81 research outputs found
Elastic shape analysis computations for clustering left atrial appendage geometries of atrial fibrillation patients
Morphological variations in the left atrial appendage (LAA) are associated
with different levels of ischemic stroke risk for patients with atrial
fibrillation (AF). Studying LAA morphology can elucidate mechanisms behind this
association and lead to the development of advanced stroke risk stratification
tools. However, current categorical descriptions of LAA morphologies are
qualitative and inconsistent across studies, which impedes advancements in our
understanding of stroke pathogenesis in AF. To mitigate these issues, we
introduce a quantitative pipeline that combines elastic shape analysis with
unsupervised learning for the categorization of LAA morphology in AF patients.
As part of our pipeline, we compute pairwise elastic distances between LAA
meshes from a cohort of 20 AF patients, and leverage these distances to cluster
our shape data. We demonstrate that our method clusters LAA morphologies based
on distinctive shape features, overcoming the innate inconsistencies of current
LAA categorization systems, and paving the way for improved stroke risk metrics
using objective LAA shape groups.Comment: Submitted as a conference paper to MICCAI 202
Two-Stage Deep Learning Framework for Quality Assessment of Left Atrial Late Gadolinium Enhanced MRI Images
Accurate assessment of left atrial fibrosis in patients with atrial
fibrillation relies on high-quality 3D late gadolinium enhancement (LGE) MRI
images. However, obtaining such images is challenging due to patient motion,
changing breathing patterns, or sub-optimal choice of pulse sequence
parameters. Automated assessment of LGE-MRI image diagnostic quality is
clinically significant as it would enhance diagnostic accuracy, improve
efficiency, ensure standardization, and contributes to better patient outcomes
by providing reliable and high-quality LGE-MRI scans for fibrosis
quantification and treatment planning. To address this, we propose a two-stage
deep-learning approach for automated LGE-MRI image diagnostic quality
assessment. The method includes a left atrium detector to focus on relevant
regions and a deep network to evaluate diagnostic quality. We explore two
training strategies, multi-task learning, and pretraining using contrastive
learning, to overcome limited annotated data in medical imaging. Contrastive
Learning result shows about , and improvement in F1-Score and
Specificity compared to Multi-Task learning when there's limited data.Comment: Accepted to STACOM 2023. 11 pages, 3 figure
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