BMC Medical Informatics and Decision Making (Dec 2018)

Improving palliative care with deep learning

  • Anand Avati,
  • Kenneth Jung,
  • Stephanie Harman,
  • Lance Downing,
  • Andrew Ng,
  • Nigam H. Shah

DOI
https://doi.org/10.1186/s12911-018-0677-8
Journal volume & issue
Vol. 18, no. S4
pp. 55 – 64

Abstract

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Abstract Background Access to palliative care is a key quality metric which most healthcare organizations strive to improve. The primary challenges to increasing palliative care access are a combination of physicians over-estimating patient prognoses, and a shortage of palliative staff in general. This, in combination with treatment inertia can result in a mismatch between patient wishes, and their actual care towards the end of life. Methods In this work, we address this problem, with Institutional Review Board approval, using machine learning and Electronic Health Record (EHR) data of patients. We train a Deep Neural Network model on the EHR data of patients from previous years, to predict mortality of patients within the next 3-12 month period. This prediction is used as a proxy decision for identifying patients who could benefit from palliative care. Results The EHR data of all admitted patients are evaluated every night by this algorithm, and the palliative care team is automatically notified of the list of patients with a positive prediction. In addition, we present a novel technique for decision interpretation, using which we provide explanations for the model’s predictions. Conclusion The automatic screening and notification saves the palliative care team the burden of time consuming chart reviews of all patients, and allows them to take a proactive approach in reaching out to such patients rather then relying on referrals from the treating physicians.

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