Objective Total knee replacement (TKR) is the most effective intervention available for the treatment of severe knee osteoarthritis. A small proportion of patients undergoing TKR are at risk of postoperative complications. We aimed to develop and externally validate algorithms for the prediction of post-operative mortality. Methods We conducted a multinational, multidatabase cohort analysis using claims data from the USA (Optum® de-identified Clinformatics® Datamart, Extended - Date of Death (Optum)) and The Health Improvement Network (THIN) UK primary care database. Both data sources were mapped to the Observational Medical Outcomes Partnership (OMOP) common data model, and processed using the same analytical platform developed by th...
Objectives: The aim was to develop and validate a simple clinical prediction model, based on easily ...
We report the general mortality rate after total knee replacement and identify independent predictor...
Altres ajuts: This study was funded by NIHR School for Primary Care Research Funding Round 9 (Projec...
Purpose: The purpose of this study was to develop and validate a prediction model for 90-day mortali...
Background Elective total knee replacement (TKR) is a safe and cost-effective surgical procedure for...
Background: Knee osteoarthritis affects 10% of the UK population over 55 years, resulting in pain an...
Background Approximately 12–20% of those with osteoarthritis (OA) in Australia who undergo total kne...
Background: Predictive modeling promises to improve our understanding of what variables influence pa...
BackgroundPredictive modeling promises to improve our understanding of what variables influence pati...
To develop and validate a clinical prediction model of patient-reported pain and function after unde...
Aims To develop and validate patient-centred algorithms that estimate individual risk of death over ...
BACKGROUND: Predictive models could help clinicians identify risk factors that cause adverse events ...
ObjectivesThe aim was to develop and validate a simple clinical prediction model, based on easily co...
\u3cp\u3eBACKGROUND: One of the main determinants of treatment satisfaction after total knee arthrop...
Objectives The ability to efficiently and accurately predict future risk of primary total hip and kn...
Objectives: The aim was to develop and validate a simple clinical prediction model, based on easily ...
We report the general mortality rate after total knee replacement and identify independent predictor...
Altres ajuts: This study was funded by NIHR School for Primary Care Research Funding Round 9 (Projec...
Purpose: The purpose of this study was to develop and validate a prediction model for 90-day mortali...
Background Elective total knee replacement (TKR) is a safe and cost-effective surgical procedure for...
Background: Knee osteoarthritis affects 10% of the UK population over 55 years, resulting in pain an...
Background Approximately 12–20% of those with osteoarthritis (OA) in Australia who undergo total kne...
Background: Predictive modeling promises to improve our understanding of what variables influence pa...
BackgroundPredictive modeling promises to improve our understanding of what variables influence pati...
To develop and validate a clinical prediction model of patient-reported pain and function after unde...
Aims To develop and validate patient-centred algorithms that estimate individual risk of death over ...
BACKGROUND: Predictive models could help clinicians identify risk factors that cause adverse events ...
ObjectivesThe aim was to develop and validate a simple clinical prediction model, based on easily co...
\u3cp\u3eBACKGROUND: One of the main determinants of treatment satisfaction after total knee arthrop...
Objectives The ability to efficiently and accurately predict future risk of primary total hip and kn...
Objectives: The aim was to develop and validate a simple clinical prediction model, based on easily ...
We report the general mortality rate after total knee replacement and identify independent predictor...
Altres ajuts: This study was funded by NIHR School for Primary Care Research Funding Round 9 (Projec...