Biologically Inspired Deep Learning Approaches for Fetal Ultrasound Image Classification
Journal:
arXiv
Published Date:
Jun 10, 2025
Abstract
Accurate classification of second-trimester fetal ultrasound images remains
challenging due to low image quality, high intra-class variability, and
significant class imbalance. In this work, we introduce a simple yet powerful,
biologically inspired deep learning ensemble framework that-unlike prior
studies focused on only a handful of anatomical targets-simultaneously
distinguishes 16 fetal structures. Drawing on the hierarchical, modular
organization of biological vision systems, our model stacks two complementary
branches (a "shallow" path for coarse, low-resolution cues and a "detailed"
path for fine, high-resolution features), concatenating their outputs for final
prediction. To our knowledge, no existing method has addressed such a large
number of classes with a comparably lightweight architecture. We trained and
evaluated on 5,298 routinely acquired clinical images (annotated by three
experts and reconciled via Dawid-Skene), reflecting real-world noise and
variability rather than a "cleaned" dataset. Despite this complexity, our
ensemble (EfficientNet-B0 + EfficientNet-B6 with LDAM-Focal loss) identifies
90% of organs with accuracy > 0.75 and 75% of organs with accuracy >
0.85-performance competitive with more elaborate models applied to far fewer
categories. These results demonstrate that biologically inspired modular
stacking can yield robust, scalable fetal anatomy recognition in challenging
clinical settings.