Clinical implementation of a neonatal seizure detection algorithm

作者:

Highlights:

• We present different ways to visualize the output of a neonatal seizure detector.

• We establish the connection between information visualization and task metrics.

• We report the results of the survey of clinicians on a suitable visualization method.

• The developed DSS is currently undergoing multi-centre clinical trial.

摘要

Technologies for automated detection of neonatal seizures are gradually moving towards cot-side implementation. The aim of this paper is to present different ways to visualize the output of a neonatal seizure detection system and analyse their influence on performance in a clinical environment. Three different ways to visualize the detector output are considered: a binary output, a probabilistic trace, and a spatio-temporal colormap of seizure observability. As an alternative to visual aids, audified neonatal EEG is also considered. Additionally, a survey on the usefulness and accuracy of the presented methods has been performed among clinical personnel. The main advantages and disadvantages of the presented methods are discussed. The connection between information visualization and different methods to compute conventional metrics is established. The results of the visualization methods along with the system validation results indicate that the developed neonatal seizure detector with its current level of performance would unambiguously be of benefit to clinicians as a decision support system. The results of the survey suggest that a suitable way to visualize the output of neonatal seizure detection systems in a clinical environment is a combination of a binary output and a probabilistic trace. The main healthcare benefits of the tool are outlined. The decision support system with the chosen visualization interface is currently undergoing pre-market European multi-centre clinical investigation to support its regulatory approval and clinical adoption.

论文关键词:Neonatal seizure detection,EEG,Visualization,Audification,Clinical interface,Decision making

论文评审过程:Received 23 April 2014, Revised 9 December 2014, Accepted 20 December 2014, Available online 27 December 2014.

论文官网地址:https://doi.org/10.1016/j.dss.2014.12.006