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Evaluating the Solutions to Predict the Impact of Lung Cancer with an Advanced Intelligent Computing Method

R. Sundar, Sudhir Ramadass, D. Meeha, Balambigai Subramanian, Sneha Shankar, Gayatri Parasa

202314 citationsDOI

Abstract

Using symptoms as a basis for diagnosing lung cancer, Lung cancer detection was accomplished using several different machine-learning regression strategies. By comparing the efficacy of several regression algorithms for predicting lung cancer, considering factors including age, gender, chest discomfort, shortness of breath, alcohol intake, chronic illness, trouble swallowing, anxiety, and peer pressure. Lung cancer predictions and evaluations are made using regression methods such as the linear algorithm, polynomial regression, logistic regression, logarithmic regression, and multiple regression. With a predictive accuracy of 96%, multiple regression is superior to other regression techniques when identifying future lung cancer cases. The r-squared value, which can be calculated using several regression machine learning approaches, may also be used to evaluate the association between the various symptoms and lung cancer. Lung cancer is diagnosed using the r-squared value, which is calculated using several algorithms and takes into symptoms, including chronic illness.

Topics & Concepts

Lung cancerLogistic regressionRegression analysisRegressionLinear regressionPolynomial regressionCancerMedicineMachine learningComputer scienceStatisticsArtificial intelligenceInternal medicineMathematicsRadiomics and Machine Learning in Medical ImagingArtificial Intelligence in HealthcareBrain Tumor Detection and Classification