학술논문

Innovative detection of lung cancer using decision tree classifier and comparison with K-nearest neighbor classifier.
Document Type
Article
Source
AIP Conference Proceedings. 2024, Vol. 2853 Issue 1, p1-9. 9p.
Subject
*LUNG cancer
*K-nearest neighbor classification
*IMAGE recognition (Computer vision)
*DECISION trees
*LUNGS
*DATABASES
*COMPUTED tomography
Language
ISSN
0094-243X
Abstract
Aim-The aim of the study is to perform innovative detection of lung cancer using the Decision Tree classifier and also comparing it with the K-Nearest Neighbor classifier. Materials and methods-The lung cancer database includes records 32 samples (patients) and is therefore compiled with 32 ∗ 6 numerical data. The G power for samples is calculated from clincalc which contains two different groups where group 1 is taken as (n1=16) and for group 2 (n2=16), alpha (0.05), power (80 %) and enrollment ratio. Results-Implementation based on the MATLAB toolbox is done on CT lung images and the classification of these images is performed. In the proposed method, D-Tree numbers of samples are selected for each iteration and 90 % phase accuracy is obtained. There is a significant difference in Accuracy rate (P=0.072). Conclusion-The results of the study suggest that the accuracy of the decision tree algorithm is significantly higher than the nearest k-neighboring algorithm. [ABSTRACT FROM AUTHOR]