# Identifying gaps between LLIN use and vector exposure to improve malaria control

> **NIH NIH K23** · UNIVERSITY OF CALIFORNIA, SAN FRANCISCO · 2021 · $196,816

## Abstract

PROJECT SUMMARY/ABSTRACT
Malaria affects three billion people worldwide. Despite remarkable reductions in malaria incidence over the last
15 years, recent evidence shows that our traditional control tools are weakening. Long-lasting insecticide-treated
bednets (LLINs) are the most widely used tool for malaria prevention and have contributed significantly to decreases in malaria incidence, but recent studies suggest that LLINs are either less effective than before or people
are not using them as reported. A rigorous assessment of how the timing and location of vector exposure intersects with real-life use of LLINs could be vitally important to regain the initiative in malaria control. However, the
lack of a reliable measure of LLIN use presents a major challenge. Current measurement tools, like self-reported
use, are subjective and unable to account for temporal variations in use. To address these limitations, I invented
an electronic monitor of LLIN use. SmartNet uses sensors embedded in a standard LLIN to continuously assess
whether it is unfurled with 98% accuracy. We have completed successful feasibility, acceptability and field trials
of SmartNet. The central rationale for this project is that continuous monitoring of individual LLIN use combined
with quantified exposure to malaria vectors will allow a more robust analysis than has previously been possible
of how LLINs reduce vector exposure in practice. The research goal of this K23 proposal is to develop high-yield
interventions for improving malaria control by identifying gaps between individual risk of vector exposure and
individual LLIN use. To facilitate this work, I have access to a longitudinal cohort of 480 individuals in Uganda.
Our approach leverages intensive entomology surveillance already being gathered every two weeks in this cohort. Additionally, we will deploy SmartNets over every sleeping space to cover every individual over multiple
years. High-yield interventions will be identified by pursuing three specific aims: 1) quantify exposure to malaria
vectors and identify factors associated with higher risk, 2) quantify LLIN use and identify factors associated with
poor adherence and 3) identify mismatches between LLIN use and vector exposure, develop interventions addressing these gaps and then systematically determine the highest-yield interventions for reducing vector-human
contact using a model of vector exposure. My long-term career goal is to establish an independent research
career developing innovative approaches for improving malaria control. This K23 proposal supplements my prior
experience with mentorship and training in malaria entomology and epidemiology and infectious disease modelling. Together, the proposed research activities and complementary training are designed to lead to a robust
program of future work. I will emerge from this award prepared for a strong NIH R01 application to apply this
approach in different transmission settings, to develop operational st...

## Key facts

- **NIH application ID:** 10174717
- **Project number:** 5K23AI139364-03
- **Recipient organization:** UNIVERSITY OF CALIFORNIA, SAN FRANCISCO
- **Principal Investigator:** Paul Joseph Krezanoski
- **Activity code:** K23 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2021
- **Award amount:** $196,816
- **Award type:** 5
- **Project period:** 2019-07-01 → 2024-06-30

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10174717

## Citation

> US National Institutes of Health, RePORTER application 10174717, Identifying gaps between LLIN use and vector exposure to improve malaria control (5K23AI139364-03). Retrieved via AI Analytics 2026-05-23 from https://api.ai-analytics.org/grant/nih/10174717. Licensed CC0.

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