The ability to identify patients who are likely to have an adverse outcome is an essential component of good clinical care. Therefore, predictive risk stratification models play an important role in clinical decision making. Determining whether a given predictive model is suitable for clinical use usually involves evaluating the model\u27s performance on large patient datasets using standard statistical measures of success (e.g., accuracy, discriminatory ability). However, as these metrics correspond to averages over patients who have a range of different characteristics, it is difficult to discern whether an individual prediction on a given patient should be trusted using these measures alone. In this paper, we introduce a new method for i...
Most risk stratification methods use expert opinion to identify a fixed number of clinical variables...
Abstract Background Research on prognostic prediction models frequently uses data from routine healt...
Objective To describe the discrimination and calibration of clinical prediction models, identify cha...
© 2020, The Author(s). The ability to identify patients who are likely to have an adverse outcome is...
OBJECTIVE: To compare different prediction models for assessing outcome of patients undergoing non...
Background Clinical prediction models are useful in estimating a patient's risk of having a certain ...
The recent epidemiologic and clinical literature is filled with studies evaluating statistical model...
The recent epidemiologic and clinical literature is filled with studies evaluating statistical model...
Chronic heart failure • Progressive disorder in which structural damage to the heart impairs its abi...
AbstractBACKGROUNDIn the mid 1990s, two unstable angina risk prediction models were proposed but nei...
BACKGROUND: The objective of this study was to evaluate the performance of risk scores (Framingham, ...
Public health practice and quality of medical care rely heavily on the accuracy, precision, and robu...
Abstract Background Each year, thousands of clinical prediction models are developed to make predict...
Background Research on prognostic prediction models frequently uses data from routine healthcare. Ho...
From PubMed via Jisc Publications RouterHistory: received 2020-12-31, revised 2021-06-17, accepted 2...
Most risk stratification methods use expert opinion to identify a fixed number of clinical variables...
Abstract Background Research on prognostic prediction models frequently uses data from routine healt...
Objective To describe the discrimination and calibration of clinical prediction models, identify cha...
© 2020, The Author(s). The ability to identify patients who are likely to have an adverse outcome is...
OBJECTIVE: To compare different prediction models for assessing outcome of patients undergoing non...
Background Clinical prediction models are useful in estimating a patient's risk of having a certain ...
The recent epidemiologic and clinical literature is filled with studies evaluating statistical model...
The recent epidemiologic and clinical literature is filled with studies evaluating statistical model...
Chronic heart failure • Progressive disorder in which structural damage to the heart impairs its abi...
AbstractBACKGROUNDIn the mid 1990s, two unstable angina risk prediction models were proposed but nei...
BACKGROUND: The objective of this study was to evaluate the performance of risk scores (Framingham, ...
Public health practice and quality of medical care rely heavily on the accuracy, precision, and robu...
Abstract Background Each year, thousands of clinical prediction models are developed to make predict...
Background Research on prognostic prediction models frequently uses data from routine healthcare. Ho...
From PubMed via Jisc Publications RouterHistory: received 2020-12-31, revised 2021-06-17, accepted 2...
Most risk stratification methods use expert opinion to identify a fixed number of clinical variables...
Abstract Background Research on prognostic prediction models frequently uses data from routine healt...
Objective To describe the discrimination and calibration of clinical prediction models, identify cha...