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        <datestamp>2025-01-19T07:35:21Z</datestamp>
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          <dc:title>Optimizing Automatic Summarization of Long Clinical Records Using Dynamic Context Extension Testing and Evaluation of the NBCE Method</dc:title>
          <dc:title xml:lang="en">Optimizing Automatic Summarization of Long Clinical Records Using Dynamic Context Extension Testing and Evaluation of the NBCE Method</dc:title>
          <jpcoar:creator>
            <jpcoar:creatorName>Guoqing, Zhang</jpcoar:creatorName>
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          <jpcoar:creator>
            <jpcoar:creatorName>Keita, Fukuyama</jpcoar:creatorName>
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          <jpcoar:creator>
            <jpcoar:creatorName>Kazumasa, Kishimoto</jpcoar:creatorName>
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          <jpcoar:creator>
            <jpcoar:creatorName>Tomohiro, Kuroda</jpcoar:creatorName>
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          <jpcoar:creator>
            <jpcoar:creatorName xml:lang="en">Guoqing, Zhang</jpcoar:creatorName>
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          <jpcoar:creator>
            <jpcoar:creatorName xml:lang="en">Keita, Fukuyama</jpcoar:creatorName>
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          <jpcoar:creator>
            <jpcoar:creatorName xml:lang="en">Kazumasa, Kishimoto</jpcoar:creatorName>
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          <jpcoar:creator>
            <jpcoar:creatorName xml:lang="en">Tomohiro, Kuroda</jpcoar:creatorName>
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          <jpcoar:subject subjectScheme="Other">要約</jpcoar:subject>
          <datacite:description descriptionType="Other">Summarizing patient clinical notes is vital for reducing documentation burdens. Current manual summarization makes medical staff struggle. We propose an automatic method using LLMs, but long inputs cause LLMs to lose context, reducing output quality especially in small size model. We used a 7B model, open-calm-7b, enhanced with Native Bayes Context Extend and a redesigned decoding mechanism to reference one sentence at a time, keeping inputs within context windows, 2048 tokens. Our improved model achieved nearparity with Google's over 175B Gemini on ROUGE-L metrics with 200 samples, indicating strong performance using less resources, enhancing automated EMR summarization feasibility.</datacite:description>
          <datacite:description descriptionType="Other">Summarizing patient clinical notes is vital for reducing documentation burdens. Current manual summarization makes medical staff struggle. We propose an automatic method using LLMs, but long inputs cause LLMs to lose context, reducing output quality especially in small size model. We used a 7B model, open-calm-7b, enhanced with Native Bayes Context Extend and a redesigned decoding mechanism to reference one sentence at a time, keeping inputs within context windows, 2048 tokens. Our improved model achieved nearparity with Google's over 175B Gemini on ROUGE-L metrics with 200 samples, indicating strong performance using less resources, enhancing automated EMR summarization feasibility.</datacite:description>
          <dc:publisher xml:lang="ja">情報処理学会</dc:publisher>
          <datacite:date dateType="Issued">2024-12-05</datacite:date>
          <dc:language>eng</dc:language>
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          <jpcoar:sourceIdentifier identifierType="ISSN">2188-8663</jpcoar:sourceIdentifier>
          <jpcoar:sourceIdentifier identifierType="NCID">AN10442647</jpcoar:sourceIdentifier>
          <jpcoar:sourceTitle>研究報告音声言語情報処理（SLP）</jpcoar:sourceTitle>
          <jpcoar:volume>2024-SLP-154</jpcoar:volume>
          <jpcoar:issue>37</jpcoar:issue>
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