Automated Mobile Microscopy for Malaria Diagnosis and surveillance in Uganda
Project Number5U01EB035483-02
Former Number1U01TW012532-01
Contact PI/Project LeaderNAKASI, ROSE
Awardee OrganizationMAKERERE UNIVERSITY COLLEGE OF HEALTH SCIENCES
Description
Abstract Text
Project Summary
Malaria is one of the leading health problems of the developing world. Malaria endemicity has
been attributed to poor diagnosis at the lab level. This quite often leads to disease misdiagnosis
and drug resistance. Many developing countries are faced with a lack of critical mass of lab
technicians to diagnose the disease through a gold standard mechanism of microscopy and this
has worsened the already dire situation in some of these Countries. World over the trending
technologies are now based on machine learning and deep learning techniques. These can be
leveraged with the combination of smartphones to improve disease diagnosis. However, most of
the previous work on automation for microscopy diagnosis has been carried out adhocly in the
lab environment and no study seems to give a practical field deployable solution. The goal of the
proposed research is to develop a rapid, low cost, accurate and simple in-field screening system
for microscopy challenges like malaria. Specifically, this study will test and validate developed
image analysis models for real time field-based diagnostics and surveillance of malaria. The
proposed solution builds from our earlier work on mobile microscopy carried out at Makerere
University AI Lab, that has confronted automated microscopy through exploiting recent
technological advances in 3D printing to enable development of a low-cost 3D printed adapter.
This has enabled attachment of a wide range of Smartphones on a microscope, furthermore, we
have implemented deep learning models for pathogen detection to produce effective hardware
and software respectively.
The software component of our work is to train machine learning methods to recognise different
pathogen objects. The diagnosis solutions have however been ad-hoc in its current state where
different conditional settings like image scaling, phone resolutions and grid readings were not
standardized and therefore poor performance of the model when deployed in field testing. Our
Infield automated screening trials will therefore involve achieving robust outcomes, through 1)
Development of machine learning approaches for standardised field-based microscopy of
malaria diagnosis in Uganda. 2) Building a complementary framework for real time
surveillance and improved diagnosis of malaria platform through in-field diagnostic
studies. The point-of-care field-based diagnostic system proposed here addresses a major
unmet public health malaria screening and surveillance need to reliably inform public health
interventions in malaria control and prevention.
Public Health Relevance Statement
Our approach comprises two major innovations to automated malaria diagnosis and
surveillance in Uganda: 1) the development of machine learning approaches for standardised
microscopy of malaria. 2) the building of a real time field-based surveillance of malaria system
NIH Spending Category
No NIH Spending Category available.
Project Terms
3D PrintAddressAfricaArtificial IntelligenceAutomationCalibrationCellular PhoneCessation of lifeCommunicable DiseasesComplementComputer softwareCountryCouplingData ScienceData SourcesDeveloping CountriesDevelopmentDiagnosisDiagnosticDiseaseDisease SurveillanceDrug resistanceEnvironmentEquipmentGoalsHealthImageImage AnalysisIndividualLocationMachine LearningMalariaMalaria DiagnosisMapsMethodsMicroscopeMicroscopyModelingOutcomePathogen detectionPerformancePilot ProjectsPreventionProbabilityPublic HealthReportingResearchResolutionResourcesRiskStainsStandardizationSystemTechniquesTechnologyTelephoneTestingTimeTrainingUgandaUniversitiesUpdateWorkcostdeep learningdeep learning modeldesigndiagnostic platformdisease diagnosisdisorder riskexperiencefield studyimplementation interventionimprovedinnovationmachine learning methodmeternon-traditional datanovelpathogenpoint of carepublic health interventionreal time modelscreeningtooltrend
National Institute of Biomedical Imaging and Bioengineering
CFDA Code
286
DUNS Number
850536636
UEI
QSXBGHKN8KV6
Project Start Date
18-September-2023
Project End Date
31-July-2026
Budget Start Date
01-August-2024
Budget End Date
31-July-2025
Project Funding Information for 2024
Total Funding
$248,962
Direct Costs
$230,520
Indirect Costs
$18,442
Year
Funding IC
FY Total Cost by IC
2024
NIH Office of the Director
$248,962
Year
Funding IC
FY Total Cost by IC
Sub Projects
No Sub Projects information available for 5U01EB035483-02
Publications
Publications are associated with projects, but cannot be identified with any particular year of the project or fiscal year of funding. This is due to the continuous and cumulative nature of knowledge generation across the life of a project and the sometimes long and variable publishing timeline. Similarly, for multi-component projects, publications are associated with the parent core project and not with individual sub-projects.
No Publications available for 5U01EB035483-02
Patents
No Patents information available for 5U01EB035483-02
Outcomes
The Project Outcomes shown here are displayed verbatim as submitted by the Principal Investigator (PI) for this award. Any opinions, findings, and conclusions or recommendations expressed are those of the PI and do not necessarily reflect the views of the National Institutes of Health. NIH has not endorsed the content below.
No Outcomes available for 5U01EB035483-02
Clinical Studies
No Clinical Studies information available for 5U01EB035483-02
News and More
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History
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Similar Projects
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