Authors
Kaiyan Li, Weimin Zhou, Hua Li, Mark A Anastasio
Publication date
2021/2/15
Conference
Medical Imaging 2021: Image Perception, Observer Performance, and Technology Assessment
Volume
11599
Pages
115990F
Publisher
International Society for Optics and Photonics
Description
The ideal observer (IO) sets an upper performance limit among all observers and has been advocated for use in assessing and optimizing imaging systems. For joint detection-estimation tasks, the estimation ROC (EROC) curve has been proposed for evaluating the performance of observers. However, in practice, it is generally difficult to accurately approximate the IO that maximizes the area under the EROC curve (AEROC) for a general detection-estimation task. In this study, a hybrid method that employs machine learning is proposed to accomplish this. Specifically, a hybrid approach is developed that combines a multi-task convolutional neural network (CNN) and a Markov-Chain Monte Carlo (MCMC) method in order to approximate the IO for detectionestimation tasks. The multi-task CNN is designed to estimate the likelihood ratio and the parameter vector, while the MCMC method is employed to compute the …
Total citations
20212022202320242441
Scholar articles
K Li, W Zhou, H Li, MA Anastasio - Medical Imaging 2021: Image Perception, Observer …, 2021