Application of Machine Learning Algorithms in Breast Cancer Diagnosis and Classification.

International journal of science academic research Pub Date : 2021-01-01 Epub Date: 2021-10-30
Clement G Yedjou, Solange S Tchounwou, Richard A Aló, Rashid Elhag, BereKet Mochona, Lekan Latinwo
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Abstract

Breast cancer continues to be the most frequent cancer in females, affecting about one in 8 women and causing the highest number of cancer-related deaths in females worldwide despite remarkable progress in early diagnosis, screening, and patient management. All breast lesions are not malignant, and all the benign lesions do not progress to cancer. However, the accuracy of diagnosis can be increased by a combination or preoperative tests such as physical examination, mammography, fine-needle aspiration cytology, and core needle biopsy. Despite some limitations, these procedures are more accurate, reliable, and acceptable, when compared with a single adopted diagnostic procedure. Recent studies have shown that breast cancer can be accurately predicted and diagnosed using machine learning (ML) technology. The objective of this study was to explore the application of ML approaches to classify breast cancer based on feature values generated from a digitized image of a fine-needle aspiration (FNA) of a breast mass. To achieve this objective, we used ML algorithms, collected a scientific dataset of 569 breast cancer patients from Kaggle (https://www.kaggle.com/uciml/breast-cancer-wisconsin-data), analyze and interpreted the data based on ten real-valued features of a breast mass FNA including the radius, texture, perimeter, area, smoothness, compactness, concavity, concave points, symmetry, and fractal dimension. Among the 569 patients tested, 63% were diagnosed with benign breast cancer and 37% were diagnosed with malignant breast cancer. Benign tumors grow slowly and do not spread while malignant tumors grow rapidly and spread to other parts of the body.

机器学习算法在乳腺癌诊断与分类中的应用。
尽管在早期诊断、筛查和患者管理方面取得了显著进展,但乳腺癌仍然是女性中最常见的癌症,约有八分之一的女性受其影响,并导致全球女性癌症相关死亡人数最多。所有的乳腺病变都不是恶性的,所有的良性病变都不会发展为癌症。然而,诊断的准确性可以通过综合检查或术前检查来提高,如体格检查、乳房x光检查、细针穿刺细胞学检查和核心针活检。尽管存在一些局限性,但与单一采用的诊断程序相比,这些程序更准确、可靠和可接受。最近的研究表明,使用机器学习(ML)技术可以准确地预测和诊断乳腺癌。本研究的目的是探索基于乳腺肿块的细针穿刺(FNA)的数字化图像生成的特征值的ML方法在乳腺癌分类中的应用。为了实现这一目标,我们使用ML算法,从Kaggle (https://www.kaggle.com/uciml/breast-cancer-wisconsin-data)收集了569名乳腺癌患者的科学数据集,并基于乳房肿块FNA的十个实值特征(包括半径、纹理、周长、面积、平滑度、致密度、凹凸度、凹点、对称性和分形维数)对数据进行分析和解释。在接受检测的569名患者中,63%被诊断为良性乳腺癌,37%被诊断为恶性乳腺癌。良性肿瘤生长缓慢,不扩散,而恶性肿瘤生长迅速,并扩散到身体的其他部位。
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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