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Predicting the Outcome for Patients in a Heart Transplantation Queue using Deep Learning

机译:利用深层学习预测心脏移植队列患者的结果

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Heart transplantations have made it possible to extend the median survival time to 12 years for patients with end-stage heart diseases. This operation is unfortunately limited by the availability of donor organs and patients have to wait on average about 200 days in a waiting list before being operated. This waiting time varies considerably across the patients. In this paper, we studied the outcome for patients entering a transplantation waiting list using deep learning techniques. We implemented a model in the form of two-layer neural networks and we predicted the outcome as still waiting, transplanted or dead in the waiting list, at three different time points: 180 days, 365 days, and 730 days. As data source, we used the United Network for Organ Sharing (UNOS) registry, where we extracted adult patients (>17 years) from January 2000 to December 2011. We trained our model using the Keras framework, and we report F1 macro scores of respectively 0.674, 0.680, and 0.680 compared to a baseline of 0.271. We also applied a backward elimination procedure, using our neural network, to extract the 10 most significant parameters predicting the patient status for the three different time points.
机译:心脏移植使得终末期心脏病患者延长了12岁的中位生存时间。遗憾的是,该操作受到捐助器官的可用性的限制,患者必须在候补名单之前平均等待200天。这种等待时间在患者身上变化很大。在本文中,我们研究了使用深层学习技术进入移植候补名单的患者的结果。我们以双层神经网络的形式实施了模型,我们预测了在等待名单中仍在等待,移植或死亡的结果,在三种不同的时间点:180天,365天和730天。作为数据来源,我们使用联合网络的机构共享(UNOS)注册处,我们从2000年1月到2011年1月提取了成年患者(> 17年)。我们使用Keras框架训练了我们的模型,我们报告了F1宏分数与0.271的基线相比,分别为0.674,0.680和0.680。我们还使用我们的神经网络应用了向后消除程序,提取预测三个不同时间点的患者状态的10个最重要的参数。

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