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A Predictive Model for Kidney Transplant Graft Survival using Machine Learning

机译:使用机器学习的肾移植移植物存活预测模型

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Kidney transplantation is the best treatment for end-stage renal failure patients. The predominant method used for kidney quality assessment is the Cox regression-based, kidney donor risk index. A machine learning method may provide improved prediction of transplant outcomes and help decision-making. A popular tree-based machine learning method, random forest, was trained and evaluated with the same data originally used to develop the risk index (70,242 observations from 1995-2005). The random forest successfully predicted an additional 2,148 transplants than the risk index with equal type II error rates of 10%. Predicted results were analyzed with follow-up survival outcomes up to 240 months after transplant using Kaplan-Meier analysis and confirmed that the random forest performed significantly better than the risk index (p0.05). The random forest predicted significantly more successful and longer-surviving transplants than the risk index. Random forests and other machine learning models may improve transplant decisions.
机译:肾移植是终末期肾功能衰竭患者的最佳治疗方法。用于肾脏质量评估的主要方法是基于COX回归的肾脏捐助者风险指数。机器学习方法可以提供改进的移植成果预测和帮助决策。一种受欢迎的基于树的机器学习方法,随机森林,培训并评估了最初用于制定风险指数的相同数据(1995-2005的70,242个观察)。随机森林成功地预测了比风险指数相同的2,148个移植率,而II型误差率为10%。通过使用Kaplan-Meier分析在移植后240个月的后续存活结果分析预测结果,并确认随机森林显着优于风险指数(P <0.05)。随机森林预测比风险指数更具成功和更长的幸存移植。随机森林和其他机器学习模型可以改善移植决策。

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