Missed cancer and visual search of mammograms: what feature based machine-learning can tell us that deep-convolution learning cannot

被引:6
作者
Malla, Suneeta [1 ]
Krupinski, Elizabeth [2 ]
Mello-Thoms, Claudia [1 ,3 ]
机构
[1] Univ Sydney, Sydney, NSW, Australia
[2] Emory Univ, Atlanta, GA 30322 USA
[3] Univ Iowa, Iowa City, IA USA
来源
MEDICAL IMAGING 2019: IMAGE PERCEPTION, OBSERVER PERFORMANCE, AND TECHNOLOGY ASSESSMENT | 2019年 / 10952卷
关键词
Visual Search; Missed Cancer; Eye tracking; Breast Cancer; Machine Learning; Deep Learning;
D O I
10.1117/12.2512539
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Significant amount of effort has been invested in improving the quality of breast imaging modalities (for example, mammography) to increase the accuracy of breast cancer detection. Despite that, about 4-34% of cancers are still missed during mammographic examination of cancer of the breast [1]. This indicates the need to explore a) The features of the lesions that are missed, and b) Whether the features of missed cancers contribute to why some cancers are not 'looked at' (search error) whereas others are 'looked at' but still not reported. In this visual search study, we perform feature analysis of all lesions that were missed by at least one participating radiologist. We focus on features extracted by means of Grey Level Co-occurrence Matrix properties, textural properties using Gabor filters, statistical information extraction using 2nd and higher-order (3rd and 4th) spectral analysis and also spatial-temporal attributes of radiologists' visual search behaviour. We perform Analysis of Variance (ANOVA) on these features to explore the differences in features for cancers that were missed due to a) search, b) perception and c) decision making errors. Using these features, we trained Support Vector Machine, Gradient Boosting and stochastic gradient decent classifiers to determine the type of missed cancer (search, perception and decision making) We compared these feature-based models with a model trained using deep convolution neural network that learns features by itself. We determined whether deep learning or traditional machine learning performs best in this task.
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页数:7
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