Paper
30 March 2007 Cross-digitizer robustness of a knowledge-based CAD system for mass detection in mammograms
Georgia D. Tourassi, Brian Harrawood, Carey E. Floyd Jr.
Author Affiliations +
Abstract
Multiplatform application of CAD systems in mammography is often limited due to image preprocessing steps that are tailored to the acquisition protocol such as the digitizer. The purpose of this study was to validate our knowledge-based CAD system across two different digitizers. Our system relies on the similarity of a query image with known cases stored in a knowledge database. Image similarity is assessed using information theory, without any image preprocessing. Therefore, we hypothesize that our CAD system can operate robustly across digitizers. We tested the hypothesis using two different datasets of mammographic regions of interest (ROIs) for mass detection. The two databases consisted of 1,820 and 1,809 ROIs extracted from DDSM mammograms digitized using a Lumisys and a Howtek scanner respectively. Three experiments were performed. First, we evaluated the CAD system on each dataset independently. Then, we evaluated the system on each dataset when the other dataset was used as the knowledge database. Finally, we assessed the CAD detection performance when the knowledge database contained mixed cases. Our CAD system had similar performance across digitizers (Az=0.87±0.01 for Lumisys vs. Az=0.8±0.01 for Howtek) when assessed independently. When the system was tested on one dataset while the other was used as the knowledge database, ROC performance declined marginally, mainly based on the partial ROC area index. This result suggests that blind translation of the system without some experience with cases digitized with the same digitizer is not recommended when the system is expected to operate at high sensitivity decision thresholds. When the system operated with a knowledge database of mixed cases, its performance across digitizers was robust yet slightly inferior to what observed independently.
© (2007) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Georgia D. Tourassi, Brian Harrawood, and Carey E. Floyd Jr. "Cross-digitizer robustness of a knowledge-based CAD system for mass detection in mammograms", Proc. SPIE 6514, Medical Imaging 2007: Computer-Aided Diagnosis, 65141Y (30 March 2007); https://doi.org/10.1117/12.711481
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CITATIONS
Cited by 5 scholarly publications.
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KEYWORDS
Databases

CAD systems

Mammography

Computer aided design

Computer aided diagnosis and therapy

Digital mammography

Scanners

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