用于乳腺癌预测的机器学习算法比较分析

Kene Tochukwu Anyachebelu, Sukkushe Hannah Hosea, Muhammad, Umar Abdullahi, Maimuna Abdullahi Ibrahim
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引用次数: 1

摘要

乳腺癌是全球关注的健康问题,早期诊断是成功治疗的关键。本文旨在对预测乳腺癌的机器学习算法进行比较分析。本研究使用了威斯康星乳腺癌诊断数据集。研究包括数据准备、技术选择和性能评估。研究首先根据输入因素和诊断结果对恶性和良性实例进行比较。寻找与诊断结果有反向关系的成分是优先事项。接下来,采用谨慎的方法选择属性,以改进数据集,从而构建模型。经过预处理的数据会对四种著名的机器学习算法进行训练和优化:随机森林算法、支持向量机算法、K-近邻算法和逻辑回归算法。对模型的准确度、精确度、召回率、F1 分数和 ROC 曲线进行评估。本研究旨在评估众多乳腺癌预测系统,以确定其优缺点。为了提供开放性和可复制性,本研究使用了 Jupyter Notebook 平台、Python 和数据分析工具。逻辑回归模型的测试准确率高达 99.26%,超过了本研究中的所有其他模型。此外,该模型的假阳性率(FPR)最低为 1,假阴性率(FNR)最低为 4。这项研究对于早期诊断和治疗开发至关重要。其效果包括降低医疗费用、改善患者预后和提高诊断水平。机器学习在抗击乳腺癌方面大有可为,提高了其在医疗保健领域的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative analysis of machine learning algorithms for breast cancer prediction
Breast cancer is a global health concern, and early diagnosis is crucial for successful treatment. The objective of this paper is to conduct a comparative analysis of machine-learning algorithms for the prediction of breast cancer. This study used the Wisconsin Diagnostic Breast Cancer Dataset. Data preparation, technique selection, and performance evaluation are included in the study. The inquiry begins by comparing malignant and benign instances according to input factors and diagnostic outcomes. Finding components having an inverse relationship to the diagnosis is prioritized. Next, a careful approach is used to choose attributes to improve the dataset for model construction. The preprocessed data trains and optimizes four well-known machine learning algorithms: Random Forest, Support Vector Machine, K-Nearest Neighbor, and Logistic Regression. The models are evaluated for accuracy, precision, recall, F1-score, and ROC curve. This study aimed to evaluate numerous breast cancer prediction systems to determine their strengths and weaknesses. To provide openness and replicability, the study uses the Jupyter Notebook platform, Python, and data analytic tools. The logistic regression model has a test accuracy percentage of 99.26%, surpassing all other models examined in this study. Furthermore, it has a minimum false positive rate (FPR) of 1 and a false negative rate (FNR) of 4. The model exhibits a higher level of precision in comparison to the studies examined in the literature review. This study is crucial for early diagnosis and therapy development. The effects include lower healthcare expenses, better patient outcomes, and better diagnostics. Machine learning has shown promise in fighting breast cancer, boosting its relevance in healthcare.
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