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From Gregor Mendel to Eric Davidson: Mathematical Models and Basic Principles in Biology

机译:从Gregor Mendel到Eric Davidson:生物学的数学模型和基本原则

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Mathematical models have been widespread in biology since its emergence as a modern experimental science in the 19th century. Focusing on models in developmental biology and heredity, this article (1) presents the properties and epistemological basis of pertinent mathematical models in biology from Mendel's model of heredity in the 19th century to Eric Davidson's model of developmental gene regulatory networks in the 21st; (2) shows that the models differ not only in their epistemologies but also in regard to explicitly or implicitly taking into account basic biological principles, in particular those of biological specificity (that became, in part, replaced by genetic information) and genetic causality. The article claims that models disregarding these principles did not impact the direction of biological research in a lasting way, although some of them, such as D'Arcy Thompson's models of biological form, were widely read and admired and others, such as Turing's models of development, stimulated research in other fields. Moreover, it suggests that successful models were not purely mathematical descriptions or simulations of biological phenomena but were based on inductive, as well as hypothetico-deductive, methodology. The recent availability of large amounts of sequencing data and new computational methodology tremendously facilitates system approaches and pattern recognition in many fields of research. Although these new technologies have given rise to claims that correlation is replacing experimentation and causal analysis, the article argues that the inductive and hypothetico-deductive experimental methodologies have remained fundamentally important as long as causal-mechanistic explanations of complex systems are pursued.
机译:自19世纪的现代实验科学以来,数学模型普遍存在生物学中。专注于发展生物学和遗传的模型,本文(1)介绍了19世纪孟德尔遗传模型的生物学中有效数学模型的性质和认识论,在21世纪埃里克戴维森的发展基因监管网络模型; (2)表明,该模型不仅在其认知层中不同,而且在明确或隐含地考虑到基本的生物学原理,特别是生物学特异性(其中部分,由遗传信息所取代)和遗传因果关系。本文声称,忽视这些原则的模特并没有以持久的方式影响生物学研究的方向,尽管其中一些,例如D'Arcy Thompson的生物形式的模型,被广泛读取和钦佩和其他人,如图灵的模型发展,刺激其他领域的研究。此外,它表明,成功的模型不是纯粹的数学描述或对生物现象的模拟,而是基于归纳,以及悬垂的方法。最近有大量测序数据和新的计算方法的可用性极大地促进了许多研究领域的系统方法和模式识别。虽然这些新技术引起了索赔,但相关性正在取代实验和因果分析,但该文章认为,只要追求复杂系统的因果机制解释,归纳和假障 - 演绎实验方法仍然是重要的重要性。

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