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        <parTitl xml:lang="en">LUND-PROBE - LUND Prostate Radiotherapy Open Benchmarking and Evaluation dataset</parTitl>
        <IDNo agency="SND">doi-10-23698-aida-lund-probe-0</IDNo>
        <IDNo agency="DOI">https://doi.org/10.23698/AIDA/LUND-PROBE</IDNo>
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        <producer xml:lang="en" abbr="SND">Swedish National Data Service</producer>
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      <holdings URI="https://doi.org/10.23698/AIDA/LUND-PROBE">Landing page</holdings>
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    <citation>
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        <titl xml:lang="sv"></titl>
        <parTitl xml:lang="en">LUND-PROBE - LUND Prostate Radiotherapy Open Benchmarking and Evaluation dataset</parTitl>
        <IDNo agency="SND">doi-10-23698-aida-lund-probe-0</IDNo>
        <IDNo agency="DOI">https://doi.org/10.23698/AIDA/LUND-PROBE</IDNo>
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        <distrbtr xml:lang="en" abbr="SND" URI="https://snd.se">Swedish National Data Service</distrbtr>
        <distrbtr xml:lang="sv" abbr="SND" URI="https://snd.se">Svensk nationell datatjänst</distrbtr>
        <distDate xml:lang="en" date="2025-01-15" />
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      <abstract xml:lang="en" contentType="abstract">Radiotherapy treatment for prostate cancer relies on computed tomography (CT) and/or magnetic resonance imaging (MRI) for delineation of radiation targets and organs at risk (OARs). Manual delineation of these volumes is regarded as the gold standard for ground truth in machine learning applications but to acquire such data is tedious and time-consuming. A publicly available clinical dataset is introduced comprising MRI images, synthetic CT (sCT) images, target and OARs delineations, and radiotherapy dose distributions for 432 prostate cancer patients treated with an MRI-only radiotherapy workflow. An extended dataset with 35 patients is also included, containing the data mentioned above together with deep learning (DL)-generated delineations, DL uncertainty maps, and DL structures manually edited by four radiation oncologists. The publication of these resources aims to aid research within the fields of automated radiotherapy planning and structure delineation, inter-observer analyses, and DL uncertainty investigation.</abstract>
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        <restrctn xml:lang="sv">Åtkomst till data via extern aktör. Tillgång till data är begränsad.</restrctn>
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