| Literature DB >> 30801254 |
Nileena Velappan1, Ashlynn Rae Daughton1, Geoffrey Fairchild1, William Earl Rosenberger1, Nicholas Generous1, Maneesha Elizabeth Chitanvis1, Forest Michael Altherr1, Lauren A Castro1, Reid Priedhorsky1, Esteban Luis Abeyta1, Leslie A Naranjo1,2, Attelia Dawn Hollander1, Grace Vuyisich1, Antonietta Maria Lillo1, Emily Kathryn Cloyd1,3, Ashvini Rajendra Vaidya1, Alina Deshpande1.
Abstract
BACKGROUND: Information from historical infectious disease outbreaks provides real-world data about outbreaks and their impacts on affected populations. These data can be used to develop a picture of an unfolding outbreak in its early stages, when incoming information is sparse and isolated, to identify effective control measures and guide their implementation.Entities:
Keywords: algorithm; epidemiology; infectious diseases; public health informatics; web browser
Year: 2019 PMID: 30801254 PMCID: PMC6409513 DOI: 10.2196/12032
Source DB: PubMed Journal: JMIR Public Health Surveill ISSN: 2369-2960
Properties collected for statistical analysis.
| Name (variable type) | Description | |
| Population (continuous) | Population of affected location as a continuous variable | |
| Population (categorical) | Population of affected location. Discretized into groups based on orders of magnitude | |
| Disease status (binary) | Endemicity status (ie, endemic or nonendemic to the region) during the time of the outbreak | |
| Rural versus urban (binary) | Binary categorization of the relative population density of the outbreak’s location | |
| Age stratification (categorical) | Relevant age categories or median age of reported cases. (Varies by disease; groupings are identified using published literature) | |
| Special population group (binary) | Binary (yes or no) indicator describing if the outbreak occurred in the general population or a particular group with a specific common exposure or risk factor | |
| Vaccination status (categorical) | Vaccine coverage (%) of the country and/or region of interest | |
| Population movement (binary) | Indication of whether or not large-scale population movement (eg, mass migration and influx of a refugee population) was an influential component of the outbreak | |
| Sex (continuous) | Fraction of cases in males (identified using the literature) | |
| Climate (categorical) | Climate type corresponding to the location of interest, represented as the first letter of the Köppen-Geiger climate classification key (A, B, C, D, and E) [ | |
| Season (categorical) | Time of year (Spring, Summer, Autumn, and Winter) during which the majority of the outbreak occurred | |
| Precipitation (categorical) | Precipitation category corresponding to the location of interest, represented as the second letter in the Köppen-Geiger climate classification (f, m, w, s, W, S, T, and F) | |
| Rainy versus dry (binary) | Binary indicator describing the typical weather patterns (ie, rainy or dry) in the location at the start of the outbreak | |
| Natural disaster (binary) | Binary indicator describing if a natural disaster appeared to be associated with the onset of the outbreak | |
| Human Development Index (HDI; categorical or continuous) | HDI in the location and year of interest [ | |
| Physician density (continuous) | Physician density per 1000 persons in the year of interest, or the most recent year reported [ | |
| Pathogen source (categorical) | Main source of exposure to the pathogen of interest | |
| Outbreak curve (categorical) | Type of outbreak as reflected in the outbreak curve shape (point source, common source, and propagated outbreak) | |
| Vector type (categorical) | The most relevant genus/species/classification of the disease vector | |
| Case fatality rate (CFR; continuous) | Percent of fatal cases | |
| Attack rate (continuous) | Number of new cases per 1000 persons | |
| Case definition (categorical) | Classification of reported cases (suspected, probable, confirmed, or any combination thereof) | |
| Disease presentation classification (categorical) | Description of clinical disease presentation (eg, bubonic plague and pneumonic plague) | |
| Animal contact (binary or categorical) | Reported contact with potentially infectious animal (used for zoonotic diseases). Can be binary (yes or no) or categorical (ie, contact with particular animal), depending on the level of data available in literature | |
| Contamination source (categorical) | Product or site epidemiologically linked to the outbreak (used for foodborne illnesses) | |
| Transmission mode (categorical) | Mode of transmission that best characterizes the majority of disease spread during the outbreak (eg, airborne and direct contact) | |
| Outbreak source proximity (categorical) | Geographic proximity of cases to a known or likely source of contamination | |
| Outbreak pathogen (categorical) | Etiological agent | |
Figure 1Schematic depicting the flow of statistical operations performed on categorical properties during property analysis.
Figure 2Geographic spread of historical libraries for four diseases. Points are proportional in size to the number of outbreaks in that country within our library.
Measles, Q fever, dengue, and chikungunya algorithm properties.
| Disease | Algorithm Properties |
| Measles | Vaccination status (country) |
| Vaccination status (region) | |
| Physician density | |
| Climate | |
| Q fever | Animal contact |
| HDIa | |
| Affected animal | |
| Outbreak source proximity | |
| Dengue | Physician density |
| Climate | |
| Population (discrete) | |
| Chikungunya | Precipitation |
| HDI |
aHDI: Human Development Index.
Figure 3AIDO data input forms. Panel A shows the AIDO home page and a drop down menu with Q-fever selected. This page also contains links to a tutorial, frequently asked questions, and a feedback form. Panel B shows the user input form, filled with data for the Bilbao outbreak. Panel C shows the filter options available for analysis.
Figure 4AIDO case study: Q-fever outbreak in in Bilbao, Spain in 2014. Panel A shows the outbreak comparison graph for the five most similar outbreaks, and a point estimate reflecting the user's situation in this context. Here, line colors with higher saturation correspond to higher similarity. In panel B, the graph shows an outbreak time series for a Q Fever outbreak in Italy in 1993. Panel C shows a breakdown of the similarity score between the user's unfolding outbreak and the historical outbreak. All graphs presented in AIDO are interactive and available for download in multiple formats.
Figure 5Additional analytics-anomaly detection and short-term forecast. Panel A illustrates two types of graphs used in the anomaly detection tab. Continuous variables (e.g., average cases per day, population at risk, or total cases) are shown as box plots. Discrete or categorical variables (e.g., season or affected animal) are shown as pie charts. The example presented shows that the case study outbreak is similar to other outbreaks included in our library. Panel B shows short term forecasting using the method of analogs. The data shown here can be used to estimate cumulative case count. This figure also demonstrates how data points are aligned for the short-term forecast.
Figure 6Browse functionality. This figure demonstrates browse functionality by date and by location available on AIDO.
Figure 7Example of the related outbreak interface. Here, we show outbreaks related to the France 2008-2011 measles epidemic. All graphs presented in AIDO are interactive and available for download in multiple formats.