Nothing Special   »   [go: up one dir, main page]

skip to main content
article

mHealth App for iOS to Help in Diagnostic Decision in Ophthalmology to Primary Care Physicians

Published: 01 May 2017 Publication History

Abstract

Decision support systems (DSS) are increasingly demanded due that diagnosis is one of the main activities that physicians accomplish every day. This fact seems critical when primary care physicians deal with uncommon problems belonging to specialized areas. The main objective of this paper is the development and user evaluation of a mobile DSS for iOS named OphthalDSS. This app has as purpose helping in anterior segment ocular diseases' diagnosis, besides offering educative content about ophthalmic diseases to users. For the deployment of this work, firstly it has been used the Apple IDE, Xcode, to develop the OphthalDSS mobile application using Objective-C as programming language. The core of the decision support system implemented by OphthalDSS is a decision tree developed by expert ophthalmologists. In order to evaluate the Quality of Experience (QoE) of primary care physicians after having tried the OphthalDSS app, a written inquiry based on the Likert scale was used. A total of 50 physicians answered to it, after trying the app during 1 month in their medical consultation. OphthalDSS is capable of helping to make diagnoses of diseases related to the anterior segment of the eye. Other features of OphthalDSS are a guide of each disease and an educational section. A 70% of the physicians answered in the survey that OphthalDSS performs in the way that they expected, and a 95% assures their trust in the reliability of the clinical information. Moreover, a 75% of them think that the decision system has a proper performance. Most of the primary care physicians agree with that OphthalDSS does the function that they expected, it is a user-friendly and the contents and structure are adequate. We can conclude that OphthalDSS is a practical tool but physicians require extra content that makes it a really useful one.

References

[1]
World Health Organization, mHealth: New horizons for health through mobile technologies (2016). http://www.who.int/goe/publications/goe_mhealth_web.pdf. Accessed February 2017.
[2]
Research2guidance (2015). mHealth App Developer Economics. http://research2guidance.com/r2g/r2g-mHealth-App-Developer-Economics-2015.pdf. Accessed January 2017.
[3]
Liu, C., Zhu, Q., Holroyd, K.A., and Seng, E.K., Status and trends of mobile-health applications for iOS devices: A developer's perspective. J Syst Software. 84(11):2022---2033, 2011.
[4]
Hood, M., Wilson, R., Corsica, J., Bradley, L., Chirinos, D., and Vivo, A., What do we know about mobile applications for diabetes self-management? A review of reviews. Journal of Behavioral Medicine. 39(6):981, 2016.
[5]
Ouhbi, S., Fernández-Alemán, J.L., Pozo, J.R., Bajta, M.E., Toval, A., and Idri, A., Compliance of blood donation apps with mobile OS usability guidelines. J Med Syst. 39(6), 2015.
[6]
Luanrattana, R., Win, K.T., Fulcher, J., and Iverson, D., Mobile technology use in medical education. J Med Syst. 36(1):113---122, 2012.
[7]
Fundación Telefónica, La Sociedad de la Información en España (2015). http://www.fundaciontelefonica.com/arte_cultura/publicaciones-listado/pagina-item-publicaciones/itempubli/483. Accessed January 2017.
[8]
Mookiah, M.R.K., Rajendra, U., Kuang, C., Min, C., Ng, E.Y.K., and Laude, A., Computer-aided diagnosis of diabetic retinopathy: A review. Comput Biol Med. 43(12):2136---2155, 2013.
[9]
Most popular Apple App Store categories in March 2016. Apple: most popular app store categories (2016). http://www.statista.com/statistics/270291/popular-categories-in-the-app-store. Accessed February 2017.
[10]
Fastest growing mobile app categories 2015 | Statistic. Statista (2015). http://www.statista.com/statistics/251096/fastest-growing-shopping-app-categories. Accessed February 2017.
[11]
Is Mobile Healthcare the Future? - Infographic | GreatCall. (2016). Greatcall.com. http://www.greatcall.com/greatcall/lp/is-mobile-healthcare-the-future-infographic.aspx. Accessed February 2017.
[12]
Wang, A., An, N., Lu, X., Chen, H., Li, C., and Levkoff, S., A classification scheme for analyzing mobile apps used to prevent and manage disease in late life. J MIR mhealth and uhealth. 2(1):e6, 2014.
[13]
Molina Recio, G., García-Hernández, L., Molina Luque, R., and Salas-Morera, L., The role of interdisciplinary research team in the impact of health apps in health and computer science publications: A systematic review. BioMedical Engineering OnLine. 15(S1), 2016.
[14]
Alnanih, R., Ormandjieva, O., and Radhakrishnan, T., Context-based and rule-based adaptation of mobile user interfaces in mHealth. Procedia Comput Sci. 21:390---397, 2013.
[15]
Manovel-López, M., Maldonado-López, M., de la Torre Díez, I., Pastor-Jimeno, J.C., López-Coronado, M. (2016). A mobile decision support system for red eye diseases diagnosis: Experience with medical students, J Med. Syst 2016;40:151.
[16]
EMR Thoughts. Physician social media infographic. (2009) http://www.emrthoughts.com/2011/07/29/physician-social-media-infographic. Accessed January 2017.
[17]
Zhou, L., Yang, Z., Wen, Y., Wang, H., and Guizani, M., Resource allocation with incomplete information for QoE-driven multimedia Communications. IEEE Transactions on Wireless Communications 2016. 12(8):3733---3745, 2013.
[18]
Maldonado-López, M., Pastor-Jimeno, J.C. (2011). Guiones de oftalmología. Aprendizaje basado en competencias, second Edition, McGraw-Hill-Interamericana.

Cited By

View all
  • (2022)SOS-DR: a social warning system for detecting users at high risk of depressionPersonal and Ubiquitous Computing10.1007/s00779-017-1092-326:3(837-848)Online publication date: 1-Jun-2022
  1. mHealth App for iOS to Help in Diagnostic Decision in Ophthalmology to Primary Care Physicians

      Recommendations

      Comments

      Please enable JavaScript to view thecomments powered by Disqus.

      Information & Contributors

      Information

      Published In

      cover image Journal of Medical Systems
      Journal of Medical Systems  Volume 41, Issue 5
      May 2017
      157 pages

      Publisher

      Plenum Press

      United States

      Publication History

      Published: 01 May 2017

      Author Tags

      1. App
      2. Decision support system (DSS)
      3. Mhealth
      4. Ophthalmology
      5. iOS

      Qualifiers

      • Article

      Contributors

      Other Metrics

      Bibliometrics & Citations

      Bibliometrics

      Article Metrics

      • Downloads (Last 12 months)0
      • Downloads (Last 6 weeks)0
      Reflects downloads up to 16 Nov 2024

      Other Metrics

      Citations

      Cited By

      View all
      • (2022)SOS-DR: a social warning system for detecting users at high risk of depressionPersonal and Ubiquitous Computing10.1007/s00779-017-1092-326:3(837-848)Online publication date: 1-Jun-2022

      View Options

      View options

      Login options

      Media

      Figures

      Other

      Tables

      Share

      Share

      Share this Publication link

      Share on social media