Detection and quantitative analysis of patient-ventilator interactions in ventilated infants by deep learning networks

被引:1
作者
Chong, David [1 ]
Belteki, Gusztav [1 ]
机构
[1] Cambridge Univ Hosp NHS Fdn Trust, Rosie Hosp, Neonatal Intens Care Unit, Cambridge, England
关键词
MECHANICAL VENTILATION; SPONTANEOUS RESPIRATION; EXPIRATION; ASYNCHRONY; ASSIST;
D O I
10.1038/s41390-024-03064-z
中图分类号
R72 [儿科学];
学科分类号
100202 ;
摘要
BACKGROUND: The study of patient-ventilator interactions (PVI) in mechanically ventilated neonates is limited by the lack of unified PVI definitions and tools to perform large scale analyses. METHODS: An observational study was conducted in 23 babies randomly selected from 170 neonates who were ventilated with SIPPV-VG, SIMV-VG or PSV-VG mode for at least 12 h. 500 breaths were randomly selected and manually annotated from each recording to train convolutional neural network (CNN) models for PVI classification. RESULTS: The average asynchrony index (AI) over all recordings was 52.5%. The most frequently occurring PVIs included expiratory work (median: 28.4%, interquartile range: 23.2-40.2%), late cycling (7.6%, 2.8-10.2%), failed triggering (4.6%, 1.2-6.2%) and late triggering (4.4%, 2.8-7.4%). Approximately 25% of breaths with a PVI had two or more PVIs occurring simultaneously. Binary CNN classifiers were developed for PVIs affecting >= 1% of all breaths (n = 7) and they achieved F1 scores of >0.9 on the test set except for early triggering where it was 0.809. CONCLUSIONS: sPVIs occur frequently in neonates undergoing conventional mechanical ventilation with a significant proportion of breaths containing multiple PVIs. We have developed computational models for seven different PVIs to facilitate automated detection and further evaluation of their clinical significance in neonates. Impact: center dot The study of patient-ventilator interactions (PVI) in mechanically ventilated neonates is limited by the lack of unified PVI definitions and tools to perform large scale analyses. center dot By adapting a recent taxonomy of PVI definitions in adults, we have manually annotated neonatal ventilator waveforms to determine prevalence and co-occurrence of neonatal PVIs. center dot We have also developed binary deep learning classifiers for common PVIs to facilitate their automatic detection and quantification.
引用
收藏
页码:418 / 426
页数:9
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