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Tom.Reding (talk | contribs) m Fix Category:CS1 maint: Uses authors parameter: vauthors/veditors or enumerate multiple authors/editors; WP:GenFixes on using AWB |
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{{cite journal
|title=Improved prediction of prostate cancer recurrence based on an automated tissue image analysis system
|author=Teverovskiy, M.
|author2= Kumar, V.
|author3= Junshui Ma
|author4= Kotsianti, A.
|author5= Verbel, D.
|author6= Tabesh, A.
|author7= Ho-Yuen Pang
|author8= Vengrenyuk, Y.
|author9= Fogarasi, S.
|author10= Saidi, O.
|author11= ((Aureon Biosciences Corp., Yonkers, NY, USA))
|journal=Biomedical Imaging: Nano to Macro, 2004. IEEE International Symposium
|date=2004-04-18
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===Analysis===
Image analysis involves complex computer algorithms which identify and characterize cellular color, shape, and quantity of the tissue sample using image pattern recognition technology based on [[vector quantization]]. Vector representations of objects in the image, as opposed to bitmap representations, have superior zoom-in ability. Once the sample image has been acquired and resident in the computer's random access memory as a large array of 0's and 1's, a programmer knowledgeable in cellular architecture can develop deterministic [[algorithms]] applied to the entire memory space to detect cell patterns from previously defined cellular structures and formations known to be significant.<ref name="han12cell">{{cite journal|
The aggregate algorithm outcome is a set of measurements that is far superior to any human sensitivity to intensity or [[luminance]] and color hue, while at the same time improving test consistency from eyeball to eyeball.{{Citation needed|date=August 2010}}
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