当我们考虑到细胞的异质性和生化过程的动力学时,问题变得多方面和复杂。在本文中,我们提出了一套统一的决策理论,机器学习和统计信号处理方法和度量来模拟信号决策的精度,在存在不确定性的情况下,使用单细胞数据。首先,我们引入可能由信号处理导致的错误决策,并识别与此类决策相关的假警报和错过事件。在此基础上,提出了一种使总决策错误概率最小的最优决策策略。此外,我们还演示了绘制接收器工作特性曲线如何方便地揭示与不同细胞反应相关的假警报和错过概率之间的权衡。此外,我们扩展了引入的框架,采用多时间点测量和多维结果分析和决策算法,将细胞中生化过程和反应的动力学纳入其中。引入的多变量信号结果建模框架可用于分析在同一或不同时刻测量的多个分子物种。我们还展示了开发的二元结果分析和决策方法如何扩展到两个以上的可能结果。作为一个例子,为了展示所介绍的方法如何在实践中使用,我们将它们应用于野生型和异常细胞中PTEN的单细胞数据,PTEN是p53系统中重要的细胞内调节分子。这里提出的统一信号结果建模框架可以应用于各种生物,从病毒、细菌、酵母和低级后生动物到更复杂的生物,如哺乳动物细胞。最终,这种信号结果建模方法可以用来更好地理解从生理到病理的转变,如炎症、各种癌症和自身免疫性疾病。
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Modeling and measurement of signaling outcomes affecting decision making in noisy intracellular networks using machine learning methods.

Characterization of decision-making in cells in response to received signals is of importance for understanding how cell fate is determined. The problem becomes multi-faceted and complex when we consider cellular heterogeneity and dynamics of biochemical processes. In this paper, we present a unified set of decision-theoretic, machine learning and statistical signal processing methods and metrics to model the precision of signaling decisions, in the presence of uncertainty, using single cell data. First, we introduce erroneous decisions that may result from signaling processes and identify false alarms and miss events associated with such decisions. Then, we present an optimal decision strategy which minimizes the total decision error probability. Additionally, we demonstrate how graphing receiver operating characteristic curves conveniently reveals the trade-off between false alarm and miss probabilities associated with different cell responses. Furthermore, we extend the introduced framework to incorporate the dynamics of biochemical processes and reactions in a cell, using multi-time point measurements and multi-dimensional outcome analysis and decision-making algorithms. The introduced multivariate signaling outcome modeling framework can be used to analyze several molecular species measured at the same or different time instants. We also show how the developed binary outcome analysis and decision-making approach can be extended to more than two possible outcomes. As an example and to show how the introduced methods can be used in practice, we apply them to single cell data of PTEN, an important intracellular regulatory molecule in a p53 system, in wild-type and abnormal cells. The unified signaling outcome modeling framework presented here can be applied to various organisms ranging from viruses, bacteria, yeast and lower metazoans to more complex organisms such as mammalian cells. Ultimately, this signaling outcome modeling approach can be utilized to better understand the transition from physiological to pathological conditions such as inflammation, various cancers and autoimmune diseases.

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来源期刊
Integrative Biology
Integrative Biology 生物-细胞生物学
CiteScore
4.90
自引率
0.00%
发文量
15
审稿时长
1 months
期刊介绍: Integrative Biology publishes original biological research based on innovative experimental and theoretical methodologies that answer biological questions. The journal is multi- and inter-disciplinary, calling upon expertise and technologies from the physical sciences, engineering, computation, imaging, and mathematics to address critical questions in biological systems. Research using experimental or computational quantitative technologies to characterise biological systems at the molecular, cellular, tissue and population levels is welcomed. Of particular interest are submissions contributing to quantitative understanding of how component properties at one level in the dimensional scale (nano to micro) determine system behaviour at a higher level of complexity. Studies of synthetic systems, whether used to elucidate fundamental principles of biological function or as the basis for novel applications are also of interest.
期刊最新文献
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