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Utilizing Deep Learning and RDF to Predict Heart Transplantation Survival

机译:利用深度学习和RDF预测心脏移植存活率

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In this paper, we describe the conversion of three different heart transplantation data sets to a Resource Description Framework (RDF) representation and how it can be utilized to train deep learning models. These models were used to predict the outcome of patients both pre- and post-transplant and to calculate their survival time. The International Society for Heart & Lung Transplantation (ISHLT) maintains a registry of heart transplantations that it gathers from grafts performed worldwide. The American organization United Network for Organ Sharing (UNOS) and the Scandinavian Scandiatransplant are contributors to this registry, although they use different data models. We designed a unified graph representation covering these three data sets and we converted the databases into RDF triples. We used the resulting triplestore as input to several machine learning models trained to predict different aspects of heart transplantation patients. Recipient and donor properties are essential to predict the outcome of heart transplantation patients. In contrast with the manual techniques we used to extract data from the tabulated files, the RDF triplestore together with SPARQL, enables us to experiment quickly and automatically with different combinations of features sets, to predict the survival, and simulate the effectiveness of organ allocation policies.
机译:在本文中,我们描述了三种不同的心脏移植数据集到资源描述框架(RDF)表示的转换,以及如何将其用于训练深度学习模型。这些模型用于预测患者在移植前后的结果并计算其生存时间。国际心脏和肺移植学会(ISHLT)维护着一个心脏移植登记簿,该登记簿是从全球范围内进行的移植物中收集到的。尽管它们使用不同的数据模型,但美国组织器官共享联合网络(UNOS)和斯堪的纳维亚Scandia移植是该注册表的贡献者。我们设计了涵盖这三个数据集的统一图形表示,并将数据库转换为RDF三元组。我们使用生成的Triplestore作为几种机器学习模型的输入,这些机器学习模型经过训练可以预测心脏移植患者的不同方面。接收者和供体的性质对于预测心脏移植患者的预后至关重要。与我们用来从列表文件中提取数据的手动技术相比,RDF三重存储与SPARQL一起使我们能够快速,自动地对特征集的不同组合进行实验,预测存活率并模拟器官分配策略的有效性。

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