To generate a national multiple sclerosis (MS) prevalence estimate for the United States by applying a validated algorithm to multiple administrative health claims (AHC) datasets.MethodsA validated algorithm was applied to private, military, and public AHC datasets to identify adult cases of MS between 2008 and 2010. In each dataset, we determined the 3-year cumulative prevalence overall and stratified by age, sex, and census region. We applied insurance-specific and stratum-specific estimates to the 2010 US Census data and pooled the findings to calculate the 2010 prevalence of MS in the United States cumulated over 3 years. We also estimated the 2010 prevalence cumulated over 10 years using 2 models and extrapolated our estimate to 2017.R...
We aim to validate a case-finding algorithm to detect individuals with multiple sclerosis (MS) using...
We aim to validate a case-finding algorithm to detect individuals with multiple sclerosis (MS) using...
Objectives To estimate the incidence and prevalence of multiple sclerosis (MS) by age and describe s...
Objective: To generate a national multiple sclerosis (MS) prevalence estimate for the United States ...
Considerable gaps exist in knowledge regarding the prevalence of neurologic diseases, such as multip...
Objective: Considerable gaps exist in knowledge regarding the prevalence of neurologic diseases, suc...
Thesis (Master's)--University of Washington, 2019Introduction The prevalence of Multiple Sclerosis (...
IntroductionWe estimated the prevalence of multiple sclerosis (MS) in 3 large geographic areas in th...
Background: Multiple sclerosis (MS) is the most common chronic neurologic disease of young adults, p...
Background: Multiple Sclerosis (MS) epidemiology in Italy is mainly based on population-based preval...
Introduction: Italy is considered a high-risk country for multiple sclerosis (MS). Exploiting electr...
Background Multiple Sclerosis (MS) affects 2.3 million people world-wide. Italy is a high-risk ar...
INTRODUCTION Multiple Sclerosis (MS) affects 2.3 million people world-wide [1]. Italy is a high-ris...
Background: High-quality epidemiologic data worldwide are needed to improve our understanding of dis...
We aim to validate a case-finding algorithm to detect individuals with multiple sclerosis (MS) using...
We aim to validate a case-finding algorithm to detect individuals with multiple sclerosis (MS) using...
Objectives To estimate the incidence and prevalence of multiple sclerosis (MS) by age and describe s...
Objective: To generate a national multiple sclerosis (MS) prevalence estimate for the United States ...
Considerable gaps exist in knowledge regarding the prevalence of neurologic diseases, such as multip...
Objective: Considerable gaps exist in knowledge regarding the prevalence of neurologic diseases, suc...
Thesis (Master's)--University of Washington, 2019Introduction The prevalence of Multiple Sclerosis (...
IntroductionWe estimated the prevalence of multiple sclerosis (MS) in 3 large geographic areas in th...
Background: Multiple sclerosis (MS) is the most common chronic neurologic disease of young adults, p...
Background: Multiple Sclerosis (MS) epidemiology in Italy is mainly based on population-based preval...
Introduction: Italy is considered a high-risk country for multiple sclerosis (MS). Exploiting electr...
Background Multiple Sclerosis (MS) affects 2.3 million people world-wide. Italy is a high-risk ar...
INTRODUCTION Multiple Sclerosis (MS) affects 2.3 million people world-wide [1]. Italy is a high-ris...
Background: High-quality epidemiologic data worldwide are needed to improve our understanding of dis...
We aim to validate a case-finding algorithm to detect individuals with multiple sclerosis (MS) using...
We aim to validate a case-finding algorithm to detect individuals with multiple sclerosis (MS) using...
Objectives To estimate the incidence and prevalence of multiple sclerosis (MS) by age and describe s...