Evaluating the Potential of Machine Learning and Wearable Devices in End-of-Life Care in Predicting 7-Day Death Events Among Patients With Terminal Cancer: Cohort Study

Aug 18, 2023Journal of medical Internet research

Using Machine Learning and Wearable Devices to Predict Death Within 7 Days in Terminal Cancer Patients

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Abstract

A median survival time of 34 days was observed among 40 patients with cancer receiving end-of-life care.

  • Wearable devices combined with artificial intelligence may effectively predict death events within a 7-day timeframe.
  • Extreme gradient boost (XGBoost) achieved an area under the receiver operating characteristic curve (AUROC) of 96%, indicating strong predictive performance.
  • Average heart rate, steps taken, appetite, urination status, and clinical care phase were identified as significant features influencing predictions.
  • A total of 1657 data points were collected, leading to the detection of 28 death events during the study period.
  • The study's findings are based on a relatively small cohort, suggesting that further research is necessary to validate these results.

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