scholarly journals 290: Feasibility and acceptability of a medication schedule mobile application as part of CF care: A pilot, real-world, mobile health study in CF clinics

2021 ◽  
Vol 20 ◽  
pp. S140
Author(s):  
H. Phan ◽  
C. Daines ◽  
A. Green ◽  
N. Camick ◽  
A. Goodman ◽  
...  
2017 ◽  
Vol 8 (2) ◽  
pp. 563 ◽  
Author(s):  
Usman Ependi

Heuristic evaluation merupakan salah satu bentuk usability testing perangkat lunak yang dinilai oleh pengguna (evaluator). Dalam melakukan heuristic evaluation instrumen penilaian terdiri dari sepuluh (10) pernyataan dengan lima pilihan jawaban dalam skala severity ratings. Dalam penelitian ini heuristic evaluation terhadap aplikasi Depo Auto 2000 Tanjung Api-Api Palembang yang dilakukan oleh 4 evaluator.  Hasil dari heuristic evaluation dikelompokkan kedalam  masing-masing instrumen yaitu visibility of system status dengan nilai 0,75, match between system and the real world dengan nilai 0,25, user control and freedom dengan nilai 0,25, consistency and standards dengan nilai 0,75, error prevention dengan nilai 1, recognition rather than recall dengan nilai 1,25, flexibility and efficiency of use dengan nilai 0,25, Aesthetic and minimalist design dengan nilai 0,25, help users recognize, diagnose, and recover from errors dengan nilai 1 dan Help and documentation dengan nilai 0. Dari hasil heuristic evaluation yang dilakukan menunjukkan bahwa evaluator memberikan nilai 0 dan 1 aplikasi Depo Atuo 2000 Tanjung Api-Api Palembang. Hasil penilaian tersebut menunjukkan bahwa aplikasi yang buat tidak ada masalah usability dan hanya memiliki cosmetic problem sehingga aplikasi Depo Auto 2000 Tanjung Api Api Palembang  dapat dinyatakan layak untuk didistribusikan kepada pengguna akhir (end user). 


2018 ◽  
Vol 5 (1) ◽  
Author(s):  
Yu-Feng Yvonne Chan ◽  
Brian M. Bot ◽  
Micol Zweig ◽  
Nicole Tignor ◽  
Weiping Ma ◽  
...  
Keyword(s):  

2021 ◽  
Vol 13 (2) ◽  
pp. 62-84
Author(s):  
Boudjemaa Boudaa ◽  
Djamila Figuir ◽  
Slimane Hammoudi ◽  
Sidi mohamed Benslimane

Collaborative and content-based recommender systems are widely employed in several activity domains helping users in finding relevant products and services (i.e., items). However, with the increasing features of items, the users are getting more demanding in their requirements, and these recommender systems are becoming not able to be efficient for this purpose. Built on knowledge bases about users and items, constraint-based recommender systems (CBRSs) come to meet the complex user requirements. Nevertheless, this kind of recommender systems witnesses a rarity in research and remains underutilised, essentially due to difficulties in knowledge acquisition and/or in their software engineering. This paper details a generic software architecture for the CBRSs development. Accordingly, a prototype mobile application called DATAtourist has been realized using DATAtourisme ontology as a recent real-world knowledge source in tourism. The DATAtourist evaluation under varied usage scenarios has demonstrated its usability and reliability to recommend personalized touristic points of interest.


2021 ◽  
Author(s):  
Elizabeth Y Wang ◽  
Benjamin N Breyer ◽  
Austin W Lee ◽  
Natalie Rios ◽  
Akinyemi Oni-Orisan ◽  
...  

BACKGROUND Mobile health applications may provide an efficient way for patients with lower urinary tract symptoms (LUTS) to log and communicate symptoms and medication side effects with their clinicians. OBJECTIVE To explore the perceptions of older men with LUTS after using a mobile health application to track their symptoms and tamsulosin side effects. METHODS Structured phone interviews were conducted after a 2-week study piloting the daily use of a mobile application to track severity of patient-selected LUTS and tamsulosin side effects. Quantitative and qualitative data were considered. RESULTS Nineteen (100%) pilot study participants completed the post-study interviews. Most men (68%) reported that the daily questionnaires were the right length, with 32% reporting that the questionnaires were too short. Men with more severe symptoms were less likely to report changes in perception of health or changes in self-management; 47% of men reported improved awareness of symptoms and 5% of men adjusted fluid intake based on the questionnaire. All men were willing to share application data with their clinicians. Thematic analysis of qualitative data yielded 8 themes: 1) orientation (setting up app, format, symptom selection, side effect selection), 2) triggers (routine/habit, symptom timing), 3) daily questionnaire (reporting symptoms, reporting side effects, tailoring), 4) technology literacy, 5) perceptions (awareness, causation/relevance, data quality, convenience, usefulness, other apps), 6) self-management, 7) clinician engagement (communication, efficiency), and 8) improvement (reference materials, flexibility, language, management recommendations, optimize clinician engagement). CONCLUSIONS We assessed the perceptions of men using a mobile health application to monitor and improve management of LUTS and medication side effects. LUTS management may be further optimized by tailoring the mobile application experience to meet patients’ individual needs, such as tracking a greater number of symptoms and integrating the application with clinicians’ visits. Mobile health applications are likely a scalable modality to monitor symptoms and improve care of older men with LUTS. Further study is required to determine the best ways to tailor the mobile application and to communicate data to clinicians or incorporate data into the electronical medical record meaningfully.


Author(s):  
Yojna Sah Jain ◽  
Arun Garg ◽  
D.K. Jhamb ◽  
Praful Jain ◽  
Akash Karar

Background: Mobile health technology offers promising means to implement public health strategies for the prevention and management of chronic conditions. However, at the moment, there is a dearth of both; specific mobile health tools tailored for the knowledge and language needs of Indian population; as well as enough systematic and scientific clinical data to analyse their impact in varied Indian socioeconomic and disease populations. Objective: To develop a smartphone-based bilingual educational mobile application for heart patients and pilot test in an Indian clinical setting. Methods: An Android™ based mobile application was developed according to a systematic instructional design model. Thereafter, expert assessment was done by 3 software engineers and 2 healthcare professionals using a peer-reviewed, objective and multidimensional Mobile Application Rating Scale (MARS). A pilot user satisfaction evaluation was done based on feedback from 35 Coronary Artery Disease patients visiting Cardiology outpatient Department of a North Indian tertiary care centre. Results: An Android™ based mobile application named as ‘Happy Heart’ was developed. The content was developed in both Hindi and English under professional supervision. For this mobile application, the Mean MARS score was 3.60 ± 0.86 and subjectivity score was 3.30 ± 1.03. The overall user satisfaction response for the mobile application was 4.09 ± 0.75 indicating that most of the testers found it useful. Conclusion: This mobile application is developed as a research tool to further conduct a clinical study in Coronary Artery Disease Patients. Current evaluation was a pilot testing wherein this application showed promising results.


2017 ◽  
Vol 35 (4) ◽  
pp. 354-362 ◽  
Author(s):  
Yu-Feng Yvonne Chan ◽  
Pei Wang ◽  
Linda Rogers ◽  
Nicole Tignor ◽  
Micol Zweig ◽  
...  

2019 ◽  
Vol 21 (S2) ◽  
pp. S2-35-S2-40 ◽  
Author(s):  
Fredrick Debong ◽  
Harald Mayer ◽  
Johanna Kober
Keyword(s):  

2020 ◽  
Author(s):  
Abhishek Pratap ◽  
Daniel Grant ◽  
Ashok Vegesna ◽  
Meghasyam Tummalacherla ◽  
Stanley Cohan ◽  
...  

BACKGROUND Multiple sclerosis (MS) is a chronic neurodegenerative disease. Current monitoring practices predominantly rely on brief and infrequent assessments, which may not be representative of the real-world patient experience. Smartphone technology provides an opportunity to assess people’s daily-lived experience of MS on a frequent, regular basis outside of episodic clinical evaluations. OBJECTIVE The objectives of this study were to evaluate the feasibility and utility of capturing real-world MS-related health data remotely using a smartphone app, “elevateMS,” to investigate the associations between self-reported MS severity and sensor-based active functional tests measurements, and the impact of local weather conditions on disease burden. METHODS This was a 12-week, observational, digital health study involving 3 cohorts: self-referred participants who reported an MS diagnosis, clinic-referred participants with neurologist-confirmed MS, and participants without MS (controls). Participants downloaded the elevateMS app and completed baseline assessments, including self-reported physical ability (Patient-Determined Disease Steps [PDDS]), as well as longitudinal assessments of quality of life (Quality of Life in Neurological Disorders [Neuro-QoL] Cognitive, Upper Extremity, and Lower Extremity Function) and daily health (MS symptoms, triggers, health, mobility, pain). Participants also completed functional tests (finger-tapping, walk and balance, voice-based Digit Symbol Substitution Test [DSST], and finger-to-nose) as an independent assessment of MS-related cognition and motor activity. Local weather data were collected each time participants completed an active task. Associations between self-reported baseline/longitudinal assessments, functional tests, and weather were evaluated using linear (for cross-sectional data) and mixed-effects (for longitudinal data) regression models. RESULTS A total of 660 individuals enrolled in the study; 31 withdrew, 495 had MS (n=359 self-referred, n=136 clinic-referred), and 134 were controls. Participation was highest in clinic-referred versus self-referred participants (median retention: 25.5 vs 7.0 days). The top 5 most common MS symptoms, reported at least once by participants with MS, were fatigue (310/495, 62.6%), weakness (222/495, 44.8%), memory/attention issues (209/495, 42.2%), and difficulty walking (205/495, 41.4%), and the most common triggers were high ambient temperature (259/495, 52.3%), stress (250/495, 50.5%), and late bedtime (221/495, 44.6%). Baseline PDDS was significantly associated with functional test performance in participants with MS (mixed model–based estimate of most significant feature across functional tests [β]: finger-tapping: β=–43.64, <i>P</i>&lt;.001; DSST: β=–5.47, <i>P</i>=.005; walk and balance: β=–.39, <i>P</i>=.001; finger-to-nose: β=.01, <i>P</i>=.01). Longitudinal Neuro-QoL scores were also significantly associated with functional tests (finger-tapping with Upper Extremity Function: β=.40, <i>P</i>&lt;.001; walk and balance with Lower Extremity Function: β=–99.18, <i>P</i>=.02; DSST with Cognitive Function: β=1.60, <i>P</i>=.03). Finally, local temperature was significantly associated with participants’ test performance (finger-tapping: β=–.14, <i>P</i>&lt;.001; DSST: β=–.06, <i>P</i>=.009; finger-to-nose: β=–53.88, <i>P</i>&lt;.001). CONCLUSIONS The elevateMS study app captured the real-world experience of MS, characterized some MS symptoms, and assessed the impact of environmental factors on symptom severity. Our study provides further evidence that supports smartphone app use to monitor MS with both active assessments and patient-reported measures of disease burden. App-based tracking may provide unique and timely real-world data for clinicians and patients, resulting in improved disease insights and management.


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