APS Logo

Mechanics-informed radiology, fluoroscopy, and endoscopy enabled by deep learning techniques

POSTER

Abstract

The functioning of many organs depends on their mechanical properties, and deducing these properties based on data from routinely used diagnostic techniques can help understand the ``mechanical health'' of an organ and to predict the future course of a pathology. Here we consider flexible tubular organs that are common in a human body, specifically, the esophagus. We develop a one-dimensional fluid-structure numerical model that predicts the shape of the tube, and the fluid velocity and pressure inside it. Using data from the fluid-structure model, we train a variational autoencoder (VAE) that generates a latent space. The model data gets clustered into different regions of the latent space. We find that the locations of the clusters, relative to each other, represent similarities and differences between the modes of bolus transport through the esophagus. The VAE also consists of a side network that we train to predict the physical parameters of the model. We also show that the trained VAE can be used with clinical data from MRI, Fluoroscopy, EndoFLIP (an endoscopy technique), and thus provide fundamental understanding of the underlying physics of various disorders of any flexible tubular organ.

Authors

  • Sourav Halder

    Theoretical and Applied Mechanics, Northwestern University, Northwestern University

  • Shashank Acharya

    Mechanical Engineering, Northwestern University, Dept. of Mechanical Engineering, Northwestern University, Northwestern University

  • Guy Elisha

    Mechanical Engineering, Northwestern University, Dept. of Mechanical Engineering, Northwestern University, Northwestern University

  • Wenjun Kou

    Feinberg School of Medicine, Northwestern University, Northwestern University

  • John E. Pandolfino

    Feinberg School of Medicine, Northwestern University, Northwestern University

  • Peter J. Kahrilas

    Feinberg School of Medicine, Northwestern University, Northwestern University

  • Neelesh A. Patankar

    Northwestern University, Dept. of Mechanical Engineering, Northwestern University, Department of Mechanical Engineering, Northwestern University