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Jawbone wants to take deep dives on sleep, weather, nutrition and exercise data and connect the dots between these data points.
The small overlap between these data points (curves) in several experimental loops indicates a very low hysteresis effect of the designed sensing structure.
This is a significant improvement over the experimentally obtained raw data that only provides a limited knowledge of stress components at a number of selected measurement points, and over simple interpolation between these data points.
Each data point here is represented as a vector and the distances between these data points are measured using a suitable distance measure [ 8].
In photobleaching of eGFP, we obtained bleaching-orders of approximately three from 720 up to 800 nm (see Fig. 3) with no significant difference between these data points (P = 0.07, ANOVA).
Excluding the anomaly of the photobleaching-order gained by the measurements at 920 nm, 4 MHz and NA 1.3, there was no significant difference between these data points (P = 0.37, ANOVA).
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Data points with distances larger than 1.0 were less common (only 4%) and compared to the variation in SAC score observed for data points in distance ranges below 0.5 (between SAC score values of 0 and 200), relatively little variation in SAC scores was observed for these data points (between SAC score values of 20 and 40).
Data points with distances larger than 1.0 were less common (representing only 4% of the dataset), and compared to the variation in SAC score observed for data points in distance ranges below 0.5 (between SAC scores of 0 and 200), relatively little variation in SAC score was observed for these data points (between SAC scores of 20 and 40).
Thus, the distances between the data points are declared meaningless.
To model the spatial correlation between the data points, an anisotropic variogram was built.
The lines are included to guide the eye between the data points.
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Since I tried Ludwig back in 2017, I have been constantly using it in both editing and translation. Ever since, I suggest it to my translators at ProSciEditing.

Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com