Deep learning and Gaussian Mixture Modelling clustering mix. A new approach for fetal morphology view plane differentiation.

Journal: Journal of biomedical informatics
Published Date:

Abstract

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.

Authors

  • Smaranda Belciug
    Department of Computer Science, University of Craiova, Craiova 200585, Romania. Electronic address: smaranda.belciug@inf.ucv.ro.
  • Dominic Gabriel Iliescu
    Department of Computer Science, Faculty of Sciences, University of Craiova, Craiova 200585, Romania; Department no. 2, University of Medicine and Pharmacy of Craiova, Romania. Electronic address: dominic.iliescu@umfcv.ro.