用非线性分区模型监测卵巢卵泡群的整个生命周期动态。

IF 2.2 4区 数学 Q2 BIOLOGY
Guillaume Ballif, Frédérique Clément, Romain Yvinec
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引用次数: 0

摘要

在这项工作中,我们以常微分方程为基础,介绍了卵巢卵泡在整个生命周期中发育的分区模型。该模型预测了不同成熟阶段卵泡数量随年龄增长而发生的变化。卵泡要么向前移动到下一个分区(单向迁移),要么退化消失(死亡)。从第一个卵泡分区的迁移对应于静止卵泡的激活,这是卵泡储备逐渐耗尽(卵巢衰老)直至停止生殖活动的原因。该模型由一个数据驱动层和一个更全面的知识驱动层组成,知识驱动层涵盖了卵泡发育过程中最早发生的事件。数据驱动层是根据小鼠卵泡数量最密集的实验数据集设计的。它的显著特点是激活率的非线性表述,其表述包括来自生长卵泡的反馈项。以知识为基础的涂层层反映了关于出生前后卵泡发育起始阶段的前沿研究。其显著特点是两个不同胚胎起源的卵泡亚群同时存在。然后,我们建立了一套完整的估算策略,包括结构可识别性研究、将不同来源的数据(卵泡数量的初始数据集、扰动激活条件下的数据和区分亚群的数据)与适当的误差模型相结合的相关优化标准的制定,以及模型选择步骤。最后,我们说明了该模型在实验设计(建议有针对性地获取新数据)和硅学实验方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Nonlinear compartmental modeling to monitor ovarian follicle population dynamics on the whole lifespan.

Nonlinear compartmental modeling to monitor ovarian follicle population dynamics on the whole lifespan.

In this work, we introduce a compartmental model of ovarian follicle development all along lifespan, based on ordinary differential equations. The model predicts the changes in the follicle numbers in different maturation stages with aging. Ovarian follicles may either move forward to the next compartment (unidirectional migration) or degenerate and disappear (death). The migration from the first follicle compartment corresponds to the activation of quiescent follicles, which is responsible for the progressive exhaustion of the follicle reserve (ovarian aging) until cessation of reproductive activity. The model consists of a data-driven layer embedded into a more comprehensive, knowledge-driven layer encompassing the earliest events in follicle development. The data-driven layer is designed according to the most densely sampled experimental dataset available on follicle numbers in the mouse. Its salient feature is the nonlinear formulation of the activation rate, whose formulation includes a feedback term from growing follicles. The knowledge-based, coating layer accounts for cutting-edge studies on the initiation of follicle development around birth. Its salient feature is the co-existence of two follicle subpopulations of different embryonic origins. We then setup a complete estimation strategy, including the study of structural identifiability, the elaboration of a relevant optimization criterion combining different sources of data (the initial dataset on follicle numbers, together with data in conditions of perturbed activation, and data discriminating the subpopulations) with appropriate error models, and a model selection step. We finally illustrate the model potential for experimental design (suggestion of targeted new data acquisition) and in silico experiments.

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来源期刊
CiteScore
3.30
自引率
5.30%
发文量
120
审稿时长
6 months
期刊介绍: The Journal of Mathematical Biology focuses on mathematical biology - work that uses mathematical approaches to gain biological understanding or explain biological phenomena. Areas of biology covered include, but are not restricted to, cell biology, physiology, development, neurobiology, genetics and population genetics, population biology, ecology, behavioural biology, evolution, epidemiology, immunology, molecular biology, biofluids, DNA and protein structure and function. All mathematical approaches including computational and visualization approaches are appropriate.
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