Faculty of Engineering of the University of Porto, Rua Dr. Roberto Frias, s/n, 4200-465 Porto, Portugal; INEGI - Institute of Science and Innovation in Mechanical and Industrial Engineering, Rua Dr. Roberto Frias, 400, 4200-465 Porto, Portugal.
INEGI - Institute of Science and Innovation in Mechanical and Industrial Engineering, Rua Dr. Roberto Frias, 400, 4200-465 Porto, Portugal.
J Mech Behav Biomed Mater. 2024 Dec;160:106736. doi: 10.1016/j.jmbbm.2024.106736. Epub 2024 Sep 17.
Childbirth is a challenging event that can lead to long-term consequences such as prolapse or incontinence. While computational models are widely used to mimic vaginal delivery, their integration into clinical practice is hindered by time constraints. The primary goal of this study is to introduce an artificial intelligence pipeline that leverages patient-specific surrogate modeling to predict pelvic floor injuries during vaginal delivery. A finite element-based machine learning approach was implemented to generate a dataset with information from finite element simulations. Thousands of childbirth simulations were conducted, varying the dimensions of the pelvic floor muscles and the mechanical properties used for their characterization. Additionally, a mesh morphing algorithm was developed to obtain patient-specific models. Machine learning models, specifically tree-based algorithms such as Random Forest (RF) and Extreme Gradient Boosting, as well as Artificial Neural Networks, were trained to predict the nodal coordinates of nodes within the pelvic floor, aiming to predict the muscle stretch during a critical interval. The results indicate that the RF model performs best, with a mean absolute error (MAE) of 0.086 mm and a mean absolute percentage error of 0.38%. Overall, more than 80% of the nodes have an error smaller than 0.1 mm. The MAE for the calculated stretch is equal to 0.0011. The implemented pipeline allows loading the trained model and making predictions in less than 11 s. This work demonstrates the feasibility of implementing a machine learning framework in clinical practice to predict potential maternal injuries and assist in medical-decision making.
分娩是一个具有挑战性的事件,可能会导致长期后果,如脱垂或失禁。虽然计算模型被广泛用于模拟阴道分娩,但由于时间限制,它们在临床实践中的集成受到阻碍。本研究的主要目标是引入一种人工智能管道,利用患者特定的替代模型来预测阴道分娩期间的盆底损伤。实施了基于有限元的机器学习方法来生成具有有限元模拟信息的数据集。进行了数千次分娩模拟,改变了盆底肌肉的尺寸和用于其特征描述的力学特性。此外,开发了一种网格变形算法来获得患者特定的模型。训练了机器学习模型,特别是基于树的算法,如随机森林 (RF) 和极端梯度增强,以及人工神经网络,以预测骨盆底内部节点的节点坐标,旨在预测关键间隔内肌肉的拉伸。结果表明,RF 模型表现最佳,平均绝对误差 (MAE) 为 0.086 毫米,平均绝对百分比误差为 0.38%。总体而言,超过 80%的节点误差小于 0.1 毫米。计算拉伸的 MAE 等于 0.0011。实施的管道允许在不到 11 秒的时间内加载训练好的模型并进行预测。这项工作证明了在临床实践中实施机器学习框架来预测潜在的产妇损伤并辅助医疗决策的可行性。