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  • 1
    Electronic Resource
    Electronic Resource
    Springer
    Intensive care medicine 23 (1997), S. 201-207 
    ISSN: 1432-1238
    Keywords: Key words Critical care ; Intensive care units ; paediatric ; Logistic models ; Outcome assessment ; Prospective studies ; Severity of illness index
    Source: Springer Online Journal Archives 1860-2000
    Topics: Medicine
    Notes: Abstract Objective: To develop a logistic regression model that predicts the risk of death for children less than 16 years of age in intensive care, using information collected at the time of admission to the unit. Design: Three prospective cohort studies, from 1988 to 1995, were used to determine the variables for the final model. A fourth cohort study, from 1994 to 1996, collected information from consecutive admissions to all seven dedicated paediatric intensive care units in Australia and one in Britain. Results: 2904 patients were included in the first three parts of the study, which identified ten variables for further evaluation. 5695 children were in the fourth part of the study (including 1412 from the third part); a model that used eight variables was developed on data from four of the units and tested on data from the other four units. The model fitted the test data well (deciles of risk goodness-of-fit test p=0.40) and discriminated well between death and survival (area under the receiver operating characteristic plot 0.90). The final PIM model used the data from all 5695 children and also fitted well (p=0.37) and discriminated well (area 0.90). Conclusions: Scores that use the worst value of their predictor variables in the first 12–24 h should not be used to compare different units: patients mismanaged in a bad unit will have higher scores than similar patients managed in a good unit, and the bad unit‘s high mortality rate will be incorrectly attributed to its having sicker patients. PIM is a simple model that is based on only eight explanatory variables collected at the time of admission to intensive care. It is accurate enough to be used to describe the risk of mortality in groups of children.
    Type of Medium: Electronic Resource
    Library Location Call Number Volume/Issue/Year Availability
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  • 2
    Electronic Resource
    Electronic Resource
    Springer
    Sexual plant reproduction 3 (1990), S. 61-69 
    ISSN: 1432-2145
    Keywords: Dendrobium speciosum ; Orchid stigma ; Detached cells ; Granulocrine secretion ; Arabinogalactan proteins
    Source: Springer Online Journal Archives 1860-2000
    Topics: Biology
    Notes: Summary The stigmatic surface of the orchid Dendrobium speciosum is a cup containing detached cells suspended in a mainly carbohydrate mucilage. The fine structure of the detached cells and their organelles is indicative of secretory cells. The cells contain numerous mitochondria with well-developed cristae, dictyosomes containing extensive cisternae, an extensive network of rough and smooth endoplasmic reticulum and free polysomes throughout. There are many amyloplasts in the vicinity of the nucleus. Vesicles are seen arising from the dictyosomes and endoplasmic reticulum. The plasmalemma is undulating, and vesicles can be seen in its vicinity, giving the typical appearance of a granulocrine secretory system. Cetylpyridinium chloride (CPC) fixation to immobilise acidic carbohydrates detected a highly electron-opaque layer surrounding each cell and globules dispersed through the cell wall. The walls of the detached cells show irregular surface projections which are the remains of pitfields. Biochemical analysis showed that carbohydrates and arabinogalactan proteins are major components of the mucilage.
    Type of Medium: Electronic Resource
    Library Location Call Number Volume/Issue/Year Availability
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