Morphological Classification of Odontogenic Keratocysts Using Bouligand-Minkowski Fractal Descriptors

Research output: Contribution to journalArticle

Authors

Colleges, School and Institutes

External organisations

  • Institute of Mathematics, Statistics and Scientific Computing - University of Campinas
  • São Carlos Institute of Physics

Abstract

The Odontogenic keratocyst (OKC) is a cystic lesion of the jaws, which has high growth and recurrence rates compared to other cysts of the jaws (for instance, radicular cyst, which is the most common jaw cyst type). For this reason OKCs are considered by some to be benign neoplasms. There exist two sub-types of OKCs (sporadic and syndromic) and the ability to discriminate between these sub-types, as well as other jaw cysts, is an important task in terms of disease diagnosis and prognosis. With the development of digital pathology, computational algorithms have become central
to addressing this type of problem. Considering that only basic feature-based methods have been investigated in this problem before, we propose to use a different approach (the Bouligand-Minkowski descriptors) to assess the success rates achieved on the classification of a database of histological images of the epithelial lining of these cysts. This does not require the level of abstraction necessary to extract histologically-relevant features and therefore has the potential of being more robust than previous approaches. The descriptors were obtained by mapping pixel intensities into a three
dimensional cloud of points in discrete space and applying morphological dilations with spheres of increasing radii.
The descriptors were computed from the volume of the dilated set and submitted to a machine learning algorithm to classify the samples into diagnostic groups. This approach was capable of discriminating between OKCs and radicular cysts in 98% of images (100% of cases) and between the two sub-types of OKCs in 68% of images (71% of cases).
These results improve over previously reported classification rates reported elsewhere and suggest that Bouligand-Minkowski descriptors are useful features to be used in histopathological images of these cysts.

Details

Original languageEnglish
Pages (from-to)1-10
JournalComputers in Biology and Medicine
Volume81
Early online date8 Dec 2016
Publication statusPublished - 1 Feb 2017

Keywords

  • Pattern recognition and classification, Odontogenic cyst, Computer-aided detection and diagnosis, Microscopy