| Literature DB >> 31304393 |
Jessie P Bakker1, Jennifer C Goldsack2,3,4, Michael Clarke5, Andrea Coravos3,6,7, Cynthia Geoghegan8, Alan Godfrey9, Matthew G Heasley10, Daniel R Karlin3,11, Christine Manta12, Barry Peterson13, Ernesto Ramirez14, Nirav Sheth15, Antonia Bruno16, Emilia Bullis17, Kirsten Wareham18, Noah Zimmerman19, Annemarie Forrest2, William A Wood20.
Abstract
Mobile technologies, such as smart phone applications, wearables, ingestibles, and implantables, are increasingly used in clinical research to capture study endpoints. On behalf of the Clinical Trials Transformation Initiative, we aimed to conduct a systematic scoping review and compile a database summarizing pilot studies addressing mobile technology sensor performance, algorithm development, software performance, and/or operational feasibility, in order to provide a resource for guiding decisions about which technology is most suitable for a particular trial. Our systematic search identified 275 publications meeting inclusion criteria. From these papers, we extracted data including the medical condition, concept of interest captured by the mobile technology, outcomes captured by the digital measurement, and details regarding the sensors, algorithms, and study sample. Sixty-seven percent of the technologies identified were wearable sensors, with the remainder including tablets, smartphones, implanted sensors, and cameras. We noted substantial variability in terms of reporting completeness and terminology used. The data have been compiled into an online database maintained by the Clinical Trials Transformation Initiative that can be filtered and searched electronically, enabling a user to find information most relevant to their work. Our long-term goal is to maintain and update the online database, in order to promote standardization of methods and reporting, encourage collaboration, and avoid redundant studies, thereby contributing to the design and implementation of efficient, high-quality trials.Entities:
Keywords: Clinical trials; Medical research
Year: 2019 PMID: 31304393 PMCID: PMC6554345 DOI: 10.1038/s41746-019-0125-x
Source DB: PubMed Journal: NPJ Digit Med ISSN: 2398-6352
Fig. 1Preferred reporting items for systematic reviews and meta-analyses (PRISMA) flow diagram
Fig. 2A screenshot of the online database depicting the current layout and features
Inclusion criteria adopted to enable the identification of suitable feasibility studies
| Pre-review | Reported results of original data collection (for example, meta-analyses, editorials, letters, opinion pieces, and methods papers were excluded). |
| Population | Collected data from human participants (for example, studies that reported results of a computer simulation were excluded). |
| Stated a specific therapeutic area. | |
| Defined a participant population that either: | |
a. Included participants from the target population b. Included participants that would be generalizable to the target population. | |
| Intervention | Included at least one mobile technology meeting our definition for objective outcome (efficacy or safety) data capture. |
| Defined the specific technology used. | |
| Comparator | Specified a comparator (sensor performance and algorithm development studies only). |
| Outcome | Evaluated mobile technology/ies capturing objective outcomes data (for example, studies examining as the primary technology were excluded). |
| When mobile technology/ies were used as a therapeutic intervention, the study reported outcomes data. | |
| Study design | Described a feasibility study in line with our definition; specifically, a feasibility study addresses one or more of the following components: a. Performance of an outcome of interest against a comparator where the outcome of interest could be related to: i. Measurement performance of sensor ii. Algorithm performance (clinical endpoints); b. Human factors considerations (acceptability, tolerability and usability); c. Participant adherence; d. Completeness of data. |
| Captured data outside of a clinical setting | |
| Reported data from a participant sample (for example, case studies were excluded; however, n-of-1 studies[ | |
| Country of origin is reported to have “high’’ or “very high’’ human development by the United Nations Human Development Index, |
ePRO electronic patient-reported outcome
Data fields extracted from identified feasibility studies
| Field | Definition | Allowed values |
|---|---|---|
| Title | Free text | |
| Authors | Last name, initials | Free text |
| Journal | Name | Free text |
| Year | 2014, 2015, 2016, 2017, 2018 | |
| DOI | Digital object identifier. A unique alphanumeric string used to identify content and provide a persistent link to the manuscript’s online location. | Free text |
| Category | The type of study according to the authors’ objectives. | Sensor performance, algorithm development, operational feasibility, software development |
| Therapeutic area | A knowledge field that focuses on research and development of treatments for diseases and pathologic findings, as well as prevention of conditions that negatively impact the health of an individual. | Selected from a list of FDA-approved drugs by therapeutic area, |
| Medical condition | An abnormal state of health that interferes with normal or regular feelings of wellbeing. | Free text |
| Concept of interest | The aspect of an individual’s clinical, biological, physical, or functional state, or experience that the assessment is intended to capture (or reflect). | Free text |
| Outcome assessment | The measureable characteristic that is influenced or affected by an individuals’ baseline state or an intervention as in a clinical trial or other exposure. | Free text |
| Comparator measure | The measure used to benchmark the digital measure against. | Free text |
| Technology | A description of the sensor casing and modality as experienced by the participant. | Adhesive patch, camera, chest strap, continuous glucose monitor, holter monitor, implantable, smart clothing, smart phone, smart shoe, smart watch, tablet, wearable, Wearable sensor array. |
| Sensor(s) | The component of the technology that detects or measures a physical property and records, indicates, or otherwise responds to it. | Free text |
| Make, model manufacturer | The make, model and manufacturer of the technology. | Free text |
| Wear location | Where the technology is positioned on the participant’s body. | Free text |
| Algorithm/ analysis software | Name and version. | Free text |
| Sample size | Total number of participants in the feasibility study. |
|
| Participant age | Infants <1year | Infants, children, adolescents, adults, older adults |
| Children 1–10 | ||
| Adolescent 11–17 | ||
| Adult 18–64 | ||
| Older adult 65+ | ||
| Participant gender | Gender or sex. | Male, female, both, unknown |