This page is part of the Personal Health Device FHIR IG (v1.1.0: STU 1) based on FHIR (HL7® FHIR® Standard) R4. This is the current published version in its permanent home (it will always be available at this URL). For a full list of available versions, see the Directory of published versions
This guide applies to any situation where Continua-compliant PHD data needs to be mapped to FHIR resources and/or such data needs to be read and interpreted by a consumer. In most cases PHDs are used in remote patient monitoring efforts but that does not mean within-enterprise uses of PHDs are excluded. However, it is important to emphasize that this guide does NOT specify anything about how the collected data is used.
Remote patient monitoring involving the use of PHDs typically involves monitoring of vital signs, blood sugar levels, etc. on a scheduled basis, to allow care providers to observe the health of their patients. Patients are enrolled to the remote health monitoring program on request (e.g. prescription) of their care provider and obtain the necessary equipment and facilities in part or completely from the service provider. Ideally, the system should be simple enough that patients are able to install and operate the necessary equipment themselves, but that may not always be the case. Remote patient monitoring could also be fitness related, and the 'provider' may be a health care provider, a coach, or the individual. The same need to collect data from PHDs is required.
The scope of the remote patient monitoring includes:
A person can self-monitor and manage lifestyle aspects that affect the diabetes condition, and to enhance the value of the glucose readings from a portable glucose meter. This self-monitoring and management process is facilitated by one or more wearable monitors and interactions with one or more PHGs and back-end servers. The feedback the person receives is a function of continuous measurements collected by the monitor(s) they wear, periodic measurements about their physical state from a portable glucose meter or from the wearable monitor itself, and from manual entry of additional details. Also, the person may receive feedback about these measurements from a healthcare provider to support the treatment of that person’s diabetic condition. The purpose is both to ensure continued adherence to health monitoring and improvements in the relevant end-points such as quality of life, average measured glucose levels, etc.
One can manage his/her own health continuously by wearing sensors. A wearable sensor measures body activity, blood pressure, and/or SpO2. The wearable sensor sends the measured data to the patient’s cell-phone (PHG). The PHG receives the measurements and sends it to the healthcare provider’s back-end server. This transfer allows the healthcare provider to continuously monitor the patient’s condition with minimal impact on the patient’s daily life. Advice or further actions can be administered as needed. An application may also read the accumulated data from the healthcare provider’s server and present it to the patient in a meaningful fashion along with any advice and further courses of action from the health care provider. This use case may require complete protection of Personal Health Information (PHI), maybe for monitoring AIDs, to free and intentional exposure of PHI such as with fitness devices or a coach monitoring a cross country team's training.
Another use case is participation in medical research. For example, a medical center associated with a large university is conducting a study on memory impairment interventions in the elderly. The study involves the patients participating in adaptive on-line memory ‘games’. The data is collected in association with a home healthcare service. The use of remote monitoring allows the study to collect a large set of data with minimal impact on the involved patients. The automated approach reduces cost, increases sample size, allows the collection of larger amounts of data from each participant, and the minimal impact is likely to result in longer participation times. Data anonymity is often important in such studies.