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Automatic cervical lymphadenopathy segmentation from CT data using deep learning
Abstract:PurposeThe purpose of this study was to develop a fast and automatic algorithm to detect and segment lymphadenopathy from head and neck computed tomography (CT) examination.Materials and methodsAn ensemble of three convolutional neural networks (CNNs) based on a U-Net architecture were trained to segment the lymphadenopathies in a fully supervised framework. The resulting predictions were assessed using the Dice similarity coefficient (DSC) on examinations presenting one or more adenopathies. On examinations without adenopathies, the score was given by the formula M/(M + A) where M was the mean adenopathy volume per patient and A the volume segmented by the algorithm. The networks were trained on 117 annotated CT acquisitions.ResultsThe test set included 150 additional CT acquisitions unseen during the training. The performance on the test set yielded a mean score of 0.63.ConclusionDespite limited available data and partial annotations, our CNN based approach achieved promising results in the task of cervical lymphadenopathy segmentation. It has the potential to bring precise quantification to the clinical workflow and to assist the clinician in the detection task.
Keywords:Deep learning  Lymphadenopathy  Tomography  X-ray computed  Image processing  Computer-assisted  Artificial intelligence  AI"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kw0065"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Artificial intelligence  CNN"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kw0075"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Convolutional neural network  CT"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kw0085"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Computed tomography  DL"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kw0095"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Deep learning  DSC"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kw0105"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Dice similarity coefficient  HU"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kw0115"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Hounsfield unit  MIP"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kw0125"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Mean intensity projection  MRI"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kw0135"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Magnetic resonance imaging  SD"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kw0145"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Standard deviation
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