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natasha_nf
Fluorite | Level 6

Hi,

 

I'm trying to perform 2 logistic regressions controlled for some variables.

 

exposure: quartiles of processed food consumption

 

outcome model 1: binary depression (yes or no)

outcome model 2: mental disorders (4 disorders)

 

confoundings: (categorical and numerical) sex, age, education, etc.

 

Could anyone help me with the code?

 

Thank you in advance.

 

1 REPLY 1
Reeza
Super User

For your first model, here's an example:

https://documentation.sas.com/?docsetId=statug&docsetTarget=statug_logistic_examples02.htm&docsetVer...

 

The second case is either Ordinal or Nominal Regression, not Logistic.

Here's an example of nominal regression:

https://documentation.sas.com/?docsetId=statug&docsetVersion=15.1&docsetTarget=statug_logistic_examp...

 


@natasha_nf wrote:

Hi,

 

I'm trying to perform 2 logistic regressions controlled for some variables.

 

exposure: quartiles of processed food consumption

 

outcome model 1: binary depression (yes or no)

outcome model 2: mental disorders (4 disorders)

 

confoundings: (categorical and numerical) sex, age, education, etc.

 

Could anyone help me with the code?

 

Thank you in advance.

 


 

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