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Biodiversity in the context of DEB theory

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1 Biodiversity in the context of DEB theory
This lectures assumed that chapters 1-4 of Kooy2010 are known Tromsø, 2017/05/11-06/02 deb.akvaplan.com/symposiuml.html

2 Contents Intro Add_my_Pet Co-variation of parameter values - Bergmann
- r-K spectra, body size-scaling, Kleiber, - supply-demand spectra - waste-to-hurry - acceleration - altricial-precocial spectra Patterns to be understood Outlook 3 items to discuss

3 Why AmP? Theory ↔ Applications (Jolyn’s talk)
theory is tool in natural sciences in societal context impove tool by use AmP ease applications DEB by examples database ready for applications checking consistency of data finding weird species identify patterns = ecology/evolution = use in parameter estimation (estimation in context)

4 Add_my_Pet Comparison on the basis of parameter values
2017/06/01

5 Scales of life Life span Volume 10log a 10log m3 earth life on earth
30 Life span 10log a Volume 10log m3 earth 20 life on earth 10 whale whale bacterium ATP molecule -10 bacterium -20 water molecule -30 volume-range in AmP 16 orders of magnitude

6 Bergmann 1847 Bergmann observed in 1847 that intra-taxon body weight increases towards to poles. DEB theory explains this by the increase in differences between the seasons, where growth is synchronised with the good season, so better food conditions during growth. Parameter values are individual-specific, with variation between individuals within a species. Body genotypic and phenotypic factors contribute to the setting of the parameters values as is recognised by quantitative genetics. Races can differ in parameter values and these differences are partly genetically fixed.

7 Dwarfing in Platyrrhini
Cebidae 130 g Saimiri g Saguinus g g g g g 3500 g Callimico Callitrix Evolutionary dwarfing occurred within the Cebidae where new groups splitted off of smaller body size and larger distance to center-Amazonia. Cebus, Saimiri and Aotus are relatively big and occur in center-Amazonia Saguinus, Leontopithecus and Callimico split off, are smaller and occur at the border of center Amazonia Callithrix, Mico and Cebuella followed, are even smaller and outside center Amazonia on the slopes of the Andes This dwarfing is supposed to be related to food availability. DEB theory suggests the same explanation for Bergmann’s rule that max body size in a taxon increases from the equator to the poles. Bergmann’s rule does not apply here, but DEB’s explanation does. Cebuella Leontopithecus MYA Mico Aotus 24.8 20.2 Perelman et al 2011 Plos Genetics 7, 3, e Cebus

8 r-K spectra MacArthur & Wilson 1967 d/dt N = r N (K – N)

9 Body size scaling Kooijman, J Theor Biol (1986) 121: 269-282 Quantity
Within Between Max ingestion rate 2/3 1 Max filtering rate Saturation constant 1/3 Max assim rate Min food density > 1/3 Min ingestion rate Max size Max storage Min storage 4/3 Starvation time -1/3 to 1/3 Quantity Within Between Abundance -1 to -2/3 -1 Max growth rate 2/3 Respiration rate 2/3 to 1 Birth, adult size 1 Juvenile period 1/3 Egg storage 4/3 Egg water loss Incubation time Reprod rate -2/3 to -1/3 Pop growth rate - Species can be ranked in the gradient r to K strategies. Kooijman, J Theor Biol (1986) 121:

10 Scaling of O2 consumption

11 Behind O2 scaling

12 Waste to hurry: increase [pM]
slope 1 max spec growth ulitmate length slope -1 slope 2 spec reprod investment

13 Acceleration sM

14 Supply-demand spectrum
Species can be ranked in the gradient from supply to demand systems as stages in the evolution toward a high level of homeostasis. Extreme supply or demand systems don’t exist, all species represent a mixture of these extremes. Plants come close to the supply-end of the spectrum and can adapt their metabolism to the local environment relatively well. Demand systems adapt their metabolism much less and compensate that by a high level of behavioural flexibility. The characterizing property of demand systems is that the use of resources (growth, reproduction) is `pre-programmed’, which causes a particular need for food and growth curves that are given functions of age.

15 Supply-demand spectrum
Lika et al 2014 J. Theor. Biol., 354:35-47 Supply-demand spectrum The constraint R_m > 0 can be translated into the constraint kap^2 (1 – kap) < s_s, from which follows that s_s < 4/27. Moreover kap must be between the two positive roots of kap^2 (1 – kap) – s_s = 0. The metric s_d = 4/27 – s_s can be called “demand stress”, and has the interpretation of the distance to the demand-end of the supply-demand spectrum. Most species are supply species, only vertebrates classify as demand species. A more detailed study on the 5 fish classes shows that bony fish are supply species. The open symbols indicate acceleration.

16 Supply-demand spectrum
The distance to the supply end of the supply-demand spectrum, s_s, is plotted against the minimum scaled functional response that is required to reach puberty, f_min. Contrary to s_s, f_min does depend on kappa. Only vertebrates populate the area under the curve s_s = f_min^3 4/27. Open symbols indicate acceleration. The value of kappa is indicated for birds (blue) and mammals (red) in the right picture. High kappa-values for birds are close the both axes (s_s = 0 and f_min – 1). High kappa-values for mammals are at low s_s and f_min. All evertebrates are in the lower-left corner of the picture.

17 Supply-demand spectrum
The small deviations from the surface ss (κ,epmin) = ep3 κ2 (1−κ) are caused by acceleration sM dependeng on food level

18 Altricial - Precocial spectra

19 Altriciality index animals birds mammals Birds stand out since they grow during a short period only, and get offspring long after reaching ultimate weight

20 Altriciality index The 2 altricity coefficients show little correlation, except for the tetrapods

21 that of the density altriciality index much less so
The scatter of the absolute altriciality index increases with max struc length, that of the density altriciality index much less so

22 Altriciality index, Actinopterygii
slope 4 slope 0 b slope -1 b slope 4 p p slope 0 slope 0

23 Maturity vs κ b p

24 Energy investment vs κ energy investment energy outvestment

25 Ultimate length vs κ Actinopterygii Mammalia

26 Ultimate length vs κ κ with random permutations of Actinopterygii
Mammalia κ with random permutations of , ,

27 Ultimate length vs [pM]


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