CSIR-Institute of Genomics and Integrative Biology, New Delhi, 110007, India.
Academy of Scientific and Innovative Research (AcSIR), Ghaziabad, 201002, India.
Sci Rep. 2019 Jan 14;9(1):91. doi: 10.1038/s41598-018-36586-8.
Proactive detection of hemodynamic shock can prevent organ failure and save lives. Thermal imaging is a non-invasive, non-contact modality to capture body surface temperature with the potential to reveal underlying perfusion disturbance in shock. In this study, we automate early detection and prediction of shock using machine learning upon thermal images obtained in a pediatric intensive care unit of a tertiary care hospital. 539 images were recorded out of which 253 had concomitant measurement of continuous intra-arterial blood pressure, the gold standard for shock monitoring. Histogram of oriented gradient features were used for machine learning based region-of-interest segmentation that achieved 96% agreement with a human expert. The segmented center-to-periphery difference along with pulse rate was used in longitudinal prediction of shock at 0, 3, 6 and 12 hours using a generalized linear mixed-effects model. The model achieved a mean area under the receiver operating characteristic curve of 75% at 0 hours (classification), 77% at 3 hours (prediction) and 69% at 12 hours (prediction) respectively. Since hemodynamic shock associated with critical illness and infectious epidemics such as Dengue is often fatal, our model demonstrates an affordable, non-invasive, non-contact and tele-diagnostic decision support system for its reliable detection and prediction.
主动检测血流动力学休克可以预防器官衰竭和挽救生命。热成像技术是一种非侵入性、非接触式的方法,可以捕捉到体表温度,有可能揭示休克时潜在的灌注紊乱。在这项研究中,我们使用机器学习技术,对从一家三级医院的儿科重症监护病房获得的热图像进行自动早期检测和预测休克。记录了 539 张图像,其中 253 张图像同时进行了连续动脉血压测量,这是休克监测的金标准。使用基于直方图的方向梯度特征进行基于机器学习的感兴趣区域分割,与人类专家的一致性达到 96%。使用广义线性混合效应模型,对 0、3、6 和 12 小时的休克进行纵向预测,使用中心到外周的差异以及脉搏率。该模型在 0 小时(分类)、3 小时(预测)和 12 小时(预测)的平均受试者工作特征曲线下面积分别为 75%、77%和 69%。由于与危重病相关的血流动力学休克和登革热等传染病流行常常是致命的,因此我们的模型展示了一种负担得起、非侵入性、非接触式和远程诊断的决策支持系统,用于可靠地检测和预测。