Authors
Weimin Zhou, Hua Li, Mark A Anastasio
Publication date
2019/3/4
Conference
Medical Imaging 2019: Image Perception, Observer Performance, and Technology Assessment
Volume
10952
Pages
41-46
Publisher
SPIE
Description
Task-based measures of image quality (IQ) quantify the ability of an observer to perform a specific task. Such measures are commonly employed for assessing and optimizing medical imaging systems. In binary signal detection tasks, the Bayesian ideal observer (IO) sets an upper performance limit. However, the IO test statistic is generally intractable to compute when the log-likelihood ratio depends non-linearly on the measurement data. In such cases, the Hotelling observer (HO), which is the optimal linear observer, can be employed. However, traditional implementations of the HO require estimation and inversion of covariance matrices; for large images this can be computationally burdensome or even intractable. In this work, we describe a novel supervised learning- based method that employs artificial neural networks (ANNs) for estimating the HO test statistic and does not require estimation or inversion of …
Total citations
2020202120222023202472531
Scholar articles
W Zhou, H Li, MA Anastasio - Medical Imaging 2019: Image Perception, Observer …, 2019