The State Key Laboratory of Bioelectronics, School of Instrument Science and Engineering, Southeast University, Nanjing, China.
Department of Anesthesiology, The third Xiangya Hospital, Central South University, Changsha, China.
Crit Care Med. 2020 Nov;48(11):e1091-e1096. doi: 10.1097/CCM.0000000000004550.
Early detection of sepsis is critical in clinical practice since each hour of delayed treatment has been associated with an increase in mortality due to irreversible organ damage. This study aimed to develop an explainable artificial intelligence model for early predicting sepsis by analyzing the electronic health record data from ICU provided by the PhysioNet/Computing in Cardiology Challenge 2019.
Retrospective observational study.
We developed our model on the shared ICUs publicly data and verified on the full hidden populations for challenge scoring.
Public database included 40,336 patients' electronic health records sourced from Beth Israel Deaconess Medical Center (hospital system A) and Emory University Hospital (hospital system B). A total of 24,819 patients from hospital systems A, B, and C (an unidentified hospital system) were sequestered as full hidden test sets.
None.
A total of 168 features were extracted on hourly basis. Explainable artificial intelligence sepsis predictor model was trained to predict sepsis in real time. Impact of each feature on hourly sepsis prediction was explored in-depth to show the interpretability. The algorithm demonstrated the final clinical utility score of 0.364 in this challenge when tested on the full hidden test sets, and the scores on three separate test sets were 0.430, 0.422, and -0.048, respectively.
Explainable artificial intelligence sepsis predictor model achieves superior performance for predicting sepsis risk in a real-time way and provides interpretable information for understanding sepsis risk in ICU.
在临床实践中,早期发现脓毒症至关重要,因为每延迟治疗一个小时,由于不可逆的器官损伤,死亡率都会增加。本研究旨在通过分析 PhysioNet/Computing in Cardiology Challenge 2019 提供的 ICU 电子健康记录数据,开发一种用于早期预测脓毒症的可解释人工智能模型。
回顾性观察性研究。
我们在共享 ICU 公开数据上开发了我们的模型,并在全隐藏人群上进行了验证,以进行挑战赛评分。
公共数据库包含来自 Beth Israel Deaconess Medical Center(医院系统 A)和 Emory University Hospital(医院系统 B)的 40336 名患者的电子健康记录。来自医院系统 A、B 和 C(一个未识别的医院系统)的 24819 名患者被隔离为全隐藏测试集。
无。
每小时提取了 168 个特征。训练可解释人工智能脓毒症预测模型以实时预测脓毒症。深入探讨了每个特征对每小时脓毒症预测的影响,以展示可解释性。当在全隐藏测试集上进行测试时,该算法在该挑战中显示出最终临床实用评分 0.364,而在三个单独的测试集中的评分分别为 0.430、0.422 和-0.048。
可解释人工智能脓毒症预测模型在实时预测脓毒症风险方面表现出优异的性能,并为理解 ICU 中的脓毒症风险提供可解释的信息。