Department of Critical Care Medicine, Shanghai General Hospital, Shanghai Jiao Tong University School of Medicine, No. 650 New Songjiang Road, Songjiang, Shanghai, 201600, China.
Deepwise Artificial Intelligence Laboratory, Beijing, China.
BMC Med Inform Decis Mak. 2023 Aug 31;23(1):171. doi: 10.1186/s12911-023-02274-5.
Anti-thrombotic therapy is the basis of thrombosis prevention and treatment. Bleeding is the main adverse event of anti-thrombosis. Existing laboratory indicators cannot accurately reflect the real-time coagulation function. It is necessary to develop tools to dynamically evaluate the risk and benefits of anti-thrombosis to prescribe accurate anti-thrombotic therapy.
The prediction model,daily prediction of bleeding risk in ICU patients treated with anti-thrombotic therapy, was built using deep learning algorithm recurrent neural networks, and the model results and performance were compared with clinicians.
There was no significant statistical discrepancy in the baseline. ROC curves of the four models in the validation and test set were drawn, respectively. One-layer GRU of the validation set had a larger AUC (0.9462; 95%CI, 0.9147-0.9778). Analysis was conducted in the test set, and the ROC curve showed the superiority of two layers LSTM over one-layer GRU, while the former AUC was 0.8391(95%CI, 0.7786-0.8997). One-layer GRU in the test set possessed a better specificity (sensitivity 0.5942; specificity 0.9300). The Fleiss' k of junior clinicians, senior clinicians, and machine learning classifiers is 0.0984, 0.4562, and 0.8012, respectively.
Recurrent neural networks were first applied for daily prediction of bleeding risk in ICU patients treated with anti-thrombotic therapy. Deep learning classifiers are more reliable and consistent than human classifiers. The machine learning classifier suggested strong reliability. The deep learning algorithm significantly outperformed human classifiers in prediction time.
抗血栓治疗是血栓预防和治疗的基础。出血是抗血栓治疗的主要不良事件。现有的实验室指标不能准确反映实时凝血功能。有必要开发工具来动态评估抗血栓治疗的风险和获益,以制定准确的抗血栓治疗方案。
使用深度学习算法递归神经网络构建了 ICU 接受抗血栓治疗患者出血风险的每日预测模型,并将模型结果与临床医生进行了比较。
基线无显著统计学差异。分别在验证集和测试集中绘制了四个模型的 ROC 曲线。验证集中的一层 GRU 的 AUC 较大(0.9462;95%CI,0.9147-0.9778)。在测试集中进行了分析,ROC 曲线显示两层 LSTM 优于一层 GRU,而前者的 AUC 为 0.8391(95%CI,0.7786-0.8997)。在测试集中,一层 GRU 的特异性更好(敏感性 0.5942;特异性 0.9300)。初级临床医生、高级临床医生和机器学习分类器的 Fleiss' k 值分别为 0.0984、0.4562 和 0.8012。
首次将递归神经网络应用于 ICU 接受抗血栓治疗患者出血风险的每日预测。深度学习分类器比人类分类器更可靠和一致。机器学习分类器提示出很强的可靠性。与人类分类器相比,深度学习算法在预测时间上具有显著优势。