Distinguishing Shapes of Breast Cancer Masses in Ultrasound Images by Using Logistic Regression Model

Authors

  • Luay Adil Abduljabbar
  • Omar Qusay Alshebly

DOI:

https://doi.org/10.33095/jeas.v28i133.2361

Keywords:

Logistic Regression, Feature Extraction, Medical images, Accuracy, Area under Curve

Abstract

The last few years witnessed great and increasing use in the field of medical image analysis. These tools helped the Radiologists and Doctors to consult while making a particular diagnosis. In this study, we used the relationship between statistical measurements, computer vision, and medical images, along with a logistic regression model to extract breast cancer imaging features. These features were used to tell the difference between the shape of a mass (Fibroid vs. Fatty) by looking at the regions of interest (ROI) of the mass. The final fit of the logistic regression model showed that the most important variables that clearly affect breast cancer shape images are Skewness, Kurtosis, Center of mass, and Angle, with an AUCROC of 88% and an Accuracy of almost 89%. We also came to the conclusion that the Fibroid mass is small and less white than the Fatty mass

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Published

2022-09-30

Issue

Section

Statistical Researches

How to Cite

“Distinguishing Shapes of Breast Cancer Masses in Ultrasound Images by Using Logistic Regression Model” (2022) Journal of Economics and Administrative Sciences, 28(133), pp. 158–171. doi:10.33095/jeas.v28i133.2361.

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