grant

UZIMA-DS: UtiliZing health Information for Meaningful Impact in East Africa through Data Science

Organization AGA KHAN UNIVERSITY (KENYA)Location NAIROBI, KENYAPosted 15 Sept 2021Deadline 30 Jun 2026
NIHUS FederalResearch GrantFY20250-11 years oldAI systemAddressAdolescentAdolescent YouthAfricaAfricanAgeArtificial IntelligenceBiologicalCaringChildChild HealthChild YouthChildren (0-21)Cohort StudiesCommunicationCommunitiesComputer ReasoningConcurrent StudiesCountryCoupledDataData AnalysesData AnalysisData AnalyticsData Management and Analysis CoreData Management and Statistical Analysis CoreData Management and Statistical CoreData ScienceData SetData SourcesDecrease health disparitiesDevelopmentDevelopmental DelayDevelopmental Delay DisordersDiseaseDisorderEcologic SystemsEcological SystemsEcosystemEnsureEnvironmentEventFAIR dataFAIR guiding principlesFAIR principlesFeeling suicidalFemale of child bearing ageFemale of childbearing ageFindable, Accessible, Interoperable and Re-usableFindable, Accessible, Interoperable, and ReusableFosteringFundingFutureFuture GenerationsGestational HypertensionGovernmentGrantGuidelinesHealthHealth CareHealth Care ProvidersHealth PersonnelHealth disparity mitigationHealth disparity reductionHealth systemHigh Risk WomanHospitalsHypertension induced by pregnancyIndividualInformaticsInfrastructureInvestigatorsKenyaLifeLow Birth Weight InfantLow-resource areaLow-resource communityLow-resource environmentLow-resource regionLow-resource settingLower health disparitiesMachine IntelligenceMaternal HealthMaternal and Child HealthMedical ResearchMental DepressionMental HealthMental HygieneMethodsMichiganMitigate health disparitiesModelingMoodsNational Institutes of HealthOutcomePathway interactionsPatternPersonal SatisfactionPersonsPilot ProjectsPoliciesPopulationPregnancy Associated HypertensionPregnancy OutcomePrivate SectorPsychological HealthR-Series Research ProjectsR01 MechanismR01 ProgramReduce health disparitiesReproducibilityResearchResearch GrantsResearch InstituteResearch PersonnelResearch Project GrantsResearch ProjectsResearch ResourcesResearch SupportResearch TrainingResearchersResource-constrained areaResource-constrained communityResource-constrained environmentResource-constrained regionResource-constrained settingResource-limited areaResource-limited communityResource-limited environmentResource-limited regionResource-limited settingResource-poor areaResource-poor communityResource-poor environmentResource-poor regionResource-poor settingResourcesRiskSpecific Child Development DisordersSuicidal thoughtsSystemTechnologyTraining ProgramsTrustUnited StatesUnited States National Institutes of HealthUniversitiesVulnerable PopulationsWomanWorkYouthYouth 10-21adult youthagesantenatalantepartumat-risk femalesat-risk womenbiologiccardiovascular disease riskcardiovascular disorder riskcare deliverycareerclinical relevanceclinically relevantcollege studentcommercializationcomputational platformcomputer based predictioncomputer sciencecomputing platformdata ecosystemdata hubdata interoperabilitydata interpretationdata managementdata sharingdata sharing ecosystemdepressiondevelopmentalearly childhoodempowermentfemales at high riskhealth care personnelhealth care workerhealth of the motherhealth providerhealth workforcehigh riskhigh risk femaleshypertension during pregnancyhypertension in pregnancyhypertensive pregnancyimprovedjuvenilejuvenile humankidslater in lifelater lifelow birth weightlow birthweightm-HealthmHealthmachine learning based methodmachine learning based prediction modelmachine learning based predictive modelmachine learning methodmachine learning methodologiesmachine learning predictionmachine learning prediction modelmedical personnelmobile appmobile applicationmobile computingmobile device applicationmobile healthmobile platformmobile technologymulti-modal datamulti-modal datasetsmultidisciplinarymultimodal datamultimodal datasetsneonatal healthnew approachesnewborn healthnovelnovel approachesnovel strategiesnovel strategyopen dataopen scienceopen-source datapathwaypilot studypopulation healthpredictive modelingpregnancy characterized by hypertensionpregnancy hypertensionpregnancy-related hypertensionprogramspsychosocialpublic health relevancerisk prediction algorithmrisk prediction modelsharing hubstatisticssuicidal ideationsuicidal thinkingsuicide ideationsurveillance datasynergismthoughts about suicidetooltranslational pipelinetranslational spectrumtreatment providerunder served communityunderserved communityuniversity studentvulnerable groupvulnerable individualvulnerable peoplewearablewearable devicewearable electronicswearable systemwearable technologywearable toolwearableswell-beingwellbeingwomen at high riskwomen of child bearing agewomen of childbearing ageyoung adultyoung adult ageyoung adulthoodyoungsteryouth age
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Full Description

PROJECT SUMMARY – Overall Component
Africa is the youngest continent in the world, with 60% of its population under the age of 25. The span between early life to young adulthood represents a critical window where biological, environment and psychosocial events can significantly impact long- term uzima, which means health/well-being in Swahili. Coupled with the recent

technological advances and the enormous volumes of data collected in Africa, there is an unprecedented opportunity to leverage data science to identify and improve the health trajectories of young Africans. However, significant analytical and computational barriers persist that impede our ability to use this information to change care at the community and individual level. Our proposed Research Hub, UZIMA-DS, aims to change this narrative by UtiliZing health Information for Meaningful impact in East Africa through Data Science. We will create a scalable and sustainable platform to apply novel approaches to data assimilation and advanced artificial intelligence (AI)/machine learning (ML)-based methods to serve as early warning systems to address critical health issues impacting young Africans in two domains: maternal, newborn and child health and mental

health. Our Hub addresses three critical needs across the translational spectrum of data science:

1) Harmonization of multimodal data sources for meaningful use and analyses;

2) Leveraging temporal patterns of data to identify trajectories through prediction modeling using AI/ML-based methods; and

3) Engaging with key stakeholders to identify pathways for dissemination and sustainability of these models into target communities.

For our Maternal and Child Health Study (Project 1), we will leverage large existing data sets in Kenya, including two demographic surveillance systems, cohort studies and hospital data, to develop and validate AI/ML-based prediction models to identify women of childbearing age at high risk for poor pregnancy outcomes (e.g., pregnancy-induced hypertension, low birthweight) and non-communicable diseases later in life and children at

risk of future poor life outcomes (e.g., developmental delays).

For our Mental Health Study (Project 2), leverage existing surveillance data as well as novel mobile technologies (e.g., mobile apps, wearables) for the development of existing and new AI/ML-based prediction models to identify adolescents and young healthcare

workers at risk of depression and suicide ideation in Kenya. Our Hub and Projects will be supported by an Admin Core, Data Management and Analysis Core, and a Dissemination and Sustainability Core, which will facilitate engagement with multisectoral stakeholders to identify sustainable model dissemination pathways into target communities. Ultimately, our work will empower African researchers to carry forward the UZIMA-DS Hub to address on-going and evolving health needs of Africans by building sustainable infrastructure, expertise, and partnerships for long-lasting impact. The UZIMA-DS Hub can serve as a model that can be scaled to other countries and health domains with the greater DS-I consortium to transform care delivery in Africa, ensuring that current and future generations of Africans can achieve uzima.

Grant Number: 5U54TW012089-05
NIH Institute/Center: NIH

Principal Investigator: Amina Ali

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