Neonatal Seizure Detection Using a Wearable Multi-Sensor System

Author:

Chen Hongyu1ORCID,Wang Zaihao2,Lu Chunmei3,Shu Feng4,Chen Chen2,Wang Laishuan3,Chen Wei2

Affiliation:

1. Greater Bay Area Institute of Precision Medicine, Guangzhou 511466, China

2. School of Information Science and Technology, Fudan University, Shanghai 200438, China

3. National Health Commission Key Laboratory of Neonatal Diseases, Department of Neonatology, Children’s Hospital of Fudan University, Shanghai 200433, China

4. Collaborative Innovation Center of Polymers and Polymer Composites, Department of Macromolecular Science, Fudan University, Shanghai 201203, China

Abstract

Neonatal seizure is an important clinical symptom of brain dysfunction, which is more common in infancy than in childhood. At present, video electroencephalogram (VEEG) technology is widely used in clinical practice. However, video electroencephalogram technology has several disadvantages. For example, the wires connecting the medical instruments may interfere with the infant’s movement and the gel patch electrode or disk electrode commonly used to monitor EEG may cause skin allergies or even tears. For the above reasons, we developed a wearable multi-sensor platform for newborns to collect physiological and movement signals. In this study, we designed a second-generation multi-sensor platform and developed an automatic detection algorithm for neonatal seizures based on ECG, respiration and acceleration. Data for 38 neonates were recorded at the Children’s Hospital of Fudan University in Shanghai. The total recording time was approximately 300 h. Four of the patients had seizures during data collection. The total recording time for the four patients was approximately 34 h, with 30 seizure episodes recorded. These data were evaluated by the algorithm. To evaluate the effectiveness of combining ECG, respiration and movement, we compared the performance of three types of seizure detectors. The first detector included features from ECG, respiration and acceleration records; the second detector incorporated features based on respiratory movement from respiration and acceleration records; and the third detector used only ECG-based features from ECG records. Our study illustrated that, compared with the detector utilizing individual modal features, multi-modal feature detectors could achieve favorable overall performance, reduce false alarm rates and give higher F-measures.

Funder

Greater Bay Area Research Institute of Precision Medicine

Publisher

MDPI AG

Subject

Bioengineering

Reference40 articles.

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5. A review of feature extraction and performance evaluation in epileptic seizure detection using EEG;Boonyakitanont;Biomed. Signal Process. Control,2020

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