Reliability and accuracy of EEG interpretation for estimating age in preterm infants

Ann Clin Transl Neurol. 2020 Sep;7(9):1564-1573. doi: 10.1002/acn3.51132. Epub 2020 Aug 7.

Abstract

Objectives: To determine the accuracy of, and agreement among, EEG and aEEG readers' estimation of maturity and a novel computational measure of functional brain age (FBA) in preterm infants.

Methods: Seven experts estimated the postmenstrual ages (PMA) in a cohort of recordings from preterm infants using cloud-based review software. The FBA was calculated using a machine learning-based algorithm. Error analysis was used to determine the accuracy of PMA assessments and intraclass correlation (ICC) was used to assess agreement between experts.

Results: EEG recordings from a PMA range 25 to 38 weeks were successfully interpreted. In 179 recordings from 62 infants interpreted by all human readers, there was moderate agreement between experts (aEEG ICC = 0.724; 95%CI:0.658-0.781 and EEG ICC = 0.517; 95%CI:0.311-0.664). In 149 recordings from 61 infants interpreted by all human readers and the FBA algorithm, random and systematic errors in visual interpretation of PMA were significantly higher than the computational FBA estimate. Tracking of maturation in individual infants showed stable FBA trajectories, but the trajectories of the experts' PMA estimate were more likely to be obscured by random errors. The accuracy of visual interpretation of PMA estimation was compromised by neurodevelopmental outcome for both aEEG and EEG review.

Interpretation: Visual assessment of infant maturity is possible from the EEG or aEEG, with an average of human experts providing the highest accuracy. Tracking PMA of individual infants was hampered by errors in experts' estimates. FBA provided the most accurate maturity assessment and has potential as a biomarker of early outcome.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Brain / growth & development
  • Brain / physiology*
  • Brain Diseases / diagnosis*
  • Diagnosis, Computer-Assisted
  • Electroencephalography / standards*
  • Gestational Age
  • Humans
  • Infant, Newborn
  • Infant, Premature / growth & development
  • Infant, Premature / physiology*
  • Machine Learning*
  • Neonatology / methods*
  • Neonatology / standards*
  • Predictive Value of Tests
  • Reproducibility of Results

Grants and funding

This work was funded by European Commission grant H2020‐MCSA‐IF‐656131; Sigrid Juselius Foundation grant ; National Health and Medical Research Council of Australia grant APP1144936; Finnish Academy grants 288220, 3104450, and 313242; Lastentautiensäätiö grant ; Aivosäätiö grant ; HUS Children’s Hospital grant ; Fonds zur Förderung der Wissenschaftlichen Forschung grant KLI237; Rebecca L. Cooper Foundation grant PG2018109.