Department of Computer Science, Faculty of Sciences, University of Craiova, Craiova 200585, Romania.
Department of Computer Science, Faculty of Sciences, University of Craiova, Craiova 200585, Romania; Department no. 2, University of Medicine and Pharmacy of Craiova, Romania.
J Biomed Inform. 2023 Jul;143:104402. doi: 10.1016/j.jbi.2023.104402. Epub 2023 May 20.
The last three years have been a game changer in the way medicine is practiced. The COVID-19 pandemic changed the obstetrics and gynecology scenery. Pregnancy complications, and even death, are preventable due to maternal-fetal monitoring. A fast and accurate diagnosis can be established by a doctor + Artificial Intelligence combo. The aim of this paper is to propose a framework designed as a merger between Deep learning algorithms and Gaussian Mixture Modelling clustering applied in differentiating between the view planes of a second trimester fetal morphology scan. The deep learning methods chosen for this approach were ResNet50, DenseNet121, InceptionV3, EfficientNetV2S, MobileNetV3Large, and Xception. The framework establishes a hierarchy of the component networks using a statistical fitness function and the Gaussian Mixture Modelling clustering method, followed by a synergetic weighted vote of the algorithms that gives the final decision. We have tested the framework on two second trimester morphology scan datasets. A thorough statistical benchmarking process has been provided to validate our results. The experimental results showed that the synergetic vote of the framework outperforms the vote of each stand-alone deep learning network, hard voting, soft voting, and bagging strategy.
过去三年,医学实践方式发生了重大变化。COVID-19 大流行改变了妇产科的面貌。由于对母婴进行监测,妊娠并发症甚至死亡都是可以预防的。医生+人工智能的组合可以快速准确地做出诊断。本文旨在提出一个框架,该框架设计为深度学习算法和高斯混合建模聚类的合并,应用于区分中期胎儿形态扫描的视平面。为此方法选择的深度学习方法是 ResNet50、DenseNet121、InceptionV3、EfficientNetV2S、MobileNetV3Large 和 Xception。该框架使用统计拟合函数和高斯混合建模聚类方法建立组件网络的层次结构,然后对算法进行协同加权投票,得出最终决策。我们已经在两个中期形态扫描数据集上测试了该框架。提供了一个详细的统计基准测试过程来验证我们的结果。实验结果表明,框架的协同投票优于每个独立的深度学习网络、硬投票、软投票和袋装策略的投票。