Ansermino J Mark, Daniels Jeremy P, Hewgill Randy T, Lim Joanne, Yang Ping, Brouse Chris J, Dumont Guy A, Bowering John B
Department of Anesthesiology, Pharmacology and Therapeutics, University of British Columbia, Vancouver, Canada.
Anesth Analg. 2009 Mar;108(3):873-80. doi: 10.1213/ane.0b013e318193ff87.
We have developed a software tool (iAssist) to assist clinicians as they monitor the physiological data that guide their actions during anesthesia. The system tracks the statistical properties of multiple dynamic physiological processes and identifies new trend patterns. We report our initial evaluation of this tool (in pseudo real-time) and compare the detection of trend changes to a post hoc visual review of the full trend. We suggest a combination of criteria by which to evaluate the performance of monitoring devices that aim to enhance trend detection.
Nineteen children and 28 adults consented to be included in the study, encompassing more than 68 h of anesthesia. In each surgical case, an anesthesiologist reported all perceived clinical changes in monitoring in real-time. A trained observer simultaneously documented the verbally reported changes and every anesthesiologist action. The same cases were subsequently evaluated offline (in pseudo real-time) by a novel software tool (iAssist). Heart rate, end-tidal carbon dioxide, exhaled minute ventilation, and respiratory rate were modeled using a dynamic linear growth model whose noise distribution was estimated by an adaptive Kalman filter based on a recursive expectation-maximization method. Changes were detected by adaptive local Cumulative Sum testing. Changes in the mean arterial noninvasive blood pressures and oxygen saturation were detected using adaptive Cumulative Sum testing on a filtered residual from an exponentially weighted moving averaging filter. In post hoc analysis, each change detected by iAssist was graded independently by two clinicians using a graphical display of the whole case. Missed changes were recorded.
The iAssist software tool detected 869 true positive changes (at an average of 12.76/h) with a sensitivity of 0.91 and positive predictive value of 0.87. The post hoc review identified 91 missed changes (at an average of 1.34/h), resulting in an overall ratio of true positive rates to false-negative rates of 9.55. The clinicians in real-time reported 209 changes in trend (at an average of 3.07/h).
The algorithms perform favorably compared with a visual inspection of the complete trend. Further research is needed to identify when and how to draw the clinician's attention to these changes.
我们开发了一种软件工具(iAssist),以协助临床医生在麻醉过程中监测指导其操作的生理数据。该系统跟踪多个动态生理过程的统计特性,并识别新的趋势模式。我们报告了对该工具的初步(准实时)评估,并将趋势变化的检测结果与对完整趋势的事后视觉审查进行比较。我们提出了一套评估旨在增强趋势检测的监测设备性能的标准组合。
19名儿童和28名成人同意纳入该研究,麻醉时长超过68小时。在每例手术中,麻醉医生实时报告监测中察觉到的所有临床变化。一名经过培训的观察员同时记录口头报告的变化和麻醉医生的每一项操作。随后,由一种新型软件工具(iAssist)对相同病例进行离线(准实时)评估。使用动态线性增长模型对心率、呼气末二氧化碳、呼出分钟通气量和呼吸频率进行建模,其噪声分布通过基于递归期望最大化方法的自适应卡尔曼滤波器进行估计。通过自适应局部累积和检验检测变化。使用对指数加权移动平均滤波器的滤波残差进行自适应累积和检验来检测平均动脉无创血压和血氧饱和度的变化。在事后分析中,由两名临床医生使用整个病例的图形显示对iAssist检测到的每个变化进行独立分级。记录漏检的变化。
iAssist软件工具检测到869个真阳性变化(平均每小时12.76个),灵敏度为0.91,阳性预测值为0.87。事后审查发现91个漏检变化(平均每小时1.34个),真阳性率与假阴性率的总体比值为9.55。麻醉医生实时报告了209个趋势变化(平均每小时3.07个)。
与对完整趋势的目视检查相比,这些算法表现良好。需要进一步研究以确定何时以及如何将这些变化引起临床医生的注意。