Learning cellular texture features in microscopic cancer cell images for automated cell-detection
Abstract: In  this  paper  we  present  a  new  approach  for automated  cell  detection  in  single  frames  of  2D  microscopic phase contrast images of cancer cells which is based on learning cellular texture features. The main challenge addressed in this paper  is  to  deal  with  clusters  of  cells  where  each  cell  has a  rather  complex  appearance  composed  of  sub-regions  with different texture features. Our approach works on two different levels of abstraction. First, we apply statistical learning to learn6  different  types  of  different  local  cellular  texture  features,classify each pixel according to them and we obtain an image partition composed of 6 different pixel categories. Based on this partitioned  image  we  decide  in  a  second  step  if  pre-selected seeds  belong  to  the  same  cell  or  not.  Experimental  results show the high accuracy of the proposed method and especially average precision above 95%.
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