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Proceedings ArticleDOI

Task-based performance evaluation of deep neural network-based image denoising

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TLDR
The experimental results show that, in the cases considered, the application of a denoising network generally results in a loss of task-relevant information, and while mean squared error improved as the network depths were increased, signal detection performance degraded.
Abstract
Deep neural network (DNN)-based image denoising methods have been proposed for use with medical images. These methods are commonly optimized and evaluated by use of traditional physical measures of image quality (IQ). However, the objective evaluation of IQ for such methods remains largely lacking. In this study, task-based IQ measures are used to evaluate the performance of DNN-based denoising methods. Specifically, we consider signal detection tasks under background-known-statistically conditions. The performance of the ideal observer (IO) and the Hotelling observer (HO) are quantified and detection efficiencies are computed to investigate the impact of the denoising operation on task performance. The experimental results show that, in the cases considered, the application of a denoising network generally results in a loss of task-relevant information. The impact of the depth of the denoising networks on task performance is also assessed. While mean squared error improved as the network depths were increased, signal detection performance degraded. These results highlight the need for the objective evaluation of IQ for DNN-based denoising technologies and may suggest future avenues for improving their effectiveness in medical imaging applications.

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Journal ArticleDOI

Assessing the Impact of Deep Neural Network-Based Image Denoising on Binary Signal Detection Tasks

TL;DR: In this paper, the performance of DNN-based image denoising methods by use of task-based IQ measures is evaluated for binary signal detection tasks under SKE with background-known-statistically (BKS) conditions.
Journal ArticleDOI

Objective Task-Based Evaluation of Artificial Intelligence-Based Medical Imaging Methods:: Framework, Strategies, and Role of the Physician.

TL;DR: In this article, a framework for objective task-based evaluation of artificial intelligence methods for medical imaging applications is presented, with a focus on evaluating neural network-based methods for PET scans.
Proceedings ArticleDOI

Supervised learning-based ideal observer approximation for joint detection and estimation tasks

TL;DR: A hybrid approach is developed that combines a multi-task convolutional neural network and a Markov-Chain Monte Carlo method in order to approximate the IO for detectionestimation tasks and may enable the application of EROC analysis for optimizing imaging systems.
Proceedings ArticleDOI

A task-informed model training method for deep neural network-based image denoising

TL;DR: The presented results indicate that the task-informed training method can improve observer performance while providing control over the trade off between traditional and task-based measures of image quality.
References
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