| Literature DB >> 30501638 |
Abstract
BACKGROUND: Health-related apps have great potential to enhance health and prevent disease globally, but their quality currently varies too much for clinicians to feel confident about recommending them to patients. The major quality concerns are dubious app content, loss of privacy associated with widespread sharing of the patient data they capture, inaccurate advice or risk estimates and the paucity of impact studies. This may explain why current evidence about app use by people with health-related conditions is scanty and inconsistent. MAIN TEXT: There are many concerns about health-related apps designed for use by patients, such as poor regulation and implicit trust in technology. However, there are several actions that various stakeholders, including users, developers, health professionals and app distributors, can take to tackle these concerns and thus improve app quality. This article focuses on the use of checklists that can be applied to apps, novel evaluation methods and suggestions for how clinical specialty organisations can develop a low-cost curated app repository with explicit risk and quality criteria.Entities:
Keywords: Digital healthcare; Evaluation methods; Health apps; Health policy; Mobile phone; Quality and safety; Quality checklist; Regulation; Smart phone; e-Health; mHealth
Mesh:
Year: 2018 PMID: 30501638 PMCID: PMC6276222 DOI: 10.1186/s12916-018-1211-7
Source DB: PubMed Journal: BMC Med ISSN: 1741-7015 Impact factor: 8.775
Fig. 1Reasons why poor app quality is common and widely tolerated. These include the large number of apps, poor clinical engagement and understanding by developers, and lack of empirical testing
Some of the quality issues associated with health-related apps
| Problem area | Examples |
|---|---|
| Privacy issues | Lengthy privacy policies, harvesting of personal data with identifiers, transmission of sensitive data unencrypted [ |
| Poor quality content | Acne treatment apps using iPhone screen radiation [ |
| Vague or misleading description of app purpose | Breath alcohol detection app for phone with no alcohol sensor [ |
| Poor app usability | “Usability problem ratings ranged from moderate to catastrophic” in apps for type 2 diabetes [ |
| Ranking and cost not correlated with content | Shown for smoking cessation apps [ |
| Variable accuracy | Melanoma apps [ |
Potential stakeholders and roles in improving app quality along the app lifecycle
| Stage in app lifecycle | Stakeholders | Potential quality improvement processes | Examples of these processes |
|---|---|---|---|
| 1. Development | Developers, users, clinicians, standards bodies | Involve clinicians and users | BSI app standard PAS 277 [ |
| 2. Uploading to app repository | App repository owners | Check technical aspects | Apple App Store excludes drug-related apps unless developer is a product licence holder (see Box 2) |
| 3. App rating and review | Raters | Wisdom of the crowd | Can fail [ |
| 4. Selection from the app repository | App repository owners | Check quality | Complete app risk checklist [ |
| Users | Consider risks | Read iMedicalApps review | |
| 5. Using app for self-management | Users | Use with caution | RCP guidance for physicians [ |
| 6. Removal from app repository | Regulators, app repository owners | Respond to reviews, reports of adverse events, lack of evidence to support claims | Apple’s stance on health related apps (see Box 2) |
Abbreviations: BSI British Standards Institution, CE Conformité Européene, MRC Medical Research Council, PAS Publically available specification, RCP Royal College of Physicians
Fig. 2Comparison of Apple iTunes App Store or Google Play store rank (vertical axis, inverse scale) with the quality of the underlying evidence on which 47 smoking cessation apps are based. The higher the evidence score (x axis), the more the app conforms to relevant guidelines from the US Preventive Service Task Force. The lower the store rank (y axis, reverse scale), the higher the app is listed in the App Store or Google Play store. The brown ellipse shows a cluster of low quality, high ranked apps, while the blue ellipse shows a cluster of high quality, low ranked apps. Author’s analysis based on data from Abroms et al. [13]
Fig. 3Suggested process for organisations to establish a sustainable curated app repository, based on explicit quality and risk criteria