Evolution strategy classification utilizing meta features and domain-specific statistical a priori models for fully-automated and entire segmentation of medical datasets in 3D radiology
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- @InProceedings{Zwettler:2015:ICCCT,
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author = "Gerald Zwettler and Werner Backfrieder",
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booktitle = "2015 International Conference on Computing and
Communications Technologies (ICCCT)",
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title = "Evolution strategy classification utilizing meta
features and domain-specific statistical a priori
models for fully-automated and entire segmentation of
medical datasets in {3D} radiology",
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year = "2015",
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pages = "12--18",
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abstract = "The employment of modern machine learning algorithms
marks a huge advance towards automated and generalised
segmentation in medical image analysis. Entire
radiological datasets are classified, leading to a
meaningful morphological interpretation, clearly
distinguishing pathologies. After standard
pre-processing, e.g. smoothing the input image data,
the entire volume is partitioned into a large number of
sub-regions using watershed transform. These fragments
are atomic and fused together building contiguous
structures representing organs and typical morphology.
This fusion is driven by similarity of regions. The
relevant similarity measures respond to statistical
a-priori models, derived from training datasets. In
this work, the applicability of evolution strategy as
classifier for a generic image segmentation approach is
evaluated. Furthermore, it is analysed if accuracy and
robustness of the segmentation are improved by
incorporation of meta features evaluated on the entire
classification solution besides local features
evaluated for the pre-fragmented regions to classify.
The proposed generic strategy has a high potential in
new segmentation domains, relying only on a small set
of reference segmentations, as evaluated for different
imaging modalities and diagnostic domains, such as
brain MRI or abdominal CT. Comparison with results from
other machine learning approaches, e.g. neural networks
or genetic programming, proves that the newly developed
evolution strategy is highly applicable for this
classification domain and can best incorporate meta
features for evaluation of solution fitness.",
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/ICCCT2.2015.7292712",
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month = feb,
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notes = "Bio- & Med. Inf. Dept., Univ. of Appl. Sci. Upper
Austria, Hagenberg, Austria ; Also known as
\cite{7292712}",
- }
Genetic Programming entries for
Gerald Zwettler
Werner Backfrieder
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