A cross-border community for researchers with openness, equality and inclusion
LungCarcinoGrade-EffNetSVM: A Novel Approach to Lung Carcinoma Grading Using EfficientNetB0 and Support Vector Machine
ID:90 View protection:Participant Only Updated time:2024-08-22 10:36:27 Views:370 Oral Presentation

Start Time:No start time yet

Duration:No duration yet

Session:[No session yet] [No session block yet]

No file yet

Abstract
Lung carcinoma grading is a critical task in the accurate diagnosis and treatment planning of lung cancer. In this study, we present “LungCarcinoGrade-EffNetSVM”, a novel approach that combines the powerful feature extraction capabilities of EfficientNetB0 with the classification prowess of Support Vector Machine (SVM) for lung carcinoma grading. The dataset utilized for this study was sourced from the Kaggle repository and includes images representing three types of lung carcinoma—Adenocarcinoma (ACA), Large Cell Carcinoma (LCC), Squamous Cell Carcinoma (SCC)— along with normal cell samples. Our proposed method achieved an Acc. of 86.88%, Sens. of 86.88%, and Spec. of 95.63%. The Prec. and F1 score were 87.06% and 86.64%, respectively, with a false positive rate (FPR) of 4.37%. The model also demonstrated robust performance with a Matthews correlation coefficient (MCC) of 0.8257 and a Kappa statistic of 0.65. The computational time for grading was recorded at 9.3082 seconds. These results indicate that the integration of EfficientNetB0 and SVM provides a reliable and efficient method for lung carcinoma grading, potentially aiding in more accurate and timely diagnosis of lung cancer.
Keywords
Lung carcinoma,EfficientNetb0,SVM,deep learning
Speaker
PRABIRA KUMAR SETHY
GURU GHASIDAS VISHWAVIDYALAYA; BILASPUR

Post comments
Verification Code Change Another
All comments
Important Dates
  • Conference date

    10-24

    2024

    -

    10-27

    2024

  • 10-14 2024

    Draft paper submission deadline

  • 10-29 2024

    Registration deadline

  • 10-31 2024

    Presentation submission deadline

Sponsored By

United Societies of Science
King Mongkut's University of Technology North Bangkok (KMUTNB)
IEEE Thailand Section
IEEE Thailand Section C Chapter

Contact info