Scientific Reports (May 2023)

Supervised deep learning with vision transformer predicts delirium using limited lead EEG

  • Malissa A. Mulkey,
  • Huyunting Huang,
  • Thomas Albanese,
  • Sunghan Kim,
  • Baijian Yang

DOI
https://doi.org/10.1038/s41598-023-35004-y
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 8

Abstract

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Abstract As many as 80% of critically ill patients develop delirium increasing the need for institutionalization and higher morbidity and mortality. Clinicians detect less than 40% of delirium when using a validated screening tool. EEG is the criterion standard but is resource intensive thus not feasible for widespread delirium monitoring. This study evaluated the use of limited-lead rapid-response EEG and supervised deep learning methods with vision transformer to predict delirium. This proof-of-concept study used a prospective design to evaluate use of supervised deep learning with vision transformer and a rapid-response EEG device for predicting delirium in mechanically ventilated critically ill older adults. Fifteen different models were analyzed. Using all available data, the vision transformer models provided 99.9%+ training and 97% testing accuracy across models. Vision transformer with rapid-response EEG is capable of predicting delirium. Such monitoring is feasible in critically ill older adults. Therefore, this method has strong potential for improving the accuracy of delirium detection, providing greater opportunity for individualized interventions. Such an approach may shorten hospital length of stay, increase discharge to home, decrease mortality, and reduce the financial burden associated with delirium.