预测乳腺癌的ML杂交技术

Jeeva M, Padmapriya E, Nasreen Banu S, Rajesh George Rajan
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引用次数: 1

摘要

乳腺癌是印度居民中最常见的癌症之一。乳腺癌在美国十大癌症中排名第四。统计数据显示,印度每四分钟就有一名女性被诊断出患有乳腺癌。印度农村和城市的妇女比过去更容易患乳腺癌。每28名印度女性中就有1人被诊断出患有乳腺癌。城市妇女(22人中有1人)比农村妇女(60人中有1人)更容易患糖尿病。根据2018年的乳腺癌统计数据,新报告病例为162468例,死亡病例为87090例。如果早期发现癌细胞,这些死亡是可以避免的。本研究描述了一种使用ML技术检测乳腺癌的策略。主要目标是从基准输入数据集预测乳腺癌,该数据集由基于症状的良性和恶性信息组成。该系统采用逻辑回归和决策树两种算法构建。该方法的准确率为96.8%,精密度得分为94.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybridization of ML techniques for predicting Breast Cancer
Breast cancer is one of the most prevalent forms of cancer among Indian residents. Breast cancer ranks fourth in the top ten cancers in America. Every four minutes, a woman in India is diagnosed with breast cancer, according to the statistics. Women in rural and urban India are more likely to get breast cancer than in the past. One in twenty-eight Indian women will be diagnosed with breast cancer. Urban women are more likely to suffer from it (1 in 22) than rural women (1 in 60). According to breast cancer statistics from 2018, there were 1,62,468 newly reported cases and 87,090 fatalities. These deaths can be avoided if cancerous cells are detected early. This research describes a strategy for detecting breast cancer using ML techniques. The primary goal is to predict breast cancer from the benchmarked input dataset, which consists of the information about Benign and Malignant based on symptoms. The system is built using two Algorithms Logistic Regression and Decision Tree. The obtained accuracy of the proposed method was 96.8%, whereas the precision score were found to be 94.5%.
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