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    Date Issued2022 (2)Author
    Colubri, Andrés (2)
    Adeniji, Moyinoluwa (1)Bailey, Landen (1)Bronson, Amy (1)Brown, Todd (1)View MoreUMass Chan AffiliationProgram in Bioinformatics and Integrative Biology (2)Microbiology and Physiological Systems (1)Morningside Graduate School of Biomedical Sciences (1)Document TypeJournal Article (2)KeywordAfrica (1)Biomarkers (1)Bluetooth contact sensing (1)Ebola hemorrhagic fever (1)epidemiology (1)View MoreJournalPatterns (New York, N.Y.) (1)PLoS neglected tropical diseases (1)

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    Constructing, validating, and updating machine learning models to predict survival in children with Ebola Virus Disease

    Genisca, Alicia E; Butler, Kelsey; Gainey, Monique; Chu, Tzu-Chun; Huang, Lawrence; Mbong, Eta N; Kennedy, Stephen B; Laghari, Razia; Nganga, Fiston; Muhayangabo, Rigobert F; et al. (2022-10-12)
    Background: Ebola Virus Disease (EVD) causes high case fatality rates (CFRs) in young children, yet there are limited data focusing on predicting mortality in pediatric patients. Here we present machine learning-derived prognostic models to predict clinical outcomes in children infected with Ebola virus. Methods: Using retrospective data from the Ebola Data Platform, we investigated children with EVD from the West African EVD outbreak in 2014-2016. Elastic net regularization was used to create a prognostic model for EVD mortality. In addition to external validation with data from the 2018-2020 EVD epidemic in the Democratic Republic of the Congo (DRC), we updated the model using selected serum biomarkers. Findings: Pediatric EVD mortality was significantly associated with younger age, lower PCR cycle threshold (Ct) values, unexplained bleeding, respiratory distress, bone/muscle pain, anorexia, dysphagia, and diarrhea. These variables were combined to develop the newly described EVD Prognosis in Children (EPiC) predictive model. The area under the receiver operating characteristic curve (AUC) for EPiC was 0.77 (95% CI: 0.74-0.81) in the West Africa derivation dataset and 0.76 (95% CI: 0.64-0.88) in the DRC validation dataset. Updating the model with peak aspartate aminotransferase (AST) or creatinine kinase (CK) measured within the first 48 hours after admission increased the AUC to 0.90 (0.77-1.00) and 0.87 (0.74-1.00), respectively. Conclusion: The novel EPiC prognostic model that incorporates clinical information and commonly used biochemical tests, such as AST and CK, can be used to predict mortality in children with EVD.
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    Analyzing the impact of a real-life outbreak simulator on pandemic mitigation: An epidemiological modeling study

    Specht, Ivan; Sani, Kian; Loftness, Bryn C; Hoffman, Curtis; Gionet, Gabrielle; Bronson, Amy; Marshall, John; Decker, Craig; Bailey, Landen; Siyanbade, Tomi; et al. (2022-08-12)
    An app-based educational outbreak simulator, Operation Outbreak (OO), seeks to engage and educate participants to better respond to outbreaks. Here, we examine the utility of OO for understanding epidemiological dynamics. The OO app enables experience-based learning about outbreaks, spreading a virtual pathogen via Bluetooth among participating smartphones. Deployed at many colleges and in other settings, OO collects anonymized spatiotemporal data, including the time and duration of the contacts among participants of the simulation. We report the distribution, timing, duration, and connectedness of student social contacts at two university deployments and uncover cryptic transmission pathways through individuals' second-degree contacts. We then construct epidemiological models based on the OO-generated contact networks to predict the transmission pathways of hypothetical pathogens with varying reproductive numbers. Finally, we demonstrate that the granularity of OO data enables institutions to mitigate outbreaks by proactively and strategically testing and/or vaccinating individuals based on individual social interaction levels.
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