Prediction of Life Expectancy of Lung Cancer Patients Post Thoracic Surgery using K-Nearest Neighbors and Bat Algorithm

Muhamad Nur Arifiansyah
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Abstract

Lung cancer is one of the deadliest cancers, accounting for 11.6% of cancer diagnoses in the world. Death in lung cancer patients can occur in various ways and one of the treatments for lung cancer patients that can be done is thoracic surgery. Thoracic surgery is generally considered a medium risk procedure, but thoracic surgery has a high risk, one of the risks is that if the patient loses blood which will result in the death of the patient. In this study, the method used to implement predictive life expectancy in post-thoracic surgery patients is the bat algorithm for feature selection and the KNN algorithm for classifying data. The dataset used in this study was obtained from the UCI Machine Learning Repository, namely the thoracic surgery dataset which contains 470 data with 16 attributes. The results of the study in predicting the life expectancy of patients after thoracic surgery were carried out with 3 tests. The first test is testing the population with the best accuracy of 87.23%, the second test is convergent testing with the best accuracy of 87.23% and the third test is the comparison test of KNN which produces the best accuracy of 87.23%. The bat algorithm succeeded in increasing the accuracy of the KNN classification by 5.23% from 81.91%.  
基于k近邻和Bat算法的肺癌胸外科术后预期寿命预测
肺癌是最致命的癌症之一,占全球癌症诊断的11.6%。肺癌患者的死亡可能有多种方式,其中一种治疗肺癌的方法是胸外科手术。胸外科手术通常被认为是一种中等风险的手术,但胸外科手术有很高的风险,其中一个风险是如果病人失血会导致病人死亡。在本研究中,实现胸外科术后患者预期寿命预测的方法是使用bat算法进行特征选择,使用KNN算法对数据进行分类。本研究使用的数据集来自UCI机器学习存储库,即胸外科数据集,包含470个数据,16个属性。预测胸外科术后患者预期寿命的研究结果通过3项试验进行。第一个检验是对总体的检验,准确率最高为87.23%;第二个检验是收敛检验,准确率最高为87.23%;第三个检验是KNN的比较检验,准确率最高为87.23%。bat算法将KNN分类的准确率从81.91%提高到5.23%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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