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A new optical density granulometry-based descriptor for the classification of prostate histological images using shallow and deep Gaussian processes
- Source :
- RiuNet. Repositorio Institucional de la Universitat Politécnica de Valéncia, instname
- Publication Year :
- 2019
-
Abstract
- [EN] Background and objective Prostate cancer is one of the most common male tumors. The increasing use of whole slide digital scanners has led to an enormous interest in the application of machine learning techniques to histopathological image classification. Here we introduce a novel family of morphological descriptors which, extracted in the appropriate image space and combined with shallow and deep Gaussian process based classifiers, improves early prostate cancer diagnosis. Method We decompose the acquired RGB image in its RGB and optical density hematoxylin and eosin components. Then, we define two novel granulometry-based descriptors which work in both, RGB and optical density, spaces but perform better when used on the latter. In this space they clearly encapsulate knowledge used by pathologists to identify cancer lesions. The obtained features become the inputs to shallow and deep Gaussian process classifiers which achieve an accurate prediction of cancer. Results We have used a real and unique dataset. The dataset is composed of 60 Whole Slide Images. For a five fold cross validation, shallow and deep Gaussian Processes obtain area under ROC curve values higher than 0.98. They outperform current state of the art patch based shallow classifiers and are very competitive to the best performing deep learning method. Models were also compared on 17 Whole Slide test Images using the FROC curve. With the cost of one false positive, the best performing method, the one layer Gaussian process, identifies 83.87% (sensitivity) of all annotated cancer in the Whole Slide Image. This result corroborates the quality of the extracted features, no more than a layer is needed to achieve excellent generalization results. Conclusion Two new descriptors to extract morphological features from histological images have been proposed. They collect very relevant information for cancer detection. From these descriptors, shallow and deep Gaussian Processes are capable of extracting the complex structure of prostate histological images. The new space/descriptor/classifier paradigm outperforms state-of-art shallow classifiers. Furthermore, despite being much simpler, it is competitive to state-of-art CNN architectures both on the proposed SICAPv1 database and on an external database<br />This work was supported by the Ministerio de Economia y Competitividad through project DPI2016-77869. The Titan V used for this research was donated by the NVIDIA Corporation
- Subjects :
- Male
Databases, Factual
Granulometries
Normal Distribution
Color
Health Informatics
Variational Inference
Deep Gaussian Processes
Optical density
030218 nuclear medicine & medical imaging
Machine Learning
03 medical and health sciences
symbols.namesake
0302 clinical medicine
TEORIA DE LA SEÑAL Y COMUNICACIONES
Image Processing, Computer-Assisted
Humans
False Positive Reactions
Diagnosis, Computer-Assisted
Gaussian Processes
Gaussian process
Remote sensing
Probability
Prostate cancer
Prostate
Prostatic Neoplasms
Hospitals
Computer Science Applications
ROC Curve
Granulometry
Area Under Curve
symbols
Titan (rocket family)
Histopathological Images
030217 neurology & neurosurgery
Software
Geology
Algorithms
Subjects
Details
- ISSN :
- 18727565
- Volume :
- 178
- Database :
- OpenAIRE
- Journal :
- Computer methods and programs in biomedicine
- Accession number :
- edsair.doi.dedup.....4c2d9078ff0f9a1076b45eb9d0051e71