298 research outputs found
The Role of Phenotyping in the Personalised Management of OSA
Background: Obstructive sleep apnoea (OSA) is estimated to affect up to 1 billion people in the world. Those who fail first-line continuous positive airway pressure (CPAP) therapy have salvage treatment options available. Patient assessment can incorporate multidisciplinary teams to better select therapy. Traditional parameters that define OSA severity do not always correlate with symptoms of the disease. Newly identified pathophysiological “phenotypes” of airway vulnerability, low arousal threshold, loop gain and muscle responsiveness may explain the heterogeneity of OSA for up to two-thirds of patients. Little data exists on the effectiveness of phenotyping in a real-world clinical setting for patients undergoing contemporary management paradigms.
Aims and Hypothesis: To evaluate the prevalence of the four OSA phenotypic traits and explore the clinical validity of endotyping in predicting future treatment outcomes. It is expected that non-responders to treatment will have unfavourable non-anatomical phenotypes.
Design: An observational prospective cohort study of 49 patients referred after failure of CPAP for consideration of salvage therapy was conducted. Treatments included upper airway surgery (n = 17), mandibular advancement splint (n = 7), positional therapy (n = 7), weight loss (n = 4), nerve stimulation (n = 5) and combination therapy (n = 9). Treatment “success” was defined using polysomnographic parameters and patient-reported outcome measures of sleepiness and function. Phenotypic traits were analysed according to these outcomes.
Results: Nearly all surgical patients had unfavourable loop gain (LG1 \u3e 0.72), which improved after surgical treatment (p \u3c .05). Patients who had decreased sleepiness (Epworth Sleepiness Scale reduction ≥ 3, total score \u3c 10, p = .01) after any treatment had favourable traits of low loop gain, lower arousal threshold and lower muscle compensation. There may be a potential role for phenotyping in predicting expected outcomes from salvage treatment for OSA, although more prospective clinical data is required to further investigate its utility and relevance
A New Mechanism for Bubble Nucleation: Classical Transitions
Given a scalar field with metastable minima, bubbles nucleate quantum
mechanically. When bubbles collide, energy stored in the bubble walls is
converted into kinetic energy of the field. This kinetic energy can facilitate
the classical nucleation of new bubbles in minima that lie below those of the
"parent" bubbles. This process is efficient and classical, and changes the
dynamics and statistics of bubble formation in models with multiple vacua,
relative to that derived from quantum tunneling.Comment: 4 pages, 4 figures, animations related to figures can be found at
http://www.perimeterinstitute.ca/personal/jgiblin/BubbleMovies.htm
How to Run Through Walls: Dynamics of Bubble and Soliton Collisions
It has recently been shown in high resolution numerical simulations that
relativistic collisions of bubbles in the context of a multi-vacua potential
may lead to the creation of bubbles in a new vacuum. In this paper, we show
that scalar fields with only potential interactions behave like free fields
during high-speed collisions; the kick received by them in a collision can be
deduced simply by a linear superposition of the bubble wall profiles. This
process is equivalent to the scattering of solitons in 1+1 dimensions. We
deduce an expression for the field excursion (shortly after a collision), which
is related simply to the field difference between the parent and bubble vacua,
i.e. contrary to expectations, the excursion cannot be made arbitrarily large
by raising the collision energy. There is however a minimum energy threshold
for this excursion to be realized. We verify these predictions using a number
of 3+1 and 1+1 numerical simulations. A rich phenomenology follows from these
collision induced excursions - they provide a new mechanism for scanning the
landscape, they might end/begin inflation, and they might constitute our very
own big bang, leaving behind a potentially observable anisotropy.Comment: 15pgs, 14 figures, v2, thanks for the feedback
On Estimating the QSO Transmission Power Spectrum
We present new methods to minimize the systematic and random errors for
measuring the transmission power spectrum from the Lyman-alpha forest. Sources
of systematic errors explored include metal line contamination and
continuum-fitting. We advocate the technique of trend-removal in place of
traditional continuum-fitting -- here, a spectrum is normalized by its
(smoothly varying) mean rather than its continuum -- this method is easily
automated and removes biases introduced by continuum-fitting. Trend- removal
can be easily applied to spectra where continuum-fitting is difficult, such as
when the resolution or signal-to-noise is low, or for spectra at high
redshifts. Furthermore, a measurement of the continuum power spectrum using
trend-removal, from either low redshift quasar spectra or the red-side of
Lyman-alpha, allows in principle the removal of spurious power introduced by
the continuum and thereby expanding scales probed to larger ones. We also
derive expressions for the shot-noise bias and variance of the power spectrum
estimate, taking into account the non-Poissonian nature of the shot-noise and
the non-Gaussianity of the cosmic fluctuations. An appropriate minimum variance
weighting of the data is given. Finally, we give practical suggestions on
observing strategy: the desired resolution and S/N for different purposes, and
how to distribute one's finite observing time among quasar targets. Also
discussed is the quasar spectroscopic study of the Sloan Digital Sky Survey,
which has the potential to measure the power spectrum at z ~ 2-4 accurate to
better than 1 % per mode -- the techniques presented here will be useful for
tackling the anticipated issues of shot-noise and continuum contamination.Comment: 35 pages, 14 figures, submitted to Ap
Neurochemical correlates of autistic disorder: A review of the literature
Review of neurochemical investigations in autistic disorder revealed that a wide array of transmitter systems
have been studied, including serotonin, dopamine, norepinephrine, acetylcholine, oxytocin, endogenous
opioids, cortisol, glutamate, and gamma-aminobutyric acid (GABA). These studies have been complicated
by the fact that autism is a very heterogeneous disorder which often presents with comorbid behavioral
problems. In addition, many of these studies employed very small samples and inappropriate control groups,
making it difficult to draw conclusions with confidence. Overall, serotonin appears to have the most empirical
evidence for a role in autism, but this requires further investigation and replication. There is little support for
the notion that a dysfunction of norepinephrine or the endogenous opioids are related to autism. The role of
dopaminergic functioning has not been compelling thus far, though conflicting findings on central dopamine
turnover require further study. Promising new areas of study may include possible dysfunction of the
cholinergic system, oxytocin, and amino acid neurotransmitters. Implications for pharmacotherapy are
briefly discussed for each neurotransmitter system with brief research examples. Review of this work
emphasizes the need for future studies to control for subject variables, such as race, sex, pubertal status, and
distress associated with blood draws, which can affect measures of neurochemical function. In addition,
research in neurochemistry must continue to work in concert with other subspecialties to form a more
comprehensive and theory-based approach to the neurobiological correlates of autistic disorder
Neurochemical correlates of autistic disorder: A review of the literature
Review of neurochemical investigations in autistic disorder revealed that a wide array of transmitter systems have been studied, including serotonin, dopamine, norepinephrine, acetylcholine, oxytocin, endogenous opioids, cortisol, glutamate, and gamma-aminobutyric acid (GABA). These studies have been complicated by the fact that autism is a very heterogeneous disorder which often presents with comorbid behavioral problems. In addition, many of these studies employed very small samples and inappropriate control groups, making it difficult to draw conclusions with confidence. Overall, serotonin appears to have the most empirical evidence for a role in autism, but this requires further investigation and replication. There is little support for the notion that a dysfunction of norepinephrine or the endogenous opioids are related to autism. The role of dopaminergic functioning has not been compelling thus far, though conflicting findings on central dopamine turnover require further study. Promising new areas of study may include possible dysfunction of the cholinergic system, oxytocin, and amino acid neurotransmitters. Implications for pharmacotherapy are briefly discussed for each neurotransmitter system with brief research examples. Review of this work emphasizes the need for future studies to control for subject variables, such as race, sex, pubertal status, and distress associated with blood draws, which can affect measures of neurochemical function. In addition, research in neurochemistry must continue to work in concert with other subspecialties to form a more comprehensive and theory-based approach to the neurobiological correlates of autistic disorder
Modeling long-range cross-correlations in two-component ARFIMA and FIARCH processes
We investigate how simultaneously recorded long-range power-law correlated
multi-variate signals cross-correlate. To this end we introduce a two-component
ARFIMA stochastic process and a two-component FIARCH process to generate
coupled fractal signals with long-range power-law correlations which are at the
same time long-range cross-correlated. We study how the degree of
cross-correlations between these signals depends on the scaling exponents
characterizing the fractal correlations in each signal and on the coupling
between the signals. Our findings have relevance when studying parallel outputs
of multiple-component of physical, physiological and social systems.Comment: 8 pages, 5 figures, elsart.cl
Chembench: A Publicly Accessible, Integrated Cheminformatics Portal
The enormous increase in the amount of publicly available chemical genomics data and the growing emphasis on data sharing and open science mandates that cheminformaticians also make their models publicly available for broad use by the scientific community. Chembench is one of the first publicly accessible, integrated cheminformatics Web portals. It has been extensively used by researchers from different fields for curation, visualization, analysis, and modeling of chemogenomics data. Since its launch in 2008, Chembench has been accessed more than 1 million times by more than 5000 users from a total of 98 countries. We report on the recent updates and improvements that increase the simplicity of use, computational efficiency, accuracy, and accessibility of a broad range of tools and services for computer-assisted drug design and computational toxicology available on Chembench. Chembench remains freely accessible at https://chembench.mml.unc.ed
Genome maps across 26 human populations reveal population-specific patterns of structural variation.
Large structural variants (SVs) in the human genome are difficult to detect and study by conventional sequencing technologies. With long-range genome analysis platforms, such as optical mapping, one can identify large SVs (>2 kb) across the genome in one experiment. Analyzing optical genome maps of 154 individuals from the 26 populations sequenced in the 1000 Genomes Project, we find that phylogenetic population patterns of large SVs are similar to those of single nucleotide variations in 86% of the human genome, while ~2% of the genome has high structural complexity. We are able to characterize SVs in many intractable regions of the genome, including segmental duplications and subtelomeric, pericentromeric, and acrocentric areas. In addition, we discover ~60 Mb of non-redundant genome content missing in the reference genome sequence assembly. Our results highlight the need for a comprehensive set of alternate haplotypes from different populations to represent SV patterns in the genome
- …