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From cells to organism - how natural selection causes metabolic scaling

Pelz, P. F.

2025-07-30 physiology
10.1101/2025.07.24.666547 bioRxiv
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The cell is the power station of life. Surprisingly, to date there is still no metabolic scaling theory that links cellular respiration to organismal metabolism and predicts the mouse-to-elephant curve, also known as Kleibers law, in an approach that is consistent with physicochemical principles. This paper shows that for a consistent model, the novel concept of the optimised Metabolic Module (MM) is the missing link between cell and organism. It is shown how evolutionary selection under resource scarcity optimises the MM towards (a) lightweight design and (b) resource efficiency. Thus, Darwins evolution by natural selection is simulated by model-based optimisation. The final general model presented is complete (for the entire mass range of the organism of different taxonomic classes), concise (it uses only five scale-invariant physicochemical constants), clear (it predicts all metabolic rates within the uncertainty range of a scale model observed in measurements) and consistent with Murrays law of capillary blood flow and cell metabolism. The model features observed asymptotes for both small protists and large endotherms. It predicts the mass-dependent metabolic rate of protists, planarians, ectotherms and endotherms with the usual uncertainty of any scaling theory. It finally turns out that Kleibers law is an asymptote of the derived general model, namely for the case of diffusion-limited cell metabolism.

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