The European Medicines Agency held a 2 day international workshop
in London [11th -12th December 2017] to define the opportunities and challenges around implementation of a
common health data model in Europe to support regulatory decision making. The
expected outcome of the workshop was agreement of guiding principles for the
development of a Common Data Model (CDM) in Europe, including key criteria for
validation in the context of regulatory decision-making.
A
common data model could help harmonise healthcare data across multiple data
sets and provide a mechanism to conduct pan-European studies in a timely manner
to address regulatory questions. At the same time, applying a common model to
European data has multiple challenges. The meeting brought together
regulators with academia, data holders and the pharmaceutical industry.
Sessions included talks from experts from North America (FDA, Harvard, Duke,
Georgia Tech ...) and the European region (Erasmus, Utrecht, CBG-MEB, EMA ...) discussing lessons learned and current
challenges in very large current clinical data resources, regulatory
verification and related issues. Common data model case studies considered
included Sentinel – the Harvard-based FDA system for accessing patient data
from 16 health data partners across the USA and CNODES (the Canadian Network
for Operational Drug Effect Studies) which can access data on 100 million patients
– a similar scale to Sentinel.
The U.S. Food and Drug Administration's (FDA) Sentinel Initiative is a long term approach which uses a common health data model
to improve the FDA’s ability to identify and explore safety issues for medical
products. Sentinel actively surveys pre-existing electronic healthcare data
from multiple sources.
Consistent themes included ensuring the relevance of evolving common data
models to health policy, keeping timelines as short as practical,
interoperability, consent and related ethical issues (data custodians, patient data protection and privacy), and careful internal and
external validation of clinical definitions, data, software and analytical
models.
From the perspective of health professionals, policy makers, regulators
and the public, key questions included whether clinical outcomes from common
data models are generalisable or only relevant to specific sub-populations
based on geography, genetics, demographics and/or complex co-morbidity. In the era of precision medicine there is the
clear need is to avoid “right” answers from the wrong clinical populations and
“wrong” answers from the right populations.
Further key points considered included: what is the cost of developing
and maintaining validated CDMs; who should pay; whether updating existing
databases is a sufficient approach or rather new more robust databases are
needed.
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