| Literature DB >> 35451968 |
Ghada Alhussein1,2, Leontios Hadjileontiadis1,2,3.
Abstract
BACKGROUND: Osteoporosis is the fourth most common chronic disease worldwide. The adoption of preventative measures and effective self-management interventions can help improve bone health. Mobile health (mHealth) technologies can play a key role in the care and self-management of patients with osteoporosis.Entities:
Keywords: bone health; chronic disease; digital health; mHealth; meta-analysis; mobile phone; nutrition; osteoporosis; physical activity; risk assessment; self-management; systematic review
Mesh:
Year: 2022 PMID: 35451968 PMCID: PMC9073608 DOI: 10.2196/32557
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.947
Self-management features for both research and web-based apps.
| Self-management facet | Web-based market app feature | Research app features |
| Socialization |
Networking capabilities Data sharing |
Data sharing or export Communication |
| Scheduling |
Reminders Medication plan Diet programs Exercises |
Planning Medication plan Diet programs Exercises |
| Warnings |
Fractures Health warnings |
Notifications |
| User acceptability and usability |
Visual aids Aesthetic and minimalistic designa Recognition rather than recalla Error preventiona |
Visual aids |
| Personalization or adaptation to change | N/Ab |
Chatbot Artificial intelligence |
| Performance monitoring | N/A |
Feedback Progress tracking |
| Self-care |
Diagnosis |
Diagnosis |
aThese features were selected based on the 10 usability heuristics for user interface design of Nielsen and Mack [26], which were considered to be among the most frequent defects in mobile apps. It was not possible to evaluate some usability features in the research apps as they were not publicly available in app stores.
bN/A: not applicable.
Figure 1Scoring for research apps: (A) Mean score per app available in the literature, with a raw cutoff score of 2.7; apps above the threshold provide a more holistic self-management plan. (B) Selected features with their mean score representing how often they were present in the apps. Features with the highest scores were available in a larger number of apps; features with the lowest scores (ie, chatbot and artificial intelligence) were present in only 1 app [31-59].
Figure 2Web-based apps scores: (A) Mean score per app available in the web-based markets, with a raw cutoff score of 2.7; apps above the threshold provide a more holistic self-management plan. (B) Selected features with their mean score representing how often they were present in the apps. Features with the highest scores were available in more apps, whereas the features with the lowest scores were present in only 2 to 3 apps.
Figure 3Flow diagrams for the selection of (A) studies and (B) apps.
Research app characteristics.
| Author | App name | Sample size (age) | Experiment (participant sample size) | Platforma (private or public) | App purpose (direct or indirect) | Intervention period | Major outcome indices |
| Daly et al [ | PhysiApp-patient portal | 20 (>65 years) | App (20) | Android (public) | Remotely delivers and monitors an individually tailored, home-based multicomponent exercise program (indirectb) | 8 weeks | Feasibility, usability, physical activity enjoyment, changes in lower extremity function, and level of physical activity |
| Bhatia et al [ | Manage My Pain | 246 (mean age 57, SD 15 years) | App (111); no app (135) | Android and iOS (public) | Measures and monitors pain, function, and medication use (indirect) | 92-183 days | Anxiety, depression, pain catastrophizing, satisfaction, daily opioid consumption, engagement |
| Cairo et al [ | Vida app | 127 (>18 years) | App (66); no app (61) | Android and iOS (public) | Improves wellness outcomes for survivors of breast cancer (indirect) | 6 months | Physical activity, diary patterns, fatigue, and depression improvement |
| Hauser-Ulrich et al [ | SELMA-Chatbot | 102 (mean age 43.7 years) | App (59); no app (43) | Android and iOS | Promotes self-management of chronic pain (indirect) | 12 weeks | Pain-related impairment, intention to change behavior, and pain intensity |
| Suso-Ribera et al [ | Pain Monitor | 87 | App (43); no app (44) | N/Ac (private) | Improves existent medical treatments for patients with chronic musculoskeletal pain (indirect) | 4 weeks | Pain severity and interference, fatigue, depressed mood, anxiety, and anger |
| Licciardone et al [ | N/A | 102 (mean age 51 years) | App (52); no app (50) | N/A | Self-management of health‐related quality of life (indirect) | 3 months | Change in the SPADEd cluster score, changes in low back pain intensity, and back‐related disability |
| Geerds et al [ | N/A | 24 (older adults >60 years) | App (24); no app (24) | N/A (private) | Monitors postoperative functional outcome after hip fracture (indirect) | 12 and 18 weeks after surgery | Usability |
| Bailey et al [ | Hinge Health app | 10,264 (mean age 43.6 years) | App (10,264) | N/A (private) | Provides education, sensor-guided exercise therapy, and behavioral health support with one-on-one remote health coaching (indirect) | 12 weeks | Pain measured by the Visual Analog Scale, engagement levels, program completion, program satisfaction, condition-specific pain measures, depression, anxiety, and work productivity |
| Ryan et al [ | Striving app, Boning up | 290 (40-60 years) | App (84); e-book (84); no app (84) | Android and iOS (private) | Provides information and feedback and monitors behavior change (directe) | 12 months | Bone mineral density and trabecular bone scores |
| Papi et al [ | Nymbl | 35 (≥55 years) | App (35) | N/A (private) | Trains balance in the older population (indirect) | 3 weeks for all, with optional follow-up for 3 weeks | Physical activity level and adherence and IPAQf questionnaire |
| Sandal et al [ | selfBack | 51 (mean age 45.5, SD 15.0 years) | App (51) | N/A (private) | Improves self-management of low back pain (indirect) | 6 weeks | Pain-related disability (RMDQg) and multiple self-reported outcomes |
| Urena et al [ | m-SFT | 7 (53-61 years); the system usability was evaluated by 34 health experts (mean age 36.64 years) | App (7) | Android (private) | Easy-to-use tool for a health practitioner to record and assess the physical condition of older adults (indirect) | N/A | Usability questionnaire |
| Li et al [ | Caspar Health App or Website | 31 (≥60 years) | App (15); no app (16) | Android and iOS (public) | Postfracture telerehabilitation (direct) | 3 weeks | Motor performance, functional performance, and fall efficacy; degree of independence in ADLh performance |
| Kim et al [ | Fracture Liaison Service | 60 (>60 years) | App (60) | Android and iOS (public) | Fall prediction and monitoring (direct) | N/A | Usability |
| Amorim et al [ | Fitbit (activity tracker) and IMPACT app | 68 (mean age 58.4, SD 13.4 years) | App (34); no app (34) | Android and iOS (public) | Reduces care seeking, pain, and disability in patients with chronic low back pain after treatment discharge (indirect) | 15 months | Care seeking, pain levels, and activity limitation |
| Subasinghe et al [ | Tap4Bone: MyFitnessPal, Nike Training Club, and QuitBuddy | 35 (mean age 23.1 years) | App (18); no app (17) | Android and iOS (public) | MyFitnessPal is a free calorie counter app that helps people track their diet and exercise; Nike Training Club is a free app comprising >100 full-body workouts; QuitBuddy is a smoking cessation internet-based app (indirect) | 9 weeks | Feasibility and compliance |
| Arkkukangas et al [ | OEP app | 12 (70-83 years) | App (12) | N/A (private) | Fall prevention (indirect) | 6 weeks | Questionnaire and behavior change |
| Shebib et al [ | DCP with sensors | 177 (mean age 43, SD 11 years) | App (113); no app (64) | N/A (private) | Aids self-management by engaging patients, and scales personalized therapy for patient-specific needs (indirect) | 12 weeks | ODIi, Korff Pain, and Korff disability |
| Bedson et al [ | Keele pain recorder | 21 (>18 years) | App (21) | Android (public) | Records pain levels, interference, sleep disturbance, analgesic use, mood, and side effects (indirect) | 28 days | Usability and acceptability |
| Hou et al [ | eHealth | 168 (18-64 years) | app (84); no app (84) | N/A (private) | Telerehabilitation and self-management interventions (indirect) | 3, 6, and 12 months | Disease-specific questionnaire (ODI), Visual Analog Scale to record back pain, measures of mental health and life status, which included the EuroQol 5-Dimension health questionnaire |
| Saran et al [ | N/A | 927 (20-80 years) | App (927) | N/A (private) | Monitors physical activity (indirect) | 1 week | Home physical activity |
| Chhabra et al [ | Snapcare | 93 mean) age 41.4, SD 14.2 years) | App (45); no app (48) | Android (private) | Monitors patient’s daily activity levels and symptomatic profile (indirect) | 12 weeks | Pain and disability |
| Jakobsen et al [ | My Osteoporosis Journey | 18 (50-65 years) | App (18) | Android and iOS (private) | Provides information and usability questionnaires (direct) | 12 weeks | Satisfaction with the app and risk calculation |
| Lambert et al [ | PhysiotherapyExercises | 80 (34-59 years) | App (40); no app (40) | N/A (private) | Home exercise programs (indirect) | 4 weeks | Self-reported exercise adherence, The Patient-Specific Functional Scale, degree of disability, and patient satisfaction with health care service |
| Rasche et al [ | Aachen fall prevention app | 79 (>50 years) | App (79) | Android and iOS (private) | Self-assessment of older patients at risk for ground-level falls (indirect) | 1 year | Objective fall risk and the self-assessed subjective fall risk |
| Park et al [ |
| 82 (<25 years; women) | App (36); no app (38) | Android (private) | Provides feedback and records activity and nutrition (direct) | 20 weeks | Bone mineral density, minerals, biochemical markers, food intake diary, knowledge, health belief, and self-efficacy |
| Tay et al [ | Calci-app | 40 (18-25 years) | App (40) | Android and iOS (private) | Usability questionnaires (direct) | 5 days | Dietary calcium intake |
| Goodman et al [ | VDC-app | 109 (18-25 years) | App (59) | iOS (private) | Provides information and feedback and monitors behavior change (direct) | 12 weeks | Vitamin D intake, knowledge, perceptions of vitamin D, blood concentrations of 25(OH)D3 |
| Singler et al [ | AOTrauma’s orthogeriatrics | 920 (health professionals) | App (920) | Android and iOS (public) | Delivers the app to surgeons, trainees, and other health care professionals to measure use and evaluate the impact on patient care (direct) | Web-based one-time evaluation | Rating of app and usability |
aApp is available to the public in app stores, or app is not available to the public in app stores.
bThe study has an indirect relation to osteoporosis.
cN/A: not applicable.
dSPADE: sleep disturbance, pain, anxiety, depression, and low energy or fatigue.
eThe study or app has a direct relation to osteoporosis.
fIPAQ: International Physical Activity Questionnaire.
gRMDQ: Roland-Morris Disability Questionnaire.
hADL: activities of daily living.
iODI: Oswestry Disability Index.
Web-based app characteristics.
| App name | Operating system | Description | Users | Classification |
| AACE osteoporosis treatment algorithma | iOS | Provides evidence-based information about the diagnosis, evaluation, and treatment of postmenopausal osteoporosis for endocrinologists, physicians in general, regulatory bodies, health-related organizations, and interested laypersons | Health care professionals | Information and education |
| Calcium Proa | Android and iOS | Provides information about calcium, parathyroid, osteoporosis, and vitamin D issues; inputs test results for calcium, parathyroid hormone, and vitamin D; analyzes and graphs tests making them easy to understand; tracking tools show calcium and vitamin D levels over time and provide feedback about bone density status; a risk assessment tool for conditions associated with high blood calcium | Patients | Monitoring, education, and assessment |
| Vitamin-D Proa | iOS | Analyzes and graphs current vitamin D levels, calcium levels, calcium versus parathyroid hormone, bone density, and osteoporosis; teaches how to interpret data and graphs; gives personalized suggestions for next steps; suggests what new blood tests may be necessary; gives topics to discuss with the physician | Patients | Assessment, monitoring, and education tool |
| Osteoporosis Low Bone Density Weak Bones Diet Helpa | Android | Provides information about the causes, symptoms, treatment, and the type of diet that one should eat to improve bone density | Patients | Information and education |
| Bones diseases and treatmentsa | Android | Information about all bone diseases | Patients | Information and education |
| My Arthritisa | Android | Keeps track of symptoms and flares; it can also track diet, exercise, pain, sleep, mood, stress; provides paid training courses with videos, guided audio, and expert advice; sets reminders for appointments and medication; access and share medical records from anywhere; learn about community news, current research, and other information | Patients | Monitoring, assessment, and management |
| Calcium Calculatora (by BC Dairy) | Android | Tool to assess, compare, and plan to introduce enough calcium in daily food | Patients | Monitoring, assessment, and education |
| Osteoporosisa (by AZoMedical) | iOS | Provides regularly updated information and news on osteoporosis | Professionals and patients | News |
| My Osteoporosis Manager | iOS | Capture detailed information regarding user’s health in a digital journal; manage medications and treatments; track osteo-specific symptoms and side effects feedback as easy-to-understand charts that record test results and medication adherence; access patient education materials; share information with a health care provider | Patients | Monitoring, assessment, and management |
| Osteoporosis (by Focus Media) | Android | Animated videos for learning about osteoporosis disease | Patients | Information and education |
| Osteoporosis disease | Android | Information about causes, symptoms, treatment, and the type of diet that one should eat to improve bone density | Patients | Information and education |
| Osteoporosis (by health care tips) | Android | Information and education | Patients | Information and education |
| Postmenopausal Osteoporosis | Android | Helps in understanding the disease condition through animated videos; it gives an insight into the structure and formation of bones, changes with age, and hormonal levels, particularly during menopause; it also provides information on the onset of osteoporosis, measurement of bone density, treatment, and self-help guidelines | Patients | Information and education |
| Osteoporosis (by personal remedies) | Android | Comprehensive and actionable nutrition guidelines for how to deal with osteoporosis; recipes, food suggestions, alternative therapies, and remedies | Patients | Information and education |
| Calcium Supplements | Android | Information about calcium supplements, including who should take them, their health benefits, and potential risks | Patients | Information and education |
| Osteoporosis AR | Android | Demonstrates a different fictional patient profile using the augmented reality technique that illustrates patient insights, symptoms they are experiencing, and how these agonizing symptoms affect patient’s quality of life | Patients | Information and education |
| Cure for Osteoporosis | Android | Information about raloxifene | Patients | Information |
| Osteoporosis Risk Calculator | Android | A risk check that calculates whether the user is at risk of fracture or osteoporosis | Patients | Measurement and assessment tool |
| Hip Fracture Risk Calculator | iOS | Calculates whether the user is at risk of fracture or osteoporosis based on patient demographics | Patients | Measurement and assessment tool |
| Calcium Calculator | iOS | Calculate calcium intake daily | Patients | Measurement tool |
| My Osteo-Team | Android and iOS | A social network and support group for those living with osteoporosis; users can acquire practical tips to manage their life with osteoporosis and insights about treatment or therapies | Patients | Social network |
| Low back pain exercise | Android | Exercises to reduce low back pain | Patients | Information and education |
| The spine app | Android | Information about back pain | Patients | Information and education |
| Fracture | Android | Information about fracture prevention | Patients | Information and education |
aRanked according to their rating rates, with the highest-ranking rates on the top, and vice versa. The other apps did not have any ratings or reviews. The ranking rate did not reflect the number of times the app was downloaded, and there was no direct relationship between the number of times an app was downloaded and its rating.
Figure 4(A) Risk of bias (ROB) assessment for randomized (ROB 2.0) and (B) nonrandomized (ROBIN-I) trials. The studies above the horizontal black line are above the app's cutoff score (2.7) and vice versa [32,33,35-39,41-65]. ROBINS-I: ROB in Nonrandomized Studies of Interventions.
Figure 5Forest plots of Hedges g effect size (95% CI) from individual studies before and after using the app showing changes in (A) bone mineral density (BMD) T score, (B) vitamin D intake (µg per day), (C) calcium intake (µg per day), and (D) physical activity (hours per week) [37,38,52,54-63].
Figure 6Forest plots of Hedges g effect sizes (95% CI) from individual studies before and after using the app showing changes in (A) physical function, (B) well-being, (C) fatigue, and (D) anxiety [37,38,53-55,57-60].
Figure 7Forest plots of Hedges g effect sizes (95% CI) from individual studies before and after using the app showing changes in (A) pain intensity and (B) disability [37,53,55,57,59,60].
DRsa and CRsb for overcoming the identified limitations or barriers in digital health technologies for osteoporosis.
| Identified limitation or barrier and related aspect | Recommendation | ||
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| Design perspective |
DR1: involve all the stakeholders in all the stages of user requirements, design, and development using a participatory design approach (cocreation) | |
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| Clinical perspective |
CR1: active participation in the design, development, and testing stages | |
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| Clinical perspective |
CR1: adopt mHealth technologies in daily practices and in clinical care (measurement, assessment, and recording data) CR2: recommend trustworthy apps to their patients CR3: use mHealth apps to effectively communicate with patients and other health care professionals through the integration of wearables and IoTd | |
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| Design perspective |
DR1: use adaptive learning algorithms (eg, AIe and machine or deep learning) in the app to make more personalized recommendations and treatments DR2: incorporate clinically validated monitoring, measurement, and assessment tools in the designed app | |
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| Clinical perspective |
CR1: evaluate mHealth measurement and assessment tools by concerned clinical experts before disseminating them to public | |
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| Design perspective |
DR1: implement stringent security regulations (eg, GDPRf [ | |
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| Design perspective |
DR1: allow patients to access their data (GDPR enforcement in design) DR2: generate feedback and plans (for diet and exercises) based on the gathered data to keep patients engaged and motivated | |
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| Design perspective |
DR1: use passive and active gathering of data (medication, symptoms, nutrition management, and physical exercising), in addition to the data gathered from any wearables or IoT sensors | |
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| Clinical perspective |
CR1: combine conventional clinical assessment with the app assessment | |
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| Design perspective |
DR1: apply AI-based techniques that help with the prediction, diagnosis, and treatment or management of diseases | |
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| Design perspective |
DR1: provide valuable feedback to the user DR2: use simple and straightforward interfaces DR3: continuously update users’ data DR4: offer financial incentives for healthy habit changes | |
aDR: design-related recommendation.
bCR: clinical recommendation.
cmHealth: mobile health.
dIoT: Internet of Things.
eAI: artificial intelligence.
fGDPR: General Data Protection Regulation.