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For clustering analysis, MI data were log2 transformed to values ranging from −8 to 0 corresponding to the relative level of unmethylated and methylated states, respectively.
The distances are transformed to values analogous to DDH.
Next, the distances are transformed to values analogous to DNA DNA Hybridizations (DDH).
Individual item scores will be transformed to values on the standard normal distribution.
The subscale scores were transformed to values between 0 and 100.
Total scores and factor scores are transformed to values between 0 and 100.
Similar(47)
To enable meaningful computations, decimal visual acuity values were transformed to logMAR values, where higher values represent more vision loss, or lower visual acuity values.
To enable meaningful computations, decimal visual acuity values were transformed to logMAR values (-log10Visual Acuity), where higher values represent more vision loss, i.e., lower visual acuity values.
Standard errors (SE) were computed using ΔCT values transformed to SE values of fold change using the formula: Significance was determined by ANOVA of ΔCT values [ 24, 25].
Values were transformed to % values, so numbers near 0 indicate a high identity or short distance; values approximating 100 indicate low similarity and large distance.
ΔΔCt values were transformed to absolute values with 2−ΔΔCt for obtaining relative BOS1 transcript levels.
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Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com