Dept. of Pathology and Laboratory Medicine, United States.
Division of Burn Surgery, Dept. of Surgery, United States.
Burns. 2019 Sep;45(6):1350-1358. doi: 10.1016/j.burns.2019.03.021. Epub 2019 Jun 21.
Burn critical care represents a high impact population that may benefit from artificial intelligence and machine learning (ML). Acute kidney injury (AKI) recognition in burn patients could be enhanced by ML. The goal of this study was to determine the theoretical performance of ML in augmenting AKI recognition.
We developed ML models using the k-nearest neighbor (k-NN) algorithm. The ML models were trained-tested with clinical laboratory data for 50 adult burn patients that had neutrophil gelatinase associated lipocalin (NGAL), urine output (UOP), creatinine, and N-terminal B-type natriuretic peptide (NT-proBNP) measured within the first 24 h of admission.
Half of patients (50%) in the dataset experienced AKI within the first week following admission. ML models containing NGAL, creatinine, UOP, and NT-proBNP achieved 90-100% accuracy for identifying AKI. ML models containing only NT-proBNP and creatinine achieved 80-90% accuracy. Mean time-to-AKI recognition using UOP and/or creatinine alone was achieved within 42.7 ± 23.2 h post-admission vs. within 18.8 ± 8.1 h via the ML-algorithm.
The performance of UOP and creatinine for predicting AKI could be enhanced by with a ML algorithm using a k-NN approach when NGAL is not available. Additional studies are needed to verify performance of ML for burn-related AKI.
烧伤重症监护代表了一个高影响力的人群,他们可能受益于人工智能和机器学习(ML)。ML 可增强烧伤患者急性肾损伤(AKI)的识别。本研究的目的是确定 ML 增强 AKI 识别的理论性能。
我们使用 k-最近邻(k-NN)算法开发了 ML 模型。使用 50 名成年烧伤患者的临床实验室数据对 ML 模型进行训练-测试,这些患者在入院后 24 小时内测量了中性粒细胞明胶酶相关脂质运载蛋白(NGAL)、尿量(UOP)、肌酐和 N 末端 B 型利钠肽(NT-proBNP)。
数据集的一半患者(50%)在入院后第一周内发生 AKI。包含 NGAL、肌酐、UOP 和 NT-proBNP 的 ML 模型对识别 AKI 的准确率达到 90-100%。仅包含 NT-proBNP 和肌酐的 ML 模型的准确率达到 80-90%。仅使用 UOP 和/或肌酐识别 AKI 的平均时间在入院后 42.7±23.2 小时内达到,而通过 ML 算法在 18.8±8.1 小时内达到。
当 NGAL 不可用时,使用 k-NN 方法的 ML 算法可增强 UOP 和肌酐预测 AKI 的性能。需要进一步的研究来验证 ML 在烧伤相关 AKI 中的性能。