A copy of this work was available on the public web and has been preserved in the Wayback Machine. The capture dates from 2018; you can also visit <a rel="external noopener" href="http://www.ijet.pl:80/old_archives/2010/3/36.pdf">the original URL</a>. The file type is <code>application/pdf</code>.
Semantic Sparse Representation of Disease Patterns
<span title="2010-09-01">2010</span>
<i title="Walter de Gruyter GmbH">
<a target="_blank" rel="noopener" href="https://fatcat.wiki/container/rzjgcrrtlndvnori2fbhpzjwne" style="color: black;">International Journal of Electronics and Telecommunications</a>
</i>
Semantic Sparse Representation of Disease Patterns Sparse data representation is discussed in a context of useful fundamentals led to semantic content description and extraction of information. Disease patterns as semantic information extracted from medical images were underlined because of discussed application of computer-aided diagnosis. Compressive sensing rules were adjusted to the requirements of diagnostic pattern recognition. Proposed methodology of sparse disease patterns considers
<span class="external-identifiers">
<a target="_blank" rel="external noopener noreferrer" href="https://doi.org/10.2478/v10177-010-0036-x">doi:10.2478/v10177-010-0036-x</a>
<a target="_blank" rel="external noopener" href="https://fatcat.wiki/release/dapoiuzztvhpddpntjbxro327a">fatcat:dapoiuzztvhpddpntjbxro327a</a>
</span>
more »
... racy of sparse representation to estimate target content for detailed analysis. Semantics of sparse representation were modeled by morphological content analysis. Subtle or hidden components were extracted and displayed to increase information completeness. Usefulness of sparsity was verified for computer-aided diagnosis of stroke based on brain CT scans. Implemented method was based on selective and sparse representation of subtle hypodensity to improve diagnosis. Visual expression of disease signatures was fixed to radiologist requirements, domain knowledge and experimental analysis issues. Diagnosis assistance suitability was proven by experimental subjective rating and automatic recognition.
<a target="_blank" rel="noopener" href="https://web.archive.org/web/20181009065144/http://www.ijet.pl:80/old_archives/2010/3/36.pdf" title="fulltext PDF download" data-goatcounter-click="serp-fulltext" data-goatcounter-title="serp-fulltext">
<button class="ui simple right pointing dropdown compact black labeled icon button serp-button">
<i class="icon ia-icon"></i>
Web Archive
[PDF]
<div class="menu fulltext-thumbnail">
<img src="https://blobs.fatcat.wiki/thumbnail/pdf/63/19/6319176804e5e9e269628f99689236c69e6115e4.180px.jpg" alt="fulltext thumbnail" loading="lazy">
</div>
</button>
</a>
<a target="_blank" rel="external noopener noreferrer" href="https://doi.org/10.2478/v10177-010-0036-x">
<button class="ui left aligned compact blue labeled icon button serp-button">
<i class="external alternate icon"></i>
Publisher / doi.org
</button>
</a>