Presentation + Paper
4 April 2022 A 25-reader performance study for hepatic metastasis detection: lessons from unsupervised learning
Author Affiliations +
Abstract
There is substantial variability in the performance of radiologist readers. We hypothesized that certain readers may have idiosyncratic weaknesses towards certain types of lesions, and unsupervised learning techniques might identify these patterns. After IRB approval, 25 radiologist readers (9 abdominal subspecialists and 16 non-specialists or trainees) read 40 portal phase liver CT exams, marking all metastases and providing a confidence rating on a scale of 1 to 100. We formed a matrix of reader confidence ratings, with rows corresponding to readers, and columns corresponding to metastases, and each matrix entry providing the confidence rating that a reader gave to the metastasis, with zero confidence used for lesions that were not marked. A clustergram was used to permute the rows and columns of this matrix to group similar readers and metastases together. This clustergram was manually interpreted. We found a cluster of lesions with atypical presentation that were missed by several readers, including subspecialists, and a separate cluster of small, subtle lesions where subspecialists were more confident of their diagnosis than trainees. These and other observations from unsupervised learning could inform targeted training and education of future radiologists.
Conference Presentation
© (2022) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Scott S. Hsieh, Akitoshi Inoue, Parvathy Sudhir Pillai, Hao Gong, David R. Holmes III, David A. Cook, Shuai Leng, Lifeng Yu, Rickey E. Carter, Joel G. Fletcher, and Cynthia H. McCollough "A 25-reader performance study for hepatic metastasis detection: lessons from unsupervised learning", Proc. SPIE 12031, Medical Imaging 2022: Physics of Medical Imaging, 1203116 (4 April 2022); https://doi.org/10.1117/12.2611543
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KEYWORDS
Machine learning

Liver

Visualization

Abdomen

MATLAB

Radiology

Scanners

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