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<ArticleSet>
  <Article>
    <Journal>
      <PublisherName>IJIRCSTJournal</PublisherName>
      <JournalTitle>International Journal of Innovative Research in Computer Science and Technology</JournalTitle>
      <PISSN>I</PISSN>
      <EISSN>S</EISSN>
      <Volume-Issue>Volume 10 Issue 2</Volume-Issue>
      <PartNumber/>
      <IssueTopic>Management</IssueTopic>
      <IssueLanguage>English</IssueLanguage>
      <Season>March - April 2022</Season>
      <SpecialIssue>N</SpecialIssue>
      <SupplementaryIssue>N</SupplementaryIssue>
      <IssueOA>Y</IssueOA>
      <PubDate>
        <Year>2022</Year>
        <Month>05</Month>
        <Day>26</Day>
      </PubDate>
      <ArticleType>Computer Sciences</ArticleType>
      <ArticleTitle>An Analysis of Convolutional Neural Networks</ArticleTitle>
      <SubTitle/>
      <ArticleLanguage>English</ArticleLanguage>
      <ArticleOA>Y</ArticleOA>
      <FirstPage>216</FirstPage>
      <LastPage>219</LastPage>
      <AuthorList>
        <Author>
          <FirstName>Indu Sharma</FirstName>          
          <AuthorLanguage>English</AuthorLanguage>
          <Affiliation/>
          <CorrespondingAuthor>Y</CorrespondingAuthor>
          <ORCID/>
             
        </Author>
      </AuthorList>
      <DOI> https://doi.org/10.55524/ijircst.2022.10.2.44</DOI>
      <Abstract>Convolutional neural networks (CNNs), form of artificial neural network (ANN) prominent in computer vision, are finding traction in diversity of sectors, comprising radiology. CNN employs a variety of building pieces, including as convolution, pooling layers, &amp;amp; fully linked layers, for acquiring spatial data hierarchy autonomously &amp;amp; adaptively via backpropagation. This review paper investigates core concepts of CNN &amp;amp; how se are used to numerous radiological jobs, as well as issues &amp;amp; future prospects in radiology. In addition, this work will explore two issues that arise when using CNN to radiological tasks: restricted datasets &amp;amp; overfitting, as well as approaches for mitigating m. Conceptual underst&amp;amp;ing, advantages, &amp;amp; limitations of CNN is crucial for realising its full potential in diagnostic radiology &amp;amp; improving radiologists&amp;#39; performance &amp;amp; patient care.</Abstract>
      <AbstractLanguage>English</AbstractLanguage>
      <Keywords>Convolutional Neural Networks, Deep Learning, Networks, Radiology, Supervised.</Keywords>
      <URLs>
        <Abstract>https://ijircst.org/abstract.php?article_id=874</Abstract>
      </URLs>      
    </Journal>
  </Article>
</ArticleSet>