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Statistical Modelling of Complex Correlated and Clustered Data Household Surveys in Africa

Ngianga-Bakwin Kandala (Herausgeber)

Buch | Hardcover
363 Seiten
2019
Nova Science Publishers Inc (Verlag)
978-1-5361-5981-3 (ISBN)
249,95 inkl. MwSt
In order to assist a hospital in managing its resources and patients, modelling the length of stay is highly important. Recent health scholarship and practice has largely remained empirical, dwelling on primary data. This is critically important, first, because health planners generally rely on data to establish trends and patterns of disease burden at national or regional level. Secondly, epidemiologists depend on data to investigate possible risk factors of the disease. Yet the use of routine or secondary data has, in recent years, proved increasingly significant in such endeavours. Various units within the health systems collected such data primarily as part of the process for surveillance, monitoring and evaluation. Such data is sometimes periodically supplemented by population-based sample survey datasets. Thirdly, coupled with statistical tools, public health professionals are able to analyze health data and breathe life into what may turn out to be meaningless data. The main focus of this book is to present and showcase advanced modelling of routine or secondary survey data. Studies demonstrate that statistical literacy and knowledge are needed to understand health research outputs. The advent of user-friendly statistical packages combined with computing power and widespread availability of public health data resulted in more reported epidemiological studies in literature. However, analysis of secondary data, has some unique challenges. These are most widely reported health literature, so far has failed to recognize resulting in inappropriate analysis, and erroneous conclusions. This book presents the application of advanced statistical techniques to real examples emanating from routine or secondary survey data. These are essentially datasets in which the two editors have been involved, demonstrating how to tackle these challenges. Some of these challenges are: the complex sampling design of the surveys, the hierarchical nature of the data, the dependence of data at the sampled cluster and missing data among many more challenges. Using data from the Health Management Information System (HMIS), and Demographic and Health Survey (DHS), we provide various approaches and techniques of dealing with data complexity, how to handle correlated or clustered data. Each chapter presents an example code, which can be used to analyze similar data in R, Stata or SPSS. To make the book more concise, we have provided the codes on the book's website. The book considers four main topics in the field of health sciences research: (i) structural equation modeling; (ii) spatial and spatio-temporal modeling; (iii) correlated or clustered copula modeling; and (iv) survival analysis. The book has potential to impact methodologists, including students undertaking Master's or Doctoral level programmes as well as other researchers seeking some related reference on quantitative analysis in public health or health sciences or other areas where data of similar nature would be applicable. Further the book can be a resource to public health professionals interested in quantitative approaches to answer questions of epidemiological nature. Each chapter starts with a motivating background, review of statistical methods, analysis and results, ending discussion and possible recommendations.

PrefaceAnalysis and Modelling of Complex Secondary Data: An Overview of Methodological Issues and ChallengesA Mixed Discrete-Time Survival Analysis of Length of Hospitalization: Applications to Malaria Admissions among Peadiatric Children in MalawiBivariate Model of Health Seeking Behaviour among Women for Their Under-Five Children with FeverMover-Stayer Model on Future Contraceptive Use among Married Women in MalawiInvestigating Causal and Mediating Risk Factors for Stunting in under Five Children in Malawi Using Structural Equation Modelling TechniquesLinking Food Insecurity to Quality of Life Using Structural Equation ModelsA Zero-Truncated Negative Binomial Regression Model for Dietary Diversity in Namibian Under-5 ChildrenA Copula Approach to Sample Selection Modelling of Treatment Adherence and Viral Suppression among HIV Patients on Antiretroviral Therapy (ART) in NamibiaCopula-Linked Generalized Joint Regression Model for Water, Sanitation and Hygiene (WASH) Coverage in NamibiaBivariate Copula-Based Regression to Model Timing and Frequency of Antenatal Care UtilizationMultiscale Spatial Modelling of Diabetes and Hypertension in NamibiaModels for Analyzing Spatial Patterns in Risk of Urban Malaria: A Case Study of Blantyre, MalawiSpatio-Temporal Modelling of Malaria Risk in Malawi: An Application to Health Management Information System DataModelling Spatial and Spatial-Temporal Patterns of TB and HIV Mortality in NamibiaAttrition of Women Initiating Antiretroviral Therapy (ART) under Option B+: Cox Proportional Hazards, Competing Risks and Multistate Survival ModelsEpilogueAbout the ContributorsIndex.

Erscheinungsdatum
Sprache englisch
Gewicht 800 g
Themenwelt Informatik Datenbanken Data Warehouse / Data Mining
Mathematik / Informatik Mathematik Statistik
ISBN-10 1-5361-5981-6 / 1536159816
ISBN-13 978-1-5361-5981-3 / 9781536159813
Zustand Neuware
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