193 research outputs found
Fundamentally different strategies for transcriptional regulation are revealed by analysis of binding motifs
To regulate a particular gene, a transcription factor (TF) needs to bind a specific genome location. How is this genome address specified amid the presence of ~10^6^-10^9^ decoy sites? Our analysis of 319 known TF binding motifs clearly demonstrates that prokaryotes and eukaryotes use strikingly different strategies to target TFs to specific genome locations; eukaryotic TFs exhibit widespread nonfunctional binding and require clustering of sites in regulatory regions for specificity
An optimized energy potential can predict SH2 domain-peptide interactions
Peptide recognition modules (PRMs) are used throughout biology to mediate protein-protein interactions, and many PRMs are members of large protein domain families. Members of these families are often quite similar to each other, but each domain recognizes a distinct set of peptides, raising the question of how peptide recognition specificity is achieved using similar protein domains. The analysis of individual protein complex structures often gives answers that are not easily applicable to other members of the same PRM family. Bioinformatics-based approaches, one the other hand, may be difficult to interpret physically. Here we integrate structural information with a large, quantitative data set of SH2-peptide interactions to study the physical origin of domain-peptide specificity. We develop an energy model, inspired by protein folding, based on interactions between the amino acid positions in the domain and peptide. We use this model to successfully predict which SH2 domains and peptides interact and uncover the positions in each that are important for specificity. The energy model is general enough that it can be applied to other members of the SH2 family or to new peptides, and the cross-validation results suggest that these energy calculations will be useful for predicting binding interactions. It can also be adapted to study other PRM families, predict optimal peptides for a given SH2 domain, or study other biological interactions, e.g. protein-DNA interactions
A tug-of-war between driver and passenger mutations in cancer and other adaptive processes
Cancer progression is an example of a rapid adaptive process where evolving
new traits is essential for survival and requires a high mutation rate.
Precancerous cells acquire a few key mutations that drive rapid population
growth and carcinogenesis. Cancer genomics demonstrates that these few 'driver'
mutations occur alongside thousands of random 'passenger' mutations-a natural
consequence of cancer's elevated mutation rate. Some passengers can be
deleterious to cancer cells, yet have been largely ignored in cancer research.
In population genetics, however, the accumulation of mildly deleterious
mutations has been shown to cause population meltdown. Here we develop a
stochastic population model where beneficial drivers engage in a tug-of-war
with frequent mildly deleterious passengers. These passengers present a barrier
to cancer progression that is described by a critical population size, below
which most lesions fail to progress, and a critical mutation rate, above which
cancers meltdown. We find support for the model in cancer age-incidence and
cancer genomics data that also allow us to estimate the fitness advantage of
drivers and fitness costs of passengers. We identify two regimes of adaptive
evolutionary dynamics and use these regimes to rationalize successes and
failures of different treatment strategies. We find that a tumor's load of
deleterious passengers can explain previously paradoxical treatment outcomes
and suggest that it could potentially serve as a biomarker of response to
mutagenic therapies. Collective deleterious effect of passengers is currently
an unexploited therapeutic target. We discuss how their effects might be
exacerbated by both current and future therapies
The long reach of DNA sequence heterogeneity in diffusive processes
Many biological processes involve one dimensional diffusion over a correlated
inhomogeneous energy landscape with a correlation length . Typical
examples are specific protein target location on DNA, nucleosome repositioning,
or DNA translocation through a nanopore, in all cases with 10
nm. We investigate such transport processes by the mean first passage time
(MFPT) formalism, and find diffusion times which exhibit strong sample to
sample fluctuations. For a a displacement , the average MFPT is diffusive,
while its standard deviation over the ensemble of energy profiles scales as
with a large prefactor. Fluctuations are thus dominant for
displacements smaller than a characteristic : typical values are
much less than the mean, and governed by an anomalous diffusion rule. Potential
biological consequences of such random walks, composed of rapid scans in the
vicinity of favorable energy valleys and occasional jumps to further valleys,
is discussed
Effects of topological constraints on globular polymers
Topological constraints can affect both equilibrium and dynamic properties of
polymer systems, and can play a role in the organization of chromosomes.
Despite many theoretical studies, the effects of topological constraints on the
equilibrium state of a single compact polymer have not been systematically
studied. Here we use simulations to address this longstanding problem. We find
that sufficiently long unknotted polymers differ from knotted ones in the
spatial and topological states of their subchains. The unknotted globule has
subchains that are mostly unknotted and form asymptotically compact crumples. However, crumples display high fractal dimension of the
surface , forming excessive contacts and interpenetrating each
other. We conclude that this topologically constrained equilibrium state
resembles a conjectured crumpled globule [Grosberg et al., Journal de Physique,
1988, 49, 2095], but differs from its idealized hierarchy of self-similar,
isolated and compact crumples
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Using Topology of the Metabolic Network to Predict Viability of Mutant Strains
Background: Understanding the relationships between the structure (topology) and function of biological networks is a central question of systems biology. The idea that topology is a major determinant of systems function has become an attractive and highly-disputed hypothesis. While the structural analysis of interaction networks demonstrates a correlation between the topological properties of a node (protein, gene) in the network and its functional essentiality, the analysis of metabolic networks fails to find such correlations. In contrast, approaches utilizing both the topology and biochemical parameters of metabolic networks, e.g. flux balance analysis (FBA), are more successful in predicting phenotypes of knock-out strains. Results: We reconcile these seemingly conflicting results by showing that the topology of E. coli's metabolic network is, in fact, sufficient to predict the viability of knock-out strains with accuracy comparable to FBA on a large, unbiased dataset of mutants. This surprising result is obtained by introducing a novel topology-based measure of network transport: synthetic accessibility. We also show that other popular topology-based characteristics like node degree, graph diameter, and node usage (betweenness) fail to predict the viability of mutant strains. The success of synthetic accessibility demonstrates its ability to capture the essential properties of the metabolic network, such as the branching of chemical reactions and the directed transport of material from inputs to outputs. Conclusions: Our results (1) strongly support a link between the topology and function of biological networks; (2) in agreement with recent genetic studies, emphasize the minimal role of flux re-routing in providing robustness of mutant strains
The 3D Genome as Moderator of Chromosomal Communication
Proper expression of genes requires communication with their regulatory elements that can be located elsewhere along the chromosome. The physics of chromatin fibers imposes a range of constraints on such communication. The molecular and biophysical mechanisms by which chromosomal communication is established, or prevented, have become a topic of intense study, and important roles for the spatial organization of chromosomes are being discovered. Here we present a view of the interphase 3D genome characterized by extensive physical compartmentalization and insulation on the one hand and facilitated long-range interactions on the other. We propose the existence of topological machines dedicated to set up and to exploit a 3D genome organization to both promote and censor communication along and between chromosomes.National Human Genome Research Institute (U.S.) (Grant R01 HG003143)National Human Genome Research Institute (U.S.) (Grant U54 HG007010)National Human Genome Research Institute (U.S.) (Grant U01 HG007910)National Cancer Institute (U.S.) (Grant U54 CA193419)National Institutes of Health (U.S.) (Grant U54 DK107980)National Institutes of Health (U.S.) (Grant U01 DA 040588)National Institute of General Medical Sciences (U.S.) (Grant R01 GM 112720)National Institute of Allergy and Infectious Diseases (U.S.) (Grant U01 R01 AI 117839
Higher-order chromatin structure: bridging physics and biology
Advances in microscopy and genomic techniques have provided new insight into spatial chromatin organization inside of the nucleus. In particular, chromosome conformation capture data has highlighted the relevance of polymer physics for high-order chromatin organization. In this context, we review basic polymer states, discuss how an appropriate polymer model can be determined from experimental data, and examine the success and limitations of various polymer models of higher-order interphase chromatin organization. By taking into account topological constraints acting on the chromatin fiber, recently developed polymer models of interphase chromatin can reproduce the observed scaling of distances between genomic loci, chromosomal territories, and probabilities of contacts between loci measured by chromosome conformation capture methods. Polymer models provide a framework for the interpretation of experimental data as ensembles of conformations rather than collections of loops, and will be crucial for untangling functional implications of chromosomal organization.National Cancer Institute (U.S.). Physical Sciences-Oncology Center (MIT, (U54CA143874)
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