进化创造了什么?学习活的血统和机器。

IF 13.6 2区 生物学 Q1 GENETICS & HEREDITY
Trends in Genetics Pub Date : 2025-06-01 Epub Date: 2025-06-10 DOI:10.1016/j.tig.2025.04.002
Benedikt Hartl, Michael Levin
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引用次数: 0

摘要

基因组信息是如何展开的,以产生具有解决问题能力的自我构建的生物体?我们回顾了最近在发育遗传学和机器学习(ML)方面的研究进展,以了解基因与性状的映射。我们强调进化和学习之间的深度对称性,这使得基因组成为生成模型的实例。基因型和表型之间的生理计算层提供了强大的可塑性和稳健性,而不仅仅是复杂性和间接映射,这强烈影响了个体和进化尺度的动力学。ML和神经科学的思想现在提供了一种通用的、定量的形式主义,用于理解进化学习了什么,以及发育和再生形态发生如何解释过去的深刻教训来解决新问题。这种对生物材料信息结构的新兴理解不仅会影响遗传学和进化发育生物学,还会影响再生医学和合成形态工程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
What does evolution make? Learning in living lineages and machines.

How does genomic information unfold, to give rise to self-constructing living organisms with problem-solving capacities at all levels of organization? We review recent progress that unifies work in developmental genetics and machine learning (ML) to understand mapping of genes to traits. We emphasize the deep symmetries between evolution and learning, which cast the genome as instantiating a generative model. The layer of physiological computations between genotype and phenotype provides a powerful degree of plasticity and robustness, not merely complexity and indirect mapping, which strongly impacts individual and evolutionary-scale dynamics. Ideas from ML and neuroscience now provide a versatile, quantitative formalism for understanding what evolution learns and how developmental and regenerative morphogenesis interpret the deep lessons of the past to solve new problems. This emerging understanding of the informational architecture of living material is poised to impact not only genetics and evolutionary developmental biology but also regenerative medicine and synthetic morphoengineering.

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来源期刊
Trends in Genetics
Trends in Genetics 生物-遗传学
CiteScore
20.90
自引率
0.90%
发文量
160
审稿时长
6-12 weeks
期刊介绍: Launched in 1985, Trends in Genetics swiftly established itself as a "must-read" for geneticists, offering concise, accessible articles covering a spectrum of topics from developmental biology to evolution. This reputation endures, making TiG a cherished resource in the genetic research community. While evolving with the field, the journal now embraces new areas like genomics, epigenetics, and computational genetics, alongside its continued coverage of traditional subjects such as transcriptional regulation, population genetics, and chromosome biology. Despite expanding its scope, the core objective of TiG remains steadfast: to furnish researchers and students with high-quality, innovative reviews, commentaries, and discussions, fostering an appreciation for advances in genetic research. Each issue of TiG presents lively and up-to-date Reviews and Opinions, alongside shorter articles like Science & Society and Spotlight pieces. Invited from leading researchers, Reviews objectively chronicle recent developments, Opinions provide a forum for debate and hypothesis, and shorter articles explore the intersection of genetics with science and policy, as well as emerging ideas in the field. All articles undergo rigorous peer-review.
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