A Comparative Assessment of Machine Learning Algorithms for Detecting and Diagnosing Breast Cancer

Md Zahidul Islam, Md Nasiruddin, Shuvo Dutta, Rajesh Sikder, Chowdhury Badrul Huda, Md Rasibul Islam
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Abstract

The principal goal of this study was to explore machine-learning techniques deployed for the early detection of breast cancer in the United States. Specifically, three algorithms were trained on a breast cancer dataset: Decision Tree, Random Forest, and Linear Regression. Each model was further evaluated for its performance, to ascertain the best model. Upon review, the Random Forest provided higher classification performance. It was postulated that the Random Forest offered higher accuracy models on the test data because Decision Trees and Linear Regression require more extensive data for them to be more precise in making high-precision predictions. Out of all the models, the Random Forest provided suitable accuracy on test data. Therefore, in this research scope, Random Forest was the most successful and proved effective in accurately identifying breast cancer malignancies. In that light, the proposed random forest can benefit healthcare organizations by facilitating in detection of breast cancer disease by identifying patients in high-risk groups at an early and more treatable stage of disease for improved outcomes and lower healthcare costs. Besides, Random Forest models can assist in identifying high-risk patients in advance for prompt treatment. In that regard, such detection saves lives and decreases long-term healthcare costs for the US government.
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检测和诊断乳腺癌的机器学习算法比较评估
本研究的主要目的是探索美国用于乳腺癌早期检测的机器学习技术。具体来说,在乳腺癌数据集上训练了三种算法:决策树、随机森林和线性回归。对每个模型的性能进行了进一步评估,以确定最佳模型。经审查,随机森林的分类性能更高。据推测,随机森林在测试数据上提供了更高精度的模型,因为决策树和线性回归需要更多的数据才能更精确地做出高精度的预测。在所有模型中,随机森林在测试数据上提供了适当的准确性。因此,在本研究范围内,随机森林是最成功的,在准确识别乳腺癌恶性肿瘤方面被证明是有效的。有鉴于此,所提出的随机森林模型可以帮助医疗机构检测乳腺癌疾病,在疾病的早期和更容易治疗的阶段识别高危人群,从而改善治疗效果,降低医疗成本。此外,随机森林模型还能帮助提前识别高危患者,以便及时治疗。在这方面,这种检测可以挽救生命,并降低美国政府的长期医疗成本。
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