Signal processing and machine learning algorithm to classify anaesthesia depth

被引:0
|
作者
Dussan, Oscar Mosquera [1 ]
Tuta-Quintero, Eduardo [1 ]
Botero-Rosas, Daniel A. [1 ]
机构
[1] Univ La Sabana, Sch Med, Chia, Colombia
关键词
Data Systems; Medical Informatics Computing; Computer Simulation; Decision Making; General Surgery; Computer-Assisted; HEART-RATE-VARIABILITY; BURST-SUPPRESSION; BISPECTRAL INDEX; MONITORING DEPTH; AWARENESS; ELECTROENCEPHALOGRAM; COMBINATION;
D O I
10.1136/bmjhci-2023-100823
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
BackgroundPoor assessment of anaesthetic depth (AD) has led to overdosing or underdosing of the anaesthetic agent, which requires continuous monitoring to avoid complications. The evaluation of the central nervous system activity and autonomic nervous system could provide additional information on the monitoring of AD during surgical procedures.MethodsObservational analytical single-centre study, information on biological signals was collected during a surgical procedure under general anaesthesia for signal preprocessing, processing and postprocessing to feed a pattern classifier and determine AD status of patients. The development of the electroencephalography index was carried out through data processing and algorithm development using MATLAB V.8.1.ResultsA total of 25 men and 35 women were included, with a total time of procedure average of 109.62 min. The results show a high Pearson correlation between the Complexity Brainwave Index and the indices of the entropy module. A greater dispersion is observed in the state entropy and response entropy indices, a partial overlap can also be seen in the boxes associated with deep anaesthesia and general anaesthesia in these indices. A high Pearson correlation might be explained by the coinciding values corresponding to the awake and general anaesthesia states. A high Pearson correlation might be explained by the coinciding values corresponding to the awake and general anaesthesia states.ConclusionBiological signal filtering and a machine learning algorithm may be used to classify AD during a surgical procedure. Further studies will be needed to confirm these results and improve the decision-making of anaesthesiologists in general anaesthesia.
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