| Literature DB >> 32254042 |
Onicio Leal Neto1,2, Oswaldo Cruz3, Jones Albuquerque2,4, Mariana Nacarato de Sousa2, Mark Smolinski5, Eduarda Ângela Pessoa Cesse6, Marlo Libel5, Wayner Vieira de Souza6.
Abstract
BACKGROUND: With the evolution of digital media, areas such as public health are adding new platforms to complement traditional systems of epidemiological surveillance. Participatory surveillance and digital epidemiology have become innovative tools for the construction of epidemiological landscapes with citizens' participation, improving traditional sources of information. Strategies such as these promote the timely detection of warning signs for outbreaks and epidemics in the region.Entities:
Keywords: digital disease detection; disease surveillance; epidemiology; health innovation; infectious diseases; mobile phone; pandemics; participatory surveillance
Mesh:
Year: 2020 PMID: 32254042 PMCID: PMC7175192 DOI: 10.2196/16119
Source DB: PubMed Journal: JMIR Public Health Surveill ISSN: 2369-2960
Relationship between symptoms and syndromes.
| Symptom | Diarrheal syndrome | Respiratory syndrome | Arbovirus (ie, rash) syndrome |
| Body pain | —a | — | Optional |
| Headache | — | — | Optional |
| Joint pain | — | — | Optional |
| Cough | — | Mandatory | — |
| Sore throat | — | Optional | — |
| Fever | Optional | Mandatory | Optional |
| Shortness of breath | — | Optional | — |
| Nausea and/or vomiting | Optional | — | — |
| Diarrhea | Mandatory | — | — |
| Itching | — | — | Optional |
| Rash | — | — | Mandatory |
| Red eyes | — | — | Optional |
| Bleeding | — | — | Optional |
aNot applicable.
Figure 1Prototype output implementation of the warning system used in the dashboard of the Guardians of Health platform. The line in blue (A) represents the locally estimated scatterplot smoothing (loess) function with a certain window; this value is known as "span" and controls the smoothness. If it is 1, the line will almost equal the mean value of the series; if it is close to zero, each point will be interpolated by the function. Thus, the function is adjusted by varying this parameter between 0 and 1. The dotted line in red (B) represents the upper range of the loess function; this amplitude was obtained by multiplying the SD by a sigma. Thus, the variability of the series decreases, which makes the interval closer to the loess function.In the event of the graduation of alerts, C indicates one of the points where the value was exceeded, but only at a moment in time which causes that point to generate a "yellow" signal. At D, the observed values exceeded the upper limit three times, the first time generating a "yellow" alert, the second time an "orange" alert, and finally a "red" alert. Then the number of cases fell below the limit and no more alarms were triggered. If this high value persisted, the alarm would have remained "red." A span of 0.75 and a sigma of 1 were used.
Figure 2Distribution of downloads, registered users, and active users by operating system and app during the study period.
List of symptoms reported via Guardians of Health during the Rio 2016 Olympic Games period.
| Symptom | Number of reports (N=1746 users with at least one symptom), n (%) |
| Body pain | 607 (34.77) |
| Headache | 593 (33.96) |
| Joint pain | 487 (27.89) |
| Cough | 419 (24.00) |
| Sore throat | 277 (15.86) |
| Fever | 269 (15.41) |
| Shortness of breath | 218 (12.76) |
| Nausea | 204 (11.68) |
| Diarrhea | 161 (9.22) |
| Itching | 145 (8.30) |
| Rash | 145 (8.30) |
| Red eyes | 132 (7.56) |
| Bleeding | 57 (3.26) |
Figure 3Temporal distribution for syndrome cases during the period of study.
Figure 4Spatial distribution of reports from Guardians of Health users with symptoms.
Figure 5Spatial distribution of reports from users with diarrheal syndrome during the 2016 Olympic Games.
Figure 7Spatial distribution of reports from users with rash syndrome during the 2016 Olympic Games.