학술논문

A Web-Based Software for Training and Quality Assessment in the Image Analysis Workflow for Cardiac T1 Mapping MRI
Document Type
Conference
Source
2019 IEEE International Symposium on Multimedia (ISM) Multimedia (ISM), 2019 IEEE International Symposium on. :216-2164 Dec, 2019
Subject
Computing and Processing
Cardiovascular MRI
T1 mapping MRI
quality assessment
deep learning
image analysis training
standardisation
Language
Abstract
Medical practice makes significant use of imaging scans such as Ultrasound or Magnetic Resonance Imaging as a diagnostic tool. They are used in the visual inspection or quantification of medical parameters computed from the images in post-processing. However, the value of such parameters depends much on the user's variability, device, and algorithmic differences. In this paper, we focus on quantifying the variability due to the human factor, which can be primarily addressed by the structured training of a human operator. We focus on a specific emerging cardiovascular MRI methodology, the T1 mapping, that has proven useful to identify a range of pathological alterations of the myocardial tissue structure. Training, especially in emerging techniques, is typically not standardized, varying dramatically across medical centers and research teams. Additionally, training assessment is mostly based on qualitative approaches. Our work aims to provide a software tool combining traditional clinical metrics and convolutional neural networks to aid the training process by gathering contours from multiple trainees, quantifying discrepancy from local gold standard or standardized guidelines, classifying trainees output based on critical parameters that affect contours variability.