Tian Yu, Liu Jingjie, Wu Shan, Zheng Yucong, Han Rongye, Bao Qianhui, Li Lei, Yang Tao
Vascular Surgery Department, Shanxi Bethune Hospital, Shanxi Academy of Medical Sciences, Third Hospital of Shanxi Medical University, Tongji Shanxi Hospital, Taiyuan, China.
School of Clinical Medicine, Tsinghua University, Beijing, China.
Front Med (Lausanne). 2025 Feb 6;12:1506363. doi: 10.3389/fmed.2025.1506363. eCollection 2025.
Pulmonary embolism (PE) is a common and potentially fatal condition. Timely and accurate risk assessment in patients with acute deep vein thrombosis (DVT) is crucial. This study aims to develop a deep learning-based, precise, and efficient PE risk prediction model (PE-Mind) to overcome the limitations of current clinical tools and provide a more targeted risk evaluation solution.
We analyzed clinical data from patients by first simplifying and organizing the collected features. From these, 37 key clinical features were selected based on their importance. These features were categorized and analyzed to identify potential relationships. Our prediction model uses a convolutional neural network (CNN), enhanced with three custom-designed modules for better performance. To validate its effectiveness, we compared this model with five commonly used prediction models.
PE-Mind demonstrated the highest accuracy and reliability, achieving 0.7826 accuracy and an area under the receiver operating characteristic curve of 0.8641 on the prospective test set, surpassing other models. Based on this, we have also developed a Web server, PulmoRiskAI, for real-time clinician operation.
The PE-Mind model improves prediction accuracy and reliability for assessing PE risk in acute DVT patients. Its convolutional architecture and residual modules substantially enhance predictive performance.
肺栓塞(PE)是一种常见且可能致命的疾病。对急性深静脉血栓形成(DVT)患者进行及时、准确的风险评估至关重要。本研究旨在开发一种基于深度学习的、精确且高效的PE风险预测模型(PE-Mind),以克服当前临床工具的局限性,并提供更具针对性的风险评估解决方案。
我们首先对收集到的特征进行简化和整理,从而分析患者的临床数据。基于这些特征的重要性,从中选择了37个关键临床特征。对这些特征进行分类和分析,以确定潜在关系。我们的预测模型使用卷积神经网络(CNN),并通过三个定制设计的模块进行增强,以实现更好的性能。为了验证其有效性,我们将该模型与五个常用的预测模型进行了比较。
PE-Mind在准确性和可靠性方面表现最佳,在前瞻性测试集上的准确率达到0.7826,受试者工作特征曲线下面积为0.8641,超过了其他模型。基于此,我们还开发了一个网络服务器PulmoRiskAI,供临床医生实时操作。
PE-Mind模型提高了评估急性DVT患者PE风险的预测准确性和可靠性。其卷积架构和残差模块显著提高了预测性能。