Adaptive interventions for optimizing malaria control: an implementation study protocol for a block-cluster randomized, sequential multiple assignment trial

Abstract Background In the past two decades, the massive scale-up of long-lasting insecticidal nets (LLINs) and indoor residual spraying (IRS) has led to significant reductions in malaria mortality and morbidity. Nonetheless, the malaria burden remains high, and a dozen countries in Africa show a tr...

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Main Authors: Guofa Zhou, Ming-chieh Lee, Harrysone E. Atieli, John I. Githure, Andrew K. Githeko, James W. Kazura, Guiyun Yan
Format: Article
Language:English
Published: BMC 2020-07-01
Series:Trials
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13063-020-04573-y
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language English
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author Guofa Zhou
Ming-chieh Lee
Harrysone E. Atieli
John I. Githure
Andrew K. Githeko
James W. Kazura
Guiyun Yan
spellingShingle Guofa Zhou
Ming-chieh Lee
Harrysone E. Atieli
John I. Githure
Andrew K. Githeko
James W. Kazura
Guiyun Yan
Adaptive interventions for optimizing malaria control: an implementation study protocol for a block-cluster randomized, sequential multiple assignment trial
Trials
Adaptive intervention
Sequential multiple assignment randomized trial
Block-cluster randomized
Long-lasting insecticidal net (LLIN)
Indoor residual spraying
Piperonyl butoxide-treated LLIN
author_facet Guofa Zhou
Ming-chieh Lee
Harrysone E. Atieli
John I. Githure
Andrew K. Githeko
James W. Kazura
Guiyun Yan
author_sort Guofa Zhou
title Adaptive interventions for optimizing malaria control: an implementation study protocol for a block-cluster randomized, sequential multiple assignment trial
title_short Adaptive interventions for optimizing malaria control: an implementation study protocol for a block-cluster randomized, sequential multiple assignment trial
title_full Adaptive interventions for optimizing malaria control: an implementation study protocol for a block-cluster randomized, sequential multiple assignment trial
title_fullStr Adaptive interventions for optimizing malaria control: an implementation study protocol for a block-cluster randomized, sequential multiple assignment trial
title_full_unstemmed Adaptive interventions for optimizing malaria control: an implementation study protocol for a block-cluster randomized, sequential multiple assignment trial
title_sort adaptive interventions for optimizing malaria control: an implementation study protocol for a block-cluster randomized, sequential multiple assignment trial
publisher BMC
series Trials
issn 1745-6215
publishDate 2020-07-01
description Abstract Background In the past two decades, the massive scale-up of long-lasting insecticidal nets (LLINs) and indoor residual spraying (IRS) has led to significant reductions in malaria mortality and morbidity. Nonetheless, the malaria burden remains high, and a dozen countries in Africa show a trend of increasing malaria incidence over the past several years. This underscores the need to improve the effectiveness of interventions by optimizing first-line intervention tools and integrating newly approved products into control programs. Because transmission settings and vector ecologies vary from place to place, malaria interventions should be adapted and readapted over time in response to evolving malaria risks. An adaptive approach based on local malaria epidemiology and vector ecology may lead to significant reductions in malaria incidence and transmission risk. Methods/design This study will use a longitudinal block-cluster sequential multiple assignment randomized trial (SMART) design with longitudinal outcome measures for a period of 3 years to develop an adaptive intervention for malaria control in western Kenya, the first adaptive trial for malaria control. The primary outcome is clinical malaria incidence rate. This will be a two-stage trial with 36 clusters for the initial trial. At the beginning of stage 1, all clusters will be randomized with equal probability to either LLIN, piperonyl butoxide-treated LLIN (PBO Nets), or LLIN + IRS by block randomization based on their respective malaria risks. Intervention effectiveness will be evaluated with 12 months of follow-up monitoring. At the end of the 12-month follow-up, clusters will be assessed for “response” versus “non-response” to PBO Nets or LLIN + IRS based on the change in clinical malaria incidence rate and a pre-defined threshold value of cost-effectiveness set by the Ministry of Health. At the beginning of stage 2, if an intervention was effective in stage 1, then the intervention will be continued. Non-responders to stage 1 PBO Net treatment will be randomized equally to either PBO Nets + LSM (larval source management) or an intervention determined by an enhanced reinforcement learning method. Similarly, non-responders to stage 1 LLIN + IRS treatment will be randomized equally to either LLIN + IRS + LSM or PBO Nets + IRS. There will be an 18-month evaluation follow-up period for stage 2 interventions. We will monitor indoor and outdoor vector abundance using light traps. Clinical malaria will be monitored through active case surveillance. Cost-effectiveness of the interventions will be assessed using Q-learning. Discussion This novel adaptive intervention strategy will optimize existing malaria vector control tools while allowing for the integration of new control products and approaches in the future to find the most cost-effective malaria control strategies in different settings. Given the urgent global need for optimization of malaria control tools, this study can have far-reaching implications for malaria control and elimination. Trial registration US National Institutes of Health, study ID NCT04182126 . Registered on 26 November 2019.
topic Adaptive intervention
Sequential multiple assignment randomized trial
Block-cluster randomized
Long-lasting insecticidal net (LLIN)
Indoor residual spraying
Piperonyl butoxide-treated LLIN
url http://link.springer.com/article/10.1186/s13063-020-04573-y
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spelling doaj-be804a23989c437cac704b38459a7cb22020-11-25T02:48:04ZengBMCTrials1745-62152020-07-0121111510.1186/s13063-020-04573-yAdaptive interventions for optimizing malaria control: an implementation study protocol for a block-cluster randomized, sequential multiple assignment trialGuofa Zhou0Ming-chieh Lee1Harrysone E. Atieli2John I. Githure3Andrew K. Githeko4James W. Kazura5Guiyun Yan6Program in Public Health, University of CaliforniaProgram in Public Health, University of CaliforniaDepartment of Public Health, Maseno UniversityDepartment of Public Health, Maseno UniversityKenya Medical Research InstituteCenter for Global Health and Diseases, Case Western Reserve UniversityProgram in Public Health, University of CaliforniaAbstract Background In the past two decades, the massive scale-up of long-lasting insecticidal nets (LLINs) and indoor residual spraying (IRS) has led to significant reductions in malaria mortality and morbidity. Nonetheless, the malaria burden remains high, and a dozen countries in Africa show a trend of increasing malaria incidence over the past several years. This underscores the need to improve the effectiveness of interventions by optimizing first-line intervention tools and integrating newly approved products into control programs. Because transmission settings and vector ecologies vary from place to place, malaria interventions should be adapted and readapted over time in response to evolving malaria risks. An adaptive approach based on local malaria epidemiology and vector ecology may lead to significant reductions in malaria incidence and transmission risk. Methods/design This study will use a longitudinal block-cluster sequential multiple assignment randomized trial (SMART) design with longitudinal outcome measures for a period of 3 years to develop an adaptive intervention for malaria control in western Kenya, the first adaptive trial for malaria control. The primary outcome is clinical malaria incidence rate. This will be a two-stage trial with 36 clusters for the initial trial. At the beginning of stage 1, all clusters will be randomized with equal probability to either LLIN, piperonyl butoxide-treated LLIN (PBO Nets), or LLIN + IRS by block randomization based on their respective malaria risks. Intervention effectiveness will be evaluated with 12 months of follow-up monitoring. At the end of the 12-month follow-up, clusters will be assessed for “response” versus “non-response” to PBO Nets or LLIN + IRS based on the change in clinical malaria incidence rate and a pre-defined threshold value of cost-effectiveness set by the Ministry of Health. At the beginning of stage 2, if an intervention was effective in stage 1, then the intervention will be continued. Non-responders to stage 1 PBO Net treatment will be randomized equally to either PBO Nets + LSM (larval source management) or an intervention determined by an enhanced reinforcement learning method. Similarly, non-responders to stage 1 LLIN + IRS treatment will be randomized equally to either LLIN + IRS + LSM or PBO Nets + IRS. There will be an 18-month evaluation follow-up period for stage 2 interventions. We will monitor indoor and outdoor vector abundance using light traps. Clinical malaria will be monitored through active case surveillance. Cost-effectiveness of the interventions will be assessed using Q-learning. Discussion This novel adaptive intervention strategy will optimize existing malaria vector control tools while allowing for the integration of new control products and approaches in the future to find the most cost-effective malaria control strategies in different settings. Given the urgent global need for optimization of malaria control tools, this study can have far-reaching implications for malaria control and elimination. Trial registration US National Institutes of Health, study ID NCT04182126 . Registered on 26 November 2019.http://link.springer.com/article/10.1186/s13063-020-04573-yAdaptive interventionSequential multiple assignment randomized trialBlock-cluster randomizedLong-lasting insecticidal net (LLIN)Indoor residual sprayingPiperonyl butoxide-treated LLIN