Song Wenyuan, Frakes David, Dasi Lakshmi Prasad
School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, GA, USA.
Wallace H. Coulter Department of Biomedical Engineering, Georgia Institute of Technology and Emory University, Atlanta, GA, USA.
Ann Biomed Eng. 2025 Jan;53(1):217-229. doi: 10.1007/s10439-024-03640-8. Epub 2024 Oct 31.
The Fontan procedure is the definitive palliation for pediatric patients born with single ventricles. Surgical planning for the Fontan procedure has emerged as a promising vehicle toward optimizing outcomes, where pre-operative measurements are used prospectively as post-operative boundary conditions for simulation. Nevertheless, actual post-operative measurements can be very different from pre-operative states, which raises questions for the accuracy of surgical planning. The goal of this study is to apply machine leaning techniques to describing pre-operative and post-operative vena caval flow conditions in Fontan patients in order to develop predictions of post-operative boundary conditions to be used in surgical planning. Based on a virtual cohort synthesized by lumped-parameter models, we proposed a novel diversity-aware generative adversarial active learning framework to successfully train predictive deep neural networks on very limited amount of cases that are generally faced by cardiovascular studies. Results of 14 groups of experiments uniquely combining different data query strategies, metrics, and data augmentation options with generative adversarial networks demonstrated that the highest overall prediction accuracy and coefficient of determination were exhibited by the proposed method. This framework serves as a first step toward deep learning for cardiovascular flow prediction/regression with reduced labeling requirements and augmented learning space.
Fontan手术是对患有单心室的儿科患者的最终姑息治疗方法。Fontan手术的手术规划已成为优化手术结果的一种有前景的手段,术前测量被前瞻性地用作模拟的术后边界条件。然而,实际术后测量结果可能与术前状态有很大差异,这对手术规划的准确性提出了疑问。本研究的目的是应用机器学习技术来描述Fontan患者术前和术后的腔静脉血流状况,以便开发用于手术规划的术后边界条件预测。基于由集总参数模型合成的虚拟队列,我们提出了一种新颖的多样性感知生成对抗主动学习框架,以在心血管研究通常面临的非常有限数量的病例上成功训练预测性深度神经网络。将不同的数据查询策略、指标和数据增强选项与生成对抗网络独特组合的14组实验结果表明,所提出的方法展现出最高的总体预测准确率和决定系数。该框架是朝着减少标记要求并扩大学习空间的心血管血流预测/回归深度学习迈出的第一步。