Displaying 14 results from an estimated 14 matches for "untreated".
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2007 May 15
1
read.table() can't read in this table (But Splus can) (PR#9687)
...: int 27481 17013 24751 27498 27486 30984 17293 28329 27459 27482 ...
$ NAME : Factor w/ 4040 levels "||*AA037178|Hs.179661|FK506 binding protein 1A (12kD)",..: 3444 3445 3446 3444 3445 657 1788 3121 3119 3119 ...
$ MLC94.46_LYM009_de.novo.untreated : num 0.234 0.452 0.405 0.115 0.249 ...
$ MLC96.45_LYM186_de.novo.untreated : num -0.1725 -0.0387 -0.0413 -0.0242 -0.1028 ...
$ MLC91.27_LYM427_de.novo.untreated : num 0.200 0.175 0.195 0.223 0.179 ...
$ MLC96.84_LYM225_transformed : num -0.213 -0.32...
2012 Nov 07
1
change colour of geom_step by scale_colour_manual
...Age of adults (days)", limits=c(0,16),
expand=c(0,0), breaks=c(5, 10, 15)) +
scale_colour_discrete(name ="Group",
breaks=c("ace", "ctrlAM","met"),
labels=c("acetone",
"untreated","methoprene"))+
theme_bw() + # maek background theme
black and white
opts(legend.justification=c(1,0),# legend
justification needs to be in the (options)
lege...
2009 Feb 27
2
add absolute value to bars in barplot
Hello,
r-help at r-project.orgbarplot(twcons.area,
beside=T, col=c("green4", "blue", "red3", "gray"),
xlab="estate",
ylab="number of persons", ylim=c(0, 110),
legend.text=c("treated", "mix", "untreated", "NA"))
produces a barplot very fine. In addition, I'd like to get the bars'
absolute values on the top of the bars. How can I produce this in an
easy way?
Thanks
S?ren
2006 Nov 29
3
R2.4 xyplot + panel.number problem
...] + x.temp)
panel.lines(x.temp,y.temp,col=2)}
if (panel.number==2) {
y.temp<-coef(m2.nls)[1] * x.temp/
(coef(m2.nls)[3] + x.temp)
panel.lines(x.temp,y.temp,col=2)}
},
ylab="Rate of reaction",
xlab="Substrate concentration",
main = "Puromycin---comparison bt. treated and untreated"
)
thanks for any idea
2010 Jul 08
0
ANOVA-Formula
...er
(preterminal) half develops cardiac damage, but survives to week 7. The aim
of the study was to elucidate the difference in cardiac gene expression of
dTGR with THF compared to dTGR showing compensated cardiac hypertrophy, but
not yet THF.Experiments were conducted in age-matched 4 week-old male
untreated dTGR.Untreated dTGR were divided in two subgroups, rats with
cardiac hypertrophy (n=18) and rats with THF (n=8).Rats were killed at age 7
weeks.Total RNAs (five animals per group) were isolated from the left
ventricle.For all rgu34_a affymetrix chips were used.
Iam using maanova package. In using...
2010 Apr 25
1
Struggling with two questions : Newbie student .
...er testing . if 45% of
the employees have positive indications of asbestos in their lungs , find
the probability that twelve employees must be tested in order to find the
four positives to send for further testing ?
2. In a small scale trial five seeds are treated with fungicide and five
seeds are untreated with fungicide. Seeds were then planted and the number
was counted . If four plants actually sprouted what is the probability that
a) all four plants emerged form the treated seeds.
b)Three of few emerged from the treated seeds
Regards
Malcolm
[[alternative HTML version deleted]]
2003 Oct 27
1
Bioassays Yielding concentration-Mortality data
...ys Yielding Concentration-Mortality Data particularly control - adjustment model from book Bioassay of Entomopathogenic Microbes and Nematodes chapter 7 with R.
I used glm with family=binomial and link=probit, but I do not know how to implement parameter gamma (control mortality - mortality of the untreated control insect in this exaple) into model formula.
Model in book:
pi(x)=gamma+(1-gamma)F(alpha+beta log(x))
F....cumulative probability distribution function
data:
x=concentration
n=number of insect at each run
y=number of death among n in given batch run at given concentration
Xmat<-data....
2011 Jun 22
2
analysing a three level reponse
...or 1
month with a regular light and watering regime. At this point they were
randomly given 1l of one of 4 different pesticides at one of 4 different
concentrations (100%, 75%, 50% or 25% in water). There were 20 pots of
grass for each pesticide/concentration giving 320 pots. There were no
control (untreated) pots. The response was measured after 1 week and
recorded as either:
B1 - grass dead
B2 - grass affected but not dead
B3 - no visible effect
I could analyse this as lethal effect vs non-lethal effect (B1 vs B2+B3)
or some effect vs no effect (B1+B2 vs B3) binomial model, but I can't
see how...
2019 Mar 22
0
New package feisr: Fixed effects individual slope models
...rsion of the
often used conventional fixed effects (FE) panel models. In contrast to
conventional fixed effects models, data are not person ?demeaned?, but
'detrended? by the predicted individual slope of each person or group, which
relaxes the assumptions of parallel trends between treated and untreated
groups.
We are happy about any comments or feedback!
Best regards,
Tobias
Tobias R?ttenauer
Department of Social Sciences
TU Kaiserslautern
Erwin-Schroedinger-Str. 57
67663 Kaiserslautern
ruettenauer at sowi.uni-kl.de
Tel.: +49 631 205 5785
2019 Mar 22
0
New package feisr: Fixed effects individual slope models
...rsion of the
often used conventional fixed effects (FE) panel models. In contrast to
conventional fixed effects models, data are not person ?demeaned?, but
'detrended? by the predicted individual slope of each person or group, which
relaxes the assumptions of parallel trends between treated and untreated
groups.
We are happy about any comments or feedback!
Best regards,
Tobias
Tobias R?ttenauer
Department of Social Sciences
TU Kaiserslautern
Erwin-Schroedinger-Str. 57
67663 Kaiserslautern
ruettenauer at sowi.uni-kl.de
Tel.: +49 631 205 5785
2005 Apr 07
0
how to analysis this kind of data set?
hi,everybody
I have a *time course* data set about a CML cell line treated by two drugs
and their combination.The experiment was performed on cDNA microarray
platform.The green channel of all the arrays are common,the untreated
cell.Here follows the experiment design:
a_0hr,a_3hr,a_8hr,a_12hr,a_24hr,a_48hr,a_72hr,
b_3hr,b_8hr,b_12hr,b_24hr,b_48hr,b_72hr,
ab_3hr,ab_8hr,ab_12hr,ab_24hr,ab_48hr,ab_72hr.
A total of 19 *cDNA microarrays*.a_0hr means* *drug *a *treament *0 hours
vs. control. *And a_3hrs means drug a treat...
2006 Oct 11
0
Question regarding analysis of normalised data
Dear all,
I want to see if the treatment of an animal with a specific compound has an
effect on the expression of certain genes. Though my question is based in
biology, it really is all about how to deal with the standard deviation in
normalised data.
I have three groups of animals; untreated, treated with placebo, and treated
with a single concentration of the compound in question.
Gene expression is measured in triplicate, that is I have three values for
each measurement of each animal, and normalised to a standard gene.
My problem is, that there is no guarantee that one of the meas...
2011 Apr 20
1
How can I 'predict' from an nls model with a fit specified for separate groups?
Following an example on p 111 in 'Nonlinear Regression with R' by Ritz &
Streibig, I have been fitting nls models using square brackets with the
grouping variable inside. In their book is this example, in which
'state' is a factor indicating whether a treatment has been used or not:
> Puromycin.m1 <- nls(rate ~ Vm[state] *
+ conc/(K[state] + conc), data = Puromycin,
2009 Sep 12
3
[LLVMdev] [proposal] Extensible IR metadata
Dan Gohman wrote:
> On Sep 11, 2009, at 9:57 AM, Chris Lattner wrote:
>
>
>> Devang's work on debug info prompted this, thoughts welcome:
>> http://nondot.org/sabre/LLVMNotes/ExtensibleMetadata.txt
>
> The document mentions "instructions" a lot. We'll want to be able to
> apply metadata to ConstantExprs as well at least, if not also Arguments
>