3.8 Proceedings Paper

Patient Subtyping via Time-Aware LSTM Networks

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3097983.3097997

Keywords

Patient subtyping; Recurrent Neural Network; Long-Short Term Memory

Funding

  1. Michael J. Fox Foundation for Parkinson's Research
  2. abbvie
  3. Avid
  4. Biogen
  5. Bristol-Mayers Squibb
  6. Covance
  7. GE
  8. Genentech
  9. GlaxoSmithKline
  10. Lilly
  11. Lundbeck
  12. Merk
  13. Meso Scale Discovery
  14. Pfizer
  15. Piramal
  16. Roche
  17. Sanofi
  18. Servier
  19. TEVA
  20. UCB
  21. Golub Capital
  22. Office of Naval Research (ONR) [N00014-17-1-2265, N00014-14-1-0631]
  23. National Science Foundation [IIS-1565596, IIS-1615597, IIS-1650723]
  24. Direct For Computer & Info Scie & Enginr
  25. Div Of Information & Intelligent Systems [1650723] Funding Source: National Science Foundation

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In the study of various diseases, heterogeneity among patients usually leads to different progression patterns and may require different types of therapeutic intervention. Therefore, it is important to study patient subtyping, which is grouping of patients into disease characterizing subtypes. Subtyping from complex patient data is challenging because of the information heterogeneity and temporal dynamics. Long-Short Term Memory (LSTM) has been successfully used in many domains for processing sequential data, and recently applied for analyzing longitudinal patient records. The LSTM units are designed to handle data with constant elapsed times between consecutive elements of a sequence. Given that time lapse between successive elements in patient records can vary from days to months, the design of traditional LSTM may lead to suboptimal performance. In this paper, we propose a novel LSTM unit called Time-Aware LSTM (T-LSTM) to handle irregular time intervals in longitudinal patient records. We learn a subspace decomposition of the cell memory which enables time decay to discount the memory content according to the elapsed time. We propose a patient subtyping model that leverages the proposed T-LSTM in an auto-encoder to learn a powerful single representation for sequential records of patients, which are then used to cluster patients into clinical subtypes. Experiments on synthetic and real world datasets show that the proposed T-LSTM architecture captures the underlying structures in the sequences with time irregularities.

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