Improving accuracy in astrocytomas grading by integrating a robust least squares mapping driven support vector machine classifier into a two level grade classification scheme

  • Authors:
  • Dimitris Glotsos;Ioannis Kalatzis;Panagiota Spyridonos;Spiros Kostopoulos;Antonis Daskalakis;Emmanouil Athanasiadis;Panagiota Ravazoula;George Nikiforidis;Dionisis Cavouras

  • Affiliations:
  • Department of Medical Instruments Technology, Technological Educational Institution of Athens, Ag. Spyridonos Street, Aigaleo, Athens 122 10, Greece;Department of Medical Instruments Technology, Technological Educational Institution of Athens, Ag. Spyridonos Street, Aigaleo, Athens 122 10, Greece;Medical Image Processing and Analysis Laboratory, Medical Physics, School of Medicine, University of Patras, Rio, Patras 265 00, Greece;Medical Image Processing and Analysis Laboratory, Medical Physics, School of Medicine, University of Patras, Rio, Patras 265 00, Greece;Medical Image Processing and Analysis Laboratory, Medical Physics, School of Medicine, University of Patras, Rio, Patras 265 00, Greece;Medical Image Processing and Analysis Laboratory, Medical Physics, School of Medicine, University of Patras, Rio, Patras 265 00, Greece;Department of Pathology, University Hospital, Rio, Patras 265 00, Greece;Medical Image Processing and Analysis Laboratory, Medical Physics, School of Medicine, University of Patras, Rio, Patras 265 00, Greece;Department of Medical Instruments Technology, Technological Educational Institution of Athens, Ag. Spyridonos Street, Aigaleo, Athens 122 10, Greece

  • Venue:
  • Computer Methods and Programs in Biomedicine
  • Year:
  • 2008

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Abstract

Grading of astrocytomas is an important task for treatment planning; however, it suffers from significantly great inter-observer variability. Computer-assisted diagnosis systems have been propose to assist towards minimizing subjectivity, however, these systems present either moderate accuracy or utilize specialized staining protocols and grading systems that are difficult to apply in daily clinical practice. The present study proposes a robust mathematical formulation by integrating state-of-art technologies (support vector machines and least squares mapping) in a cascade classification scheme for separating low from high and grade III from grade IV astrocytic tumours. Results have indicated that low from high-grade tumours can be correctly separated with a certainty as high as 97.3%, whereas grade III from grade IV tumours with 97.8%. The overall performance was 95.2%. These high rates have been a result of applying the least squares mapping technique to features prior to classification. A significant byproduct of least squares mapping is that the number of support vectors of the SVM classifiers dropped dramatically from about 80% when no mapping was used to less than 5% when mapping was used. The latter is a clear indication that the SVM classifier has a greater potential to generalize well to new data. In this way, digital image analysis systems for automated grading of astrocytomas are brought closer to clinical practice.