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3924 Publications
Showing 2841-2850 of 3924 resultsHealthy African Americans are known to have reduced white blood cell counts (WBC) and absolute neutrophil counts (ANC) compared with European Americans, with little agreement about the levels in reference intervals. The objective is to establish race-specific reference intervals for WBC and ANC using US National Health and Nutrition Examination Survey (NHANES) of 2000-2003. A total of 14,184 civilian noninstitutionalized US citizens participated in NHANES 2000-2003 had complete blood count, red cell distribution width, platelet count and automated WBC differential determined on a Coulter MAXM. The exclusion criteria were used: ferritin <12 ng/ml, pregnancy, body mass index >30, diastolic blood pressure >100 mm Hg, creatinine >2.5 mg/dl, glucose >126 mg/dl. Data were separated into six sex/race categories: female non-Hispanic white, non-Hispanic black (NHBF)], Mexican American; male non-Hispanic white, non-Hispanic black (NHBM), Mexican American and two age groupings (12-18 and >18 years). NHB 2.5-97.5 percentile WBC and (ANC) limits follow (units: × 10⁹ /l): NHBM, ages 12-18: 3.2-9.3 (1.0-6.2); NHBF, ages 12-18: 3.7-10.1 (1.2-6.6); adult NHBM: 3.1-9.9 (1.3-6.6); adult NHBF: 3.4-11 (1.4-7.5). NHB limits are significantly lower than the NHW and MA limits. In most US healthcare organizations, insufficient agreement exists because of large differences in reference intervals for different ethnicities. In areas with peoples of African descent (>10--20%), race-specific WBC and ANC reference intervals must be provided for proper diagnosis and clinical research.
Signaling by the Ral small GTPase is poorly understood . animals with constitutively activated RAL-1 or deficient for the inhibitory RalGAP, HGAP-1 /2, display pale intestines. Staining with Oil Red O detected decreased intestinal lipids in the deletion mutant relative to the wild type. Constitutively activated RAL-1 decreased lipid detected by stimulated Raman scattering (SRS) microscopy, a label-free method of detecting lipid by laser excitation and detection. A signaling-deficient missense mutant for RAL-1 also displayed reduced lipid staining via SRS. We conclude that RAL-1 signaling regulates lipid homeostasis, biosynthesis or storage in live animals.
Polarized angle-resolved Raman spectra of the Si-H stretching vibrations on stepped H-terminated Si(111) surfaces confirm the constrained orientation of the step dihydride derived from ab initio cluster calculations. They further show that the step normal modes involve little concerted motion of the step atoms, indicating that step relaxation reduces the steric interaction much further than predicted.
The dorsal raphe nucleus (DRN) is an important brain area for body-weight regulation. In this issue of Cell, Nectow et al. uncover cell-type-specific neural circuitry and pharmacology for appetite control within the DRN.
Using a descanned, laser-induced guide star and direct wavefront sensing, we demonstrate adaptive correction of complex optical aberrations at high numerical aperture (NA) and a 14-ms update rate. This correction permits us to compensate for the rapid spatial variation in aberration often encountered in biological specimens and to recover diffraction-limited imaging over large volumes (>240 mm per side). We applied this to image fine neuronal processes and subcellular dynamics within the zebrafish brain.
BACKGROUND: Ethanol tolerance, defined as a reduction in the intensity of the effects of ethanol upon continuous or repeated exposure, is a hallmark of alcoholism. Tolerance may develop at the cellular or neural systems levels. The molecular changes underlying ethanol tolerance are not well understood. We therefore explored the utility of Drosophila, with its accessibility to genetic, molecular, and behavioral analyses, as a model organism to study tolerance development in response to different ethanol-exposure regimens. METHODS: We describe a new assay that quantifies recovery from ethanol intoxication in Drosophila. Using this recovery assay, we define ethanol pre-exposure paradigms that lead to the development of tolerance. We also use the inebriometer, an assay that measures the onset of intoxication, to study the effects of pharmacological and genetic manipulations on tolerance development. RESULTS: We show that flies develop different forms of ethanol tolerance: rapid tolerance, induced by a single short exposure to a high concentration of ethanol, and chronic tolerance, elicited by prolonged exposure to a low concentration of the drug. Neither rapid nor chronic tolerance involves changes in ethanol pharmacokinetics, implying that they represent functional rather than dispositional tolerance. Chronic and rapid tolerance can be distinguished mechanistically: chronic tolerance is disrupted by treatment with the protein synthesis inhibitor cycloheximide, whereas rapid tolerance is resistant to this treatment. Furthermore, rapid and chronic tolerance rely on distinct genetic pathways: a mutant defective for octopamine biosynthesis shows reduced rapid tolerance but normal chronic tolerance. CONCLUSIONS: Flies, like mammals, develop tolerance in response to different ethanol-exposure regimens, and this tolerance affects both the onset of and the recovery from acute intoxication. Two forms of tolerance, rapid and chronic, are mechanistically distinct, because they can be dissociated genetically and pharmacologically.
Inducible and reversible silencing of selected neurons in vivo is critical to understanding the structure and dynamics of brain circuits. We have developed Molecules for Inactivation of Synaptic Transmission (MISTs) that can be genetically targeted to allow the reversible inactivation of neurotransmitter release. MISTs consist of modified presynaptic proteins that interfere with the synaptic vesicle cycle when crosslinked by small molecule "dimerizers." MISTs based on the vesicle proteins VAMP2/Synaptobrevin and Synaptophysin induced rapid ( approximately 10 min) and reversible block of synaptic transmission in cultured neurons and brain slices. In transgenic mice expressing MISTs selectively in Purkinje neurons, administration of dimerizer reduced learning and performance of the rotarod behavior. MISTs allow for specific, inducible, and reversible lesions in neuronal circuits and may provide treatment of disorders associated with neuronal hyperactivity.
Connectomics-the study of how neurons wire together in the brain-is at the forefront of modern neuroscience research. However, many connectomics studies are limited by the time and precision needed to correctly segment large volumes of electron microscopy (EM) image data. We present here a semi-automated segmentation pipeline using freely available software that can significantly decrease segmentation time for extracting both nuclei and cell bodies from EM image volumes.
Two methods for rapid characterization of molecular shape are presented. Both techniques are based on the density of atoms near the molecular surface. The Fast Atomic Density Evaluation (FADE) algorithm uses fast Fourier transforms to quickly estimate densities. The Pairwise Atomic Density Reverse Engineering (PADRE) method derives modified density measures from the relationship between atomic density and total potentials. While many shape-characterization techniques define shape relative to a surface, the descriptors returned by FADE and PADRE can measure local geometry from points within the three-dimensional space surrounding a molecule. The methods can be used to find crevices and protrusions near the surface of a molecule and to test shape complementarity at the interface between docking molecules.
Transcription of protein-encoding genes in eukaryotic cells requires the coordinated action of multiple general transcription factors (GTFs) and RNA polymerase II (Pol II). A “step-wise” preinitiation complex (PIC) assembly model has been suggested based on conventional ensemble biochemical measurements, in which protein factors bind stably to the promoter DNA sequentially to build a functional PIC. However, recent dynamic measurements in live cells suggest that transcription factors mostly interact with chromatin DNA rather transiently. To gain a clearer dynamic picture of PIC assembly, we established an integrated in vitro single-molecule transcription platform reconstituted from highly purified human transcription factors and complemented it by live-cell imaging. Here we performed real-time measurements of the hierarchal promoter-specific binding of TFIID, TFIIA, and TFIIB. Surprisingly, we found that while promoter binding of TFIID and TFIIA is stable, promoter binding by TFIIB is highly transient and dynamic (with an average residence time of 1.5 sec). Stable TFIIB–promoter association and progression beyond this apparent PIC assembly checkpoint control occurs only in the presence of Pol II–TFIIF. This transient-to-stable transition of TFIIB-binding dynamics has gone undetected previously and underscores the advantages of single-molecule assays for revealing the dynamic nature of complex biological reactions.