Automatic Classification of Magnetic Resonance Histology of Peripheral Arterial Chronic
Total Occlusions Using a Variational Autoencoder: A Feasibility Study
The novel approach of our study consists in adapting and in evaluating a custom-made
variational autoencoder (VAE) using two-dimensional (2D) convolutional neural networks
(CNNs) on magnetic resonance imaging (MRI) images for differentiate soft vs. hard
plaque components in peripheral arterial disease (PAD). Five amputated lower extremities
were imaged at a clinical ultra-high field 7 Tesla MRI. Ultrashort echo time (UTE),
T1-weighted (T1w) and T2-weighted (T2w) datasets were acquired. Multiplanar reconstruction
(MPR) images were obtained from one lesion per limb. Images were aligned to each other
and pseudo-color red-green-blue images were created. Four areas in latent space were
defined corresponding to the sorted images reconstructed by the VAE. Images were classified
from their position in latent space and scored using tissue score (TS) as following:
(1) lumen patent, TS:0; (2) partially patent, TS:1; (3) mostly occluded with soft
tissue, TS:3; (4) mostly occluded with hard tissue, TS:5. Average and relative percentage
of TS was calculated per lesion defined as the sum of the tissue score for each image
divided by the total number of images. In total, 2390 MPR reconstructed images were
included in the analysis. Relative percentage of average tissue score varied from
only patent (lesion #1) to presence of all four classes. Lesions #2, #3 and #5 were
classified to contain tissues except mostly occluded with hard tissue while lesion
#4 contained all (ranges (I): 0.2–100%, (II): 46.3–75.9%, (III): 18–33.5%, (IV): 20%).
Training the VAE was successful as images with soft/hard tissues in PAD lesions were
satisfactory separated in latent space. Using VAE may assist in rapid classification
of MRI histology images acquired in a clinical setup for facilitating endovascular
procedures.