Hello everyone
I am using Nationwide Inpatient Sample for my research. I am looking for a trend in certain condition or procedure for example, trends of AFib in United states from 2003-20013. I am able to create trends to generate below mentioned baseline table with codes like
svy: tab age year, row col
svy: tab sex year, row col
svy: tab race year, col row
svy: tab diabetes year, col row
svy: tab smoking year, col row
This is the stata out put of above codes
svy: tab newage year, col row
(running tabulate on estimation sample)
Number of strata = 226 Number of obs = 45143
Number of PSUs = 6574 Population size = 213491.48
Design df = 6348
----------------------------------------------------------------------------------------------
| Calendar year
newage | 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 Total
----------+-----------------------------------------------------------------------------------
1 | .0789 .0695 .0907 .094 .0812 .1035 .109 .0962 .098 .0861 .0929 1
| .0235 .0202 .0265 .0253 .021 .0254 .0277 .0252 .0245 .0231 .0237 .0242
|
2 | .0883 .0755 .0806 .089 .0952 .0962 .0932 .1 .0967 .0901 .0952 1
| .0891 .0742 .0796 .081 .0833 .0797 .08 .0885 .0817 .0817 .0822 .0819
|
3 | .0724 .0744 .0761 .0846 .0909 .0993 .0947 .102 .1016 .0988 .1051 1
| .2094 .2097 .2155 .2209 .228 .2359 .233 .2587 .246 .2571 .2601 .2348
|
4 | .0836 .0889 .0838 .0894 .096 .0967 .0956 .0882 .0958 .0891 .093 1
| .3729 .3858 .3657 .3599 .371 .3543 .363 .3451 .3576 .3573 .3546 .362
|
5 | .0834 .0871 .0873 .0947 .0935 .1014 .0952 .088 .0947 .0853 .0893 1
| .305 .3101 .3128 .3128 .2967 .3046 .2963 .2825 .2902 .2807 .2795 .297
|
Total | .0812 .0834 .0829 .0899 .0936 .0988 .0954 .0926 .097 .0903 .0949 1
| 1 1 1 1 1 1 1 1 1 1 1 1
----------------------------------------------------------------------------------------------
Key: row proportions
column proportions
Pearson:
Uncorrected chi2(40) = 115.0889
Design-based F(34.14, 2.2e+05)= 2.3005 P = 0.0000
Note: strata with single sampling unit centered at overall mean.
.
. svy: tab female year, col row
(running tabulate on estimation sample)
Number of strata = 226 Number of obs = 45143
Number of PSUs = 6574 Population size = 213491.48
Design df = 6348
----------------------------------------------------------------------------------------------
Indicator| Calendar year
of sex | 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 Total
----------+-----------------------------------------------------------------------------------
0 | .0773 .0788 .0828 .0874 .0935 .0986 .0984 .0952 .0976 .0929 .0974 1
| .4534 .4497 .475 .4626 .4753 .4748 .491 .4896 .4792 .4896 .4885 .4759
|
1 | .0847 .0876 .0831 .0922 .0937 .099 .0927 .0901 .0964 .0879 .0926 1
| .5466 .5503 .525 .5374 .5247 .5252 .509 .5104 .5208 .5104 .5115 .5241
|
Total | .0812 .0834 .0829 .0899 .0936 .0988 .0954 .0926 .097 .0903 .0949 1
1 1 1 1 1 1 1 1 1 1 1 1
----------------------------------------------------------------------------------------------
Key: row proportions
column proportions
Pearson:
Uncorrected chi2(10) = 33.8803
This is the outcome I get by using those codes which i have converted in a table to get better and easy explanation.
Table 2 Baseline characteristics of study population, from
But how can I create Table 2, where there is a trend of specific variable for example here is a mortality trend among all population.
In above table first row showed percentage of mortality among all cases diagnosed with aortic valve disease in that specific year and subsequent rows showed mortality in different age group, sex, gender and so forth.
So I don't know what kind of code i can use to generate this second table and to get relative change.
Thanks.
I am using Nationwide Inpatient Sample for my research. I am looking for a trend in certain condition or procedure for example, trends of AFib in United states from 2003-20013. I am able to create trends to generate below mentioned baseline table with codes like
svy: tab age year, row col
svy: tab sex year, row col
svy: tab race year, col row
svy: tab diabetes year, col row
svy: tab smoking year, col row
This is the stata out put of above codes
svy: tab newage year, col row
(running tabulate on estimation sample)
Number of strata = 226 Number of obs = 45143
Number of PSUs = 6574 Population size = 213491.48
Design df = 6348
----------------------------------------------------------------------------------------------
| Calendar year
newage | 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 Total
----------+-----------------------------------------------------------------------------------
1 | .0789 .0695 .0907 .094 .0812 .1035 .109 .0962 .098 .0861 .0929 1
| .0235 .0202 .0265 .0253 .021 .0254 .0277 .0252 .0245 .0231 .0237 .0242
|
2 | .0883 .0755 .0806 .089 .0952 .0962 .0932 .1 .0967 .0901 .0952 1
| .0891 .0742 .0796 .081 .0833 .0797 .08 .0885 .0817 .0817 .0822 .0819
|
3 | .0724 .0744 .0761 .0846 .0909 .0993 .0947 .102 .1016 .0988 .1051 1
| .2094 .2097 .2155 .2209 .228 .2359 .233 .2587 .246 .2571 .2601 .2348
|
4 | .0836 .0889 .0838 .0894 .096 .0967 .0956 .0882 .0958 .0891 .093 1
| .3729 .3858 .3657 .3599 .371 .3543 .363 .3451 .3576 .3573 .3546 .362
|
5 | .0834 .0871 .0873 .0947 .0935 .1014 .0952 .088 .0947 .0853 .0893 1
| .305 .3101 .3128 .3128 .2967 .3046 .2963 .2825 .2902 .2807 .2795 .297
|
Total | .0812 .0834 .0829 .0899 .0936 .0988 .0954 .0926 .097 .0903 .0949 1
| 1 1 1 1 1 1 1 1 1 1 1 1
----------------------------------------------------------------------------------------------
Key: row proportions
column proportions
Pearson:
Uncorrected chi2(40) = 115.0889
Design-based F(34.14, 2.2e+05)= 2.3005 P = 0.0000
Note: strata with single sampling unit centered at overall mean.
.
. svy: tab female year, col row
(running tabulate on estimation sample)
Number of strata = 226 Number of obs = 45143
Number of PSUs = 6574 Population size = 213491.48
Design df = 6348
----------------------------------------------------------------------------------------------
Indicator| Calendar year
of sex | 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 Total
----------+-----------------------------------------------------------------------------------
0 | .0773 .0788 .0828 .0874 .0935 .0986 .0984 .0952 .0976 .0929 .0974 1
| .4534 .4497 .475 .4626 .4753 .4748 .491 .4896 .4792 .4896 .4885 .4759
|
1 | .0847 .0876 .0831 .0922 .0937 .099 .0927 .0901 .0964 .0879 .0926 1
| .5466 .5503 .525 .5374 .5247 .5252 .509 .5104 .5208 .5104 .5115 .5241
|
Total | .0812 .0834 .0829 .0899 .0936 .0988 .0954 .0926 .097 .0903 .0949 1
1 1 1 1 1 1 1 1 1 1 1 1
----------------------------------------------------------------------------------------------
Key: row proportions
column proportions
Pearson:
Uncorrected chi2(10) = 33.8803
This is the outcome I get by using those codes which i have converted in a table to get better and easy explanation.
Table 2 Baseline characteristics of study population, from
Variable | 2003 | 2004 | 2005 | 2006 | 2007 | 2008 | 2009 | 2010 | 2011 | P-value for trends |
Overall | 95062 | 11370 | 127207 | 143262 | 124210 | 119134 | 116941 | 94268 | 86457 | <0.001 |
Age(%) | ||||||||||
<65 | 36.8 | 35.7 | 36.4 | 38.5 | 37.8 | 38.4 | 37.6 | 39.2 | 38.8 | |
>=65 | 63.2 | 64.3 | 63.6 | 61.5 | 62.2 | 61.6 | 62.4 | 60.8 | 61.2 | |
Sex (%) | ||||||||||
Male | 76.0 | 75.1 | 74.3 | 73.0 | 72.3 | 72.1 | 71.2 | 70.9 | 70.3 | <0.001 |
Female | 24.1 | 24.9 | 25.7 | 27.0 | 27.7 | 27.9 | 28.8 | 29.1 | 29.7 | <0.001 |
Race (%) | ||||||||||
White | 56.7 | 57.9 | 56.1 | 57.5 | 56.1 | 59.9 | 60.7 | 62.8 | 63.7 | <0.001 |
Black | 6.4 | 7.5 | 6.8 | 8.7 | 10.3 | 10.3 | 11.0 | 13.7 | 14.4 | <0.001 |
Hispanics | 4.5 | 3.9 | 5.1 | 5.1 | 5.9 | 4.9 | 6.1 | 6.0 | 6.7 | <0.001 |
Others | 2.7 | 2.5 | 3.2 | 2.6 | 4.0 | 4.9 | 4.9 | 4.2 | 4.6 | |
Missing | 29.7 | 28.2 | 28.7 | 26.1 | 23.6 | 19.9 | 17.3 | 13.3 | 10.6 | <0.001 |
But how can I create Table 2, where there is a trend of specific variable for example here is a mortality trend among all population.
Table 2: In-hospital mortality (>60yrs of age) for Aortic Valve Disorders in US | |||||||||||||||
Year | 2000 | 2001 | 2002 | 2003 | 2004 | 2005 | 2006 | 2007 | 2008 | 2009 | 2010 | 2011 | 2012 | Relative Change | P-value for Trend |
Overall | 4.53% | 4.5% | 3.86% | 4.64% | 4.29% | 3.77% | 3.74% | 3.62% | 4.32% | 3.2% | 3.34% | 3.41% | 3.46% | -30.92% | <0.001 |
Age(years) | |||||||||||||||
60-69 | 2.56% | 2.59% | 2.03% | 3.14% | 2.73% | 1.99% | 2.32% | 2.55% | 2.37% | 1.76% | 2.3% | 1.7% | 2.26% | -13.27% | <0.001 |
70-79 | 4.03% | 4.43% | 3.51% | 4.24% | 4.31% | 3.58% | 3.63% | 3.02% | 3.98% | 3.08% | 3.33% | 3.22% | 3.19% | -26.33% | <0.001 |
>80 | 6.65% | 5.86% | 5.62% | 6.17% | 5.32% | 5.23% | 4.87% | 4.97% | 5.85% | 4.29% | 4% | 4.59% | 4.35% | -52.87% | <0.001 |
Male | 3.83% | 3.81% | 3.34% | 4.28% | 3.67% | 3.5% | 3.33% | 3.33% | 3.91% | 3.18% | 2.94% | 3.16% | 3.41% | -12.32% | <0.001 |
Female | 5.33% | 5.28% | 4.47% | 5.06% | 5.03% | 4.11% | 4.23% | 4% | 4.83% | 3.22% | 3.85% | 3.73% | 3.53% | -50.99% | <0.001 |
Non-hispanic Whites | 4.45% | 4.61% | 3.85% | 4.34% | 4.22% | 3.84% | 3.74% | 3.44% | 4.4% | 3.15% | 3.3% | 3.42% | 3.39% | -31.27% | <0.001 |
Others | 4.5% | 5.72% | 4.08% | 4.24% | 5.32% | 2.98% | 3.29% | 3.76% | 4.17% | 2.4% | 3.42% | 3.78% | 3.67% | -22.62% | <0.001 |
In above table first row showed percentage of mortality among all cases diagnosed with aortic valve disease in that specific year and subsequent rows showed mortality in different age group, sex, gender and so forth.
So I don't know what kind of code i can use to generate this second table and to get relative change.
Thanks.
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