Summary
This case study uses a multi-level design for an experiment
carried out in the laboratory to determine an optimum aqueous concentration of sucrose
that supports optimal germination of pollen grain from flower buds of the leguminous
Sesbania sesban (L.) Merr tree species. The sucrose concentration that supports optimum
pollen grain germination may vary depending on the water status of the pollen.
The purpose
of this case study is to describe an experiment designed to compare pollen germination rates
across a range of sucrose concentrations, and to demonstrate how analysis of variance incorporating
polynomial regression analysis is applied. The optimum sucrose concentration determined from this
experiment was then applied in a second experiment to determine the correlation between rates
of pollen germination and viability, which was expected to be high at a high pollen germination.
Forty eight slides from six flower buds and eight sucrose
concentrations were prepared in the first experiment for microscopic
examination of pollen germination rates counted 15 times for each
slide, each count counted in a different field of view. It is
possible that alternative choices of bud and field of view
replications may have been preferable in this experiment to improve
the precision of germination rate comparisons across the different sucrose
concentrations. The case study discusses methods of sample size
estimation and uses a number of the questions at the end of the case
study to investigate possible improvements in experimental design.
The case study also uses the stacking features of GenStat in order
to reorganise the data for statistical analysis
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