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<b:Sources SelectedStyle="" xmlns:b="http://schemas.openxmlformats.org/officeDocument/2006/bibliography"  xmlns="http://schemas.openxmlformats.org/officeDocument/2006/bibliography" >
<b:Source>
<b:Tag>Frederic Sampedro2015</b:Tag>
<b:SourceType>ArticleInAPeriodical</b:SourceType>
<b:Year>2015</b:Year>
<b:PeriodicalName>Journal of Medical Imaging and Health Informatics</b:PeriodicalName>
<b:Volume>5</b:Volume>
<b:Issue>2</b:Issue>
<b:Pages>192-201</b:Pages>
<b:Author>
<b:Author><b:NameList>
<b:Person><b:Last>Frederic Sampedro</b:Last></b:Person>
<b:Person><b:Last>Sergio Escalera</b:Last></b:Person>
<b:Person><b:Last>Anna Domenech</b:Last></b:Person>
<b:Person><b:Last>Ignasi Carrio</b:Last></b:Person>
</b:NameList></b:Author>
</b:Author>
<b:Title>Automatic Tumor Volume Segmentation in Whole-Body PET/CT Scans: A Supervised Learning Approach Source</b:Title>
 <b:ShortTitle>JMIHI</b:ShortTitle>
<b:Comments>Whole-body 3D PET/CT tumoral volume segmentation provides relevant diagnostic and prognostic information in clinical oncology and nuclear medicine. Carrying out this procedure manually by a medical expert is time consuming and suffers from inter- and intra-observer variabilities. In this paper, a completely automatic approach to this task is presented. First, the problem is stated and described both in clinical and technological terms. Then, a novel supervised learning segmentation framework is introduced. The segmentation by learning approach is defined within a Cascade of Adaboost classifiers and a 3D contextual proposal of Multiscale Stacked Sequential Learning. Segmentation accuracy results on 200 Breast Cancer whole body PET/CT volumes show mean 49% sensitivity, 99.993% specificity and 39% Jaccard overlap Index, which represent good performance results both at the clinical and technological level.</b:Comments>
</b:Source>
</b:Sources>