Soundoulounaki Stella, Sylligardos Emmanouil, Akoumianaki Evangelia, Sigalas Markos, Kondili Eumorfia, Georgopoulos Dimitrios, Trahanias Panos, Vaporidi Katerina
Department of Intensive Care Medicine, School of Medicine, University of Crete, 71003 Heraklion, Greece.
Institute of Computer Science, Foundation for Research and Technology-Hellas (FORTH), 70013 Heraklion, Greece.
J Pers Med. 2023 Feb 16;13(2):347. doi: 10.3390/jpm13020347.
During pressure support ventilation (PSV), excessive assist results in weak inspiratory efforts and promotes diaphragm atrophy and delayed weaning. The aim of this study was to develop a classifier using a neural network to identify weak inspiratory efforts during PSV, based on the ventilator waveforms. Recordings of flow, airway, esophageal and gastric pressures from critically ill patients were used to create an annotated dataset, using data from 37 patients at 2-5 different levels of support, computing the inspiratory time and effort for every breath. The complete dataset was randomly split, and data from 22 patients (45,650 breaths) were used to develop the model. Using a One-Dimensional Convolutional Neural Network, a predictive model was developed to characterize the inspiratory effort of each breath as weak or not, using a threshold of 50 cmHO*s/min. The following results were produced by implementing the model on data from 15 different patients (31,343 breaths). The model predicted weak inspiratory efforts with a sensitivity of 88%, specificity of 72%, positive predictive value of 40%, and negative predictive value of 96%. These results provide a 'proof-of-concept' for the ability of such a neural-network based predictive model to facilitate the implementation of personalized assisted ventilation.
在压力支持通气(PSV)期间,过度辅助会导致吸气努力减弱,并促进膈肌萎缩和脱机延迟。本研究的目的是开发一种使用神经网络的分类器,基于呼吸机波形识别PSV期间的吸气努力减弱情况。使用来自危重症患者的流量、气道、食管和胃内压力记录来创建一个注释数据集,使用37例患者在2至5个不同支持水平的数据,计算每一次呼吸的吸气时间和努力程度。完整的数据集被随机分割,来自22例患者(45650次呼吸)的数据用于开发模型。使用一维卷积神经网络,开发了一个预测模型,以使用50 cmH₂O*s/min的阈值将每一次呼吸的吸气努力程度表征为减弱或未减弱。通过在来自15例不同患者(31343次呼吸)的数据上实施该模型得出了以下结果。该模型预测吸气努力减弱的灵敏度为88%,特异度为72%,阳性预测值为40%,阴性预测值为96%。这些结果为这种基于神经网络的预测模型促进个性化辅助通气实施的能力提供了“概念验证”。