Abstract

Various imaging parameters in X-ray computed tomography (CT) should be examined and optimized by task-based assessment of human observer performance. Recently, convolutional neural networks (CNNs) have been introduced as anthropomorphic model observers. However, when human-labeled data are not available or limited, CNNs with an existing training strategy do not produce good performance agreement with human observers. The purpose of this study is to propose new training strategies for a CNN-based anthropomorphic model observer without human-labeled data for signal-known-exactly and background-known-statistically detection tasks. We acquired cone-beam CT projection data of breast background volume and reconstructed the projection data using the Feldkamp-Davis-Kress algorithm with 12 different imaging conditions including viewing image planes. Training data for the CNN were labeled utilizing conventional model observers. We employed an early stopping rule to reflect internal noise during the CNN training. To examine the CNN performance, we used three different training-testing schemes. The performance agreement between the human and model observers was measured via a Bland-Altman plot, the root-mean-squared error (RMSE), and the Pearson's correlation coefficient ($r$ ) of their proportion correct values. Throughout the three different training-testing schemes, CNNs with the proposed training strategies yielded narrower limits of agreements (with a bias lower than 0.03) and higher scores in both RMSE and $r$ than the conventional model observers. This indicates the proposed training strategies enable the CNN-based anthropomorphic model observer to have good performance agreement with human observers and generalize better to different imaging conditions than conventional anthropomorphic model observers.

Highlights

  • Optimizing the imaging parameters in X-ray computed tomography (CT) imaging is essential for improving diagnostic performance

  • As a form of regularization, we propose an early stopping rule that directly monitors the root-mean-squared error (RMSE) in proportion correct (Pc) on the validation set

  • It can be observed that the Pc values of NPWE4i, NPWEf, and DDOG-CHOi are within the 95% confidence intervals of those of human observers

Read more

Summary

Introduction

Optimizing the imaging parameters in X-ray computed tomography (CT) imaging is essential for improving diagnostic performance. Task-based assessment is considered to be a thorough image quality evaluation method because it directly quantifies the diagnostic accuracy (e.g., lesion detectability) with the reconstructed images [1]–[3]. Should be examined for the given task, and the performance evaluated by a human observer. Conducting human observer studies for numerous imaging parameters is time-consuming and expensive. To overcome this limitation, anthropomorphic model observers, such as the non-prewhitening observer with an eye filter (NPWE) and the channelized Hotelling observer (CHO) [4]–[6], have been developed to represent the human observer by mimicking the frequency selective sensitivity of the human visual system with frequency filters [7]–[9] and reflecting the inefficiency of a human observer with internal.

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call