2022
DOI: 10.3390/e24010107
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Minimal Developmental Computation: A Causal Network Approach to Understand Morphogenetic Pattern Formation

Abstract: What information-processing strategies and general principles are sufficient to enable self-organized morphogenesis in embryogenesis and regeneration? We designed and analyzed a minimal model of self-scaling axial patterning consisting of a cellular network that develops activity patterns within implicitly set bounds. The properties of the cells are determined by internal ‘genetic’ networks with an architecture shared across all cells. We used machine-learning to identify models that enable this virtual mini-e… Show more

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Cited by 16 publications
(16 citation statements)
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“…In contrast, a cell defecting from the collective and reverting to a more unicellular lifestyle (Metastasis) should exhibit a less predictable, controllable network due to pressures from parasites and competitors that independent unicellular organisms face. Methods for calculating controllability (e.g., linearity) are an important addition to recent efforts to solve the conundrum of interpretability of information structures in contexts ranging from machine learning to evolutionary developmental biology [24,25,26].…”
Section: Resultsmentioning
confidence: 99%
“…In contrast, a cell defecting from the collective and reverting to a more unicellular lifestyle (Metastasis) should exhibit a less predictable, controllable network due to pressures from parasites and competitors that independent unicellular organisms face. Methods for calculating controllability (e.g., linearity) are an important addition to recent efforts to solve the conundrum of interpretability of information structures in contexts ranging from machine learning to evolutionary developmental biology [24,25,26].…”
Section: Resultsmentioning
confidence: 99%
“…Cells are, therefore, embedding, self-organizing chemical structures, such as microtubuli and other cytoskeletal elements, that now appear to be “written” by a software encompassing physical energies of an electromagnetic and mechanical nature. In this frame, we may refer to the genome, the proteome, and other omics (such as the kinome) as the hardware of our biological systems [ 89 , 90 ].…”
Section: An Ensemble Of Physical Energies Acting As the Control Softw...mentioning
confidence: 99%
“…Importantly, quite early attempts have already cast morphogenesis in terms of computation. One of the earliest explicit statements of this perspective comes from Wolpert and Lewis [ 45 ], p. 21, which attributes the following question to Sydney Brenner: “Is the adult (organism) computable from an egg?” This line of research has been expanded by, among others, Paulien Hogeweg (e.g., [ 46 ]), and more recently by Michael Levin and his collaborators (e.g., [ 47 ]), whose work is analyzed in more detail below. However, the computational nature of this process was already implicit in the reaction–diffusion system proposed by Turing, as it has been shown since that such systems can constitute analogue computers [ 48 ].…”
Section: Morphological Computation In Developmental and Regenerative ...mentioning
confidence: 99%
“…Levin and collaborators’ work (e.g., [ 47 , 51 , 52 , 53 ]) introduces a major shift in this regard. Although he states that his work on morphogenesis follows the tradition discussed in the previous paragraph, he does not merely use the computational language for explanation but rather claims that the processes of morphogenesis are literally computational and process information.…”
Section: Morphological Computation In Developmental and Regenerative ...mentioning
confidence: 99%
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