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1.
Sichuan Mental Health ; (6): 297-301, 2022.
Article in Chinese | WPRIM | ID: wpr-987386

ABSTRACT

The purpose of this paper was to introduce the basic knowledge of the causal graph model, the contents of the CAUSALGRAPH procedure and the method of constructing and searching adjustment sets based on the CAUSALGRAPH procedure in SAS/STAT. The causal graph model was the product of the combination of graph theory and probability theory. It could find all possible adjustment sets including the minimum adjustment set based on the action relationship between the variables set by the user. The contents of the CAUSALGRAPH procedure mainly included three identification criteria, two operating modes and one verification checking method. This paper analyzed the causal effect of two instances based on the CAUSALGRAPH procedure in SAS, and explained the output results.

2.
Sichuan Mental Health ; (6): 402-406, 2022.
Article in Chinese | WPRIM | ID: wpr-987370

ABSTRACT

The purpose of this paper was to introduce the theoretical basis of the causal mediation effect analysis and the specific method to realize an example by the causal mediation effect analysis with SAS. The theoretical basis of the causal mediation effect analysis included the following two aspects, the basic concept and defining the counterfactual framework of the causal mediation effect. The example was about whether the encouraging environment provided by parents would affect the cognitive development of children. The traditional multiple linear regression analysis, the causal mediation effect analysis without considering covariates and with considering covariates were used, respectively. By comparing the results obtained by the three analysis methods, the following conclusions were drawn: ① when there were the mediation variables in the data, it was not suitable to use traditional multiple linear regression analysis to replace the causal mediation effect analysis; ② when there were covariates in the data, it was not suitable to conduct causal mediation analysis under the condition of ignoring covariates.

3.
Sichuan Mental Health ; (6): 506-511, 2022.
Article in Chinese | WPRIM | ID: wpr-987355

ABSTRACT

The purpose of this paper was to introduce how to combine the propensity score analysis to reasonably carry out multiple linear regression analysis. Firstly, it introduced 3 basic concepts related to the propensity score analysis. Secondly, it presented the core contents of the propensity score analysis, that was, three matching methods. Thirdly, through an epidemiological survey example, it gave the whole process of how to use SAS software for the analysis. The contents were as follows: ① for the original data set, test whether the difference of covariates between the treatment group and the control group was statistically significant; ② directly implement the multiple linear regression analysis for the original data set; ③ the propensity score analysis was used to generate the matched data set; ④ for the matched data set, test whether the difference of covariates between the treatment group and the control group was statistically significant; ⑤ a reasonable multiple linear regression analysis was used for the matched data set.

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