Machine learning methods for the classification of gliomas: Initial results using features extracted from MR spectroscopy.

Journal: The neuroradiology journal
PMID:

Abstract

CONTEXT: With the advent of new imaging modalities, radiologists are faced with handling increasing volumes of data for diagnosis and treatment planning. The use of automated and intelligent systems is becoming essential in such a scenario. Machine learning, a branch of artificial intelligence, is increasingly being used in medical image analysis applications such as image segmentation, registration and computer-aided diagnosis and detection. Histopathological analysis is currently the gold standard for classification of brain tumors. The use of machine learning algorithms along with extraction of relevant features from magnetic resonance imaging (MRI) holds promise of replacing conventional invasive methods of tumor classification.

Authors

  • G Ranjith
    SCTIMST, Sri Chitra Tirunal Institute of Medical Sciences and Technology, Trivandrum, Kerala, India ranjithg@sctimst.ac.in.
  • R Parvathy
    SCTIMST, Sri Chitra Tirunal Institute of Medical Sciences and Technology, Trivandrum, Kerala, India.
  • V Vikas
    NIMHANS, Sri Chitra Tirunal Institute of Medical Sciences and Technology, Trivandrum, Kerala, India.
  • Kesavadas Chandrasekharan
    SCTIMST, Sri Chitra Tirunal Institute of Medical Sciences and Technology, Trivandrum, Kerala, India.
  • Suresh Nair
    SCTIMST, Sri Chitra Tirunal Institute of Medical Sciences and Technology, Trivandrum, Kerala, India.