应用神经网络预测肝移植后移植物衰竭

S. Matis, H. Doyle, I. Marino, R. Mural, E. Uberbacher
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引用次数: 18

摘要

肝移植是终末期肝病患者公认的治疗选择。然而,多达20%的移植肝脏在一开始就没有足够的功能,其中至少一半最终会衰竭。在患者病情变得不可逆转之前,通过鼓励再次移植,对结果进行准确的早期预测可以改善这种情况。本研究前瞻性地收集了匹兹堡大学医学中心295例肝移植患者的临床资料,并进行分组。前馈的全连接神经网络有7或8个输入,一个由3个节点和一个输出节点组成的单个隐藏层(失败=1,成功=0)。这些网络使用随机选择的240名患者的数据进行训练,其余55名患者组成测试集。该网络使用标准的反向传播算法进行训练。通过测试网络正确预测测试集中55名患者的结果的能力来评估训练。神经网络预测的准确性每天都在提高,因此到第5天,测试集中98%的移植物幸存者被正确预测,而测试集中88%的移植物失败被正确预测。
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Use of neural networks for prediction of graft failure following liver transplantation
Liver transplantation is a well-established therapeutic option for patients with end-stage liver disease. However, up to 20% of transplanted livers fail to have adequate function initially, and at least half of those will eventually fail. Accurate, early prediction of outcome may ameliorate this situation by encouraging retransplantation before the patient's condition becomes irreversible. In this study, clinical information was gathered prospectively for 295 patients who underwent liver transplantation at the University of Pittsburgh Medical Center, and was divided into sets. The feedforward, fully connected neural networks had 7 or 8 inputs, a single hidden layer consisting of 3 nodes and a single output node (failure=1, success=0). The networks were trained with data from a randomly selected subset of 240 patients while the remaining 55 patients made up the test set. The network was trained using a standard backpropagation algorithm. Training was assessed by testing the ability of the network to correctly predict the outcome of the 55 patients in the test set. The accuracy of prediction by the neural network improved each day and so by day 5, 98% of the graft survivors in the test set were correctly predicted while 88% of graft failures in the test set were correctly predicted.<>
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