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How to Create New Data Collection Fields When No CDASHIG Field Has Been Defined

Collection metadata can be extended when new data collection fields

 The naming conventions and other variable creation recommendations in CDASHIG are designed to allow collection of data regardless of subsequent inclusion in the SDTM, as well as to consistently facilitate transforming the collected data into submission datasets.

Prior to adding any new fields to a sponsor's study CRF, the CDASH Model should be reviewed to see if there is a root field that will work for the data collection need.

New data collection fields (not already defined in the CDASH Model) will fall under 1 of following categories.

NumCategoryImplementation
1Fields used for data cleaning purposes only and not submitted in SDTM datasets (e.g., --YN).The field --YN with Question Text "Were there any [interventions/events/findings]?" can be added to a domain for this purpose. Replace the 2 dashes (--) with the 2-character domain code, and create the Question Text or Prompt using generic Question Text or Prompt from the CDASH Model as a base. Always create custom data-cleaning/operational variables using consistent naming conventions.
2Fields with a direct mapping to a tabulation dataset variable.If a value can be collected exactly as it will be reported in the SDTM dataset (i.e., same value, same data type, same meaning, same controlled terminology), the SDTMIG variable name should be used as the data collection variable name in the operational database to streamline the mapping process. Extensions may be appended if needed to create a unique variable name in the collection database. Any collection variable whose meaning is the same as an SDTMIG variable should be a copy of the SDTMIG variable, and the meaning should not be modified for data collection.
3

Fields without a direct one-to-one mapping to SDTM datasets. 

  • If a study requires a field that is not identical to an SDTMIG field (e.g., collected data type is different from the data type in the corresponding SDTMIG variable), or the SDTMIG variable is derived from collected data, the operational database should use a variable with a different name from the SDTMIG variable into which it will be mapped.
    • Example 1: A study collects Findings data in a denormalized format and then maps the data to the normalized SDTM structure. The --TESTCD values can be used as the CDASHIG variable names, and the corresponding --TEST value can be used as the prompt on the CRF. (See Section 8.3.1, General CDASH Assumptions for Findings Domains, for more information.)
    • Example 2: Dates and times are collected in a local format, familiar to the CRF users, and then reported in the SDTM-specified ISO 8601 format. In the operational database, the CDASH variables --DAT and --TIM (if collected) map into the single SDTM variable (--DTC).
    • Example 3: If the mapping to SDTM is similar, but not direct, "C" can be included before the root variable name to indicate a "collected" version of the variable to which that data will map. For example, if an injection is to be administered to a subject’s left thigh, right thigh, left arm, or right arm, the sponsor may create the variable EXCLOC. The SDTM mapping would split these into EXLOC and EXLAT, which would avoid having to split the collection of the data into 2 fields on the CRF.
  • An SDTM variable that is not defined in the SDTM version being used by the sponsor can be included as a non-standard variable (NSV)/supplemental qualifier.

  • If a study requires a field that is not defined in CDASH and the SDTM with the same meaning or intent (e.g., would map to SDTM SUPP--), a unique name should be assigned based on sponsor business rules using CDASH naming fragments (e.g., --DAT, --TIM) as appropriate and CDISC variable naming fragments where possible. (See the SDTMIG appendices.)



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