Performs the Cochran-Mantel-Haenszel test (D.A. Murray).
Options
PRINT = string token |
Controls printed output (test ); default test |
---|---|
CLASSIFICATION = factors |
Classifying factors for a DATA variate or classifying factors for the R×C tables in a DATA table |
CONTINUITY = string token |
Continuity correction for 2×2×K Mantel-Haenszel test (correct , none ); default corr |
CIPROBABILITY = scalar |
Size of confidence interval for common odds ratio in 2×2×K tables; default 0.95 |
Parameters
DATA = tables or variates |
Data values |
---|---|
STATISTIC = scalars |
Save the test statistic |
PROBABILITY = scalars |
Save the probability for the test |
ODDSRATIO = scalars |
Save the common odds ratio for the 2×2×K table case |
LOWER = scalars |
Save lower limit of the confidence interval of odds ratio |
UPPER = scalars |
Save upper limit of the confidence interval of odds ratio |
Description
CMHTEST
performs the Cochran-Mantel-Haenszel test for average partial association between two nominal variables adjusting for control variables. The data are represented by a series of K (R×C) contingency tables, where K represents the strata for the control variables. If there are two or more control variables then these are combined to form a single factor (K
) with a level for every combination of the control factors. For the case where there are two dichotomous variables of interest, i.e. a series of K (2×2) tables, CMHTEST
calculates the Mantel-Haenszel chi-square statistic, and an overall estimate of relative risk as described in Mantel & Haenszel (1959). Otherwise the Generalized Cochran-Mantel-Haenszel test is used, as in Landis et al. (1978).
The data can be supplied as a table using the DATA
parameter where the first two classifying factors of the table indicate the variables of interest, and the remaining factors are combined to form a factor with a level for every combination of the remaining factors. If the first two classifying factors are not the ones of interest, then the CLASSIFICATION
option can be used to supply the names of the classifying factors to use. The data can also be supplied in variates, with the CLASSIFICATION
option set to the classifying factors and the first two factors in the list indicating the variables of interest. For a series of K (2×2) tables the CONTINUITY
option can be used to control whether to apply a continuity correction to the Mantel-Haenszel chi-square test.
The PRINT
option controls printed output, with settings:
test |
the test statistic and probability, also the common odds ratio and confidence interval when there are K (2×2) tables |
---|
A 95% confidence interval is calculated for the common odds ratio, but this can be changed by setting the CIPROBABILITY
option to the required value (between 0 and 1).
The test statistic can be saved using the STATISTIC
parameter, and the probability can be saved using the PROBABILITY
parameter. For a series of K (2×2) tables the odds ratio, lower and upper odds-ratio confidence interval can be saved with the ODDSRATIO
, LOWER
and UPPER
parameters respectively.
Options: PRINT
, CLASSIFICATION
, CONTINUITY
, CIPROBABILITY
.
Parameters: DATA
, STATISTIC
, PROBABILITY
, ODDSRATIO
, LOWER
, UPPER
.
Method
For each table i, i = 1…K
ai | bi | n1i |
ci | di | n2i |
m1i | m2i | Ni |
the Mantel-Haenszel Test is calculated by:
MH = ( |( ∑ ai – ∑((n1i × m1i) / Ni) )| – 0.5 )2
/ ∑( (n1i × n2i × m1i × m2i) / (Ni2 × (Ni– 1)) )
where the continuity correction (0.5) is used if option CONTINUITY=correct
. The common odds-ratio is calculated by
OR = ∑i=1 to K Ri / ∑i=1 to K Si
where
Ri = (ai × di) / Ni
Si = (bi × ci) / Ni
The variance for the odds-ratio is estimated using the method outlined in Robins et al. (1986).
The Generalized Cochran-Mantel-Haenszel test is calculated using the method of Landis et al. (1978).
Action with RESTRICT
If a parameter is restricted the statistics will be calculated using only those units included in the restriction.
References
Landis J,L., Heyman, E,R. & Koch, G.G. (1978). Average Partial Association in Three-way Contingency Tables: a Review and Discussion of Alternative Tests. International Statistical Review, 46, 237-254.
Mantel N. & Haenszel W. (1959). Statistical Aspects of the Analysis of Data From Retrospective Studies of Disease. Journal National Cancer Institute, 22(4), 719-748.
Robins J, Breslow N, & Greenland S. (1986). Estimators of the Mantel-Haenszel variance consistent in both sparse data and large-strata limiting models. Biometrics, 42, 311-323.
See also
Procedures: CHISQUARE
, CHIPERMTEST
, FCORRELATION
, KCONCORDANCE
, KTAU
, LCONCORDANCE
, SPEARMAN
.
Commands for: Basic and nonparametric statistics, Regression analysis.
Example
CAPTION 'CMHTEST example 1',\ !t('Data from Mantel & Haenszel (1959) Study of women',\ 'with epidermoid and undifferentiated pulmonary carcinoma');\ STYLE=meta,plain FACTOR [LEVELS=2; LABELS=!t('Pulmonary carinoma','Controls')] cases FACTOR [LEVELS=2; LABELS=!t('Smoker','Nonsmoker')] Smoke FACTOR [LEVELS=4; LABELS=!t('under 45','45-54','55-64','over 65')] Age FACTOR [LEVELS=3; LABELS=!t('Housewives','White-collar','Other')] Occupation TABLE [CLASS=cases,Smoke,Age,Occupation; MARGINS=no] pulmonary READ pulmonary 0 3 1 2 2 4 3 2 0 0 0 1 2 0 0 5 2 1 6 4 6 11 6 3 0 2 3 1 2 1 0 2 1 0 1 0 7 6 10 24 18 12 49 23 19 42 11 15 : CMHTEST pulmonary CAPTION 'CMHTEST example 2',\ !t('Data from Landis, Heyman & Koch (1978) Deaths from leukemia (LD)',\ 'observed at Atomic Bomb Casualty Commission'); STYLE=meta,plain FACTOR [NVALUES=60; LEVELS=5; LABELS=!t('0-9','10-19','20-34','35-49',\ '50+')] Ages; !(12(1...5)) FACTOR [NVALUES=60; LEVELS=2; LABELS=!t('LD','NLD')] Status; !((6(1,2))5) FACTOR [NVALUES=60; LEVELS=6; LABELS=!t('Not in city','0-9','10-49','50-99',\ '100-199','200+')] Dose; !((1...6)10) VARIATE [NVALUES=60] Deaths ; !(0,7,3,1,4,11,5015,10752,2989,694,418,387,5,4,\ 6,1,3,6,5973,11811,2620,771,792,820,2,8,3,1,3,9,5669,10828,2798,797,\ 596,624,3,19,4,2,1,10,6158,12645,3566,972,694,608,3,7,3,2,2,6,3695,\ 9053,2415,655,393,289) CMHTEST [CLASS=Dose,Status,Ages] Deaths