Project info 1
Experiment Date2020-10-12
Experiment ID
Notebook ID
Project
Experimenter
Protocol
*Project info 1
Experiment Date2020-10-12
Experiment ID
Notebook ID
Project
Experimenter
Protocol
microglia
Stiatum
Cortex (II-IV)
Cortex (V)
IMARIS
9335
11745
13696
13329
11516
15272
12987
17083
12052
13525
12545
13802
13622
9957
11568
ÎmageJ
10272
13114
13415
9925
10844
12717
12995
11731
14968
11064
10341
13700
Neurons
vgat Stiatum
vglut Cortex (II-IV)
NeuN Cortex (V)
IMARIS
76284
210340
132762
108587
202683
131872
85248
227418
113893
93305
213123
127454
95746
185204
110128
ImageJ
80052
169495,3
106344
97125
209424,1
120000
109533
168713,7
119021
95570
242926,2
118455
89917
111746
SATmg
vgat - Striatum
vglut - Cortex (II-IV)
NeuN - Cortex (V)
IMARIS
25
55,8
42
25
51,4
50
23
43,8
30
37
61,6
35,8
37
52,9
42
ImageJ
26
52,6
28,6
33
59,1
34,5
27
60,7
48,1
27
54,5
35,7
28
57,1
50
for t-test microglia
Step-by-step instructions for performing a paired t test
How the data are organized
The two columns represent two sequential treatments. Each row represents a different subject (or a different set of matched data), labeled with a row title. Note that, unlike many statistics programs, groups and subjects are not defined by grouping variables. Instead, each column defines a separate group, and each row represents a different subject.
The goals
- To determine if the differences between the two group means
is greater than you would expect to see by chance.
-
To determine the 95% confidence interval for the difference
between the two means.
How to perform the paired t test
Click Analyze, choose t test from the list of column analyses, and then choose a paired t
test on the dialog. Click the link below for detailed instructions and to learn about the paired t test.
GS
JM
HM
JW
PS
Imaris Str
9335
13329
12987
13525
13622
imageJ
10272
9925
12995
11064
8836
Imaris L IV
11745
11516
17083
12545
9957
imageJ
13114
10844
11731
10341
11507
Imaris LV
13696
15272
12052
13802
11568
imageJ
13415
12717
14968
13700
14205
for t-test neurons
Step-by-step instructions for performing a paired t test
How the data are organized
The two columns represent two sequential treatments. Each row represents a different subject (or a different set of matched data), labeled with a row title. Note that, unlike many statistics programs, groups and subjects are not defined by grouping variables. Instead, each column defines a separate group, and each row represents a different subject.
The goals
- To determine if the differences between the two group means
is greater than you would expect to see by chance.
-
To determine the 95% confidence interval for the difference
between the two means.
How to perform the paired t test
Click Analyze, choose t test from the list of column analyses, and then choose a paired t
test on the dialog. Click the link below for detailed instructions and to learn about the paired t test.
GS
JM
HM
JW
PS
Imaris Str
76284
108587
85248
93305
95746
imageJ
80052
97125
89917
109533
94157
Imaris L IV
210340
202683
227418
213123
185204
imageJ
169495,3
209424,1
168713,7
242926,2
197640
Imaris LV
132762
131872
113893
127454
110128
imageJ
106344
120000
119021
118455
110949
for t-test % sattelite
Step-by-step instructions for performing a paired t test
How the data are organized
The two columns represent two sequential treatments. Each row represents a different subject (or a different set of matched data), labeled with a row title. Note that, unlike many statistics programs, groups and subjects are not defined by grouping variables. Instead, each column defines a separate group, and each row represents a different subject.
The goals
- To determine if the differences between the two group means
is greater than you would expect to see by chance.
-
To determine the 95% confidence interval for the difference
between the two means.
How to perform the paired t test
Click Analyze, choose t test from the list of column analyses, and then choose a paired t
test on the dialog. Click the link below for detailed instructions and to learn about the paired t test.
GS
JM
HM
JW
PS
Imaris Str
25
25
23
37
37
imageJ
26
33
27
27
28
Imaris L IV
55,8
51,4
43,8
61,6
52,9
imageJ
52,6
59,1
60,7
54,5
57,1
Imaris LV
42
50
30
35,8
42
imageJ
28,6
34,5
48,1
35,7
50
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