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Значения термина recursive partitioning на английском
Значения для термина "recursive partitioning" отсутствуют.
Использование термина recursive partitioning на английском
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In a cross-validation study, recursivepartitioning classified the samples with 84% accuracy.
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In addition, unbiased recursivepartitioning provided a direct way of identification of more homogeneous subgroups.
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To stratify patients, recursivepartitioning analysis was used.
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Prognostic factors were analyzed using recursivepartitioning method.
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Further recursivepartitioning analysis showed significant increases in risk for patients older than 55 years with mitoses and sheeting.
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A recursivepartitioning model was used to identify prognostic factors that were associated with event-free survival (EFS).
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Results For all settings, overlapping confidence intervals indicated similar prediction accuracy of unbiased recursivepartitioning to established statistical approaches.
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The recursivepartitioning was able to classify 241 (95%) of the patients.
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Here, we propose a new framework for global model tests for polytomous Rasch models based on a model-based recursivepartitioning algorithm.
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Multiple logistic regression and recursivepartitioning analyses were performed to generate a clinical prediction rule for identifying children with these injuries.
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In recursivepartitioning analyses, RA disease factors predicted work disability among older subjects, and functional limitation was the fourth most important factor.
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The cut-off values for tumor size changes to predict survival were explored via tree based recursivepartitioning and validated by external data.
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Background: We evaluated the hierarchical risk groups for the estimated survival of WHO grade III glioma patients using recursivepartitioning analysis (RPA).
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Results: Multivariate modelling and cross-validated recursivepartitioning identified several energy metabolites that, when combined with clinical variables, classified patients based on change in neurocognitive states.
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These results were confirmed by application of recursivepartitioning and amalgamation algorithms (RECPAM), which led to classification of the patients into four homogeneous subgroups.
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Recursivepartitioning was performed to determine appropriate cut-offs for significant continuous variables.