| Literature DB >> 33260207 |
Subha Madhavan1, Lisa Bastarache2, Jeffrey S Brown3, Atul J Butte4, David A Dorr5, Peter J Embi6, Charles P Friedman7, Kevin B Johnson2, Jason H Moore8, Isaac S Kohane9, Philip R O Payne10, Jessica D Tenenbaum11,12, Mark G Weiner13, Adam B Wilcox14, Lucila Ohno-Machado15,16.
Abstract
Our goal is to summarize the collective experience of 15 organizations in dealing with uncoordinated efforts that result in unnecessary delays in understanding, predicting, preparing for, containing, and mitigating the COVID-19 pandemic in the US. Response efforts involve the collection and analysis of data corresponding to healthcare organizations, public health departments, socioeconomic indicators, as well as additional signals collected directly from individuals and communities. We focused on electronic health record (EHR) data, since EHRs can be leveraged and scaled to improve clinical care, research, and to inform public health decision-making. We outline the current challenges in the data ecosystem and the technology infrastructure that are relevant to COVID-19, as witnessed in our 15 institutions. The infrastructure includes registries and clinical data networks to support population-level analyses. We propose a specific set of strategic next steps to increase interoperability, overall organization, and efficiencies.Entities:
Keywords: covid-19; data network; ehr; policy; public health
Mesh:
Year: 2021 PMID: 33260207 PMCID: PMC7665546 DOI: 10.1093/jamia/ocaa287
Source DB: PubMed Journal: J Am Med Inform Assoc ISSN: 1067-5027 Impact factor: 4.497
Registries and clinical data networks based on EHR-derived data
| Type of Data Resource | Benefits | Challenges |
|---|---|---|
| Disease-based (eg, COVID-19) registry |
Centralized harmonization and curation of data Easier to manage Specific data items for the disease are harmonized and curated centrally Feasibility of informed consent for use of data |
Privacy and institutional risks associated with transferring data to a central repository Less transparency on data use Comparisons with other diseases not possible Threat of a single-point-of-failure Labor intensive if each site needs to standardize and curate the data |
| Clinical data network |
Typically involves a distributed network of clinics, HPOs and/or research centers Data not restricted to patients with the disease, or to data items directly related to the disease Comparisons with “controls” and with patients with other diseases is possible No single point of failure unless there is dependency on a central hub |
High number of individuals and records requires additional security and privacy safeguards Detailed, curated data on the disease of interest is not always available Harmonization of complex data elements is hard to coordinate Analytics may require special methods Informed consent may not be feasible |
Abbreviation: HPO, health provider organization.
Figure 1.COVID-19 data initiatives. Initiatives are categorized by data type, public/private access, and individual- or aggregate-level data. Inventory resources classified as Individual indicate that case-level data (protected health information, limited data sets, or HIPAA “deidentified” data) is available to users of the resource. Resources classified as Aggregate indicate that summaries and averages are available to users of the resource. Bubble size = estimated size of available data. The colors indicate the types of data available to users of the resource. Only resources with a website and contact information are included (see Table 2 for URLs of individual resources and the scale of each resource).
Partial list of COVID-19 data initiatives
| Scale | Initiative | Resource name |
|
|---|---|---|---|
| Global | 4CE | Consortium for Clinical Characterization of COVID-19 by EHR (4CE) |
|
| Apple Mobility | Apple Mobility Trends Reports |
| |
| ASM | American Society of Microbiology COVID Research Registry |
| |
| C-19RD | COVID-19 research database |
| |
| CORD-19 | COVID-19 Open Research Dataset Challenge (CORD-19) |
| |
| COVID-19 DDI | COVID-19 Data Discovery Index |
| |
| Evidence Accelerator | FDA Evidence Accelerator program |
| |
| Facebook Density | Facebook population density |
| |
| Hopkins Resource Center | Johns Hopkins Coronavirus Resource Center |
| |
| Host Genetics | COVID-19 Host Genetics Initiative |
| |
| NY Times COVID-19 | NY Times COVID-19 Data |
| |
| OHDSI | OHDSI study-a-thon |
| |
| Our World in Data | Our World in Data |
| |
| Pandemic Data Room | Flattening the curve: COVID-19 Pandemic Data Room Visualization Challenge |
| |
| R2D2 | Reliable Response Data Discovery for clinical COVID-19 consultations using patient observations |
| |
| SECURE-IBD | Surveillance, Epidemiology of Coronavirus (COVID-19) under research exclusion |
| |
| TrinetX | TriNetX network |
| |
| Worldometer | Worldometer |
| |
| National | ACT | ACT Network COVID-19: Developing COVID-19 phenotype and ontology |
|
| ACTIV | ACTIV (Accelerating COVID-19 Therapeutic Interventions and Vaccines): NIH clinical trials network for COVID vaccines testing |
| |
| BEAT19 | Behavior, Environment and Treatments for Covid-19 (BEAT19) |
| |
| C19HCC | COVID-19 Healthcare Coalition (C19HCC) |
| |
| C3I | Cancer Center Cessation Initiative (C3I) + COVID |
| |
| CCC19 | COVID Cancer Consortium (CCC19) |
| |
| CIVET | North American AIDS Cohort Collaboration on Research and Design (NA-ACCORD) Corona Infectious Virus Epidemiology Team (CIVET) |
| |
| COVID Tracking | The COVID Tracking Project |
| |
| CovidCP | CovidCP clinical trials registry | ||
| eMERGE | eMERGE network to support COVID research |
| |
| HD4Action | RWJF Health Data 4 Action COVID-19 Registry (with AcademyHealth, Health Care Cost Institute, CareJourney, and numerous health systems) |
| |
| N3C | N3C (National COVID Cohort Collaborative): building a nationwide COVID-19 cohort through informatics |
| |
| NHSN | CDC’s National Healthcare Safety Network (NHSN) COVID-19 module |
| |
| Optum | Optum |
| |
| PCORNet | PCORNet Mini/Thin CDM: Stand-alone, ancillary COVID-19 version of the CDM |
| |
| SCCM | Society of Critical Care Medicine: Discovery VIRUS COVID-19 registry |
| |
| Sentinel | FDA Sentinel |
| |
| SPHERES | CDC's SARS-CoV-2 Sequencing for public health emergency response, epidemiology, and surveillance |
| |
| US Mobility Data | US Mobility data |
| |
| Regional | CRISP | COVID-CRISP registry—diagnostic tests |
|
Figure 2.Conceptual model for an evolving digital public health ecosystem. A durable information infrastructure to overcome existing challenges requires careful coordination and leverage of existing resources. Most of the components for a future, integrated system are already in place, with the pathways moving forward requiring agreement or translation among standards, governance structures, and clear definitions of roles and responsibilities. “Chronic” public health issues refer to long-term challenges such as healthcare-acquired infections or prescription overdose.
Abbreviations: API, application programming interface; CDM, common data model; HIE, health information exchange.