Improved cancer detection using artificial intelligence: A retrospective evaluation of missed cancers on mammography Journal Article


Authors: Watanabe, A. T.; Lim, V.; Vu, H. X.; Chim, R.; Weise, E.; Liu, J.; Bradley, W. G.; Comstock, C. E.
Article Title: Improved cancer detection using artificial intelligence: A retrospective evaluation of missed cancers on mammography
Abstract: To determine whether cmAssistTM, an artificial intelligence-based computer-aided detection (AI-CAD) algorithm, can be used to improve radiologists’ sensitivity in breast cancer screening and detection. A blinded retrospective study was performed with a panel of seven radiologists using a cancer-enriched data set from 122 patients that included 90 false-negative mammograms obtained up to 5.8 years prior to diagnosis and 32 BIRADS 1 and 2 patients with a 2-year follow-up of negative diagnosis. The mammograms were performed between February 7, 2008 (earliest) and January 8, 2016 (latest), and were all originally interpreted as negative in conjunction with R2 ImageChecker CAD, version 10.0. In this study, the readers analyzed the 122 studies before and after review of cmAssistTM, an AI-CAD software for mammography. The statistical significance of our findings was evaluated using Student’s t test and bootstrap statistical analysis. There was a substantial and significant improvement in radiologist accuracy with use of cmAssist, as demonstrated in the 7.2% increase in the area-under-the-curve (AUC) of the receiver operating characteristic (ROC) curve with two-sided p value < 0.01 for the reader group. All radiologists showed a significant improvement in their cancer detection rate (CDR) with the use of cmAssist (two-sided p value = 0.030, confidence interval = 95%). The readers detected between 25 and 71% (mean 51%) of the early cancers without assistance. With cmAssist, the overall reader CDR was 41 to 76% (mean 62%). The percentage increase in CDR for the reader panel was significant, ranging from 6 to 64% (mean 27%) with the use of cmAssist. There was less than 1% increase in the readers’ false-positive recalls with use of cmAssist. With the use of cmAssist TM, there was a substantial and statistically significant improvement in radiologists’ accuracy and sensitivity for detection of cancers that were originally missed. The percentage increase in CDR for the radiologists in the reader panel ranged from 6 to 64% (mean 27%) with the use of cmAssist, with negligible increase in false-positive recalls. © 2019, The Author(s).
Keywords: breast cancer; statistical significance; mammography; artificial intelligence; diseases; cancer detection; breast cancer screening; computer aided diagnosis; statistical methods; computer-aided detection; receiver operating characteristic curves; deep learning; computer aided instruction; x ray screens; computer aided detection; area under the curves; clock and data recovery circuits (cdr circuits); retrospective evaluations
Journal Title: Journal of Digital Imaging
Volume: 32
Issue: 4
ISSN: 0897-1889
Publisher: Springer  
Date Published: 2019-08-01
Start Page: 625
End Page: 637
Language: English
DOI: 10.1007/s10278-019-00192-5
PUBMED: 31011956
PROVIDER: scopus
PMCID: PMC6646649
DOI/URL:
Notes: Article -- Export Date: 2 August 2019 -- Source: Scopus
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