A machine learning-based approach to prognostic analysis of thoracic transplantations

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摘要

ObjectiveThe prediction of survival time after organ transplantations and prognosis analysis of different risk groups of transplant patients are not only clinically important but also technically challenging. The current studies, which are mostly linear modeling-based statistical analyses, have focused on small sets of disparate predictive factors where many potentially important variables are neglected in their analyses. Data mining methods, such as machine learning-based approaches, are capable of providing an effective way of overcoming these limitations by utilizing sufficiently large data sets with many predictive factors to identify not only linear associations but also highly complex, non-linear relationships. Therefore, this study is aimed at exploring risk groups of thoracic recipients through machine learning-based methods.

论文关键词:Data mining,Machine learning,UNOS,Thoracic Transplantation,Survival analysis,Prognostic index

论文评审过程:Received 25 February 2009, Revised 15 December 2009, Accepted 10 January 2010, Available online 13 February 2010.

论文官网地址:https://doi.org/10.1016/j.artmed.2010.01.002