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Some Mathematical Challenges from Life Sciences Part III Peter Schuster, Universität Wien Peter F.Stadler, Universität Leipzig Günter Wagner, Yale University, New Haven, CT Angela Stevens, Max-Planck-Institut für Mathematik in den Naturwissenschaften, Leipzig and Ivo L. Hofacker, Universität Wien Oberwolfach, GE, 16.-21.11.2003
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1.Mathematics and the life sciences in the 21 st century 2.Selection dynamics 3.RNA evolution in silico and optimization of structure and properties
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Definition of RNA structure
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Sequence space of binary sequences of chain lenght n=5
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Population and population support in sequence space: The master sequence
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Population and population support in sequence space: The quasi-species
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The increase in RNA production rate during a serial transfer experiment
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Mapping from sequence space into structure space and into function
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Folding of RNA sequences into secondary structures of minimal free energy, G 0 300 GGCGCGCCCGGCGCC GUAUCGAAAUACGUAGCGUAUGGGGAUGCUGGACGGUCCCAUCGGUACUCCA UGGUUACGCGUUGGGGUAACGAAGAUUCCGAGAGGAGUUUAGUGACUAGAGG
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The Hamming distance between structures in parentheses notation forms a metric in structure space
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Replication rate constant: f k = / [ + d S (k) ] d S (k) = d H (S k,S ) Evaluation of RNA secondary structures yields replication rate constants
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The flowreactor as a device for studies of evolution in vitro and in silico Replication rate constant: f k = / [ + d S (k) ] d S (k) = d H (S k,S ) Selection constraint: # RNA molecules is controlled by the flow
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The molecular quasispecies in sequence space
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Evolutionary dynamics including molecular phenotypes
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In silico optimization in the flow reactor: Trajectory (biologists‘ view)
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In silico optimization in the flow reactor: Trajectory (physicists‘ view)
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Movies of optimization trajectories over the AUGC and the GC alphabet AUGCGC
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Statistics of the lengths of trajectories from initial structure to target ( AUGC -sequences)
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Endconformation of optimization
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Reconstruction of the last step 43 44
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Reconstruction of last-but-one step 42 43 ( 44)
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Reconstruction of step 41 42 ( 43 44)
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Reconstruction of step 40 41 ( 42 43 44)
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Reconstruction of the relay series
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Change in RNA sequences during the final five relay steps 39 44 Transition inducing point mutationsNeutral point mutations
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In silico optimization in the flow reactor: Trajectory and relay steps
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Birth-and-death process with immigration
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Calculation of transition probabilities by means of a birth-and-death process with immigration
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Neutral genotype evolution during phenotypic stasis Neutral point mutationsTransition inducing point mutations 28 neutral point mutations during a long quasi-stationary epoch
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A random sequence of minor or continuous transitions in the relay series
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Probability of occurrence of different structures in the mutational neighborhood of tRNA phe Rare neighbors Main transitions Frequent neighbors Minor transitions
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In silico optimization in the flow reactor: Main transitions
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00 09 31 44 Three important steps in the formation of the tRNA clover leaf from a randomly chosen initial structure corresponding to three main transitions.
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Statistics of the numbers of transitions from initial structure to target ( AUGC -sequences)
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Statistics of trajectories and relay series (mean values of log-normal distributions)
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Transition probabilities determining the presence of phenotype S k (j) in the population
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The number of main transitions or evolutionary innovations is constant.
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Neutral genotype evolution during phenotypic stasis Neutral point mutationsTransition inducing point mutations 28 neutral point mutations during a long quasi-stationary epoch
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Variation in genotype space during optimization of phenotypes Mean Hamming distance within the population and drift velocity of the population center in sequence space.
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Spread of population in sequence space during a quasistationary epoch: t = 150
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Spread of population in sequence space during a quasistationary epoch: t = 170
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Spread of population in sequence space during a quasistationary epoch: t = 200
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Spread of population in sequence space during a quasistationary epoch: t = 350
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Spread of population in sequence space during a quasistationary epoch: t = 500
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Spread of population in sequence space during a quasistationary epoch: t = 650
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Spread of population in sequence space during a quasistationary epoch: t = 820
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Spread of population in sequence space during a quasistationary epoch: t = 825
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Spread of population in sequence space during a quasistationary epoch: t = 830
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Spread of population in sequence space during a quasistationary epoch: t = 835
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Spread of population in sequence space during a quasistationary epoch: t = 840
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Spread of population in sequence space during a quasistationary epoch: t = 845
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Spread of population in sequence space during a quasistationary epoch: t = 850
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Spread of population in sequence space during a quasistationary epoch: t = 855
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Mapping from sequence space into structure space and into function
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The pre-image of the structure S k in sequence space is the neutral network G k
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Neutral networks are sets of sequences forming the same structure. G k is the pre-image of the structure S k in sequence space: G k = -1 (S k ) {I j | (I j ) = S k } The set is converted into a graph by connecting all sequences of Hamming distance one. Neutral networks of small RNA molecules can be computed by exhaustive folding of complete sequence spaces, i.e. all RNA sequences of a given chain length. This number, N=4 n, becomes very large with increasing length, and is prohibitive for numerical computations. Neutral networks can be modelled by random graphs in sequence space. In this approach, nodes are inserted randomly into sequence space until the size of the pre-image, i.e. the number of neutral sequences, matches the neutral network to be studied.
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Mean degree of neutrality and connectivity of neutral networks GC,AU GUC,AUG AUGC
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A connected neutral network
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A multi-component neutral network
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Degree of neutrality of cloverleaf RNA secondary structures over different alphabets
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Reference for postulation and in silico verification of neutral networks
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The compatible set C k of a structure S k consists of all sequences which form S k as its minimum free energy structure (the neutral network G k ) or one of its suboptimal structures.
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The intersection of two compatible sets is always non empty: C 0 C 1
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Reference for the definition of the intersection and the proof of the intersection theorem
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A sequence at the intersection of two neutral networks is compatible with both structures
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Barrier tree for two long living structures
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A ribozyme switch E.A.Schultes, D.B.Bartel, Science 289 (2000), 448-452
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Two ribozymes of chain lengths n = 88 nucleotides: An artificial ligase (A) and a natural cleavage ribozyme of hepatitis- -virus (B)
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The sequence at the intersection: An RNA molecules which is 88 nucleotides long and can form both structures
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Two neutral walks through sequence space with conservation of structure and catalytic activity
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Examples of smooth landscapes on Earth Massif Central Mount Fuji
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Examples of rugged landscapes on Earth Dolomites Bryce Canyon
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Evolutionary optimization in absence of neutral paths in sequence space
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Evolutionary optimization including neutral paths in sequence space
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Example of a landscape on Earth with ‘neutral’ ridges and plateaus Grand Canyon
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Neutral ridges and plateus
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