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Calibrated Predictions for Multivariate Competing Risks Models

机译:多元竞争风险模型的校准预测

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摘要

Prediction models for time-to-event data play a prominent role in assessing the individual risk of a disease, such as cancer. Accurate disease prediction models provide an efficient tool for identifying individuals at high risk, and provide the groundwork for estimating the population burden and cost of disease and for developing patient care guidelines. We focus on risk prediction of a disease in which family history is an important risk factor that reflects inherited genetic susceptibility, shared environment, and common behavior patterns. In this work family history is accommodated using frailty models, with the main novel feature being allowing for competing risks, such as other diseases or mortality. We show through a simulation study that naively treating competing risks as independent right censoring events results in non-calibrated predictions, with the expected number of events overestimated. Discrimination performance is not affected by ignoring competing risks. Our proposed prediction methodologies correctly account for competing events, are very well calibrated, and easy to implement.
机译:事件发生时间数据的预测模型在评估疾病(如癌症)的个体风险中起着重要作用。准确的疾病预测模型为识别高危人群提供了有效的工具,并为估算人口负担和疾病成本以及制定患者护理指南提供了基础。我们专注于疾病的风险预测,在该疾病中,家族史是反映遗传遗传易感性,共享环境和常见行为方式的重要风险因素。在这项工作中,使用脆弱的模型来适应家族的历史,其主要的新功能是允许其他疾病或死亡等竞争风险。我们通过模拟研究表明,天真的将竞争风险视为独立的权利审查事件会导致未校准的预测,而预期事件的数量被高估了。忽略竞争风险不会影响歧视表现。我们提出的预测方法正确地解释了竞争事件,经过了很好的校准,并且易于实现。

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