Logarithmic simulated annealing for X-ray diagnosis

Article


Albrecht, A., Steinhofel, K., Taupitz, M. and Wong, C. 2001. Logarithmic simulated annealing for X-ray diagnosis. Artificial Intelligence in Medicine. 22 (3), pp. 249-260. https://doi.org/10.1016/S0933-3657(00)00112-3
TypeArticle
TitleLogarithmic simulated annealing for X-ray diagnosis
AuthorsAlbrecht, A., Steinhofel, K., Taupitz, M. and Wong, C.
Abstract

We present a new stochastic learning algorithm and first results of computational experiments on fragments of liver CT images. The algorithm is designed to compute a depth-three threshold circuit, where the first layer is calculated by an extension of the Perceptron algorithm by a special type of simulated annealing. The fragments of CT images are of size 119×119 with eight bit grey levels. From 348 positive (focal liver tumours) and 348 negative examples a number of hypotheses of the type w1x1+⋯+wnxn≥ϑ were calculated for n=14161. The threshold functions at levels two and three were determined by computational experiments. The circuit was tested on various sets of 50+50 additional positive and negative examples. For depth-three circuits, we obtained a correct classification of about 97%. The input to the algorithm is derived from the DICOM standard representation of CT images. The simulated annealing procedure employs a logarithmic cooling schedule View the MathML source, where Γ is a parameter that depends on the underlying configuration space. In our experiments, the parameter Γ is chosen according to estimations of the maximum escape depth from local minima of the associated energy landscape.

KeywordsCT images; Perceptron algorithm; simulated annealing; logarithmic cooling schedule; threshold functions; focal liver tumour
PublisherElsevier
JournalArtificial Intelligence in Medicine
ISSN0933-3657
Publication dates
PrintJun 2001
Publication process dates
Deposited12 Nov 2013
Output statusPublished
Digital Object Identifier (DOI)https://doi.org/10.1016/S0933-3657(00)00112-3
LanguageEnglish
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