<?xml version="1.0" encoding="UTF-8"?>
<XML><RECORDS>
<RECORD>
	<REFERENCE_TYPE>31</REFERENCE_TYPE>
	<AUTHORS>
		<AUTHOR>LuÃ­s Pedro Coelho</AUTHOR>
		<AUTHOR>Robert Murphy</AUTHOR>
	</AUTHORS>
	<YEAR>2008</YEAR>
	<TITLE>Identifying Subcellular Locations from Images of Unknown Resolution</TITLE>
	<SECONDARY_AUTHORS>
		<SECONDARY_AUTHOR>Elloumi, M.</SECONDARY_AUTHOR>
		<SECONDARY_AUTHOR>Küng, J.</SECONDARY_AUTHOR>
		<SECONDARY_AUTHOR>Linial, M.</SECONDARY_AUTHOR>
		<SECONDARY_AUTHOR>Murphy, R.</SECONDARY_AUTHOR>
		<SECONDARY_AUTHOR>Schneider, K.</SECONDARY_AUTHOR>
		<SECONDARY_AUTHOR>Toma, C.</SECONDARY_AUTHOR>
	</SECONDARY_AUTHORS>
	<SECONDARY_TITLE>Bioinformatics Research and Development</SECONDARY_TITLE>
	<PLACE_PUBLISHED>Vienna, Austria</PLACE_PUBLISHED>
	<PUBLISHER>Springer</PUBLISHER>
	<VOLUME>13</VOLUME>
	<TERTIARY_TITLE>Communications in Computer and Information Science</TERTIARY_TITLE>
	<DATE>07/07/2008</DATE>
	<ISBN>978-3-540-70598-7</ISBN>
	<KEYWORDS>
		<KEYWORD>image processing</KEYWORD>
		<KEYWORD>bioimaging</KEYWORD>
	</KEYWORDS>
	<ABSTRACT>Our group has previously used machine learning techniques to develop computational systems to automatically analyse &iuml;&not;uorescence microscope images and classify the location of the depicted protein. Based on this work, we developed a system, the Subcellular Location Image Finder (slif), which mines images from scienti&iuml;&not;c journals for analysis.

For some of the images in journals, the system is able to automatically compute the pixel resolution (the physical space represented by each pixel), by identifying a scale bar and processing the caption text. However, scale bars are not always included. For those images, the pixel resolution is unknown. Blindly feeding these images into the classi&iuml;&not;cation pipeline results in unacceptably low accuracy. We &iuml;&not;rst describe methods that minimise the impact of this problem by training resolution-insensitive classi&iuml;&not;ers.

We show that these techniques are of limited use as classi&iuml;&not;ers can only be made insensitive to resolutions which are similar to each other. We then approach the problem in a different way by trying to estimate the resolution automatically and processing the image based on this prediction. Testing on digitally down-sampled images shows that the combination of these two approaches gives classi&iuml;&not;cation results which are essentially as good as if the resolution had been known.
</ABSTRACT>
</RECORD>
</RECORDS></XML>