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  • 1
    ISSN: 1433-2981
    Keywords: Key words:Erythrocytes – Erythrocyte size –Iguana iguana– Osmotic fragility
    Source: Springer Online Journal Archives 1860-2000
    Topics: Medicine
    Notes: Abstract: The erythrocyte size and osmotic fragility were studied in blood samples from adult (n= 40) and juvenile (n= 40) specimens of Iguana iguana. In fresh preparations the erythrocytes were large, oval cells. The largest diameters were 17.06 ± 2.5 mm (juvenile) and 16.20 ± 1.25 mm (adults), and the smallest diameters were 8.23 ± 1.87 mm (juvenile) and 9.00 ± 1.00 mm (adults). In fixed and stained preparations, the largest erythrocyte diameters were 15.28 ± 3.3 mm (juvenile) and 15.51 ± 1.3 mm (adults), and the smallest were 7.82 ± 0.65 mm (juvenile) and 7.85 ± 0.8 mm (adults). The haematocrit value for both juvenile and adult specimens was 27 ± 2%; the red blood cell counts were 1.3 ± 0.43×1012/l (juvenile) and 1.2 ± 0.35×1012/l (adults). Although no significant differences were observed in the cumulative osmotic curves, the derivative curve of adult specimens indicates the presence of at least two erythrocyte populations with osmotic fragilities at about 70 and 60 mm NaCI, representing 27% and 73% of the total cells, respectively. In samples from juvenile specimens, a major peak at about 70 mm NaCI was observed, which represented 85% of the total cell population. The difference in osmotic resistance between these erythrocyte subpopulations is correlated with their respective geometrical parameters, and compared to that of erythrocytes from other vertebrates.
    Type of Medium: Electronic Resource
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  • 2
    Publication Date: 2013-03-15
    Description: : Next-generation sequencing is rapidly becoming the approach of choice for transcriptional analysis experiments. Substantial advances have been achieved in computational approaches to support these technologies. These approaches typically rely on existing transcript annotations, introducing a bias towards known genes, require specific experimental design and computational resources, or focus only on identification of splice variants (ignoring other biologically relevant transcribed features contained within the data that may be important for downstream analysis). Biologically relevant transcribed features also include large and small non-coding RNA, new transcription start sites, alternative promoters, RNA editing and processing of coding transcripts. Also, many existing solutions lack accessible interfaces required for wide scale adoption. We present a user-friendly, rapid and computation-efficient feature annotation framework (RNA-eXpress) that enables identification of transcripts and other genomic and transcriptional features independently of current annotations. RNA-eXpress accepts mapped reads in the standard binary alignment (BAM) format and produces a study-specific feature annotation in GTF format, comparison statistics, sequence extraction and feature counts. The framework is designed to be easily accessible while allowing advanced users to integrate new feature-identification algorithms through simple class extension, thus facilitating expansion to novel feature types or identification of study-specific feature types. Availability and implementation: RNA-eXpress software, source code, user manuals, supporting tutorials, developer guides and example data are available at http://www.rnaexpress.org . Contact: paul.hertzog@monash.edu Supplementary information: Supplementary data are available at Bioinformatics online.
    Print ISSN: 1367-4803
    Electronic ISSN: 1460-2059
    Topics: Biology , Computer Science , Medicine
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