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Main Authors: Shahriyar, Omid, Moghaddam, Babak Nuri, Yousefi, Davoud, Mirzaei, Abbas, Hoseini, Farnaz
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.10980
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author Shahriyar, Omid
Moghaddam, Babak Nuri
Yousefi, Davoud
Mirzaei, Abbas
Hoseini, Farnaz
author_facet Shahriyar, Omid
Moghaddam, Babak Nuri
Yousefi, Davoud
Mirzaei, Abbas
Hoseini, Farnaz
contents One of the deadliest cancers, lung cancer necessitates an early and precise diagnosis. Because patients have a better chance of recovering, early identification of lung cancer is crucial. This review looks at how to diagnose lung cancer using sophisticated machine learning techniques like Random Forest (RF) and Support Vector Machine (SVM). The Chi-squared test is one feature selection strategy that has been successfully applied to find related features and enhance model performance. The findings demonstrate that these techniques can improve detection efficiency and accuracy while also assisting in runtime reduction. This study produces recommendations for further research as well as ideas to enhance diagnostic techniques. In order to improve healthcare and create automated methods for detecting lung cancer, this research is a critical first step.
format Preprint
id arxiv_https___arxiv_org_abs_2501_10980
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle An analysis of the combination of feature selection and machine learning methods for an accurate and timely detection of lung cancer
Shahriyar, Omid
Moghaddam, Babak Nuri
Yousefi, Davoud
Mirzaei, Abbas
Hoseini, Farnaz
Machine Learning
One of the deadliest cancers, lung cancer necessitates an early and precise diagnosis. Because patients have a better chance of recovering, early identification of lung cancer is crucial. This review looks at how to diagnose lung cancer using sophisticated machine learning techniques like Random Forest (RF) and Support Vector Machine (SVM). The Chi-squared test is one feature selection strategy that has been successfully applied to find related features and enhance model performance. The findings demonstrate that these techniques can improve detection efficiency and accuracy while also assisting in runtime reduction. This study produces recommendations for further research as well as ideas to enhance diagnostic techniques. In order to improve healthcare and create automated methods for detecting lung cancer, this research is a critical first step.
title An analysis of the combination of feature selection and machine learning methods for an accurate and timely detection of lung cancer
topic Machine Learning
url https://arxiv.org/abs/2501.10980