Deng Zhiyue, Tang Jiaxin, Fang Chengzhi, Zhang Bing-Hong
Department of Neonatology, Renmin Hospital of Wuhan University, Wuhan, China.
Department of Neonatology, Renmin Hospital of Wuhan University, Wuhan, China.
J Pediatr (Rio J). 2024 May-Jun;100(3):327-334. doi: 10.1016/j.jped.2023.12.004. Epub 2024 Feb 9.
Periventricular-intraventricular hemorrhage is the most common type of intracranial bleeding in newborns, especially in the first 3 days after birth. Severe periventricular-intraventricular hemorrhage is considered a progression from mild periventricular-intraventricular hemorrhage and is often closely associated with severe neurological sequelae. However, no specific indicators are available to predict the progression from mild to severe periventricular-intraventricular in early admission. This study aims to establish an early diagnostic prediction model for severe PIVH.
This study was a retrospective cohort study with data collected from the MIMIC-III (v1.4) database. Laboratory and clinical data collected within the first 24 h of NICU admission have been used as variables for both univariate and multivariate logistic regression analyses to construct a nomogram-based early prediction model for severe periventricular-intraventricular hemorrhage and subsequently validated.
A predictive model was established and represented by a nomogram, it comprised three variables: output, lowest platelet count and use of vasoactive drugs within 24 h of NICU admission. The model's predictive performance showed by the calculated area under the curve was 0.792, indicating good discriminatory power. The calibration plot demonstrated good calibration between observed and predicted outcomes, and the Hosmer-Lemeshow test showed high consistency (p = 0.990). Internal validation showed the calculated area under a curve of 0.788.
This severe PIVH predictive model, established by three easily obtainable indicators within the NICU, demonstrated good predictive ability. It offered a more user-friendly and convenient option for neonatologists.
脑室周围-脑室内出血是新生儿颅内出血最常见的类型,尤其是在出生后的前3天。重度脑室周围-脑室内出血被认为是由轻度脑室周围-脑室内出血进展而来,且常与严重的神经后遗症密切相关。然而,在早期入院时,尚无特定指标可预测轻度脑室周围-脑室内出血向重度的进展。本研究旨在建立重度脑室周围-脑室内出血的早期诊断预测模型。
本研究为回顾性队列研究,数据来自MIMIC-III(v1.4)数据库。将新生儿重症监护病房(NICU)入院后24小时内收集的实验室和临床数据用作单变量和多变量逻辑回归分析的变量,以构建基于列线图的重度脑室周围-脑室内出血早期预测模型,并随后进行验证。
建立了一个由列线图表示的预测模型,它包含三个变量:NICU入院24小时内的尿量、最低血小板计数和血管活性药物的使用情况。计算得到的曲线下面积显示该模型的预测性能为0.792,表明具有良好的区分能力。校准图显示观察结果与预测结果之间具有良好的校准,Hosmer-Lemeshow检验显示高度一致性(p = 0.990)。内部验证显示计算得到的曲线下面积为0.788。
这个由NICU内三个易于获得的指标建立的重度脑室周围-脑室内出血预测模型显示出良好的预测能力。它为新生儿科医生提供了一个更方便用户使用且便捷的选择。