应用多模型集成方法预测患者健康状况

P. Ghavami, K. Kapur
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引用次数: 2

摘要

如果可以提前预测每个患者的不良疾病和医疗并发症,预后方法有望改善患者的医疗保健。预后和患者生理健康状况的预测正在引起医学界的关注,因为它们可以为预防不良医疗并发症的医疗干预提供见解。虽然已经开发了各种预测分析来检测和预测某些疾病,但将多种算法的预测能力结合起来的努力却大多被忽视。本研究提出了一种使用多种模型来预测患者生理状态的预后引擎。由于临床数据和疾病情况的多样性,没有一个单一的模型可以作为理想的预测算法来覆盖所有的医疗病例。某些算法比其他算法更准确,这取决于可用的输入数据、可能结果的类型、数量和多样性。在这项研究中,预测引擎使用了四种不同的神经网络算法,并比较了它们在数据集上的准确性。该研究建议使用一套算法和一个神谕(一个监督程序)来选择最适合特定疾病预测的最准确的预测模型组合。该方法的可行性使用1073例患者的临床数据集进行了测试,其中包括255例深静脉肺栓塞患者。研究比较了五种不同模式构建不同神经网络集合的准确性。多模式方法与多模型集成相结合,提高了该病例预测的准确性,并有望成为解决其他临床预测问题的可靠方法。
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The application of multi-model ensemble approach as a prognostic method to predict patient health status
Prognostic methods promise to improve patient healthcare if predictions of adverse disease and medical complications for each patient can be predicted in advance. Prognostics and prediction of patients' physiological health status are getting attention in medicine because they provide insight that can be used for medical interventions that prevent adverse medical complications. While various predictive analytics have been developed for detection and prediction of certain diseases, efforts to combine the predictive power of multiple algorithms have gone mostly unnoticed. This study proposes a prognostics engine using multiple models to predict patient physiological status. Given the diversity of clinical data and disease conditions, no single model can be the ideal prediction algorithm to cover all medical cases. Certain algorithms are more accurate than others depending on input data available, the type, amount and diversity of possible outcomes. In this study four different neural network algorithms were used for the prognostics engine and their accuracy on a dataset were compared. The study proposes using an ensemble of algorithms and an oracle, an overseer program to select the most accurate combination of the predictive models that is most suited for a particular disease prediction. The feasibility of this approach is tested using a clinical data set of 1,073 patient cases including 255 patients presented with Deep Vein Pulmonary Embolism. The study compared accuracy of five different schemas for constructing ensembles of various neural networks. The multiple schema approach combined with multi-model ensembles showed to improve accuracy of prediction for this case and promises to be a robust approach to other clinical prediction problems.
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