利用无监督学习驱动的智能预测前列腺癌

Ejay Esugbe
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引用次数: 0

摘要

前列腺癌是一种普遍存在的全球性疾病,主要影响成年男性--据说癌症的主要诱因包括年龄、家族史和种族。在这项研究中,Kaggle前列腺癌数据集由100名既患癌症又未患癌症的混合患者的数据组成,该数据集与机器学习预测模型一起用于设计用于预测前列腺癌的无监督自动化智能系统。设计了两个智能系统,并以无监督学习算法为基础,即模糊 c-means 和聚类分层聚类,其中各种智能系统能够预测前列腺癌,各种分类指标的准确率超过 80%,同时还能预测前列腺癌的相关分期。本文讨论了这两种设计的智能系统的优点和相对优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Unsupervised Learning Driven Intelligence for Prediction of Prostate Cancer
Prostate cancer is a widespread and global disease which affects adult males – it is said that key causes of the cancer include age, family history and ethnicity. In this study, the Kaggle prostate cancer dataset, comprising of data of 100 patients with a mixture that both had cancer and did not have cancer, was used alongside machine learning prediction models for the design of unsupervised and automated intelligent systems for the prediction of prostate cancer. Two intelligent systems were designed and underpinned by unsupervised learning algorithms, namely, fuzzy c-means and agglomerative hierarchical clustering, where the various intelligent systems were able to make a prostate cancer prediction with accuracies of over 80% for the various classification metrics, alongside being able to predict an associated stage of the prostate cancer. Both designed intelligent systems offer a complimentary alternative to each other, and their relative merits are discussed in the paper. ry alternative to each other, and their relative merits are discussed in the paper.
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