Deep Learning Model based Ki-67 Index estimation with Automatically Labelled Data
No Thumbnail Available
Date
2020
Authors
Lakshmi S.
Sai Ritwik K.V.
Vijayasenan D.
Sumam David S.
Sreeram S.
Suresh P.K.
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Ki-67 labelling index is a biomarker which is used across the world to predict the aggressiveness of cancer. To compute the Ki-67 index, pathologists normally count the tumour nuclei from the slide images manually; hence it is timeconsuming and is subject to inter pathologist variability. With the development of image processing and machine learning, many methods have been introduced for automatic Ki-67 estimation. But most of them require manual annotations and are restricted to one type of cancer. In this work, we propose a pooled Otsu's method to generate labels and train a semantic segmentation deep neural network (DNN). The output is postprocessed to find the Ki-67 index. Evaluation of two different types of cancer (bladder and breast cancer) results in a mean absolute error of 3.52%. The performance of the DNN trained with automatic labels is better than DNN trained with ground truth by an absolute value of 1.25%. © 2020 IEEE.
Description
Keywords
Citation
Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society, EMBS , Vol. 2020-July , , p. 1412 - 1415