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首页> 外文期刊>Journal of clinical monitoring and computing >Real alerts and artifact classification in archived multi-signal vital sign monitoring data: implications for mining big data
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Real alerts and artifact classification in archived multi-signal vital sign monitoring data: implications for mining big data

机译:归档的多信号生命体征监测数据中的实时警报和伪影分类:对挖掘大数据的影响

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Huge hospital information system databases can be mined for knowledge discovery and decision support, but artifact in stored non-invasive vital sign (VS) high-frequency data streams limits its use. We used machine-learning (ML) algorithms trained on expert-labeled VS data streams to automatically classify VS alerts as real or artifact, thereby "cleaning" such data for future modeling. 634 admissions to a step-down unit had recorded continuous noninvasive VS monitoring data [heart rate (HR), respiratory rate (RR), peripheral arterial oxygen saturation (SpO(2)) at 1/20 Hz, and noninvasive oscillometric blood pressure (BP)]. Time data were across stability thresholds defined VS event epochs. Data were divided Block 1 as the ML training/cross-validation set and Block 2 the test set. Expert clinicians annotated Block 1 events as perceived real or artifact. After feature extraction, ML algorithms were trained to create and validate models automatically classifying events as real or artifact. The models were then tested on Block 2. Block 1 yielded 812 VS events, with 214 (26 %) judged by experts as artifact (RR 43 %, SpO(2) 40 %, BP 15 %, HR 2 %). ML algorithms applied to the Block 1 training/cross-validation set (tenfold cross-validation) gave area under the curve (AUC) scores of 0.97 RR, 0.91 BP and 0.76 SpO(2). Performance when applied to Block 2 test data was AUC 0.94 RR, 0.84 BP and 0.72 SpO(2). ML-defined algorithms applied to archived multi-signal continuous VS monitoring data allowed accurate automated classification of VS alerts as real or artifact, and could support data mining for future model building.
机译:可以挖掘庞大的医院信息系统数据库,以获取知识发现和决策支持,但是存储的非侵入性生命体征(VS)高频数据流中的伪像会限制其使用。我们使用在专家标记的VS数据流上训练的机器学习(ML)算法,将VS警报自动分类为真实或伪像,从而“清理”此类数据以用于将来的建模。 634个降压病房的入院记录了连续无创VS监测数据[心率(HR),呼吸频率(RR),1/20 Hz的外周动脉血氧饱和度(SpO(2))和无创示波血压( BP)]。时间数据跨越了定义为VS事件纪元的稳定性阈值。将数据分为块1作为ML训练/交叉验证集,块2作为测试集。专家临床医生将“块1”事件注释为感知的真实或伪影。在特征提取之后,训练了机器学习算法来创建和验证自动将事件分类为真实或人工的模型。然后在方块2上测试了模型。方块1产生812个VS事件,由专家判断为假象(RR 43%,SpO(2)40%,BP 15%,HR 2%)为214(26%)。应用于Block 1训练/交叉验证集(十倍交叉验证)的ML算法得出的曲线下面积(AUC)得分为0.97 RR,0.91 BP和0.76 SpO(2)。当应用于Block 2测试数据时,性能为AUC 0.94 RR,0.84 BP和0.72 SpO(2)。应用于已归档的多信号连续VS监视数据的ML定义算法允许将VS警报准确地自动分类为真实或人为,并可以支持数据挖掘以用于将来的模型构建。

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