Domain specifications are guidance for implementing the CDISC SDTM to build datasets for collected or derived data from tobacco product studies. TIG domain specifications are organized in the following sections:
All specifications begin with the name of the domain and the expected record structure for the resulting dataset.
A domain specification table to describe the domain's variables and their attributes follows the domain name and record structure. Each table includes rows for all required and expected variables for a domain and for a set of permissible variables. There is one row for each variable with columns to describe expected attributes of the variable in resulting datasets. The columns in a domain specification table are:
Specification Table Column | Purpose |
---|---|
Variable Name | Specifies the name of the variable in the resulting dataset. |
Variable Label | Specifies a descriptive label for the variable. |
Type | Specifies the data type of the variable. Values for in this column are:
|
Controlled Terms, Codelist, or Format | Specifies any controlled terminology or formats applicable to the variable. Values in this column are:
|
Role | Specifies the role of the variable in the resulting dataset including information conveyed by the variable in the context of a data record and how the variable can be used. Values in this column are:
The set of qualifier variables can be further categorized into 5 subclasses:
SDTM The SDTMIG for Human Clinical Trials is based on the SDTM’s general framework for organizing clinical trial information that is to be submitted to regulatory authorities. The SDTM is built around the concept of observations collected about subjects who participated in a clinical study. Each observation can be described by a series of variables, corresponding to a row in a dataset. Each variable can be classified according to its role. A role determines the type of information conveyed by the variable about each distinct observation and how it can be used. Variables can be classified into 5 major roles:
The set of Qualifier variables can be further categorized into 5 subclasses:
For example, in the observation, "Subject 101 had mild nausea starting on study day 6," the Topic variable value is the term for the adverse event, "NAUSEA". The Identifier variable is the subject identifier, "101". The Timing variable is the study day of the start of the event, which captures the information, "starting on study day 6," whereas an example of a Record Qualifier is the severity, the value for which is "MILD". Additional Timing and Qualifier variables could be included to provide the necessary detail to adequately describe an observation. |
CDISC Notes | Provides additional context for the intended of the variable and may include:
|
Core | Specifies expectations for inclusion of the variable in the resulting dataset. Values in this column are:
|