Convolutional Neural Network Model Observers Discount Signal-like Anatomical Structures During Search in Virtual Digital Breast Tomosynthesis Phantoms
Aditya Jonnalagadda, Bruno B. Barufaldi, Andrew D.A. Maidment, Susan, P. Weinstein, Craig K. Abbey, and Miguel P. Eckstein

TL;DR
This study compares CNN and linear model observers in detecting signals in breast tomosynthesis images, finding CNNs better mimic radiologist performance and discount false positives from anatomy, unlike traditional models.
Contribution
It demonstrates that CNNs outperform linear model observers in complex search tasks, effectively discounting false positives from anatomical backgrounds.
Findings
CNN matches or exceeds radiologist accuracy in certain detection tasks.
Linear model observers perform poorly in complex search scenarios.
CNNs effectively discount false positives from anatomy.
Abstract
Model observers are computational tools to evaluate and optimize task-based medical image quality. Linear model observers, such as the Channelized Hotelling Observer (CHO), predict human accuracy in detection tasks with a few possible signal locations in clinical phantoms or real anatomic backgrounds. In recent years, Convolutional Neural Networks (CNNs) have been proposed as a new type of model observer. What is not well understood is what CNNs add over the more common linear model observer approaches. We compare the CHO and CNN detection accuracy to the radiologist's accuracy in searching for two types of signals (mass and microcalcification) embedded in 2D/3D breast tomosynthesis phantoms (DBT). We show that the CHO model's accuracy is comparable to the CNN's performance for a location-known-exactly detection task. However, for the search task with 2D/3D DBT phantoms, the CHO's…
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Taxonomy
TopicsAI in cancer detection · Infrared Thermography in Medicine · Advanced Image Fusion Techniques
