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Removing Confounding Factors Associated Weights in Deep Neural Networks Improves the Prediction Accuracy for Healthcare Applications

机译:消除深层神经网络中权重的混杂因素可提高医疗保健应用的预测准确性

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摘要

The proliferation of healthcare data has brought the opportunities of applying data-driven approaches, such as machine learning methods, to assist diagnosis. Recently, many deep learning methods have been shown with impressive successes in predicting disease status with raw input data. However, the “black-box” nature of deep learning and the high-reliability requirement of biomedical applications have created new challenges regarding the existence of confounding factors. In this paper, with a brief argument that inappropriate handling of confounding factors will lead to models’ sub-optimal performance in real-world applications, we present an efficient method that can remove the influences of confounding factors such as age or gender to improve the across-cohort prediction accuracy of neural networks. One distinct advantage of our method is that it only requires minimal changes of the baseline model’s architecture so that it can be plugged into most of the existing neural networks. We conduct experiments across CT-scan, MRA, and EEG brain wave with convolutional neural networks and LSTM to verify the efficiency of our method.
机译:医疗保健数据的激增带来了应用数据驱动方法(例如机器学习方法)来辅助诊断的机会。最近,在使用原始输入数据预测疾病状态方面,已经显示了许多深度学习方法,并取得了令人瞩目的成功。但是,深度学习的“黑匣子”性质和对生物医学应用的高可靠性要求,对混杂因素的存在提出了新的挑战。在本文中,有一个简短的论点,即对混杂因素的不当处理将导致模型在实际应用中的表现欠佳,我们提出了一种有效的方法,可以消除年龄或性别等混杂因素的影响,从而改善神经网络的跨队列预测准确性。我们方法的一个独特优势在于,它只需要对基线模型的体系结构进行最少的更改即可将其插入大多数现有的神经网络中。我们使用卷积神经网络和LSTM在CT扫描,MRA和EEG脑电波上进行实验,以验证我们方法的效率。

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