Post Production Changes in clinical data management

Post production changes in clinical data management can be difficult to navigate, and a lack of talented pharmaceutical industry resources has driven up demand for Clinical Data Managers . In the last 4 years alone, massive growth has come for clinical data managers resulting in a more than 93 percent growth rate according to Recruiter.com. Those who understand what do with difficult tasks, like dealing with post-production changes (PPCs) or mid-study updates (MSUs) after a clinical database has gone live, or into the production environment, are scarce.

Post-production changes (PPC) in clinical data management often include changes to forms, structures, fields and/or edit checks, and they can be attributed to planned or unplanned updates, meaning:

    • Planned post-production changes (PPCs) refer to study specific updates that were known by a clinical data manager in advance or specified in the clinical study protocol or an amendment; and
    • Unplanned post-production changes (PPCs) refer to updates not included in the clinical study protocol and are needed for reasons that may include Sponsor requests or misinterpretation of, or new knowledge about, the clinical study protocol.

In either case, a post-production change (PPC) can result in a disruption of the clinical study and present many challenges to the timelines and budget. In speaking from experience, and further with other Clinical Data Managers at MMS, there multiple ways to navigate these challenges.

Anticipate potential post-production changes

In the clinical data management environment, a post-production change (PPC) or mid-study update (MSU) is almost inevitable in the evolving pharmaceutical industry. Thus, clinical data managers can anticipate and plan for these possible updates to mitigate the risk of the post-production change (PPC) derailing timelines.

We recommend that clinical data managers:

  • Identify possible updates before go-live,
  • Consider the time it will take to implement a post-production change (PPC), should it be required, and
  • Include buffer timelines in the planning in case of added issues.
    As with any project, clear communication and setting expectations for timeline impacts is crucial and should be done before commencing with any post-production changes (PPC).

Justification, impact assessment, and validation

A solid justification for the post-production change (PPC) must be provided. Clinical data managers should ask, “why is the update necessary?”

Once this question is answered, the next important consideration is the impact of the post-production change (PPC). What impact will this update have on clinical data that is already present in the database? On top of this, it needs to be stated if the update will apply to existing data or only to newly-entered data.

All post-production changes (PPC) will need to be validated through user acceptance testing (UAT). If the update is applicable to existing and new data, then it is worth considering a test of the post-production change (PPC) on a live copy of the clinical study first. This will help in assessing the impact of the changes on existing clinical data.

Clinical data managers need to maintain the integrity of clinical data

Any updates to the already existing database could undermine the integrity of the clinical data.

For this reason, it is vital that clinical data managers follow an exact process, ensuring that all steps are documented thoroughly. It is equally important to consider the electronic data capture (EDC) software being utilized for the study, as there are limitations with many individual systems.

Approval by other teams is also key. Have any post-production changes (PPC) approved by Programmers and Statisticians to ensure data integrity in exports and gain confirmation that primary or secondary outcomes are not negatively impacted.

Post-production changes (PPC) can come with numerous obstacles. Yet, with proper planning and understanding of the necessary steps to take, clinical data managers can seamlessly integrate the updates into the ongoing database and train new data management professionals to fill pharmaceutical industry needs along the way.

Please click here to start a conversation with a clinical data manager about post-production changes (PPC) or if you have any questions related to this article.

Authored by:
Minya Engelbrecht, Data Team Lead, Biometrics.

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