Cutting out the middleman: Measuring nuclear area in histopathology slides without segmentation

Publication date

2016

Authors

Veta, Mitko
van Diest, Paul JORCID 0000-0003-0658-2745ISNI 000000004213151X
Pluim, Josien P W

Editors

Ourselin, Sebastien
Joskowicz, Leo
Unal, Gozde
Wells, William

Advisors

Supervisors

Document Type

Part of book

Collections

Open Access logo

License

taverne

Abstract

The size of nuclei in histological preparations from excised breast tumors is predictive of patient outcome (large nuclei indicate poor outcome). Pathologists take into account nuclear size when performing breast cancer grading. In addition,the mean nuclear area (MNA) has been shown to have independent prognostic value. The straightforward approach to measuring nuclear size is by performing nuclei segmentation. We hypothesize that given an image of a tumor region with known nuclei locations,the area of the individual nuclei and region statistics such as the MNA can be reliably computed directly from the image data by employing a machine learning model,without the intermediate step of nuclei segmentation. Towards this goal,we train a deep convolutional neural network model that is applied locally at each nucleus location,and can reliably measure the area of the individual nuclei and the MNA. Furthermore,we show how such an approach can be extended to perform combined nuclei detection and measurement,which is reminiscent of granulometry.

Keywords

Breast cancer, Convolutional neural networks, Deep learning, Histopathology image analysis, Taverne, Theoretical Computer Science, General Computer Science

Citation

Veta, M, Van Diest, P J & Pluim, J P W 2016, Cutting out the middleman : Measuring nuclear area in histopathology slides without segmentation. in S Ourselin, L Joskowicz, G Unal & W Wells (eds), Medical Image Computing and Computer-Assisted Intervention - MICCAI 2016 - 19th International Conference, Proceedings : 19th International Conference, Athens, Greece, October 17-21, 2016, Proceedings. vol. II, Lecture Notes in Computer Science, vol. 9901 , Lecture Notes in Artificial Intelligence, Lecture Notes in Bioinformatics, Springer-Verlag, pp. 632-639. https://doi.org/10.1007/978-3-319-46723-8_73