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	<title>gnTEAM &#187; Search Results  &#187;  &#8220;Text mining&#8221;</title>
	<atom:link href="http://gnteam.cs.manchester.ac.uk/search/%22Text+mining%22/feed/rss2" rel="self" type="application/rss+xml" />
	<link>http://gnteam.cs.manchester.ac.uk</link>
	<description>Text extraction, analytics, mining</description>
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		<title>Papers on mining free-text police reports on domestic violence</title>
		<link>http://gnteam.cs.manchester.ac.uk/paper-mining-free-text-police-reports-domestic-violence/</link>
		<comments>http://gnteam.cs.manchester.ac.uk/paper-mining-free-text-police-reports-domestic-violence/#comments</comments>
		<pubDate>Thu, 13 Sep 2018 19:48:01 +0000</pubDate>
		<dc:creator><![CDATA[gnenadic]]></dc:creator>
				<category><![CDATA[News]]></category>

		<guid isPermaLink="false">http://gnteam.cs.manchester.ac.uk/?p=1759</guid>
		<description><![CDATA[<p>New papers  Automatic Extraction of Mental Health Disorders From Domestic Violence Police Narratives: Text Mining Study  Automated Analysis of Domestic Violence Police Reports to Explore Abuse Types and Victim Injuries: Text Mining Study</p>
<p>The post <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk/paper-mining-free-text-police-reports-domestic-violence/">Papers on mining free-text police reports on domestic violence</a> appeared first on <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk">gnTEAM</a>.</p>
]]></description>
				<content:encoded><![CDATA[<p>New papers</p>
<ul>
<li> <a href="http://www.jmir.org/2018/9/e11548/" target="_blank">Automatic Extraction of Mental Health Disorders From Domestic Violence Police Narratives: Text Mining Study</a> 
<li><a href="https://www.jmir.org/2019/3/e13067/">Automated Analysis of Domestic Violence Police Reports to Explore Abuse Types and Victim Injuries: Text Mining Study</a>
</ul>
<p style="text-align: center;"><a href="http://gnteam.cs.manchester.ac.uk/wp-content/uploads/2018/09/Screen-Shot-2018-09-13-at-20.49.16.png"><img class="alignnone size-full wp-image-1761" src="http://gnteam.cs.manchester.ac.uk/wp-content/uploads/2018/09/Screen-Shot-2018-09-13-at-20.49.16.png" alt="Screen Shot 2018-09-13 at 20.49.16" width="734" height="276" /></a></p>
<p>The post <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk/paper-mining-free-text-police-reports-domestic-violence/">Papers on mining free-text police reports on domestic violence</a> appeared first on <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk">gnTEAM</a>.</p>
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		</item>
		<item>
		<title>Veterinary text mining</title>
		<link>http://gnteam.cs.manchester.ac.uk/project/veterinary-text-mining/</link>
		<comments>http://gnteam.cs.manchester.ac.uk/project/veterinary-text-mining/#comments</comments>
		<pubDate>Mon, 03 Sep 2018 12:57:08 +0000</pubDate>
		<dc:creator><![CDATA[gnenadic]]></dc:creator>
		
		<guid isPermaLink="false">http://gnteam.cs.manchester.ac.uk/?post_type=project&#038;p=1752</guid>
		<description><![CDATA[<p>The Small Animal Veterinary Surveillance Network (SAVSNET) is an initiative from the British Small Animal Veterinary Association and the University of Liverpool to collect and analyse companion animal data. SAVSNET collects pets health data in real time from diagnostic laboratories and veterinary consultations across the UK (from ~500 veterinary premises). Given that consultation&#8230; </p>
<p>The post <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk/project/veterinary-text-mining/">Veterinary text mining</a> appeared first on <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk">gnTEAM</a>.</p>
]]></description>
				<content:encoded><![CDATA[<p>The Small Animal Veterinary Surveillance Network (<a href="https://www.liverpool.ac.uk/savsnet/" target="_blank">SAVSNET</a>) is an initiative from the British Small Animal Veterinary Association and the University of Liverpool to collect and analyse companion animal data. SAVSNET collects pets health data in real time from diagnostic laboratories and veterinary consultations across the UK (from ~500 veterinary premises). Given that consultation notes are presented as free-text, we have been working with SAVSNET to develop text mining methods focusing on two goals:</p>
<ul>
<li>Extraction of key symptoms and complaints along with additional context (e.g. diagnosis and medications/treatments); and</li>
<li>Automatic coding of consultation notes with standard veterinary terminologies like VetSCT (the veterinary extension for SNOMED CT) and VeNom.</li>
</ul>
<p>&nbsp;</p>
<p>The <a href="https://gtr.ukri.org/projects?ref=BB%2FN019547%2F1" target="_blank">project</a> is funded by BBSRC BRC fund.</p>
<p>The post <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk/project/veterinary-text-mining/">Veterinary text mining</a> appeared first on <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk">gnTEAM</a>.</p>
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		<item>
		<title>DEPEND</title>
		<link>http://gnteam.cs.manchester.ac.uk/depend/</link>
		<comments>http://gnteam.cs.manchester.ac.uk/depend/#comments</comments>
		<pubDate>Mon, 09 Apr 2018 15:50:58 +0000</pubDate>
		<dc:creator><![CDATA[gnenadic]]></dc:creator>
		
		<guid isPermaLink="false">http://gnteam.cs.manchester.ac.uk/?page_id=1694</guid>
		<description><![CDATA[<p>Mining free-text patient feedback comments As part of the NIHR-funded project Developing and Enhancing the Usefulness of Patient Experience and Narrative Data (DEPEaND), we have developed a text mining software to analyse themes and sentiment expressed in free-text patient service feedback comments (e.g. Family and Friends Test). The topic-specific opinion&#8230; </p>
<p>The post <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk/depend/">DEPEND</a> appeared first on <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk">gnTEAM</a>.</p>
]]></description>
				<content:encoded><![CDATA[<h2>Mining free-text patient feedback comments</h2>
<p>As part of the NIHR-funded project <a href="https://www.journalslibrary.nihr.ac.uk/programmes/hsdr/1415616/#/">Developing and Enhancing the Usefulness of Patient Experience and Narrative Data (DEPEaND)</a>, we have developed a text mining software to analyse themes and sentiment expressed in free-text patient service feedback comments (e.g. Family and Friends Test).</p>
<p>The topic-specific opinion mining techniques have been applied to extract commonly mentioned themes from patient comments and to detect the polarity related to each theme. Following an initial manual inspection of a small sample, we focused on four main themes (staff attitude, quality of care, waiting time and environment) and associated sentiment (positive and negative/neutral). Two machine-learning methods have been developed (using Python and R), focusing on the segmentation of patient comments, and then prediction of the themes (and sentiment) using various machine learning algorithms <a href="http://findwritingservice.com/blog/just-say-write-me-essay-and-get-the-help" style="text-decoration: none; color: inherit;">look answer to the question</a>. The system can also combine outputs of the two systems using a probability-threshold technique, and show top comments for each of the themes, for which the system is most confident (i.e. have the most confident prediction). The approach has been tested in two clinical settings &#8211; a general hospital and a mental health trust. </p>
<p>The methodology is explained in the paper &#8220;Segmentation-based mining of free-text patient feedback comments&#8221; (in preparation). </p>
<p>The code to train the software is available at <a href="https://www.dropbox.com/s/w3rmiv1fvyhxfbm/DEPEND.zip?dl=0">here</a>. The user manual is available <a href="http://gnteam.cs.manchester.ac.uk/wp-content/uploads/2018/04/user_manual.pdf">here</a>. Note that an annotated corpus is needed to generate the models. </p>
<p>The output of the software can be further analysed (using Stata) and visualised (using LaTeX) to automatically generate reports containing main themes, sentiment and most representative comments over a period of time. The software for this is available <a href="https://www.dropbox.com/s/a8hpwk4fi2dwmld/Stata.zip?dl=0">here</a> (Stata code) and <a href="https://www.dropbox.com/s/ru85ptv99bkwzlt/6-latex_document.tex?dl=0">here</a> (LaTeX). We note that Stata does require a licence.</p>
<p><DIV style="text-align: left"><br />
<a href="http://www.srft.nhs.uk/"><img src="http://gnteam.cs.manchester.ac.uk/wp-content/uploads/2018/04/nhs-salford.jpeg" alt="nhs-salford" width="180" height="90" class="alignnone size-full wp-image-1713" /></a>    <a href="http://www.manchester.ac.uk/"><img src="http://gnteam.cs.manchester.ac.uk/wp-content/uploads/2018/04/The_University_of_Manchester-logo-FB7EED7C0D-seeklogo.com_.png" alt="The_University_of_Manchester-logo-FB7EED7C0D-seeklogo.com" width="150" height="64" class="alignnone size-full wp-image-1708" /></a>  <a href="https://www.gmmh.nhs.uk/"><img class="alignnone size-medium wp-image-1699" src="http://gnteam.cs.manchester.ac.uk/wp-content/uploads/2018/04/MMH.png" alt="MMH" width="100" height="48" /></a>
</div>
<p><DIV style="text-align: right"><br />
Funded by: &nbsp; <a href="https://www.nihr.ac.uk/"><img class="alignnone size-full wp-image-1698" src="http://gnteam.cs.manchester.ac.uk/wp-content/uploads/2018/04/NIHR.png" alt="NIHR" width="120" height="41" /></a> </p>
</div>
<div style="text-align: left">
Please contact <a href="mailto:g.nenadic@manchester.ac.uk">Goran Nenadic</a>.</p>
</div>
<p>The post <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk/depend/">DEPEND</a> appeared first on <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk">gnTEAM</a>.</p>
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		<item>
		<title>Dr Mercedes Arguello Casteleiro</title>
		<link>http://gnteam.cs.manchester.ac.uk/staff/dr-mercedes-arguello-casteleiro/</link>
		<comments>http://gnteam.cs.manchester.ac.uk/staff/dr-mercedes-arguello-casteleiro/#comments</comments>
		<pubDate>Thu, 19 Oct 2017 15:22:33 +0000</pubDate>
		<dc:creator><![CDATA[gnenadic]]></dc:creator>
		
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		<description><![CDATA[<p>The post <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk/staff/dr-mercedes-arguello-casteleiro/">Dr Mercedes Arguello Casteleiro</a> appeared first on <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk">gnTEAM</a>.</p>
]]></description>
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		<item>
		<title>Constructing a molecular interaction network for thyroid cancer via large-scale text mining of gene and pathway events.</title>
		<link>http://gnteam.cs.manchester.ac.uk/publication/298004-constructing/</link>
		<comments>http://gnteam.cs.manchester.ac.uk/publication/298004-constructing/#comments</comments>
		<pubDate>Mon, 07 Mar 2016 11:11:33 +0000</pubDate>
		<dc:creator><![CDATA[mbelousov]]></dc:creator>
		
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		<description><![CDATA[<p>The post <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk/publication/298004-constructing/">Constructing a molecular interaction network for thyroid cancer via large-scale text mining of gene and pathway events.</a> appeared first on <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk">gnTEAM</a>.</p>
]]></description>
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		<item>
		<title>Temporal expression extraction with extensive feature type selection and a posteriori label adjustment</title>
		<link>http://gnteam.cs.manchester.ac.uk/publication/297998-temporal/</link>
		<comments>http://gnteam.cs.manchester.ac.uk/publication/297998-temporal/#comments</comments>
		<pubDate>Mon, 07 Mar 2016 11:11:15 +0000</pubDate>
		<dc:creator><![CDATA[mbelousov]]></dc:creator>
		
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]]></description>
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		<title>CliNER</title>
		<link>http://gnteam.cs.manchester.ac.uk/resources/cliner/</link>
		<comments>http://gnteam.cs.manchester.ac.uk/resources/cliner/#comments</comments>
		<pubDate>Wed, 10 Feb 2016 13:07:39 +0000</pubDate>
		<dc:creator><![CDATA[admin]]></dc:creator>
		
		<guid isPermaLink="false">http://gnteam.cs.manchester.ac.uk/resources/cliner/</guid>
		<description><![CDATA[<p>About CliNER CliNER is a command line tool for identification of mentions of four categories of clinically relevant events: Problems, Tests, Treatments and Clinical Departments. It also recognises and normalises clinical temporal expressions. It was developed as part of the i2b2 2012 text mining challenge and therefore has been trained&#8230; </p>
<p>The post <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk/resources/cliner/">CliNER</a> appeared first on <a rel="nofollow" href="http://gnteam.cs.manchester.ac.uk">gnTEAM</a>.</p>
]]></description>
				<content:encoded><![CDATA[<h2>About CliNER</h2>
<p>CliNER is a command line tool for identification of mentions of four categories of clinically relevant events: Problems, Tests, Treatments and Clinical Departments. It also recognises and normalises clinical temporal expressions. It was developed as part of the <a href="https://www.i2b2.org/NLP/TemporalRelations/">i2b2 2012 text mining challenge</a> and therefore has been trained and optimised on the i2b2 data.</p>
<p>For example, for input:</p>
<p align="center">He had surgery about 3 weeks ago and had the lining cleaned and a biopsy was performed.</p>
<p>CliNER will produce the following output (stand-off):</p>
<div class="xml">
<pre>&lt;?xml version="1.0" encoding="UTF-8" ?&gt;
&lt;ClinicalNarrativeTemporalAnnotation&gt;
&lt;TEXT&gt;&lt;![CDATA[
He had surgery about 3 weeks ago and had the lining cleaned and a biopsy was performed.
]]&gt;&lt;/TEXT&gt;
&lt;TAGS&gt;
&lt;EVENT id="E1" start="65" end="73" text="a biopsy" modality="FACTUAL" polarity="POS" type="TEST" /&gt;
&lt;EVENT id="E1" start="8" end="15" text="surgery" modality="FACTUAL" polarity="POS" type="TREATMENT" /&gt;
&lt;TIMEX3 id="T1" start="22" end="33" text="3 weeks ago" type="DATE" val="2014-07-29" mod="NA" /&gt;
&lt;/TAGS&gt;
</pre>
</div>
<p>System Architecture</p>
<ul>
<li>Implemented in Java, using <a href="http://ctakes.apache.org/">cTAKES</a>, <a href="http://crfpp.googlecode.com/">CRF++</a> and <a href="https://github.com/filannim/clinical-norma">Clinical NorMA</a></li>
<li>Support for multiple formats, currently supporting:
<ul>
<li>standoff XML</li>
<li>character offset-based format</li>
</ul>
</li>
</ul>
<p>Algorithm details<br />
Conditional random fields with IO scheme and five groups of features:</p>
<ul>
<li>Lexical features included the token itself, its lemma, and POS tag, as well as lemmas and POS tags of the surrounding tokens. Each token was also assigned features from its associated chunk (phrase): the type of phrase (nominal, verbal, etc), tense and aspect (if the phrase was verbal), the location of the token within the chunk (beginning or inside), and the presence of negation.</li>
<li>Domain features capture mentions of specific clinical/healthcare concepts. Mentions of Problem, Test, and Treatment (as generated by cTAKES) were assigned to the token.</li>
<li>Semantic role features model dependencies between the token and associated verb. Each token is assigned the role, the verb, and their combination (eg, ‘object+perform’) in order to capture particular verb–role preferences.</li>
<li>Section type feature represents the section type in which the token appeared.</li>
<li>Temporal expression (TE) features represent five features that indicated the presence of the five common types of constituents of TEs in a given token.</li>
</ul>
<p>More details on the architecture and the performance of the tool can be found in the paper below. Please cite this publication if you use CliNER:</p>
<p>Kovačević, A., Dehghan, A., Filannino, M., Keane, J. A., &amp; Nenadic, G. (2013). Combining rules and machine learning for extraction of temporal expressions and events from clinical narratives. <em>Journal of the American Medical Informatics Association</em>, 20(5), 859-866.</p>
<div>Contact <a href="http://gnteam.cs.manchester.ac.uk/staff/akovacevic/">Aleksandar Kovacevic</a> (<a href="http://informatika.ftn.uns.ac.rs/AleksandarKovacevic/">http://informatika.ftn.uns.ac.rs/AleksandarKovacevic/</a>, <a href="mailto:kocha78@gmail.com">kocha78@gmail</a>) with any questions, bugs and/or suggestions.</div>
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		<title>Modelling and Extraction of Variability in Free-text Medication Prescriptions from an Anonymised Primary Care Electronic Medical Record Research Database</title>
		<link>http://gnteam.cs.manchester.ac.uk/publication/295950-modelling/</link>
		<comments>http://gnteam.cs.manchester.ac.uk/publication/295950-modelling/#comments</comments>
		<pubDate>Mon, 07 Mar 2016 11:09:32 +0000</pubDate>
		<dc:creator><![CDATA[mbelousov]]></dc:creator>
		
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		<title>Combining knowledge- and data-driven methods for de-identification of clinical narratives</title>
		<link>http://gnteam.cs.manchester.ac.uk/publication/271073-combining/</link>
		<comments>http://gnteam.cs.manchester.ac.uk/publication/271073-combining/#comments</comments>
		<pubDate>Mon, 11 Jan 2016 11:46:19 +0000</pubDate>
		<dc:creator><![CDATA[mbelousov]]></dc:creator>
		
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		<item>
		<title>Using local lexicalized rules to identify heart disease risk factors in clinical notes</title>
		<link>http://gnteam.cs.manchester.ac.uk/publication/271066-using/</link>
		<comments>http://gnteam.cs.manchester.ac.uk/publication/271066-using/#comments</comments>
		<pubDate>Mon, 11 Jan 2016 11:46:19 +0000</pubDate>
		<dc:creator><![CDATA[mbelousov]]></dc:creator>
		
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]]></description>
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