基于高级相关分析法预测肺癌及其对患者不良影响的方法

T. A. S. Srinivas, Monika M, N. Aparna, K. K., Narasimha Rao C, Ramprabhu J
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引用次数: 1

摘要

以症状作为诊断肺癌的依据。肺癌检测是通过使用不同的机器学习技术和回归算法来完成的。通过比较不同回归算法预测肺癌的效果,考虑了年龄、性别、胸部不适、呼吸短促、酒精摄入、慢性疾病、吞咽困难、焦虑和同伴压力等各种因素。肺癌的预测与评价主要采用线性算法、多项式回归、逻辑回归、对数回归、多元回归等不同的回归方法。在肺癌预测方面,多元回归的预测准确率为96%,优于其他回归技术。r平方值可通过使用多种回归方法计算,也可用于评估各种症状与肺癌之间的关联。肺癌是通过使用R平方值来诊断的,R平方值是通过几种算法计算出来的,并考虑了包括慢性疾病在内的症状。
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A Methodology to Predict the Lung Cancer and its Adverse Effects on Patients from an Advanced Correlation Analysis Method
Using symptoms as a basis for diagnosing lung cancer. Lung cancer detection is accomplished by using different machine learning techniques and regression algorithms. By comparing the efficacy of different regression algorithms for predicting lung cancer, various factors including age, gender, chest discomfort, shortness of breath, alcohol intake, chronic illness, trouble swallowing, anxiety, and peer pressure are taken into consideration. Lung cancer prediction and evaluation are accomplished by using different regression methods such as linear algorithm, polynomial regression, logistic regression, logarithmic regression and multiple regression. With a predictive accuracy of 96%, multiple regression remains superior to other regression techniques when it comes to lung cancer prediction. The R-squared value can be calculated by using a number of regression approaches, which may also be used to evaluate the association between various symptoms and lung cancer. Lung cancer is diagnosed by using the R squared value, which is calculated by using several algorithms and considers symptoms including chronic illness.
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