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Prognostic performance of examined lymph nodes, lymph node ratio, and positive lymph nodes in gastric cancer: a competing risk model study. [PDF]
Gu X, Du Y.
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Trajectories of triglyceride-glucose index changes and their association with all-cause and cardiovascular mortality: a competing risk analysis. [PDF]
Lee JH, Jeon S, Lee HS, Lee JW.
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A nomogram to predict cancer-specific mortality in adult patients with malignant meningioma: a competing risk analysis. [PDF]
Zhang H, Li J, Wan X, Liu Z.
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Recurrences after nephron-sparing treatments of renal cell carcinoma: a competing risk analysis. [PDF]
Rosenblad AK +4 more
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Statistics in Medicine, 1999
Competing risks models can be used to compare the effect of risk factors for different causes of death or subtypes of a disease. However, sometimes more than one outcome classification is available and if two such classifications are correlated, one may speculate whether differences in the effect of a risk factor according to one classification simply ...
Wohlfahrt, J. +2 more
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Competing risks models can be used to compare the effect of risk factors for different causes of death or subtypes of a disease. However, sometimes more than one outcome classification is available and if two such classifications are correlated, one may speculate whether differences in the effect of a risk factor according to one classification simply ...
Wohlfahrt, J. +2 more
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Deep learning for survival and competing risk modelling
Journal of the Operational Research Society, 2020The article examines novel machine learning techniques for survival analysis in a credit risk modelling context. Using a large dataset of US mortgages, we evaluate the adequacy of DeepHit, a deep learning-based competing risk model, and random survival ...
Gabriel Blumenstock +2 more
semanticscholar +1 more source
Competing Risks in Basketball … Competing Risks in Basketball … Competing Risks in Basketball …
CHANCE, 2012My husband has always encouraged me to use my “super powers of statistics” for the greater good—analyzing sports data, that is.
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The Journal of Nutrition, Health & Aging, 2017
ObjectivesTo investigate the association between stroke and incident dementia in the presence of a competing risk of death.MethodsThis study used the National Health Insurance Service–Senior (NHIS-Senior) claim database from 2002 to 2013 (n = 22,792 ...
J-H Kim, Yunhwan Lee
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ObjectivesTo investigate the association between stroke and incident dementia in the presence of a competing risk of death.MethodsThis study used the National Health Insurance Service–Senior (NHIS-Senior) claim database from 2002 to 2013 (n = 22,792 ...
J-H Kim, Yunhwan Lee
semanticscholar +1 more source
2008
A competing risks model is a model for multiple durations that start at the same point in time for a given subject, where the subject is observed until the first duration is completed and one also observes which of the multiple durations is completed first.
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A competing risks model is a model for multiple durations that start at the same point in time for a given subject, where the subject is observed until the first duration is completed and one also observes which of the multiple durations is completed first.
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WIREs Computational Statistics, 2010
AbstractCompeting risks arise when a subject is exposed to many causes of failure. Data consist of the time the subject failed and an indicator of which risk caused the subject to fail. Examples in medicine include the analysis of cause to death data, the analysis of relapse and death in remission in cancer studies, or random right censoring.
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AbstractCompeting risks arise when a subject is exposed to many causes of failure. Data consist of the time the subject failed and an indicator of which risk caused the subject to fail. Examples in medicine include the analysis of cause to death data, the analysis of relapse and death in remission in cancer studies, or random right censoring.
openaire +1 more source

