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Medical StatisticsMedical Statistics
Tao YuchunTao Yuchun
Practice 3Practice 3
http://cc.jlu.edu.cn/ms.html
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Review Review
1.1. Comparing to a given population mean
(One-sample One-sample tt test test)
I.I. tt test test
•The formula of the test statistic for one-sample The formula of the test statistic for one-sample tt test is: test is:
)(~ t
n
SX
S
Xt
X
1n
• here μ is a given population mean.
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2.2. Comparison for Paired Data
(Paired-Samples Paired-Samples tt test test)
• The formula of the test statistic for The formula of the test statistic for paired-samples -samples
tt test is: test is:
)(~00 t
n
Sd
S
dt
dd
1n
• here and Sd refer to the mean and SD of the variable “difference”.d
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3.3. Comparison between two sample
means (Independent-Samples Independent-Samples tt test test)
•The formula of the test statistic for independent-sampleThe formula of the test statistic for independent-sample
tt test is: test is:
2
)1()1(
21
222
2112
nn
SnSnSc
2
)()(
21
1
222
1
211
21
nn
XXXXn
ii
n
ii
)11
(21
2
2121
21
nnS
XX
S
XXt
cXX
• here Sc2
is pooled estimation of sample variance.
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II. II. ZZ test test
1.1. Comparing to a given population mean
for a bigbig sample (One-sample One-sample ZZ test test)
•The formula of the test statistic for one-sample The formula of the test statistic for one-sample ZZ test test is:is:
)1,0(~ N
n
SX
Z
• bigbig means sample size means sample size nn ≥ 50 or 100. ≥ 50 or 100.
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2.2. Comparison between two bigbig sample
means (Two-Samples Two-Samples ZZ test test)
•The formula of the test statistic for two-samples The formula of the test statistic for two-samples ZZ test test
is:is:
2
22
1
21
21
22
2121
2121
nS
nS
XX
SS
XX
S
XXZ
XXXX
• bigbig means two sample size all means two sample size all nn ≥ 50 or ≥ 50 or 100.100.
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III. III. Statistical description for enumerationStatistical description for enumeration
datadata
1.1. Relative measures
• Absolute measureAbsolute measure
• Relative measures :Relative measures :
(1)(1) Frequency(proportion)
(2) (2) Intensity (Rate)
(3) (3) Ratio
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2.2. Standardization for crude frequency
or crude intensity
• direct standardization approachdirect standardization approach• indirect standardization approachindirect standardization approach
IV. IV. Statistical Inference for enumerationStatistical Inference for enumeration
datadata
1.1. Sampling error of frequency
n
XP
n
ppSP
)1(
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2.2. Confidence Interval of Probability
95% Confidence interval:
99% Confidence interval:
n
ppp
)1(96.1:
n
ppp
)1(58.2:
• required the sample size required the sample size nn is big enough. is big enough.
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3.3. The hypothesis testing of proportion
(Z test)
(1)(1) Comparison of sample proportion and Comparison of sample proportion and population proportion ( One-sample population proportion ( One-sample ZZ test) test)
0100 :: HH
n
pZ
)1( 00
0
If |Z|≥Zα , then reject H0 ; Otherwise,
no reason to reject H0 (accept H0 ).
• π0 is a constant.
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(2)(2) Comparison of two sample proportions Comparison of two sample proportions
( Two-samples ( Two-samples ZZ test) test)
211210 :: HH
21
21
ppS
ppZ
)11
)(1(21
21 nnppS ccpp
21
21
nn
XXpc
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np np > 5 and > 5 and nn((1-p1-p)) >5>5
•The normal approximation condition
4.4. The hypothesis testing of proportion
(Chi-square test)
(1)(1) Basic idea of Basic idea of χχ22 test test
• the actual frequency ---- the actual frequency ---- AA • the theoretical frequency ---- the theoretical frequency ---- TT
n
nnT CRRC totalRow :Rn alColumn tot :Cn
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(2)(2) Chi-square test for 2×2 tableChi-square test for 2×2 table
T
TA 22 )(
= (row-1)(column-1)
a b a+bc d c+da+c b+d n
dbcadcba
nbcad
2
2
a.a. If n≥40, andand everyevery Ti ≥5, 2 test is applicable;
b.b. If n < 40 oror Ti < 1, 2 test is not applicable, you should use
Fisher’s Exact TestFisher’s Exact Test;
c.c. If n≥40, andand only oneonly one 1≤Ti < 5, 2 test needs adjustment.
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• The correction formula of 2 test for 222 table2 table :
T
TA2
2 5.0
dbcadcba
nn
bcad
2
2 2
(3)(3) Chi-square test for R×C tableChi-square test for R×C table
1
22
CR nn
An
totalRow :Rn alColumn tot :Cn
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Excel’s statistical method Excel’s statistical method • You can use Excel’s statistical function
CHIINV(Probability,Deg_freedom) CHIINV(Probability,Deg_freedom) to get
χ2α,ν , here Probability is α , Deg_freedom
is ν (degree of freedom). • You can use Excel’s statistical function
CHITEST(range1,range2) CHITEST(range1,range2) to get the P-value
of χ2 test, here range1 is the range of all actual
frequencies, range2 is the range of all
theoretical frequencies.
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•See the example (stat1.xls updatedupdated)
• You can use the macro for t-tests of statistical
analysis tools to get Paired-Samples t Test and
Two-Samples t Test directly.
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Practice in class Practice in class Exercise 1Exercise 1: The weights (kg) of 12 volunteers were
measured before and after a course of treatment with
a “new drug” for losing weight. The data is given in
Table 3-1. Please evaluate the effectiveness of this
drug.
No. 1 2 3 4 5 6 7 8 9 10 11 12Pre-treatment 101 131 131 143 124 137 126 95 90 67 84 101Post-treatment 100 136 126 150 128 126 116 105 87 57 74 109
Table 3-1 The data observed in a study of weight losing
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Exercise 2Exercise 2: A physician made a survey of the
roundworm infection of a rural region. There were
60 infected among the 300 randomly sampled males,
and 30 infected among the 200 females. Did females
have lower infection rate than males?
Answer Answer
•See the Excel file (practice3key.xls)
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HomeworkHomework 1.1. Dr. L wants to evaluate one remedy, so she randomly chose 10 patients, and recorded the blood sedimentation rate (mm/h) of each patient before and after the treatment. The data is given in Table 3-2. Please evaluate the effectiveness of this remedy.
No. 1 2 3 4 5 6 7 8 9 10
before 10 13 6 11 10 7 8 8 5 9after 6 9 3 10 10 4 2 5 3 3
Tabl e 3- 2 The data observed i n a study of the remedy
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CC
2.2. A test is used for examination of two groups of children
randomly selected from Urban and Rural areas of a city
respectively. The results are listed in table3-3. Are the
positive rates of two groups of children are significantly
different ?
group positive positive rate(%)
Urban 58 18 31.0
Rural 147 26 17.7
total
table3-3 The positive rates of a test for two groups of children
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