Enhancements in localized classification for uterine cervical cancer digital histology image assessment.

Journal of pathology informatics(2016)

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摘要
The Logistic and Random Tree classifiers outperformed the benchmark SVM and LDA classifiers from previous research. The Logistic Regression classifier yielded an improvement of 10.17% in CIN Exact grade classification results based on CIN labels for training-testing for the individual vertical segments and the whole image from the same single expert over the baseline approach using the reduced features. Overall, the CIN classification rates tended to be higher using the training-testing labels for the same expert than for training labels from one expert and testing labels from the other expert. The Exact class fusion- based CIN discrimination results obtained in this study are similar to the Exact class expert agreement rate.
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关键词
Cervical cancer,cervical intraepithelial neoplasia,fusion-based classification,image processing
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