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Automatic
discrimination of melanocytic skin tumors M. Wiltgen1, A.
Gerger2 and J. Smolle2
1 Institute of Medical Informatics, Statistics and Documentation,
2 Department of Dermatology, Division of Analytical-Morphological Dermatology,
Medical University of Graz, Austria
There is an increasing number of melanocytic tumors. The
frequency of melanoma doubles every 20 years. At present there is a risk of 1:100 to fall
sick with a melanoma. Reasons for the increasing number of melanocytic tumors are for
example extreme sun exposure during sun-bathing. In the fight against skin cancer,
researchers have high hopes in improved provisional screening methods, such as optimised
computer aided diagnostic methods. Not every change of dermal tissue is dangerous. There
are harmless cases too. Automatic analysis means, that the harmless (nevi) and malignant
cases are discriminated by computer. This will optimise preventive medical checkups and
early recognition of skin tumors. The detection of malignant changes of skin tissue in the
early beginning will arise the success of the therapy. Most examinations are based on
microscopic views of the tissue. To this purpose a biopsy of the tissue is prepared and
stained using a fully automated device.
Automated image analysis of histological tissue is limited by the difficulty of
recognizing special structures by computer. In contrast to isolated structures like blood
cells, which can generally be well defined, the cells in histological tissues are arranged
in various patterns showing variability in shape and appearance. The segmentation of
different structures in histological tissues is therefore case dependent and cannot be
done in a general approach. To avoid these problems, in tissue counter analysis (TCA) the
images were dissected in square elements and the features were calculated for each
element. In this way a priori definition and segmentation of the structures, which is the
crucial point in automatic classification, was avoided.

Figure. 1. The tissue counter analysis consists of 3 parts: the feature analysis
and extraction, the classification and the relocation. In feature analysis and extraction
the images are dissected in square elements and the features, based on grey level
histogram and co-occurrence matrix, are calculated inside each element. The classification
is done by CART analysis, where the set of square elements are split into disjunctive
nodes, representing different kinds of tissue. The relocation, that means the indication
of the classified square elements superimposed to the image offers the possibility to
evaluate the performance of the procedure.
The TCA consists of 3 steps, which are performed by different parts of the image
analysis system (Fig. 1): The feature extraction, the classification and the relocation.
In feature extraction the images are dissected in square elements and the features,
describing the tissue, are calculated inside each element. The classification is done by
CART (Classification and Regression Trees) analysis, where the set of square elements are
split into disjunctive nodes, representing different kinds of tissue. The relocation, that
means the indication of the classified square elements superimposed to the image offers
the possibility to evaluate the performance of the procedure. The software for image
analysis was developed with IDL.
The aim of this study was to evaluate the possibilities of describing and
discriminating common nevi and malignant melanoma tissue by the use of features extracted
from histogram and co-occurrence matrix. 80 cases from microscopic views of benign common
nevi and malignant melanoma were sampled. From this set 40 cases were randomly selected as
learning set and the remaining 40 cases were used as test set. Each image was dissected in
256 square elements and 51 different features, describing histogram and co-occurrence
matrix, were used. The tissue of benign common nevi appears faded rose red and
homogeneous, the nuclei are small and spread out widely. The tissue of malignant melanoma
appears dark with high contrast. The properties, enabling the discrimination between the
different tissues, are described by the relevant features. The histogram skewness of the
images of benign common nevi shows negative values, the variance is low and the mean value
lies in the range of high grey levels (Fig. 2). The distribution of the elements in the
co-occurrence matrix is concentrated in the range of high values and the variance of the
element distribution is low. The histogram skewness of the images of malignant melanoma
shows positive values, the variance is higher than in the case of benign common nevi and
the mean value lies in the range of low grey levels (Fig. 3). The distribution of the
elements in the co-occurrence matrix is concentrated in the range of lower grey values,
the variance of the element distribution is high and the correlation low.
The results from classification show a clear-cut difference between common nevi and
malignant melanoma. The classification correctly classified 94,7 % of nevi elements and
92,6% of melanoma elements in the learning set. Discriminant analysis based on the
percentage of "malignant elements" facilitated a correct classification of all
cases in the test set (sensitivity = 100 %, specificity = 100 %). When the percentage of
elements suggestive for malignancy in each case was evaluated, it turned out that a
threshold level of 42% provides a correct classification of nevi and melanoma cases. The
classification results were indicated in the original image in order to evaluate the
performance of the procedure.
In conclusion, tissue counter analysis is a potential diagnostic tool in automatic or
semi automatic analysis of melanocytic skin tumors. |