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<dcvalue element="contributor" qualifier="author">Shin,&#x20;Hyungseob</dcvalue>
<dcvalue element="contributor" qualifier="author">Kim,&#x20;Hyeongyu</dcvalue>
<dcvalue element="contributor" qualifier="author">Kim,&#x20;Sewon</dcvalue>
<dcvalue element="contributor" qualifier="author">Jun,&#x20;Yohan</dcvalue>
<dcvalue element="contributor" qualifier="author">Eo,&#x20;Taejoon</dcvalue>
<dcvalue element="contributor" qualifier="author">Hwang,&#x20;Dosik</dcvalue>
<dcvalue element="date" qualifier="accessioned">2024-01-12T02:45:59Z</dcvalue>
<dcvalue element="date" qualifier="available">2024-01-12T02:45:59Z</dcvalue>
<dcvalue element="date" qualifier="created">2023-11-17</dcvalue>
<dcvalue element="date" qualifier="issued">2023-06</dcvalue>
<dcvalue element="identifier" qualifier="issn">1063-6919</dcvalue>
<dcvalue element="identifier" qualifier="uri">https:&#x2F;&#x2F;pubs.kist.re.kr&#x2F;handle&#x2F;201004&#x2F;76427</dcvalue>
<dcvalue element="description" qualifier="abstract">Recent&#x20;advances&#x20;in&#x20;deep&#x20;learning-based&#x20;medical&#x20;image&#x20;segmentation&#x20;studies&#x20;achieve&#x20;nearly&#x20;human-level&#x20;performance&#x20;in&#x20;fully&#x20;supervised&#x20;manner.&#x20;However,&#x20;acquiring&#x20;pixel-level&#x20;expert&#x20;annotations&#x20;is&#x20;extremely&#x20;expensive&#x20;and&#x20;laborious&#x20;in&#x20;medical&#x20;imaging&#x20;fields.&#x20;Unsupervised&#x20;domain&#x20;adaptation&#x20;(UDA)&#x20;can&#x20;alleviate&#x20;this&#x20;problem,&#x20;which&#x20;makes&#x20;it&#x20;possible&#x20;to&#x20;use&#x20;annotated&#x20;data&#x20;in&#x20;one&#x20;imaging&#x20;modality&#x20;to&#x20;train&#x20;a&#x20;network&#x20;that&#x20;can&#x20;successfully&#x20;perform&#x20;segmentation&#x20;on&#x20;target&#x20;imaging&#x20;modality&#x20;with&#x20;no&#x20;labels.&#x20;In&#x20;this&#x20;work,&#x20;we&#x20;propose&#x20;SDC-UDA,&#x20;a&#x20;simple&#x20;yet&#x20;effective&#x20;volumetric&#x20;UDA&#x20;framework&#x20;for&#x20;Slice-Direction&#x20;Continuous&#x20;cross-modality&#x20;medical&#x20;image&#x20;segmentation&#x20;which&#x20;combines&#x20;intra-and&#x20;inter-slice&#x20;self-attentive&#x20;image&#x20;translation,&#x20;uncertainty-constrained&#x20;pseudo-label&#x20;refinement,&#x20;and&#x20;volumetric&#x20;self-training.&#x20;Our&#x20;method&#x20;is&#x20;distinguished&#x20;from&#x20;previous&#x20;methods&#x20;on&#x20;UDA&#x20;for&#x20;medical&#x20;image&#x20;segmentation&#x20;in&#x20;that&#x20;it&#x20;can&#x20;obtain&#x20;continuous&#x20;segmentation&#x20;in&#x20;the&#x20;slice&#x20;direction,&#x20;thereby&#x20;ensuring&#x20;higher&#x20;accuracy&#x20;and&#x20;potential&#x20;in&#x20;clinical&#x20;practice.&#x20;We&#x20;validate&#x20;SDC-UDA&#x20;with&#x20;multiple&#x20;publicly&#x20;available&#x20;cross-modality&#x20;medical&#x20;image&#x20;segmentation&#x20;datasets&#x20;and&#x20;achieve&#x20;state-of-the-art&#x20;segmentation&#x20;performance,&#x20;not&#x20;to&#x20;mention&#x20;the&#x20;superior&#x20;slice-direction&#x20;continuity&#x20;of&#x20;prediction&#x20;compared&#x20;to&#x20;previous&#x20;studies.</dcvalue>
<dcvalue element="language" qualifier="none">English</dcvalue>
<dcvalue element="publisher" qualifier="none">IEEE&#x20;COMPUTER&#x20;SOC</dcvalue>
<dcvalue element="title" qualifier="none">SDC-UDA:&#x20;Volumetric&#x20;Unsupervised&#x20;Domain&#x20;Adaptation&#x20;Framework&#x20;for&#x20;Slice-Direction&#x20;Continuous&#x20;Cross-Modality&#x20;Medical&#x20;Image&#x20;Segmentation</dcvalue>
<dcvalue element="type" qualifier="none">Conference</dcvalue>
<dcvalue element="identifier" qualifier="doi">10.1109&#x2F;CVPR52729.2023.00716</dcvalue>
<dcvalue element="description" qualifier="journalClass">1</dcvalue>
<dcvalue element="identifier" qualifier="bibliographicCitation">IEEE&#x2F;CVF&#x20;Conference&#x20;on&#x20;Computer&#x20;Vision&#x20;and&#x20;Pattern&#x20;Recognition&#x20;(CVPR),&#x20;pp.7412&#x20;-&#x20;7421</dcvalue>
<dcvalue element="citation" qualifier="title">IEEE&#x2F;CVF&#x20;Conference&#x20;on&#x20;Computer&#x20;Vision&#x20;and&#x20;Pattern&#x20;Recognition&#x20;(CVPR)</dcvalue>
<dcvalue element="citation" qualifier="startPage">7412</dcvalue>
<dcvalue element="citation" qualifier="endPage">7421</dcvalue>
<dcvalue element="citation" qualifier="conferencePlace">US</dcvalue>
<dcvalue element="citation" qualifier="conferencePlace">Vancouver,&#x20;CANADA</dcvalue>
<dcvalue element="citation" qualifier="conferenceDate">2023-06-17</dcvalue>
<dcvalue element="relation" qualifier="isPartOf">2023&#x20;IEEE&#x2F;CVF&#x20;CONFERENCE&#x20;ON&#x20;COMPUTER&#x20;VISION&#x20;AND&#x20;PATTERN&#x20;RECOGNITION,&#x20;CVPR</dcvalue>
<dcvalue element="identifier" qualifier="wosid">001058542607074</dcvalue>
</dublin_core>
