25,831 research outputs found
5-hydroxymethylcytosine is a key epigenetic regulator of keratinocyte stem cells during psoriasis pathogenesis
Epigenetic regulation is now known to play an important role in determining stem cell fate during normal tissue development and disease pathogenesis. In this study, we report loss of 5-hydroxymethylcytosine (5-hmC) mediated by ten-eleven translocation (TET) methylcytosine dioxygenases in keratinocyte stem cells (KSCs) and in their progenitor transit-amplifying (TA) cells of psoriatic lesions. We establish the DNA hydroxymethylation profile in both human psoriasis as well as in the imiquimod (IMQ)-induced mouse psoriasis model. Genome-wide mapping of 5-hmC in IMQ-treated mice epithelium revealed a loci-specific reduction of 5-hmC in genes associated with maintaining stem cell homeostasis including those involved in the RAR and Wnt/Ξ²-catenin signaling pathways. Restoration of TET expression in human KSC cultures via vitamin C treatment increased 5-hmC levels and induced more normal KSC differentiation. We found that by modulating 5-hmC levels in vitro, we could alter downstream expression of genes important in regulating stem cell homeostasis like nestin as well as IL-17R known to promote the psoriatic phenotype. Our findings demonstrate that loss of 5-hmC is a critical epigenomic phenomenon in KSCs and TA cells during psoriasis pathogenesis.2019-12-17T00:00:00
On the Convergence of Decentralized Gradient Descent
Consider the consensus problem of minimizing where
each is only known to one individual agent out of a connected network
of agents. All the agents shall collaboratively solve this problem and
obtain the solution subject to data exchanges restricted to between neighboring
agents. Such algorithms avoid the need of a fusion center, offer better network
load balance, and improve data privacy. We study the decentralized gradient
descent method in which each agent updates its variable , which is
a local approximate to the unknown variable , by combining the average of
its neighbors' with the negative gradient step .
The iteration is where the averaging coefficients form a symmetric doubly stochastic matrix
. We analyze the convergence of this
iteration and derive its converge rate, assuming that each is proper
closed convex and lower bounded, is Lipschitz continuous with
constant , and stepsize is fixed. Provided that where , the objective error at the averaged
solution, , reduces at a speed of
until it reaches . If are further (restricted) strongly
convex, then both and each converge
to the global minimizer at a linear rate until reaching an
-neighborhood of . We also develop an iteration for
decentralized basis pursuit and establish its linear convergence to an
-neighborhood of the true unknown sparse signal
Stationary Distributions for Retarded Stochastic Differential Equations without Dissipativity
Retarded stochastic differential equations (SDEs) constitute a large
collection of systems arising in various real-life applications. Most of the
existing results make crucial use of dissipative conditions. Dealing with "pure
delay" systems in which both the drift and the diffusion coefficients depend
only on the arguments with delays, the existing results become not applicable.
This work uses a variation-of-constants formula to overcome the difficulties
due to the lack of the information at the current time. This paper establishes
existence and uniqueness of stationary distributions for retarded SDEs that
need not satisfy dissipative conditions. The retarded SDEs considered in this
paper also cover SDEs of neutral type and SDEs driven by L\'{e}vy processes
that might not admit finite second moments.Comment: page 2
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