Non-adaptive geostatistical designs (NAGDs) offer standard ways of collecting and analysing geostatistical data in which sampling locations are fixed in advance of any data collection. In contrast, adaptive geostatistical designs (AGDs) allow collection of geostatistical data over time to depend on information obtained from previous information to optimise data collection towards the analysis objective. AGDs are becoming more important in spatial mapping, particularly in poor resource settings where uniformly precise mapping may be unrealistically costly and the priority is often to identify critical areas where interventions can have the most health impact. Two constructions are: singleton and batch adaptive sampling. In singleton sampli...
Abstract: A large sampling effort is required to produce an accurate geostatistical map, and the ext...
In low-resource settings, prevalence mapping relies on empirical prevalence data from a finite, ofte...
Geostatistical methods are increasingly used in low-resource settings where disease registries are e...
Non-adaptive geostatistical designs (NAGDs) offer standard ways of collecting and analysing geostati...
Geostatistical design and analysis methods are increasingly used in disease mapping, particularly in...
Introduction In the context of malaria elimination, interventions will need to target high burden a...
In the context of malaria elimination, interventions will need to target high burden areas to furthe...
In the context of malaria elimination, interventions will need to target high burden areas to furthe...
<div><p>Introduction</p><p>In the context of malaria elimination, interventions will need to target ...
The problem of choosing spatial sampling designs for investigating an unobserved spatial phenomenon ...
Introduction: In the context of malaria elimination, interventions will need to target high burden a...
Introduction: In the context of malaria elimination, interventions will need to target high burden a...
The problem of choosing spatial sampling designs for investigating an unobserved spatial phenomenon ...
INTRODUCTION:In the context of malaria elimination, interventions will need to target high burden ar...
Introduction: Accurate assessments of vector occurrence and abundance, particularly in widespread v...
Abstract: A large sampling effort is required to produce an accurate geostatistical map, and the ext...
In low-resource settings, prevalence mapping relies on empirical prevalence data from a finite, ofte...
Geostatistical methods are increasingly used in low-resource settings where disease registries are e...
Non-adaptive geostatistical designs (NAGDs) offer standard ways of collecting and analysing geostati...
Geostatistical design and analysis methods are increasingly used in disease mapping, particularly in...
Introduction In the context of malaria elimination, interventions will need to target high burden a...
In the context of malaria elimination, interventions will need to target high burden areas to furthe...
In the context of malaria elimination, interventions will need to target high burden areas to furthe...
<div><p>Introduction</p><p>In the context of malaria elimination, interventions will need to target ...
The problem of choosing spatial sampling designs for investigating an unobserved spatial phenomenon ...
Introduction: In the context of malaria elimination, interventions will need to target high burden a...
Introduction: In the context of malaria elimination, interventions will need to target high burden a...
The problem of choosing spatial sampling designs for investigating an unobserved spatial phenomenon ...
INTRODUCTION:In the context of malaria elimination, interventions will need to target high burden ar...
Introduction: Accurate assessments of vector occurrence and abundance, particularly in widespread v...
Abstract: A large sampling effort is required to produce an accurate geostatistical map, and the ext...
In low-resource settings, prevalence mapping relies on empirical prevalence data from a finite, ofte...
Geostatistical methods are increasingly used in low-resource settings where disease registries are e...