Model To Detect Breast Cancer Based On Patient Symptoms

Q3 Pharmacology, Toxicology and Pharmaceutics
Mr. Satish Dekka, Dr.K. Narasimha Raju, Dr. D. ManendraSai, Mr. Mohammad Rafi
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Abstract

The number of medical data warehouses is expanding quickly these days. As a result, it is difficult for us to predict or analyse these facts in order to uncover hidden knowledge that is valuable. For forecasting medical analysis, many machine learning methods and tools are employed. The most prevalent and well-known malignancy, particularly among women, is breast cancer. It ranks among the leading global causes of death. The sole remedy is early detection, which lowers the mortality rate from breast cancer. Breast cells can develop into cancer, which is known as breast cancer. Breast cancer has recently become a highly serious disease, not just in India but also in other nations. The primary goal of this research is to diagnose breast cancer patients as early as possible. Three machine learning approaches Decision Tree, Support Vector Machine, and Logistic Regression are employed for the early detection and prevention of breast cancer patients. These techniques help reduce waiting times and human and technical errors in breast cancer diagnosis. By employing these methods, we can increase the number of lives saved and decrease the death rate by maximising early diagnosis of breast cancer. The likelihood that an infection will be successfully treated depends on precisely identifying and locating it as soon as possible using logistic regression and SVM. A significant obstacle to the diagnosis of breast cancer is the classification of the appropriate machine learning technique. Thus, in order to analyse risk levels that contribute to prognosis, we developed a model for a breast cancer early prediction system. Doctors can diagnose breast cancer using this experimental study, and patients can benefit from early therapy to prolong their lives.
基于患者症状的乳腺癌检测模型
如今,医疗数据仓库的数量正在迅速扩大。因此,我们很难预测或分析这些事实,以揭示隐藏的有价值的知识。对于预测医学分析,使用了许多机器学习方法和工具。最普遍和众所周知的恶性肿瘤,特别是在妇女中,是乳腺癌症。它是全球主要的死亡原因之一。唯一的治疗方法是早期发现,这可以降低癌症的死亡率。乳腺细胞可以发展成癌症,也就是所谓的癌症。癌症最近已成为一种高度严重的疾病,不仅在印度,在其他国家也是如此。这项研究的主要目标是尽早诊断癌症患者。采用决策树、支持向量机和逻辑回归三种机器学习方法对癌症患者进行早期检测和预防。这些技术有助于减少等待时间以及癌症诊断中的人为和技术错误。通过采用这些方法,我们可以最大限度地提高癌症的早期诊断,从而增加挽救的生命数量并降低死亡率。感染成功治疗的可能性取决于使用逻辑回归和SVM尽快准确识别和定位感染。诊断癌症的一个重要障碍是适当的机器学习技术的分类。因此,为了分析有助于预后的风险水平,我们开发了一个癌症早期预测系统模型。医生可以通过这项实验研究来诊断癌症,患者可以从早期治疗中受益,从而延长寿命。
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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