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Magnetic Resonance Imaging01:24

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Magnetic resonance imaging (MRI) is a noninvasive medical imaging technique based on a phenomenon of nuclear physics discovered in the 1930s, in which matter exposed to magnetic fields and radio waves was found to emit radio signals. In 1970, a physician and researcher named Raymond Damadian noticed that malignant (cancerous) tissue gave off different signals than normal body tissue. He applied for a patent for the first MRI scanning device in clinical use by the early 1980s. The early MRI...
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Lesion Explorer: A Video-guided, Standardized Protocol for Accurate and Reliable MRI-derived Volumetrics in Alzheimer's Disease and Normal Elderly
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Feature extraction from MRI ADC images for brain tumor classification using machine learning techniques.

Sahan M Vijithananda1, Mohan L Jayatilake2, Badra Hewavithana1

  • 1Department of Radiology, Faculty of Medicine, University of Peradeniya, Peradeniya, Sri Lanka.

Biomedical Engineering Online
|August 1, 2022
PubMed
Summary
This summary is machine-generated.

Machine learning models using MRI Apparent Diffusion Coefficient (ADC) images can accurately differentiate malignant from benign brain tumors. Texture and demographic features aid in this classification, potentially reducing the need for invasive biopsies.

Keywords:
ANOVA f-test feature selectionApparent diffusion coefficientBrain tumor classificationDiffusion weighted imagingMachine learningMagnetic resonance imagingRandom forest

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Area of Science:

  • Radiology and Medical Imaging
  • Machine Learning in Healthcare
  • Oncology

Background:

  • Diffusion-weighted (DW) imaging is a standard MRI technique for brain examinations.
  • Apparent Diffusion Coefficient (ADC) images offer rich data for tumor analysis.
  • Distinguishing malignant from benign brain tumors is crucial for treatment planning.

Purpose of the Study:

  • To extract demographic and texture features from brain tumor MRI ADC images.
  • To identify feature distribution patterns.
  • To apply Machine Learning (ML) for differentiating malignant and benign brain tumors.

Main Methods:

  • A prospective study analyzed 1599 MRI brain ADC images from 195 patients.
  • Demographic, pixel value, and Grey Level Co-occurrence Matrix (GLCM) features were extracted.
  • ANOVA f-test was used for feature selection, followed by ML classification (Random Forest).

Main Results:

  • Skewness and GLCM homogeneity were excluded due to low ANOVA f-test scores.
  • The Random Forest classifier achieved the highest accuracy.
  • The final ML model accurately predicted tumor malignancy with 90.41% accuracy.

Conclusions:

  • Selected features (excluding skewness and GLCM homogeneity) are effective for brain tumor differentiation.
  • A high-performance ML model can assist in pre-biopsy diagnostic decision-making.
  • This approach may reduce the need for invasive diagnostic procedures.