Treatment effect prediction with adversarial deep learning using electronic health records.
Jiebin ChuWei DongJinliang WangKunlun HeZhengxing HuangPublished in: BMC medical informatics and decision making (2020)
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.