| Literature DB >> 30868107 |
Andrea Coravos1, Sean Khozin2, Kenneth D Mandl1.
Abstract
Biomarkers are physiologic, pathologic, or anatomic characteristics that are objectively measured and evaluated as an indicator of normal biologic processes, pathologic processes, or biological responses to therapeutic interventions. Recent advances in the development of mobile digitally connected technologies have led to the emergence of a new class of biomarkers measured across multiple layers of hardware and software. Quantified in ones and zeros, these "digital" biomarkers can support continuous measurements outside the physical confines of the clinical environment. The modular software-hardware combination of these products has created new opportunities for patient care and biomedical research, enabling remote monitoring and decentralized clinical trial designs. However, a systematic approach to assessing the quality and utility of digital biomarkers to ensure an appropriate balance between their safety and effectiveness is needed. This paper outlines key considerations for the development and evaluation of digital biomarkers, examining their role in clinical research and routine patient care.Entities:
Year: 2019 PMID: 30868107 PMCID: PMC6411051 DOI: 10.1038/s41746-019-0090-4
Source DB: PubMed Journal: NPJ Digit Med ISSN: 2398-6352
Digital biomarker examples
| Categorya | Definitiona | Examplea | Corresponding Digital Biomarker Examples |
|---|---|---|---|
|
| A biomarker that indicates the potential for developing a disease or medical condition in an individual who does not currently have clinically apparent disease or the medical condition. | Breast Cancer genes 1 and 2 (BRCA1/2) mutations may be used as a susceptibility/risk biomarker to identify individuals with a predisposition to develop breast cancer. | [*] Detect cognitive changes in healthy subjects at risk of developing Alzheimer's disease using a video game platform.[ |
| [**] Classify adults at high risk of late-onset Alzheimer's disease using computerized cognitive testing.[ | |||
| [*] Reduce key risk metrics for anterior cruciate ligament injury during jump landings using inertial sensor-based feedback.[ | |||
|
| A biomarker used to detect or confirm the presence of a disease or condition of interest or to identify individuals with a subtype of the disease. | Repeated blood pressure readings obtained outside the clinical setting in adults 18 years and older may be used as a diagnostic biomarker to identify those with essential hypertension. | [*] Diagnose ADHD in children using eye vergence metrics.[ |
| [*] Detect arrhythmias using convolutional neural networks and a wearable single-lead heart monitor.[ | |||
| [*] Detect depression and Parkinson’s disease using vocal biomarkers.[ | |||
| [*] Diagnose asthma and respiratory infections using smartphone-recorded cough sounds.[ | |||
|
| A biomarker measured serially for assessing the status of a disease or medical condition or for evidence of exposure to (or effect of) a medical product or an environmental agent. | Prostate-specific antigen (PSA) may be used as a monitoring biomarker when assessing disease status or burden in patients with prostate cancer. | [**] Monitor signs of Parkinson's disease using smartphone-based measurements.[ |
| [*] Quantify Parkinson’s disease severity using smartphones and machine learning.[ | |||
| [**] Track time and location of short-acting beta-agonist inhaler use using an attached wireless sensor.[ | |||
| [*] Predicting sleep/wake patterns from a 3-axis home-based accelerometer using deep learning.[ | |||
| [*] Detection of nocturnal scratching movements in patients with atopic dermatitis using accelerometers and recurrent neural networks.[ | |||
|
| A biomarker used to identify the likelihood of a clinical event, disease recurrence, or progression in patients who have the disease or medical condition of interest. | Increasing prostate-specific antigen (PSA) may be used as a prognostic biomarker when evaluating patients with prostate cancer during follow-up, to assess the likelihood of cancer progression. | Stratify mental health conditions and predict remission using passively collected smartphone data.[ |
| Detect post-acute care deterioration in patients at home, applying machine learning to multi-sensor digital ambulatory monitoring.[ | |||
|
| A biomarker used to identify individuals who are more likely than similar individuals without the biomarker to experience a favorable or unfavorable effect from exposure to a medical product or an environmental agent. | Human leukocyte antigen allele (HLA)–B*5701 genotype may be used as a predictive biomarker to evaluate human immunodeficiency virus (HIV) patients before abacavir treatment, to identify patients at risk for severe skin reactions. | Predict autism risk in the siblings of children with autism, using an EEG biomarker.[ |
| Detect asymptomatic atrial fibrillation (AF) as a stroke risk factor, remotely through a connected device.[ | |||
|
| A biomarker used to show that a biological response has occurred in an individual who has been exposed to a medical product or an environmental agent. | Blood pressure may be used as a pharmacodynamic/response biomarker when evaluating patients with hypertension, to assess response to an antihypertensive agent or sodium restriction. | Measure cognitive performance with the Cambridge Neuropsychological Test Automated Battery (CANTAB) to test the effects of erythropoietin.[ |
| Measure blood pressure using a digital sphygmomanometer to assess response to antihypertensive therapy.[ |
aSelected from the FDA-NIH “Biomarkers, EndpointS, and other Tools” (BEST) classification for traditional biomarkers
[*] Digital biomarker under development
[**] Digital biomarker in use (in a clinical trial or an FDA cleared/approved digital health product, or a digital health app in use not requiring approval)
Fig. 1Digital biomarker products. Five products, all detecting a similar digital endpoint, are constructed with differing, modular approaches. In the first column are five products to detect atrial fibrillation: AliveCor, CardioGram, Apple Watch plus ECG App, Fitbit, and Xiaomi. Across the top, are major software modules comprising the product, from the operating system on the left to the user interface on the right. Some modules are created by the product manufacturer and others by a third party. If the listed organization manufacturers the component, the module is represented in green. If instead it is created by a different party, the color is gray. These differently composed products require different strategies for verification, validation, and likely also regulatory clearance. Figures are reused with permission from the copyright owners, and the Apple watch image is Courtesy of Apple Inc