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Personalized Donor-Recipient Matching for Organ Transplantation

机译:个性化捐助者接受器官移植匹配

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Organ transplants can improve the life expectancy and quality of life for the recipient but carry the risk of serious postoperative complications, such as septic shock and organ rejection. The probability of a successful transplant depends in a very subtle fashion on compatibility between the donor and the recipient - but current medical practice is short of domain knowledge regarding the complex nature of recipient-donor compatibility. Hence a data-driven approach for learning compatibility has the potential for significant improvements in match quality. This paper proposes a novel system (ConfidentMatch) that is trained using data from electronic health records. ConfidentMatch predicts the success of an organ transplant (in terms of the 3-year survival rates) on the basis of clinical and demographic traits of the donor and recipient. ConfidentMatch captures the heterogeneity of the donor and recipient traits by optimally dividing the feature space into clusters and constructing different optimal predictive models to each cluster. The system controls the complexity of the learned predictive model in a way that allows for assuring more granular and accurate predictions for a larger number of potential recipient-donor pairs, thereby ensuring that predictions are "personalized" and tailored to individual characteristics to the finest possible granularity. Experiments conducted on the UNOS heart transplant dataset show the superiority of the prognostic value of ConfidentMatch to other competing benchmarks; ConfidentMatch can provide predictions of success with 95% accuracy for 5,489 patients of a total population of 9,620 patients, which corresponds to 410 more patients than the most competitive benchmark algorithm (DeepBoost).
机译:器官移植可以提高受体的预期寿命和生活质量,但承载严重术后并发症的风险,例如脓肌休克和器官排斥。成功移植的概率取决于捐助者和接受者之间的兼容性的非常微妙的方式 - 但目前的医疗实践是关于接受者助剂兼容性复杂性质的域名知识。因此,用于学习兼容性的数据驱动方法具有匹配质量的显着改进的可能性。本文提出了一种使用电子健康记录的数据培训的新型系统(充足机)。足够的机组人根据捐助者和接受者的临床和人口统计特征预测器官移植(在3年生存率方面)的成功。通过最佳地将特征空间划分为集群并对每个群集构建不同的最佳预测模型来捕获捐赠者和接收者特征的异构性。该系统以允许为更大数量的潜在接收者对的方式控制学习预测模型的复杂性,从而确保预测是“个性化”,并针对最优选的各个特征定制粒度。在UNOS心脏移植数据集上进行的实验表明了收纳到其他竞争基准的预后价值的优势;足够的足够的成功预测,为5,489名患者的5,489名患者精度提供95%,这对应于410名患者,而不是最具竞争力的基准算法(Deepboost)。

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