| Literature DB >> 35142627 |
Billy Zeng1, Riley Bove2, Simona Carini1, Jonathan Shing-Jih Lee1, J P Pollak3, Erica Schleimer2, Ida Sim1.
Abstract
Person-generated data (PGD) are a valuable source of information on a person's health state in daily life and in between clinic visits. To fully extract value from PGD, health care organizations must be able to smoothly integrate data from PGD devices into routine clinical workflows. Ideally, to enhance efficiency and flexibility, such integrations should follow reusable processes that can easily be replicated for multiple devices and data types. Instead, current PGD integrations tend to be one-off efforts entailing high costs to build and maintain custom connections with each device and their proprietary data formats. This viewpoint paper formulates the integration of PGD into clinical systems and workflow as a PGD integration pipeline and reviews the functional components of such a pipeline. A PGD integration pipeline includes PGD acquisition, aggregation, and consumption. Acquisition is the person-facing component that includes both technical (eg, sensors, smartphone apps) and policy components (eg, informed consent). Aggregation pools, standardizes, and structures data into formats that can be used in health care settings such as within electronic health record-based workflows. PGD consumption is wide-ranging, by different solutions in different care settings (inpatient, outpatient, consumer health) for different types of users (clinicians, patients). The adoption of data and metadata standards, such as those from IEEE and Open mHealth, would facilitate aggregation and enable broader consumption. We illustrate the benefits of a standards-based integration pipeline for the illustrative use case of home blood pressure monitoring. A standards-based PGD integration pipeline can flexibly streamline the clinical use of PGD while accommodating the complexity, scale, and rapid evolution of today's health care systems. ©Billy Zeng, Riley Bove, Simona Carini, Jonathan Shing-Jih Lee, JP Pollak, Erica Schleimer, Ida Sim. Originally published in JMIR mHealth and uHealth (https://mhealth.jmir.org), 10.02.2022.Entities:
Keywords: data sharing; health care; mobile health; patient-generated health data; telemedicine
Mesh:
Year: 2022 PMID: 35142627 PMCID: PMC8874926 DOI: 10.2196/31048
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Figure 1The person-generated data (PGD) integration pipeline comprises 3 components: PGD acquisition, aggregation, and consumption.
Figure 2This figure shows a JSON instance of a blood glucose value of 138. No other data or metadata are available.
Figure 3This figure shows an Open mHealth–compliant JSON instance of blood glucose with metadata showing that the value of 138 mg/dL is the average fasting value on awakening between February 5 and May 5, 2021.
Metadata of a sleep digital biomarker.
| Metadata category | Example questions |
| What is the biomarker about? | Sleep duration? Sleep quality? Sleep refreshment? |
| Definition (eg, for total sleep duration) | Time in bed? Time asleep? With or without micro awakenings? |
| Validity | How does the biomarker compare with a gold standard? |
| Error | How much does it vary from the gold-standard value? |
| Natural variability | What is the natural variability within and among individuals, for comparison to the error range? |
| Uncertainty/Confidence | What is the probability that the person was asleep during this time? |
| Bias | Are there systematic errors in different populations? |
| Identity | Was the measurement collected for the right person? |
| Context | Was there relevant contextual information? For example, at home versus on a trip across time zones. |
Selected standards relevant to mobile health.
| Standard | Description |
| HL7a FHIRb | HL7 refers to a set of international standards for transferring clinical and administrative data between health care providers. Within HL7, FHIR describes the data schema and application program interface for exchanging EHRc data. |
| IEEE 11073 | A family of standards for medical device communication, including point-of-care clinical devices and personal health devices. |
| IEEE 1752 | A family of standards for representation of person-generated health data, based on work by Open mHealth. |
| CTAd | A set of standards specifying how products work and the ways consumers interact with them. A subset of the standards pertain to consumer technologies in the health and fitness space [ |
aHL7: Health Level 7.
bFHIR: Fast Healthcare Interoperability Resources.
cEHR: electronic health record.
dCTA: Consumer Technology Association.