4.7 Article

CCAE: Cross-field categorical attributes embedding for cancer clinical endpoint prediction

Journal

ARTIFICIAL INTELLIGENCE IN MEDICINE
Volume 107, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.artmed.2020.101915

Keywords

Clinical endpoint prediction; Electronic health records; Categorical variables embedding

Funding

  1. Science and Technology Innovation 2030 -New Generation Artificially Intelligence Major Project [2018AAA0102101]
  2. National Natural Science Foundation of China [61976018, 61532005]

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Patients with advanced cancer are burdened physically and psychologically, so there is an urgent need to pay more attention to their health-related quality of life (HRQOL). With an expected clinical endpoint prediction, over-treatment can be effectively eliminated by the means of palliative care at the right time. This paper de-velops a deep learning based approach for cancer clinical endpoint prediction based on patient's electronic health records (EHR). Due to the pervasive existence of categorical information in EHR, it brings unavoidably obstacles to the effective numerical learning algorithms. To address this issue, we propose a novel cross-field categorical attributes embedding (CCAE) model to learn a vectorized representation for cancer patients in attribute-level by orders, in which the strong semantic coupling among categorical variables are well exploited. By transforming the order-dependency modeling into a sequence learning task in an ingenious way, recurrent neural network is adopted to capture the semantic relevance among multi-order representations. Experimental results from the SEER-Medicare EHR dataset have illustrated that the proposed model can achieve competitive prediction performance compared with other baselines.

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