Cargando…

A real-time medical cartography of epidemic disease (Nodding syndrome) using village-based lay mHealth reporters

BACKGROUND: Disease surveillance in rural regions of many countries is poor, such that prolonged delays (months) may intervene between appearance of disease and its recognition by public health authorities. For infectious disorders, delayed recognition and intervention enables uncontrolled disease s...

Descripción completa

Detalles Bibliográficos
Autores principales: Valdes Angues, Raquel, Suits, Austen, Palmer, Valerie S., Okot, Caesar, Okot, Robert A., Atonywalo, Concy, Gazda, Suzanne K., Kitara, David L., Lantum, Moka, Spencer, Peter S.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6021112/
https://www.ncbi.nlm.nih.gov/pubmed/29906291
http://dx.doi.org/10.1371/journal.pntd.0006588
_version_ 1783335413726838784
author Valdes Angues, Raquel
Suits, Austen
Palmer, Valerie S.
Okot, Caesar
Okot, Robert A.
Atonywalo, Concy
Gazda, Suzanne K.
Kitara, David L.
Lantum, Moka
Spencer, Peter S.
author_facet Valdes Angues, Raquel
Suits, Austen
Palmer, Valerie S.
Okot, Caesar
Okot, Robert A.
Atonywalo, Concy
Gazda, Suzanne K.
Kitara, David L.
Lantum, Moka
Spencer, Peter S.
author_sort Valdes Angues, Raquel
collection PubMed
description BACKGROUND: Disease surveillance in rural regions of many countries is poor, such that prolonged delays (months) may intervene between appearance of disease and its recognition by public health authorities. For infectious disorders, delayed recognition and intervention enables uncontrolled disease spread. We tested the feasibility in northern Uganda of developing real-time, village-based health surveillance of an epidemic of Nodding syndrome (NS) using software-programmed smartphones operated by minimally trained lay mHealth reporters. METHODOLOGY AND PRINCIPAL FINDINGS: We used a customized data collection platform (Magpi) that uses mobile phones and real-time cloud-based storage with global positioning system coordinates and time stamping. Pilot studies on sleep behavior of U.S. and Ugandan medical students identified and resolved Magpi-programmed cell phone issues. Thereafter, we deployed Magpi in combination with a lay-operator network of eight mHealth reporters to develop a real-time electronic map of child health, injury and illness relating to NS in rural northern Uganda. Surveillance data were collected for three consecutive months from 10 villages heavily affected by NS. Overall, a total of 240 NS-affected households and an average of 326 children with NS, representing 30 households and approximately 40 NS children per mHealth reporter, were monitored every week by the lay mHealth team. Data submitted for analysis in the USA and Uganda remotely pinpointed the household location and number of NS deaths, injuries, newly reported cases of head nodding (n = 22), and the presence or absence of anti-seizure medication. CONCLUSIONS AND SIGNIFICANCE: This study demonstrates the feasibility of using lay mHealth workers to develop a real-time cartography of epidemic disease in remote rural villages that can facilitate and steer clinical, educational and research interventions in a timely manner.
format Online
Article
Text
id pubmed-6021112
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-60211122018-07-06 A real-time medical cartography of epidemic disease (Nodding syndrome) using village-based lay mHealth reporters Valdes Angues, Raquel Suits, Austen Palmer, Valerie S. Okot, Caesar Okot, Robert A. Atonywalo, Concy Gazda, Suzanne K. Kitara, David L. Lantum, Moka Spencer, Peter S. PLoS Negl Trop Dis Research Article BACKGROUND: Disease surveillance in rural regions of many countries is poor, such that prolonged delays (months) may intervene between appearance of disease and its recognition by public health authorities. For infectious disorders, delayed recognition and intervention enables uncontrolled disease spread. We tested the feasibility in northern Uganda of developing real-time, village-based health surveillance of an epidemic of Nodding syndrome (NS) using software-programmed smartphones operated by minimally trained lay mHealth reporters. METHODOLOGY AND PRINCIPAL FINDINGS: We used a customized data collection platform (Magpi) that uses mobile phones and real-time cloud-based storage with global positioning system coordinates and time stamping. Pilot studies on sleep behavior of U.S. and Ugandan medical students identified and resolved Magpi-programmed cell phone issues. Thereafter, we deployed Magpi in combination with a lay-operator network of eight mHealth reporters to develop a real-time electronic map of child health, injury and illness relating to NS in rural northern Uganda. Surveillance data were collected for three consecutive months from 10 villages heavily affected by NS. Overall, a total of 240 NS-affected households and an average of 326 children with NS, representing 30 households and approximately 40 NS children per mHealth reporter, were monitored every week by the lay mHealth team. Data submitted for analysis in the USA and Uganda remotely pinpointed the household location and number of NS deaths, injuries, newly reported cases of head nodding (n = 22), and the presence or absence of anti-seizure medication. CONCLUSIONS AND SIGNIFICANCE: This study demonstrates the feasibility of using lay mHealth workers to develop a real-time cartography of epidemic disease in remote rural villages that can facilitate and steer clinical, educational and research interventions in a timely manner. Public Library of Science 2018-06-15 /pmc/articles/PMC6021112/ /pubmed/29906291 http://dx.doi.org/10.1371/journal.pntd.0006588 Text en © 2018 Valdes Angues et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Valdes Angues, Raquel
Suits, Austen
Palmer, Valerie S.
Okot, Caesar
Okot, Robert A.
Atonywalo, Concy
Gazda, Suzanne K.
Kitara, David L.
Lantum, Moka
Spencer, Peter S.
A real-time medical cartography of epidemic disease (Nodding syndrome) using village-based lay mHealth reporters
title A real-time medical cartography of epidemic disease (Nodding syndrome) using village-based lay mHealth reporters
title_full A real-time medical cartography of epidemic disease (Nodding syndrome) using village-based lay mHealth reporters
title_fullStr A real-time medical cartography of epidemic disease (Nodding syndrome) using village-based lay mHealth reporters
title_full_unstemmed A real-time medical cartography of epidemic disease (Nodding syndrome) using village-based lay mHealth reporters
title_short A real-time medical cartography of epidemic disease (Nodding syndrome) using village-based lay mHealth reporters
title_sort real-time medical cartography of epidemic disease (nodding syndrome) using village-based lay mhealth reporters
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6021112/
https://www.ncbi.nlm.nih.gov/pubmed/29906291
http://dx.doi.org/10.1371/journal.pntd.0006588
work_keys_str_mv AT valdesanguesraquel arealtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT suitsausten arealtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT palmervaleries arealtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT okotcaesar arealtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT okotroberta arealtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT atonywaloconcy arealtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT gazdasuzannek arealtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT kitaradavidl arealtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT lantummoka arealtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT spencerpeters arealtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT valdesanguesraquel realtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT suitsausten realtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT palmervaleries realtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT okotcaesar realtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT okotroberta realtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT atonywaloconcy realtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT gazdasuzannek realtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT kitaradavidl realtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT lantummoka realtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters
AT spencerpeters realtimemedicalcartographyofepidemicdiseasenoddingsyndromeusingvillagebasedlaymhealthreporters