English

Comparing flow-based and anatomy-based features in the data-driven study of nasal pathologies

Fluid Dynamics 2023-12-19 v1

Abstract

In several problems involving fluid flows, Computational Fluid Dynamics (CFD) provides detailed quantitative information, and often allows the designer to successfully optimize the system, by minimizing a cost function. Sometimes, however, one cannot improve the system with CFD alone, because a suitable cost function is not readily available: one notable example is diagnosis in medicine. The field of interest considered here is rhinology: a correct air flow is key for the functioning of the human nose, yet the notion of a functionally normal nose is not available, and a cost function cannot be written. An alternative and attractive pathway to diagnosis and surgery planning is offered by data-driven methods. In this work, we consider the machine-learning study of nasal pathologies caused by anatomic malformations, with the aim of understanding whether fluid dynamic features, available after a CFD analysis, are more effective than purely geometric features in the training of a neural network for regression. Our experiments are carried out on an extremely simplified anatomic model and a correspondingly simple CFD approach; nevertheless, they demonstrate that flow-based features perform better than geometry-based ones, and allow the training of a neural network with fewer inputs, a crucial advantage in fields like medicine.

Keywords

Cite

@article{arxiv.2312.11202,
  title  = {Comparing flow-based and anatomy-based features in the data-driven study of nasal pathologies},
  author = {Andrea Schillaci and Kazuto Hasegawa and Carlotta Pipolo and Giacomo Boracchi and Maurizio Quadrio},
  journal= {arXiv preprint arXiv:2312.11202},
  year   = {2023}
}

Comments

Submitted to Flow

R2 v1 2026-06-28T13:54:37.679Z