Department of Biomedical Engineering, Seoul National University College of Medicine, Seoul, South Korea.
Transdisciplinary Department of Medicine and Advanced Technology, Seoul National University Hospital, Seoul, South Korea.
Sci Rep. 2023 Aug 19;13(1):13518. doi: 10.1038/s41598-023-40708-2.
Prediction of bacteremia is a clinically important but challenging task. An artificial intelligence (AI) model has the potential to facilitate early bacteremia prediction, aiding emergency department (ED) physicians in making timely decisions and reducing unnecessary medical costs. In this study, we developed and externally validated a Bayesian neural network-based AI bacteremia prediction model (AI-BPM). We also evaluated its impact on physician predictive performance considering both AI and physician uncertainties using historical patient data. A retrospective cohort of 15,362 adult patients with blood cultures performed in the ED was used to develop the AI-BPM. The AI-BPM used structured and unstructured text data acquired during the early stage of ED visit, and provided both the point estimate and 95% confidence interval (CI) of its predictions. High AI-BPM uncertainty was defined as when the predetermined bacteremia risk threshold (5%) was included in the 95% CI of the AI-BPM prediction, and low AI-BPM uncertainty was when it was not included. In the temporal validation dataset (N = 8,188), the AI-BPM achieved area under the receiver operating characteristic curve (AUC) of 0.754 (95% CI 0.737-0.771), sensitivity of 0.917 (95% CI 0.897-0.934), and specificity of 0.340 (95% CI 0.330-0.351). In the external validation dataset (N = 7,029), the AI-BPM's AUC was 0.738 (95% CI 0.722-0.755), sensitivity was 0.927 (95% CI 0.909-0.942), and specificity was 0.319 (95% CI 0.307-0.330). The AUC of the post-AI physicians predictions (0.703, 95% CI 0.654-0.753) was significantly improved compared with that of the pre-AI predictions (0.639, 95% CI 0.585-0.693; p-value < 0.001) in the sampled dataset (N = 1,000). The AI-BPM especially improved the predictive performance of physicians in cases with high physician uncertainty (low subjective confidence) and low AI-BPM uncertainty. Our results suggest that the uncertainty of both the AI model and physicians should be considered for successful AI model implementation.
预测菌血症是一项具有重要临床意义但具有挑战性的任务。人工智能 (AI) 模型有可能有助于早期预测菌血症,帮助急诊科 (ED) 医生及时做出决策并降低不必要的医疗费用。在这项研究中,我们开发并外部验证了一种基于贝叶斯神经网络的 AI 菌血症预测模型 (AI-BPM)。我们还使用历史患者数据评估了它对医生预测性能的影响,同时考虑了 AI 和医生的不确定性。使用 ED 中进行的 15362 例成人血培养的回顾性队列来开发 AI-BPM。AI-BPM 使用在 ED 就诊早期获得的结构化和非结构化文本数据,并提供其预测的点估计值和 95%置信区间 (CI)。高 AI-BPM 不确定性定义为当预定的菌血症风险阈值 (5%) 包含在 AI-BPM 预测的 95% CI 中时,低 AI-BPM 不确定性定义为不包含时。在时间验证数据集 (N=8188) 中,AI-BPM 的接收者操作特征曲线下面积 (AUC) 为 0.754(95%CI 0.737-0.771),灵敏度为 0.917(95%CI 0.897-0.934),特异性为 0.340(95%CI 0.330-0.351)。在外部验证数据集 (N=7029) 中,AI-BPM 的 AUC 为 0.738(95%CI 0.722-0.755),灵敏度为 0.927(95%CI 0.909-0.942),特异性为 0.319(95%CI 0.307-0.330)。与预 AI 预测 (0.639,95%CI 0.585-0.693;p 值<0.001) 相比,在抽样数据集 (N=1000) 中,AI 后医生预测的 AUC (0.703,95%CI 0.654-0.753) 显著提高。AI-BPM 尤其提高了医生在具有高医生不确定性 (低主观信心) 和低 AI-BPM 不确定性情况下的预测性能。我们的结果表明,在成功实施 AI 模型时,应同时考虑 AI 模型和医生的不确定性。