1 / 23

Data Management Needs Assessment

Data Management Needs Assessment. Uganda Ministry of Health June 8 th , 2007. Overview. Introduce Blum Fellows Goals & Objectives Background – technology & past efforts Methods Findings Pilot Possibilities Feedback, Discussion, and Questions. Team Introduction.

luigi
Télécharger la présentation

Data Management Needs Assessment

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Data ManagementNeeds Assessment Uganda Ministry of Health June 8th, 2007

  2. Overview • Introduce Blum Fellows • Goals & Objectives • Background – technology & past efforts • Methods • Findings • Pilot Possibilities • Feedback, Discussion, and Questions

  3. Team Introduction Shaffeque Abas: Bachelors, Computer Science, Mbarara University Melissa Ho: Ph.D., Information; MSc CS Simon Morfit: Ph.D., Sociology; MPH Mallory Primm: BA, Human Rights Katrina Robinson: Masters, Social Welfare Admas Zewdie: Masters, Business Administration

  4. Guidance • Uganda • Ananias Tumukunde, Presidential Private Secretary for Science & Technology – State House • Harriet Mukunguzi, Executive Director Science and Technology Enterprise Development Organization • Richard Tushemereirwe, Assistant to the Presidential Private Secretary for Science & Technology-State House • UC Berkeley • Kristiana Raube, Haas School of Business • Sandra Dratler, School of Public Health • George Scharffenberger, Executive Director Blum Center for Developing Economies

  5. Original Objectives • Assess the need for and feasibility of health data collection using smart phones • improve the timeliness of regional and national data collection • save health worker time by performing verification automatically • provide accurate and timely data for clinical care and policy decision making

  6. Revised Project Goals • Identify technological needs • Data collection and reporting • Data analysis and decision making • Communication • Evaluate feasibility of currently available technologies • Determine key stakeholders • Inform future pilot projects

  7. Project Timeline Health Centers (Nakaseke District) MOH Makerere U UHIN (Kampala) Mbarara U (Mbarara District) Health Centers (Rakai District)

  8. Methods

  9. Interviews Completed

  10. Interview Content • Current data collection, management and analysis procedures • Strengths and weaknesses • Opportunities for improvement • Existing technology infrastructure

  11. Findings - MOH • Substantial compliance with HMIS • Concerns of data quality • Full capacity of electronic format not yet realized • Labor intensive data entry • Problem of migration of trained personnel from the rural to urban areas

  12. Findings - Universities • Desire to collaborate with MOH • Exchange data • Share ICT knowledge • Mbarara University • Emphasis on rural needs and research • Research on solar energy technology • Makerere University • Computer science expertise • Distance learning capacity

  13. Findings – Rakai District HCs • Data captured on paper and PDA • PDAs: • Used to complete and transmit HMIS forms • Used to receive information • Open to local innovation • Challenges: • Power shortage • Limited points of connectivity to relay data • Previous computer knowledge not required • Commendable training program • UHIN willingness to collaborate

  14. Findings – Nakaseke HCs - 1 • HMIS reports • Weekly: often submitted via text message • Monthly: delivered in person • Data flow is unclear between HCs • Compiling reports is a time consuming and error prone process • Ascertaining patient medical histories can be difficult • Little feedback from referrals and data submissions

  15. Findings – Nakaseke HCs - 2 • Consistent network coverage, but inconsistent electricity supply • Transportation difficulties – cost, road conditions and lack of vehicles • Some data analysis at lower HC levels • Lack of basic supplies

  16. Findings – Current mobile phone use in HCs • Emergency reporting • Submitting weekly HMIS forms • Checking salary and drug order status • Requesting transportation • Clinical consultations

  17. How much can data management tools improve healthcare?

  18. Pilot Considerations • Hybrid solutions – different technology for different HC levels • Universal HC access to HMIS data • Electronic medical record • Software for automatic data compilation and analysis • Bidirectional data flow

  19. MoH computers + broadband computer + smartphone smartphone + pdas smartphone or paper

  20. Electronic hand-held device Functions as a mobile phone Provides internet access Has built-in keyboard Additional capabilities: E-mail Word processing and spreadsheets GPS Custom programs can be installed Smart Phone

  21. Related Work • CAMPhone: Use of smartphones with bar-coded forms to facilitate microfinance. Tapan Parikh, University of Washington Computer Science. (India) • OpenMRS: Open source web-based electronic medical record software, currently developing mobile phone-based interface. (Kenya, Rwanda, South Africa) • ReACH: Web based system supporting asynchronous remote consultation between doctors and specialists over a variety of networks. Melissa Ho, Rowena Luk, Paul Aoki, University of California, Berkeley. (Ghana) • Smartphone and web-based patient records pilot project. Dartmouth University. (Vietnam) • Uganda Health Information Network: Use of PDAs for dissemination of content and submission of forms. (Uganda) • Simputer: PDA-based data collection for monitoring of TB. (India)

  22. Challengesto Implementing ICT • Balancing paper vs digital data recording • Power • Network • Clarity in data flow • Current cost of ICT • Limited computer literacy • Privacy of health information

  23. Thank You!

More Related