Tan Sidhartha, Unnikrishnan K P
Department of Pediatrics, Wayne State University School of Medicine, Detroit, MI, USA.
eNeuroLearn, Ann Arbor, MI USA.
EC Paediatr. 2022 May;11(5):44-56. Epub 2022 Apr 28.
In a neonatal intensive care unit, streaming healthcare data comes from many sources, but humans are unable to understand relationships between data variables. Data mining and analysis are just beginning to get utilized in critical care. We present a case study using electronic medical record data in the neonatal intensive care unit and explore possible avenues of advancement using temporal data analytics.
Electronic medical record data were collected for physiological monitor data. Heart rate, respiratory rate, oxygen saturation and temperature data were retrospectively analyzed by temporal data mining. Three premature babies were selected and data de-identified. The first case of a urinary tract infection showed nursing ability to synthesize data streams coming from a patient. For the second case of necrotizing enterocolitis, Temporal-Data-Mining analysis of combinations of clinical events based on deviations from the mean showed specific heuristic biomarkers related to events before discovery of necrotizing enterocolitis. Specific sequences 6-event and 5-event in length were identified with nursing unease at clinical deterioration, which were 100- and 87-times unlikely to occur randomly with 99.5% confidence. No such sequences were found in the rest of the 37 days for the second case and entire 133 days of stay in the third case of an uneventful premature baby.
Temporal data mining is a possible clinical tool in providing useful information in the neonatal intensive care unit for diagnosis of adverse clinical occurrences such as necrotizing enterocolitis. There is the possibility of changing the clinical paradigm of episodic watchfulness to constant vigilance using real-time data gathering.
在新生儿重症监护病房,源源不断的医疗数据来自多个来源,但人类无法理解数据变量之间的关系。数据挖掘和分析在重症监护领域才刚刚开始得到应用。我们展示了一个使用新生儿重症监护病房电子病历数据的案例研究,并探索利用时态数据分析的可能改进途径。
收集电子病历中的生理监测数据。通过时态数据挖掘对心率、呼吸频率、血氧饱和度和体温数据进行回顾性分析。选取了三名早产儿,并对数据进行了去识别处理。第一例尿路感染显示出护士整合来自患者的数据流的能力。对于第二例坏死性小肠结肠炎,基于均值偏差对临床事件组合进行的时态数据挖掘分析显示,在坏死性小肠结肠炎被发现之前,存在与事件相关的特定启发式生物标志物。确定了长度为6事件和5事件的特定序列,这些序列在临床恶化时与护士的不安情绪相关,在99.5%的置信度下,随机出现的可能性分别为100倍和87倍。在第二例患者剩余的37天以及第三例正常早产儿住院的整个133天中均未发现此类序列。
时态数据挖掘可能是一种临床工具,可为新生儿重症监护病房提供有用信息,用于诊断坏死性小肠结肠炎等不良临床事件。利用实时数据收集,有可能将间歇性观察的临床模式转变为持续警惕。