SERVICES CANCER DETECTION SYSTEM USING K-NEAREST NEIGHBOURS(K-NN) METHOD AND NAÏVE BAYES CLASSIFIER

Sri Rezeki Candra Nursari, Nanda Mahya Barokatun Nisa
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Abstract

According to WHO (World Health Organization) data, every 2 minutes a woman dies. In Indonesia alone, 40 - 45 women are diagnosed with cervical cancer every day. Of those diagnosed, around 20-25 die from cervical cancer. About 95% more cervical cancer is caused by infection with the HPV virus or the human papilloma virus and an estimated death rate reaches 270,000 deaths each year. Cervical cancer occupies the third rank type of cancer in the world after breast and lung cancer, because the symptoms are not very visible at an early stage, so it is referred to as "Silent Killer". Based on the data and cases above, the latest technology that is able to detect cervical cancer in order to speed up the detection process for someone to be quickly treated is an artificial intelligence application that serves to detect whether someone should run 4 cervical cancer testing techniques, namely Hinselmann, Schiller, Citology, and biopsy with K-nearest neighbors algorithm and Naive Bayes classifier is one of the latest technologies that can facilitate the work of a doctor and speed up the process of detecting someone whether to run 4 testing techniques or not. The correct amount of data classified by the K-Nearest Neighbors method is 558 data from 858 data. The classification accuracy of the Naïve Bayes method is 84.7%. The correct amount of data classified by the Naïve Bayes method is 558 data from 858 data. The classification accuracy of the Naïve Bayes method is 84%.
基于K-近邻(K-NN)方法和朴素贝叶斯分类器的服务癌症检测系统
根据世界卫生组织的数据,每2分钟就有一名妇女死亡。仅在印度尼西亚,每天就有40-45名妇女被诊断出患有癌症。在确诊者中,约20-25人死于癌症。约95%以上的癌症是由人乳头状瘤病毒或人类乳头状瘤感染引起的,估计每年死亡率达到27万。癌症是仅次于癌症和肺癌的世界第三大癌症类型,因为早期症状不太明显,所以被称为“沉默的杀手”。根据上述数据和案例,能够检测宫颈癌症以加快检测过程以快速治疗的最新技术是一种人工智能应用,用于检测某人是否应该运行4种宫颈癌症检测技术,即Hinselmann、Schiller、Citology、,使用K近邻算法和Naive Bayes分类器进行活检是最新的技术之一,可以方便医生的工作,并加快检测某人是否运行4种检测技术的过程。通过K-最近邻方法分类的正确数据量是858个数据中的558个数据。朴素贝叶斯方法的分类准确率为84.7%。朴素贝叶斯方法分类的正确数据量为858个数据中的558个数据。朴素贝叶斯方法的分类准确率为84%。
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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