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We found a high correlation (0.72) between the reference labels and the final sense of reassurance or sense of alarm judgment (item 7).
We then used a cross tabulation to visualize the extent of agreement per vignette between the reference labels of the case vignettes and the final judgment (item 7) given by the study population.
As hypothesized we found that the correlations between the reference labels and corresponding items were high for the clear-case vignettes (0.59 – 0.72) and low for the ambiguous-case vignettes (0.08 – 0.08).
A cross tabulation visualized per vignette the extent of agreement, between the reference labels of the case vignettes and the final sense of reassurance or sense of alarm judgment (item 7) given by the study population (see Table 7).
The second general hypothesis, that the correlation between the reference labels of the ambiguous-case vignettes and the answers given by the study population to items reflecting a sense of reassurance or a sense of alarm was weak or absent, was also confirmed (see Table 6).
The first general hypothesis for construct validity, that there is a moderate to high correlation between the reference labels of the clear-case vignettes and the answers given by the 49 family physicians from the validation study to items reflecting the sense of reassurance (item 1) or the sense of alarm (item 2 6), was confirmed (see Table 5).
Similar(54)
SR/SA label: the reference labeling.
To evaluate recognition performance, the number of reference labels, of substitutions, insertions and deletions are counted.
Agreement between the map and reference land-cover labels is defined as a match between the primary or alternate reference label determined for a sample pixel and a mode class of the mapped 3×3 block of pixels centered on the sample pixel.
Elements with at least 90% identity between the reference and each aligned species were labelled Highly Conserved Elements (HCEs).
Statistics are provided separately for animals with phenotypes in the reference population, labelled old, and animals without phenotypes, labelled young.
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Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com