Niiyama Shuhei, Nakashima Takahiro, Ueno Kentaro, Hirahara Daisuke, Nakajo Masatoyo, Madokoro Yutaro, Sato Mitsuhito, Shimono Kenshin, Futatsuki Takahiro, Kakihana Yasuyuki
Department of Emergency and Intensive Care Medicine, Kagoshima University Hospital, Kagoshima, JPN.
Department of Clinical Engineering, Kagoshima University Hospital, Kagoshima, JPN.
Cureus. 2024 Jul 30;16(7):e65783. doi: 10.7759/cureus.65783. eCollection 2024 Jul.
Background Congenital heart disease (CHD) is a structural deformity of the heart present at birth. Pulmonary hypertension (PH) may arise from increased blood flow to the lungs, persistent pulmonary arterial pressure elevation, or the use of cardiopulmonary bypass (CPB) during surgical repair. Inhaled nitric oxide (iNO) selectively reduces high blood pressure in the pulmonary vessels without lowering systemic blood pressure, making it useful for treating children with postoperative PH due to heart disease. However, reducing or stopping iNO can exacerbate postoperative PH and hypoxemia, necessitating long-term administration and careful tapering. This study aimed to evaluate, using machine learning (ML), factors that predict the need for long-term iNO administration after open heart surgery in CHD patients in the postoperative ICU, primarily for PH management. Methods We used an ML approach to establish an algorithm to predict 'patients with long-term use of iNO' and validate its accuracy in 34 pediatric postoperative open heart surgery patients who survived and were discharged from the ICU at Kagoshima University Hospital between April 2016 and March 2019. All patients were started on iNO therapy upon ICU admission. Overall, 16 features reflecting patient and surgical characteristics were utilized to predict the patients who needed iNO for over 168 hours using ML analysis with AutoGluon. The dataset was randomly classified into training and test cohorts, comprising 80% and 20% of the data, respectively. In the training cohort, the ML model was constructed using the important features selected by the decrease in Gini impurity and a synthetic oversampling technique. In the testing cohort, the prediction performance of the ML model was evaluated by calculating the area under the receiver operating characteristics curve (AUC) and accuracy. Results Among 28 patients in the training cohort, five needed iNO for over 168 hours; among six patients in the testing cohort, one needed iNO for over 168 hours. CPB, aortic clamp time, in-out balance, and lactate were the four most important features for predicting the need for iNO for over 168 hours. In the training cohorts, the ML model achieved perfect classification with an AUC of 1.00. In the testing cohort, the ML model also achieved perfect classification with an AUC of 1.00 and an accuracy of 1.00. Conclusion The ML approach identified that four factors (CPB, in-out balance, aortic cross-clamp time, and lactate) are strongly associated with the need for long-term iNO administration after open heart surgery in CHD patients. By understanding the outcomes of this study, we can more effectively manage iNO administration in postoperative open heart surgery in CHD patients with PH, potentially preventing the recurrence of postoperative PH and hypoxemia, thereby contributing to safer patient management.
背景 先天性心脏病(CHD)是一种出生时就存在的心脏结构畸形。肺动脉高压(PH)可能源于肺血流量增加、持续性肺动脉压升高或手术修复期间使用体外循环(CPB)。吸入一氧化氮(iNO)可选择性降低肺血管中的高血压而不降低体循环血压,这使其可用于治疗因心脏病导致术后PH的儿童。然而,减少或停止iNO可加剧术后PH和低氧血症,因此需要长期给药并谨慎减量。本研究旨在使用机器学习(ML)评估预测先天性心脏病患者术后重症监护病房(ICU)心脏直视手术后长期使用iNO需求的因素,主要用于PH管理。方法 我们采用ML方法建立一种算法来预测“长期使用iNO的患者”,并在2016年4月至2019年3月期间在鹿儿岛大学医院存活并从ICU出院的34例小儿心脏直视手术后患者中验证其准确性。所有患者在入住ICU时即开始iNO治疗。总体而言,利用反映患者和手术特征的16个特征,通过AutoGluon进行ML分析来预测需要iNO超过168小时的患者。数据集被随机分为训练队列和测试队列,分别包含80%和20%的数据。在训练队列中,使用通过基尼杂质减少选择的重要特征和合成过采样技术构建ML模型。在测试队列中,通过计算受试者工作特征曲线(AUC)下的面积和准确性来评估ML模型的预测性能。结果 在训练队列的28例患者中,5例需要iNO超过