How to create a (total) Ghrelin calibration curve?

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1 == Computing Ghrelin calibration curve using R ==
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3 The calibration curve can be created using R, and libracy "drc". Optionally, one can use library "sfmisc" for formatting of the labels on plot axis.
4 The R code is attached below.
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6 The example assumes the data to be available in file "ghrelin_conc std_a std_b avg.csv"
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8 The measured data:
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10 || '''Ghrelin (ng/ml)''' || '''Standard a''' || '''Standard b''' ||
11 || 1000000 ||-0.040596823||-0.052699697 ||
12 || 100000 ||0.136105144||0.119766263 ||
13 || 10000 ||0.61356354||0.606906959 ||
14 || 1000 ||0.846543873||0.839887292 ||
15 || 100 ||0.887693646||0.88345764 ||
16 ||0||0.896770802||0.896165658 ||
17
18 {{{
19
20 ##### Install libraries
21 install.packages("drc")
22 install.packages("sfsmisc")
23 require(drc)
24 library(sfsmisc)
25
26 ##### Read the data
27 hormone.data <- read.csv("ghrelin_conc std_a std_b avg.csv")
28 hormone.data <- hormone.data[,1:3]
29 colnames(hormone.data)[1:3] <- c("Concentration","Response_1", "Response_2")
30
31 ##### Reorganize the data
32 hormone.data <- reshape(hormone.data, varying=c("Response_1","Response_2"), direction="long", v.names=c("Response"))
33 hormone.data <- hormone.data[,c("Concentration", "Response")]
34
35 ##### Fitting the model (4-parameter log-logistic function)
36 hormone.data.model <- drm(Response ~ Concentration, data = hormone.data, fct = LL.4())
37 summary(hormone.data.model)
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}}}
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The resultant parameters of a log-logistic equations are:
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{{{
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Model fitted: Log-logistic (ED50 as parameter) (4 parms)
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Parameter estimates:
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Estimate Std. Error t-value p-value
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b:(Intercept) 9.5057e-01 2.2294e-02 4.2638e+01 0
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c:(Intercept) -7.6010e-02 6.9075e-03 -1.1004e+01 0
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d:(Intercept) 8.9163e-01 3.3216e-03 2.6843e+02 0
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e:(Intercept) 2.5221e+04 7.7727e+02 3.2448e+01 0
52 }}}
53
54 The calibration curve can be plotted using the commands below:
55
56 {{{
57 ##### Plotting a nice plot
58 par(pty="s", mar=c(5,5,1,1))
59 plot(hormone.data.model, type="confidence", cex.lab=2, axes=F, xlim=c(-10,10^6))
60 axis(side=1, at=hormone.data[1:6,1], labels=pretty10exp(hormone.data[1:6,1]), cex.axis=1.2)
61 axis(side=2, at=seq(0,1,0.2), labels=seq(0,1,0.2))
62 plot(hormone.data.model, type="all", add=T, pch=21, col="red", lwd=1, cex=2, bg="green")
63 }}}
64
65 [[Image(Ghrelin.png)]]
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The parameters of the eqution can be plugged into the formula below, and used in Excel, or other spreadsheet program.
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However, the concentration can be also easily estimated in R using "ED" function of the "drc" library. The code below demonstrates the concentration estimated from the response of 0.1, assuming alpha=0.05. The code returns the estimation, the error, and the condfidence interval.
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{{{
73 ##### Computing the concentration from the response, for instance for a response=0.1, and alpha=1-0.95
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ED(hormone.data.model, respLev=0.1, interval="delta", type="absolute", level=0.95)
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ED(hormone.data.model, respLev=0.1, interval="delta", type="absolute", level=0.95)
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}}}