153 research outputs found
Critical Spectral Statistics at the Metal-Insulator Transition in Interacting Fermionic Systems
The spectral properties of a disordered system with few interacting
three-dimensional spinless fermions are investigated. We show the existence of
a critical spacings distribution which is invariant upon increase of the system
size, but strongly depends on the number of particles. At the critical point,
we report a substantial decrease of the degree of level repulsion as the number
of particles increases indicating a decrease of nearest level correlations
associated with the sparsity of the Hamiltonian matrix.Comment: Revtex, 4 pages, 3 encapsulated postscript figures appended Final
version as accepted for publication in PR
Bright Variable Stars in NGC 6819 - An Open Cluster in the Kepler Field
We describe a variability study of the moderately old open cluster NGC 6819.
We have detected 4 new detached eclipsing binaries near the cluster turnoff
(one of which may be in a triple system). Several of these systems should be
able to provide mass and radius information, and can therefore constrain the
age of the cluster. We have also newly detected one possible detached binary
member about 3.5 magnitudes below the turnoff. One EW-type binary (probably not
a cluster member) shows unusually strong night-to-night light curve variations
in sets of observations separated by 8 years. According to the best current
information, the three brightest variables we detected (2 of them new) are
cluster members, making them blue stragglers. One is a delta Scu pulsating
variable, one is a close but detached binary, and the third contains a detached
short period binary that shows total eclipses. In each case, however, there is
evidence hinting that the system may have been produced through the interaction
of more than two stars.Comment: 33 pages, 15 figures, accepted to A
Do interactions increase or reduce the conductance of disordered electrons? It depends!
We investigate the influence of electron-electron interactions on the
conductance of two-dimensional disordered spinless electrons. By using an
efficient numerical method which is based on exact diagonalization in a
truncated basis of Hartree-Fock states we are able to determine the exact
low-energy properties of comparatively large systems in the diffusive as well
as in the localized regimes. We find that weak interactions increase the d.c.
conductance in the localized regime while they decrease the d.c. conductance in
the diffusive regime. Strong interactions always decrease the conductance. We
also study the localization of single-particle excitations close to the Fermi
energy which turns out to be only weakly influenced by the interactions.Comment: final version as publsihed, 4 pages REVTEX, 6 EPS figures include
Magnetic Field Effect for Two Electrons in a Two Dimensional Random Potential
We study the problem of two particles with Coulomb repulsion in a
two-dimensional disordered potential in the presence of a magnetic field. For
the regime, when without interaction all states are well localized, it is shown
that above a critical excitation energy electron pairs become delocalized by
interaction. The transition between the localized and delocalized regimes goes
in the same way as the metal-insulator transition at the mobility edge in the
three dimensional Anderson model with broken time reversal symmetry.Comment: revtex, 7 pages, 6 figure
Non-ergodic effects in the Coulomb glass: specific heat
We present a numerical method for the investigation of non-ergodic effects in
the Coulomb glass. For that, an almost complete set of low-energy many-particle
states is obtained by a new algorithm. The dynamics of the sample is mapped to
the graph formed by the relevant transitions between these states, that means
by transitions with rates larger than the inverse of the duration of the
measurement. The formation of isolated clusters in the graph indicates
non-ergodicity. We analyze the connectivity of this graph in dependence on
temperature, duration of measurement, degree of disorder, and dimensionality,
studying how non-ergodicity is reflected in the specific heat.Comment: Submited Phys. Rev.
Coccidioidomycosis Incidence in Arizona Predicted by Seasonal Precipitation
The environmental mechanisms that determine the inter-annual and seasonal variability in incidence of coccidioidomycosis are unclear. In this study, we use Arizona coccidioidomycosis case data for 1995–2006 to generate a timeseries of monthly estimates of exposure rates in Maricopa County, AZ and Pima County, AZ. We reveal a seasonal autocorrelation structure for exposure rates in both Maricopa County and Pima County which indicates that exposure rates are strongly related from the fall to the spring. An abrupt end to this autocorrelation relationship occurs near the the onset of the summer precipitation season and increasing exposure rates related to the subsequent season. The identification of the autocorrelation structure enabled us to construct a “primary” exposure season that spans August-March and a “secondary” season that spans April–June which are then used in subsequent analyses. We show that October–December precipitation is positively associated with rates of exposure for the primary exposure season in both Maricopa County (R = 0.72, p = 0.012) and Pima County (R = 0.69, p = 0.019). In addition, exposure rates during the primary exposure seasons are negatively associated with concurrent precipitation in Maricopa (R = −0.79, p = 0.004) and Pima (R = −0.64, p = 0.019), possibly due to reduced spore dispersion. These associations enabled the generation of models to estimate exposure rates for the primary exposure season. The models explain 69% (p = 0.009) and 54% (p = 0.045) of the variance in the study period for Maricopa and Pima counties, respectively. We did not find any significant predictors for exposure rates during the secondary season. This study builds on previous studies examining the causes of temporal fluctuations in coccidioidomycosis, and corroborates the “grow and blow” hypothesis
Identification of Novel Factors Involved in Modulating Motility of Salmonella enterica Serotype Typhimurium
Salmonella enterica serotype Typhimurium can move through liquid using swimming motility, and across a surface by swarming motility. We generated a library of targeted deletion mutants in Salmonella Typhimurium strain ATCC14028, primarily in genes specific to Salmonella, that we have previously described. In the work presented here, we screened each individual mutant from this library for the ability to move away from the site of inoculation on swimming and swarming motility agar. Mutants in genes previously described as important for motility, such as flgF, motA, cheY are do not move away from the site of inoculation on plates in our screens, validating our approach. Mutants in 130 genes, not previously known to be involved in motility, had altered movement of at least one type, 9 mutants were severely impaired for both types of motility, while 33 mutants appeared defective on swimming motility plates but not swarming motility plates, and 49 mutants had reduced ability to move on swarming agar but not swimming agar. Finally, 39 mutants were determined to be hypermotile in at least one of the types of motility tested. Both mutants that appeared non-motile and hypermotile on plates were assayed for expression levels of FliC and FljB on the bacterial surface and many of them had altered levels of these proteins. The phenotypes we report are the first phenotypes ever assigned to 74 of these open reading frames, as they are annotated as ‘hypothetical genes’ in the Typhimurium genome.The open access fee for this work was funded through the Texas A&M University Open Access to Knowledge (OAK) Fund
Age and helium content of the open cluster NGC 6791 from multiple eclipsing binary members. II. age dependencies and new insights
Models of stellar structure and evolution can be constrained by measuring
accurate parameters of detached eclipsing binaries in open clusters. Multiple
binary stars provide the means to determine helium abundances in these old
stellar systems, and in turn, to improve estimates of their age. In the first
paper of this series, we demonstrated how measurements of multiple eclipsing
binaries in the old open cluster NGC6791 sets tighter constraints on the
properties of stellar models than has previously been possible, thereby
potentially improving both the accuracy and precision of the cluster age. Here
we add additional constraints and perform an extensive model comparison to
determine the best estimates of the cluster age and helium content, employing
as many observational constraints as possible. We improve our photometry and
correct empirically for differential reddening effects. We then perform an
extensive comparison of the CMDs and eclipsing binary measurements to Victoria
and DSEP isochrones to estimate cluster parameters. We also reanalyse a
spectrum of the star 2-17 to improve [Fe/H] constraints. We find a best
estimate of the age of ~8.3 Gyr while demonstrating that remaining age
uncertainty is dominated by uncertainties in the CNO abundances. The helium
mass fraction is well constrained at Y = 0.30 \pm 0.01 resulting in dY/dZ ~ 1.4
assuming that such a relation exists. During the analysis we firmly identify
blue straggler stars, including the star 2-17, and find indications for the
presence of their evolved counterparts. Our analysis supports the RGB mass-loss
found from asteroseismology and we determine precisely the absolute mass of
stars on the lower RGB, 1.15\pm0.02Msun. This will be an important consistency
check for the detailed asteroseismology of cluster stars.Comment: 18 Pages, 9 Figures, accepted for publication in A&
Measurement of health-related quality by multimorbidity groups in primary health care
[EN] Background: Increased life expectancy in Western societies does not necessarily mean better quality of life. To
improve resources management, management systems have been set up in health systems to stratify patients
according to morbidity, such as Clinical Risk Groups (CRG). The main objective of this study was to evaluate the
effect of multimorbidity on health-related quality of life (HRQL) in primary care.
Methods: An observational cross-sectional study, based on a representative random sample (n = 306) of adults
from a health district (N = 32,667) in east Spain (Valencian Community), was conducted in 2013. Multimorbidity was
measured by stratifying the population with the CRG system into nine mean health statuses (MHS). HRQL was
assessed by EQ-5D dimensions and the EQ Visual Analogue Scale (EQ VAS). The effect of the CRG system, age and
gender on the utility value and VAS was analysed by multiple linear regression. A predictive analysis was run by
binary logistic regression with all the sample groups classified according to the CRG system into the five HRQL
dimensions by taking the ¿healthy¿ group as a reference. Multivariate logistic regression studied the joint influence
of the nine CRG system MHS, age and gender on the five EQ-5D dimensions.
Results: Of the 306 subjects, 165 were female (mean age of 53). The most affected dimension was pain/discomfort
(53%), followed by anxiety/depression (42%). The EQ-5D utility value and EQ VAS progressively lowered for the MHS
with higher morbidity, except for MHS 6, more affected in the five dimensions, save self-care, which exceeded MHS
7 patients who were older, and MHS 8 and 9 patients, whose condition was more serious. The CRG system alone
was the variable that best explained health problems in HRQL with 17%, which rose to 21% when associated with
female gender. Age explained only 4%.
Conclusions: This work demonstrates that the multimorbidity groups obtained by the CRG classification system
can be used as an overall indicator of HRQL. These utility values can be employed for health policy decisions based
on cost-effectiveness to estimate incremental quality-adjusted life years (QALY) with routinely e-health data.
Patients under 65 years with multimorbidity perceived worse HRQL than older patients or disease severity.
Knowledge of multimorbidity with a stronger impact can help primary healthcare doctors to pay attention to these
population groups.The authors would like to thank the Conselleria de Sanitat Universal i Sanitat
Pública of the Generalitat Valenciana (the Regional Valencian Health
Government) for providing the study data. We would also like to thank
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