Department of Internal Medicine, Seoul National University College of Medicine, 103 Daehak-ro, Jongno-gu, Seoul, 03080, Korea.
Medical Research Collaborating Center, Seoul National University Hospital, Seoul, Korea.
Crit Care. 2020 Feb 6;24(1):42. doi: 10.1186/s13054-020-2752-7.
Previous scoring models such as the Acute Physiologic Assessment and Chronic Health Evaluation II (APACHE II) and the Sequential Organ Failure Assessment (SOFA) scoring systems do not adequately predict mortality of patients undergoing continuous renal replacement therapy (CRRT) for severe acute kidney injury. Accordingly, the present study applies machine learning algorithms to improve prediction accuracy for this patient subset.
We randomly divided a total of 1571 adult patients who started CRRT for acute kidney injury into training (70%, n = 1094) and test (30%, n = 477) sets. The primary output consisted of the probability of mortality during admission to the intensive care unit (ICU) or hospital. We compared the area under the receiver operating characteristic curves (AUCs) of several machine learning algorithms with that of the APACHE II, SOFA, and the new abbreviated mortality scoring system for acute kidney injury with CRRT (MOSAIC model) results.
For the ICU mortality, the random forest model showed the highest AUC (0.784 [0.744-0.825]), and the artificial neural network and extreme gradient boost models demonstrated the next best results (0.776 [0.735-0.818]). The AUC of the random forest model was higher than 0.611 (0.583-0.640), 0.677 (0.651-0.703), and 0.722 (0.677-0.767), as achieved by APACHE II, SOFA, and MOSAIC, respectively. The machine learning models also predicted in-hospital mortality better than APACHE II, SOFA, and MOSAIC.
Machine learning algorithms increase the accuracy of mortality prediction for patients undergoing CRRT for acute kidney injury compared with previous scoring models.
急性生理与慢性健康评估 II 评分系统(APACHE II)和序贯器官衰竭评估评分系统(SOFA)等先前的评分模型不能充分预测接受连续性肾脏替代治疗(CRRT)的严重急性肾损伤患者的死亡率。因此,本研究应用机器学习算法来提高对这组患者的预测准确性。
我们将 1571 例开始接受 CRRT 治疗急性肾损伤的成年患者随机分为训练组(70%,n=1094)和测试组(30%,n=477)。主要输出是入住重症监护病房(ICU)或医院期间的死亡率概率。我们比较了几种机器学习算法的受试者工作特征曲线下面积(AUC)与 APACHE II、SOFA 和新的急性肾损伤接受 CRRT 的简化死亡率评分系统(MOSAIC 模型)的结果。
对于 ICU 死亡率,随机森林模型的 AUC 最高(0.784 [0.744-0.825]),人工神经网络和极端梯度提升模型的结果次之(0.776 [0.735-0.818])。随机森林模型的 AUC 高于 APACHE II(0.611 [0.583-0.640])、SOFA(0.677 [0.651-0.703])和 MOSAIC(0.722 [0.677-0.767])。机器学习模型对住院死亡率的预测也优于 APACHE II、SOFA 和 MOSAIC。
与先前的评分模型相比,机器学习算法提高了接受 CRRT 治疗的急性肾损伤患者死亡率预测的准确性。