Modelling survival prediction in medical data

作者: Hazlina Hamdan , Jon Garibaldi

DOI:

关键词: StatisticsEvent (probability theory)End pointSurvival analysisEngineeringEconometricsData analysis

摘要: The analysis of data that corresponds to the time from when an individual enter a study until occurrence some particular event or end-point. Concerned with comparison survival curves for different combinations risk factors. Data contains uncensored (reach end point) and censored (lost follow-up die unrelated cause) observations.

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