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<article xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xmlns:ali="http://www.niso.org/schemas/ali/1.0/" article-type="review-article" dtd-version="1.2" xml:lang="en"><front><journal-meta><journal-id journal-id-type="publisher-id">Digital Diagnostics</journal-id><journal-title-group><journal-title xml:lang="en">Digital Diagnostics</journal-title><trans-title-group xml:lang="ru"><trans-title>Digital Diagnostics</trans-title></trans-title-group><trans-title-group xml:lang="zh"><trans-title>Digital Diagnostics</trans-title></trans-title-group></journal-title-group><issn publication-format="print">2712-8490</issn><issn publication-format="electronic">2712-8962</issn><publisher><publisher-name xml:lang="en">Eco-Vector</publisher-name></publisher></journal-meta><article-meta><article-id pub-id-type="publisher-id">420053</article-id><article-id pub-id-type="doi">10.17816/DD420053</article-id><article-categories><subj-group subj-group-type="toc-heading" xml:lang="en"><subject>Systematic reviews</subject></subj-group><subj-group subj-group-type="toc-heading" xml:lang="ru"><subject>Систематические обзоры</subject></subj-group><subj-group subj-group-type="toc-heading" xml:lang="zh"><subject>系统评价</subject></subj-group><subj-group subj-group-type="article-type"><subject>Review Article</subject></subj-group></article-categories><title-group><article-title xml:lang="en">Dosiomics in the analysis of medical images and prospects for its use in clinical practice</article-title><trans-title-group xml:lang="ru"><trans-title>Дозиомика в анализе медицинских изображений и перспективы её использования в клинической практике</trans-title></trans-title-group><trans-title-group xml:lang="zh"><trans-title>医学图像分析中的Dosiomics及其在临床实践中的应用前景</trans-title></trans-title-group></title-group><contrib-group><contrib contrib-type="author"><contrib-id contrib-id-type="orcid">https://orcid.org/0000-0002-1641-6452</contrib-id><contrib-id contrib-id-type="spin">9556-6556</contrib-id><name-alternatives><name xml:lang="en"><surname>Solodkiy</surname><given-names>Vladimir A.</given-names></name><name xml:lang="ru"><surname>Солодкий</surname><given-names>Владимир Алексеевич</given-names></name><name xml:lang="zh"><surname>Solodkiy</surname><given-names>Vladimir A.</given-names></name></name-alternatives><address><country country="RU">Russian Federation</country></address><bio xml:lang="en"><p>MD, Dr. Sci. (Med.), Professor</p></bio><bio xml:lang="ru"><p>д-р мед. наук, профессор, академик РАН</p></bio><bio xml:lang="zh"><p>MD, Dr. Sci. (Med.), Professor</p></bio><email>direktor@rncrr.ru</email><xref ref-type="aff" rid="aff1"/></contrib><contrib contrib-type="author"><contrib-id contrib-id-type="orcid">https://orcid.org/0000-0001-5994-0468</contrib-id><contrib-id contrib-id-type="spin">3018-2527</contrib-id><name-alternatives><name xml:lang="en"><surname>Nudnov</surname><given-names>Nikolay V.</given-names></name><name xml:lang="ru"><surname>Нуднов</surname><given-names>Николай Васильевич</given-names></name><name xml:lang="zh"><surname>Nudnov</surname><given-names>Nikolay V.</given-names></name></name-alternatives><address><country country="RU">Russian Federation</country></address><bio xml:lang="en"><p>MD, Dr. Sci. (Med.), Professor</p></bio><bio xml:lang="ru"><p>д-р мед. наук, профессор</p></bio><bio xml:lang="zh"><p>MD, Dr. Sci. (Med.), Professor</p></bio><email>nudnov@rncrr.ru</email><xref ref-type="aff" rid="aff1"/></contrib><contrib contrib-type="author"><contrib-id contrib-id-type="orcid">https://orcid.org/0009-0007-0407-0953</contrib-id><name-alternatives><name xml:lang="en"><surname>Ivannikov</surname><given-names>Mikhail E.</given-names></name><name xml:lang="ru"><surname>Иванников</surname><given-names>Михаил Евгеньевич</given-names></name><name xml:lang="zh"><surname>Ivannikov</surname><given-names>Mikhail E.</given-names></name></name-alternatives><address><country country="RU">Russian Federation</country></address><email>ivannikovmichail@gmail.com</email><xref ref-type="aff" rid="aff1"/></contrib><contrib contrib-type="author"><contrib-id contrib-id-type="orcid">https://orcid.org/0009-0000-7535-8523</contrib-id><name-alternatives><name xml:lang="en"><surname>Shakhvalieva</surname><given-names>Elina S-A.</given-names></name><name xml:lang="ru"><surname>Шахвалиева</surname><given-names>Элина Саид-Аминовна</given-names></name><name xml:lang="zh"><surname>Shakhvalieva</surname><given-names>Elina S-A.</given-names></name></name-alternatives><address><country country="RU">Russian Federation</country></address><email>shelina9558@gmail.com</email><xref ref-type="aff" rid="aff1"/></contrib><contrib contrib-type="author"><contrib-id contrib-id-type="orcid">https://orcid.org/0000-0003-0498-314X</contrib-id><contrib-id contrib-id-type="spin">3845-0154</contrib-id><name-alternatives><name xml:lang="en"><surname>Sotnikov</surname><given-names>Vladimir M.</given-names></name><name xml:lang="ru"><surname>Сотников</surname><given-names>Владимир Михайлович</given-names></name><name xml:lang="zh"><surname>Sotnikov</surname><given-names>Vladimir M.</given-names></name></name-alternatives><address><country country="RU">Russian Federation</country></address><bio xml:lang="en"><p>MD, Dr. Sci. (Med.), Professor</p></bio><bio xml:lang="ru"><p>д-р мед. наук, профессор</p></bio><bio xml:lang="zh"><p>MD, Dr. Sci. (Med.), Professor</p></bio><email>vmsotnikov@mail.ru</email><xref ref-type="aff" rid="aff1"/></contrib><contrib contrib-type="author"><contrib-id contrib-id-type="orcid">https://orcid.org/0000-0002-6409-6756</contrib-id><contrib-id contrib-id-type="spin">9341-0037</contrib-id><name-alternatives><name xml:lang="en"><surname>Smyslov</surname><given-names>Aleksei Yu.</given-names></name><name xml:lang="ru"><surname>Смыслов</surname><given-names>Алексей Юрьевич</given-names></name><name xml:lang="zh"><surname>Smyslov</surname><given-names>Aleksei Yu.</given-names></name></name-alternatives><address><country country="RU">Russian Federation</country></address><bio xml:lang="en"><p>Cand. Sci. (Engin.)</p></bio><bio xml:lang="ru"><p>канд. тех. наук</p></bio><bio xml:lang="zh"><p>Cand. Sci. (Engin.)</p></bio><email>smyslov.ay@gmail.com</email><xref ref-type="aff" rid="aff1"/></contrib></contrib-group><aff-alternatives id="aff1"><aff><institution xml:lang="en">Russian Scientific Center of Roentgenoradiology</institution></aff><aff><institution xml:lang="ru">Российский научный центр рентгенорадиологии</institution></aff><aff><institution xml:lang="zh">Russian Scientific Center of Roentgenoradiology</institution></aff></aff-alternatives><pub-date date-type="preprint" iso-8601-date="2023-08-30" publication-format="electronic"><day>30</day><month>08</month><year>2023</year></pub-date><pub-date date-type="pub" iso-8601-date="2023-09-26" publication-format="electronic"><day>26</day><month>09</month><year>2023</year></pub-date><volume>4</volume><issue>3</issue><issue-title xml:lang="en"/><issue-title xml:lang="ru"/><issue-title xml:lang="zh"/><fpage>340</fpage><lpage>355</lpage><history><date date-type="received" iso-8601-date="2023-05-15"><day>15</day><month>05</month><year>2023</year></date><date date-type="accepted" iso-8601-date="2023-06-15"><day>15</day><month>06</month><year>2023</year></date></history><permissions><copyright-statement xml:lang="en">Copyright ©; 2023, Eco-Vector</copyright-statement><copyright-statement xml:lang="ru">Copyright ©; 2023, Эко-вектор</copyright-statement><copyright-statement xml:lang="zh">Copyright ©; 2023, Eco-Vector</copyright-statement><copyright-year>2023</copyright-year><copyright-holder xml:lang="en">Eco-Vector</copyright-holder><copyright-holder xml:lang="ru">Эко-вектор</copyright-holder><copyright-holder xml:lang="zh">Eco-Vector</copyright-holder><ali:free_to_read xmlns:ali="http://www.niso.org/schemas/ali/1.0/"/><license><ali:license_ref xmlns:ali="http://www.niso.org/schemas/ali/1.0/">https://creativecommons.org/licenses/by-nc-nd/4.0</ali:license_ref></license></permissions><self-uri xlink:href="https://jdigitaldiagnostics.com/DD/article/view/420053">https://jdigitaldiagnostics.com/DD/article/view/420053</self-uri><abstract xml:lang="en"><p><bold><italic>BACKGROUND</italic></bold><italic>:</italic> In recent years, there has been a notable increase in the number of articles using the term “dosiomics”. However, there are no literature reviews on this topic in the Russian language.</p> <p><bold><italic>AIM</italic></bold><italic>: </italic>This study aims to describe the basic principles of dosiomics as a derivative of radiomics and to analyze studies devoted to assessing the possibilities of its application in clinical practice.</p> <p><bold><italic>MATERIALS AND METHODS</italic></bold><italic>:</italic> A systematic literature search was performed in the PubMed database using the search query “dosiomics OR dosiomic”, and in the eLibrary database using the search query “dosiomics”. By April 2023, 43 foreign articles and 1 Russian article had been published.</p> <p><bold><italic>RESULTS</italic></bold><italic>: </italic>The analysis encompassed 43 foreign studies investigating the use of dosiomics in clinical practice, alongside one Russian article that provided a definition of the term “dosiomics”. The analyzed papers were divided into three groups according to their subject matter, and two tables describing the results of 27 studies on the prediction of clinical outcomes were created.</p> <p><bold><italic>CONCLUSION</italic></bold><italic>: </italic>Currently, dosiomics is a new and promising derivative of radiomics used in the textural analysis of medical images associated with radiation treatment of cancer patients. Dosiomics can contribute to the development of a more personalized approach to the planning of radiotherapy, the prediction of radiation damage of normal tissues, and the diagnosis of recurrence.</p></abstract><trans-abstract xml:lang="ru"><p><bold>Обоснование</bold>. В последние годы увеличивается количество статей с использованием термина «дозиомика», однако литературные обзоры на русском языке по данной теме отсутствуют.</p> <p>Цель настоящего обзора ― описать основные принципы дозиомики как направления радиомики и проанализировать исследования по оценке возможностей применения их в клинической практике.</p> <p><bold>Материалы и методы</bold>. Систематический поиск литературы был произведён в базе данных PubMed с поисковым запросом «dosiomics OR dosiomic», а также в базе данных eLibrary с поисковым запросом «дозиомика». По состоянию на апрель 2023 года были опубликованы 43 зарубежных исследования на тему использования дозиомики в клинической практике и одна отечественная работа с определением термина «дозиомика».</p> <p><bold>Результаты</bold>. Проанализированы 43 зарубежных исследования на тему использования дозиомики в клинической практике и 1 отечественная статья с определением термина «дозиомика». Проанализированные работы разделены на три группы согласно их тематике и составлены таблицы, описывающие результаты 27 исследований по прогнозированию клинических исходов.</p> <p><bold>Заключение</bold>. В настоящее время дозиомика является новым и перспективным направлением радиомики, применяемым в текстурном анализе медицинских изображений, связанных с лучевым лечением онкологических больных. Дозиомика может способствовать развитию более персонализированного подхода к планированию лучевой терапии, прогнозированию лучевых повреждений нормальных тканей и диагностике рецидивов.</p></trans-abstract><trans-abstract xml:lang="zh"><p><bold>论证</bold>。近年来，使用“dosiomics”一词的文章数量不断增加，但却没有关于这一主题的俄文文献综述。</p> <p><bold>本综述的目的</bold>是描述dosiomics作为放射组学分支的基本原理，并分析相关研究，以评估其在临床实践中的潜在应用。</p> <p><bold>材料和方法</bold>。在PubMed数据库中以“dosiomics OR dosiomic”为检索词进行了系统文献检索，在eLibrary数据库中以“дозиомика”（“dosiomics”）为检索词进行了系统文献检索。截至2023年4月，共发表了43项关于在临床实践中使用dosiomics的国外研究和1篇定义“dosiomics”一词的国内文章。</p> <p><bold>结果</bold>。我们分析了43篇关于在临床实践中使用dosiomics的国外研究和1篇定义“dosiomics”一词的国内文章。我们将所分析的文章按主题分为三组，并将27项关于预测临床结果的研究结果编制成表格。</p> <p><bold>结论</bold>。目前，dosiomics是放射组学的一个新的有前途的分支，应用于与癌症患者放射治疗有关的医学图像的纹理分析。Dosiomics可能有助于开发更个性化的放疗计划、预测对正常组织的辐射损伤和诊断复发。</p></trans-abstract><kwd-group xml:lang="en"><kwd>dosiomics</kwd><kwd>radiomics</kwd><kwd>radiation therapy</kwd><kwd>machine learning</kwd><kwd>artificial intelligence</kwd><kwd>texture analysis</kwd><kwd>radiation pneumonitis</kwd></kwd-group><kwd-group xml:lang="ru"><kwd>дозиомика</kwd><kwd>радиомика</kwd><kwd>лучевая терапия</kwd><kwd>машинное обучение</kwd><kwd>искусственный интеллект</kwd><kwd>текстурный анализ</kwd><kwd>постлучевой пневмонит</kwd></kwd-group><kwd-group xml:lang="zh"><kwd>dosiomics</kwd><kwd>放射组学</kwd><kwd>放射治疗</kwd><kwd>机器学习</kwd><kwd>人工智能</kwd><kwd>纹理分析</kwd><kwd>放疗后肺炎</kwd></kwd-group><funding-group/></article-meta></front><body></body><back><ref-list><ref id="B1"><label>1.</label><citation-alternatives><mixed-citation xml:lang="en">Arroyo-Hernández M, Maldonado F, Lozano-Ruiz F, et al. 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