Abstract

Medical imaging systems are commonly assessed and optimized by use of objective measures of image quality (IQ). The Ideal Observer (IO) performance has been advocated to provide a figure-of-merit for use in assessing and optimizing imaging systems because the IO sets an upper performance limit among all observers. When joint signal detection and localization tasks are considered, the IO that employs a modified generalized likelihood ratio test maximizes observer performance as characterized by the localization receiver operating characteristic (LROC) curve. Computations of likelihood ratios are analytically intractable in the majority of cases. Therefore, sampling-based methods that employ Markov-Chain Monte Carlo (MCMC) techniques have been developed to approximate the likelihood ratios. However, the applications of MCMC methods have been limited to relatively simple object models. Supervised learning-based methods that employ convolutional neural networks have been recently developed to approximate the IO for binary signal detection tasks. In this paper, the ability of supervised learning-based methods to approximate the IO for joint signal detection and localization tasks is explored. Both background-known-exactly and background-known-statistically signal detection and localization tasks are considered. The considered object models include a lumpy object model and a clustered lumpy model, and the considered measurement noise models include Laplacian noise, Gaussian noise, and mixed Poisson-Gaussian noise. The LROC curves produced by the supervised learning-based method are compared to those produced by the MCMC approach or analytical computation when feasible. The potential utility of the proposed method for computing objective measures of IQ for optimizing imaging system performance is explored.

Highlights

  • M EDICAL imaging systems that produce images for specific diagnostic tasks are commonly assessed and optimized by use of objective measures of image quality (IQ)

  • For the joint detection-localization task, with both imaging systems, the localization receiver operating characteristic (LROC) curves produced by the analytical computation are compared to those produced by the convolutional neural networks (CNNs) in Fig. 5 (a)

  • For the simplified binary signal detection tasks, the receiver operating characteristic (ROC) curves produced by the analytical computation are compared to those produced by the CNN in Fig. 5 (b)

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Summary

INTRODUCTION

M EDICAL imaging systems that produce images for specific diagnostic tasks are commonly assessed and optimized by use of objective measures of image quality (IQ). The Bayesian Ideal Observer (IO) maximizes the area under the ROC curve (AUC) and has been advocated for computing figures-of-merit (FOMs) for guiding imaging system optimization [1], [2], [6] In this way, the amount of task-specific information in the measurement data is maximized. Supervised learning-based methods hold great promise for establishing numerical observers that can be employed to compute objective measures of IQ. Zhou et al developed a supervised learning-based method for computing the test statistics of IOs performing binary signal detection tasks with 2D image data by use of convolutional neural networks (CNNs) [6], [7]. A supervised learning-based method that employs CNNs to approximate the IO for signal detection-localization tasks is explored.

BACKGROUND
Detection-Localization Tasks With a Discrete-Location Model
Scanning Ideal Observer and Scanning Hotelling Observer
APPROXIMATING THE IO FOR SIGNAL DETECTION-LOCALIZATION TASKS BY USE OF CNNS
NUMERICAL STUDIES
BKE Signal Detection-Localization Tasks
BKS Signal Detection-Localization Task With a Lumpy Background Model
CNN Training Details
RESULTS
BKS Signal Detection-Localization Task With a CLB Model
SUMMARY
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