Estimating Task-based Performance Bounds for Accelerated MRI Image Reconstruction Methods by Use of Learned-Ideal Observers
Kaiyan Li, Prabhat Kc, Hua Li, Kyle J. Myers, Mark A. Anastasio, and, Rongping Zeng

TL;DR
This paper proposes a method using learned-ideal observers to estimate performance bounds in accelerated MRI reconstruction, aiding in the design of sampling strategies to preserve diagnostic information.
Contribution
It extends CNN-approximated ideal observer analysis from CT to multi-coil MRI, providing a new tool for evaluating and optimizing MRI acquisition protocols.
Findings
CNN-IO can estimate upper bounds of task performance in MRI
Performance varies with acceleration factors in MRI
Method helps identify sampling designs that preserve diagnostic info
Abstract
Medical imaging systems are commonly assessed and optimized by the use of objective measures of image quality (IQ). The performance of the ideal observer (IO) acting on imaging measurements has long been advocated as a figure-of-merit to guide the optimization of imaging systems. For computed imaging systems, the performance of the IO acting on imaging measurements also sets an upper bound on task-performance that no image reconstruction method can transcend. As such, estimation of IO performance can provide valuable guidance when designing under-sampled data-acquisition techniques by enabling the identification of designs that will not permit the reconstruction of diagnostically inappropriate images for a specified task - no matter how advanced the reconstruction method is or how plausible the reconstructed images appear. The need for such analysis is urgent because of the substantial…
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