Itzhak Nevo, Pessach Itai M, Moskovitch Robert
Software and Information Systems Engineering, Ben-Gurion University of the Negev, Beer Sheva, Israel.
The Department of Pediatric Intensive Care, The Edmond and Lily Safra Children's Hospital, Chaim Sheba Medical Center and the Sackler Faculty of Medicine, Tel Aviv University, Tel Aviv, Israel.
Artif Intell Med. 2023 May;139:102525. doi: 10.1016/j.artmed.2023.102525. Epub 2023 Mar 8.
Prevention and treatment of complications are the backbone of medical care, particularly in critical care settings. Early detection and prompt intervention can potentially prevent complications from occurring and improve outcomes. In this study, we use four longitudinal vital signs variables of intensive care unit patients, focusing on predicting acute hypertensive episodes (AHEs). These episodes represent elevations in blood pressure and may result in clinical damage or indicate a change in a patient's clinical situation, such as an elevation in intracranial pressure or kidney failure. Prediction of AHEs may allow clinicians to anticipate changes in the patient's condition and respond early on to prevent these from occurring. Temporal abstraction was employed to transform the multivariate temporal data into a uniform representation of symbolic time intervals, from which frequent time-intervals-related patterns (TIRPs) are mined and used as features for AHE prediction. A novel TIRP metric for classification, called coverage, is introduced that measures the coverage of a TIRP's instances in a time window. For comparison, several baseline models were applied on the raw time series data, including logistic regression and sequential deep learning models, are used. Our results show that using frequent TIRPs as features outperforms the baseline models, and the use of the coverage, metric outperforms other TIRP metrics. Two approaches to predicting AHEs in real-life application conditions are evaluated: using a sliding window to continuously predict whether a patient would experience an AHE within a specific prediction time period ahead, our models produced an AUC-ROC of 82%, but with low AUPRC. Alternatively, predicting whether an AHE would generally occur during the entire admission resulted in an AUC-ROC of 74%.
并发症的预防和治疗是医疗护理的核心,在重症监护环境中尤为如此。早期检测和及时干预有可能预防并发症的发生并改善治疗结果。在本研究中,我们使用重症监护病房患者的四个纵向生命体征变量,重点预测急性高血压发作(AHE)。这些发作表现为血压升高,可能导致临床损害或表明患者临床状况发生变化,如颅内压升高或肾衰竭。预测AHE可能使临床医生能够预测患者病情的变化并尽早做出反应以防止其发生。采用时间抽象将多变量时间数据转换为符号时间间隔的统一表示形式,从中挖掘频繁的时间间隔相关模式(TIRP)并将其用作AHE预测的特征。引入了一种用于分类的新颖TIRP度量标准,称为覆盖率,它测量时间窗口中TIRP实例的覆盖率。为了进行比较,在原始时间序列数据上应用了几个基线模型,包括逻辑回归和序列深度学习模型。我们的结果表明,使用频繁的TIRP作为特征优于基线模型,并且使用覆盖率度量标准优于其他TIRP度量标准。评估了在实际应用条件下预测AHE的两种方法:使用滑动窗口连续预测患者在未来特定预测时间段内是否会经历AHE,我们的模型产生的AUC-ROC为82%,但AUPRC较低。或者,预测在整个住院期间是否通常会发生AHE,其AUC-ROC为74%。