63 research outputs found
Thermodynamics and Kinetics of Folding of a Small Peptide
We study the thermodynamics and kinetics of folding for a small peptide. Our
data rely on Monte Carlo simulations where the interactions among all atoms are
taken into account. Monte Carlo kinetics is used to study folding of the
peptide at suitable temperatures. The results of these canonical simulations
are compared with that of a generalized-ensemble simulation. Our work
demonstrates that concepts of folding which were developed in the past for
minimalist models hold also for this peptide when simulated with an all-atom
force field
Molecular implementation of molecular shift register memories
An electronic shift register memory (20) at the molecular level is described. The memory elements are based on a chain of electron transfer molecules (22) and the information is shifted by photoinduced (26) electron transfer reactions. Thus, multi-step sequences of charge transfer reactions are used to move charge with high efficiency down a molecular chain. The device integrates compositions of the invention onto a VLSI substrate (36), providing an example of a molecular electronic device which may be fabricated. Three energy level schemes, molecular implementation of these schemes, optical excitation strategies, charge amplification strategies, and error correction strategies are described
Quantifying cancer epithelial-mesenchymal plasticity and its association with stemness and immune response
Cancer cells can acquire a spectrum of stable hybrid epithelial/mesenchymal
(E/M) states during epithelial-mesenchymal transition (EMT). Cells in these
hybrid E/M phenotypes often combine epithelial and mesenchymal features and
tend to migrate collectively commonly as small clusters. Such collectively
migrating cancer cells play a pivotal role in seeding metastases and their
presence in cancer patients indicates an adverse prognostic factor. Moreover,
cancer cells in hybrid E/M phenotypes tend to be more associated with stemness
which endows them with tumor-initiation ability and therapy resistance. Most
recently, cells undergoing EMT have been shown to promote immune suppression
for better survival. A systematic understanding of the emergence of hybrid E/M
phenotypes and the connection of EMT with stemness and immune suppression would
contribute to more effective therapeutic strategies. In this review, we first
discuss recent efforts combining theoretical and experimental approaches to
elucidate mechanisms underlying EMT multi-stability (i.e. the existence of
multiple stable phenotypes during EMT) and the properties of hybrid E/M
phenotypes. Following we discuss non-cell-autonomous regulation of EMT by cell
cooperation and extracellular matrix. Afterwards, we discuss various metrics
that can be used to quantify EMT spectrum. We further describe possible
mechanisms underlying the formation of clusters of circulating tumor cells.
Last but not least, we summarize recent systems biology analysis of the role of
EMT in the acquisition of stemness and immune suppression.Comment: 50 pages, 6 figure
Decoding the mechanisms underlying cell-fate decision-making during stem cell differentiation by random circuit perturbation.
Stem cells can precisely and robustly undergo cellular differentiation and lineage commitment, referred to as stemness. However, how the gene network underlying stemness regulation reliably specifies cell fates is not well understood. To address this question, we applied a recently developed computational method, random circuit perturbation (RACIPE), to a nine-component gene regulatory network (GRN) governing stemness, from which we identified robust gene states. Among them, four out of the five most probable gene states exhibit gene expression patterns observed in single mouse embryonic cells at 32-cell and 64-cell stages. These gene states can be robustly predicted by the stemness GRN but not by randomized versions of the stemness GRN. Strikingly, we found a hierarchical structure of the GRN with the Oct4/Cdx2 motif functioning as the first decision-making module followed by Gata6/Nanog. We propose that stem cell populations, instead of being viewed as all having a specific cellular state, can be regarded as a heterogeneous mixture including cells in various states. Upon perturbations by external signals, stem cells lose the capacity to access certain cellular states, thereby becoming differentiated. The new gene states and key parameters regulating transitions among gene states proposed by RACIPE can be used to guide experimental strategies to better understand differentiation and design reprogramming. The findings demonstrate that the functions of the stemness GRN is mainly determined by its well-evolved network topology rather than by detailed kinetic parameters
Direct-coupling analysis of residue co-evolution captures native contacts across many protein families
The similarity in the three-dimensional structures of homologous proteins
imposes strong constraints on their sequence variability. It has long been
suggested that the resulting correlations among amino acid compositions at
different sequence positions can be exploited to infer spatial contacts within
the tertiary protein structure. Crucial to this inference is the ability to
disentangle direct and indirect correlations, as accomplished by the recently
introduced Direct Coupling Analysis (DCA) (Weigt et al. (2009) Proc Natl Acad
Sci 106:67). Here we develop a computationally efficient implementation of DCA,
which allows us to evaluate the accuracy of contact prediction by DCA for a
large number of protein domains, based purely on sequence information. DCA is
shown to yield a large number of correctly predicted contacts, recapitulating
the global structure of the contact map for the majority of the protein domains
examined. Furthermore, our analysis captures clear signals beyond intra- domain
residue contacts, arising, e.g., from alternative protein conformations,
ligand- mediated residue couplings, and inter-domain interactions in protein
oligomers. Our findings suggest that contacts predicted by DCA can be used as a
reliable guide to facilitate computational predictions of alternative protein
conformations, protein complex formation, and even the de novo prediction of
protein domain structures, provided the existence of a large number of
homologous sequences which are being rapidly made available due to advances in
genome sequencing.Comment: 28 pages, 7 figures, to appear in PNA
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