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Treatment effect prediction with adversarial deep learning using electronic health records

机译:使用电子健康记录对抗对抗深度学习的处理效果预测

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Treatment effect prediction (TEP) plays an important role in disease management by ensuring that the expected clinical outcomes are obtained after performing specialized and sophisticated treatments on patients given their personalized clinical status. In recent years, the wide adoption of electronic health records (EHRs) has provided a comprehensive data source for intelligent clinical applications including the TEP investigated in this study. We examined the problem of using a large volume of heterogeneous EHR data to predict treatment effects and developed an adversarial deep treatment effect prediction model to address the problem. Our model employed two auto-encoders for learning the representative and discriminative features of both patient characteristics and treatments from EHR data. The discriminative power of the learned features was further enhanced by decoding the correlational information between the patient characteristics and subsequent treatments by means of a generated adversarial learning strategy. Thereafter, a logistic regression layer was appended on the top of the resulting feature representation layer for TEP. The proposed model was evaluated on two real clinical datasets collected from the cardiology department of a Chinese hospital. In particular, on acute coronary syndrome (ACS) dataset, the proposed adversarial deep treatment effect prediction (ADTEP) (0.662) exhibited 1.4, 2.2, and 6.3% performance gains in terms of the area under the ROC curve (AUC) over deep treatment effect prediction (DTEP) (0.653), logistic regression (LR) (0.648), and support vector machine (SVM) (0.621), respectively. As for heart failure (HF) case study, the proposed ADTEP also outperformed all benchmarks. The experimental results demonstrated that our proposed model achieved competitive performance compared to state-of-the-art models in tackling the TEP problem. In this work, we propose a novel model to address the TEP problem by utilizing a large volume of observational data from EHR. With adversarial learning strategy, our proposed model can further explore the correlational information between patient statuses and treatments to extract more robust and discriminative representation of patient samples from their EHR data. Such representation finally benefits the model on TEP. The experimental results of two case studies demonstrate the superiority of our proposed method compared to state-of-the-art methods.
机译:治疗效果预测(TEP)通过确保在为其个性化临床状态下对患者进行专业和复杂的治疗后获得预期的临床结果,在疾病管理中起着重要作用。近年来,广泛采用电子健康记录(EHRS)为智能临床应用提供了全面的数据来源,包括该研究中的TEP。我们研究了使用大量的异质EHR数据来预测治疗效果并开发出对问题的对抗深治疗效果预测模型的问题。我们的模型采用了两种自动编码器,用于学习患者特征的代表性和鉴别特征和来自EHR数据的治疗。通过产生的对抗性学习策略解码患者特征与随后的处理之间的相关信息,进一步增强了学习特征的辨别力。此后,在TEP的结果特征表示层的顶部附加逻辑回归层。拟议的模型是在从中国医院心脏病学系收集的两个真正的临床数据集上进行评估。特别是,在急性冠状动脉综合征(ACS)数据集上,所提出的对抗性深治疗效果预测(ADTEP)(0.662)在Roc Curve(AUC)下的区域展示了1.4,2.2和6.3%的性能提升效果预测(DTEP)(0.653),逻辑回归(LR)(0.648),以及支持向量机(SVM)(0.621)。至于心力衰竭(HF)案例研究,拟议的ADTEP也优于所有基准。实验结果表明,与解决TEP问题的最先进模型相比,我们所提出的模式实现了竞争性能。在这项工作中,我们提出了一种通过来自EHR的大量观测数据来解决TEP问题的新型模型。通过对抗性学习策略,我们所提出的模型可以进一步探讨患者状态和治疗之间的相关信息,以从其EHR数据中提取患者样本的更强大和辨别性表示。这种代表终于使模型受益于TEP。与最先进的方法相比,两种案例研究的实验结果表明了我们所提出的方法的优越性。

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