Validation of a Quantifier-Based Fuzzy Classification System for Breast Cancer Patients on External Independent Cohorts

D. Soria, J. Garibaldi
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Abstract

Recent studies in breast cancer domains have identified seven distinct clinical phenotypes (groups) using immunohistochemical analysis and a variety of unsupervised learning techniques. Consensus among the clustering algorithms has been used to categorise patients into these specific groups, but often at the expenses of not classifying all patients. It is known that fuzzy methodologies can provide linguistic based classification rules to ease those from consensus clustering. The objective of this study is to present the validation of a recently developed extension of a fuzzy quantification subsethood-based algorithm on three sets of newly available breast cancer data. Results show that our algorithm is able to reproduce the seven biological classes previously identified, preserving their characterisation in terms of marker distributions and therefore their clinical meaning. Moreover, because our algorithm constitutes the fundamental basis of the newly developed Nottingham Prognostic Index Plus (NPI+), our findings demonstrate that this new medical decision making tool can help moving towards a more tailored care in breast cancer.
基于量化因子的乳腺癌患者模糊分类系统的外部独立队列验证
最近在乳腺癌领域的研究已经使用免疫组织化学分析和各种无监督学习技术确定了七种不同的临床表型(组)。聚类算法之间的共识已被用于将患者分类到这些特定的组中,但往往以不能对所有患者进行分类为代价。已知模糊方法可以提供基于语言的分类规则,以缓解一致性聚类的问题。本研究的目的是在三组新获得的乳腺癌数据上,验证最近开发的模糊量化基于子集的算法的扩展。结果表明,我们的算法能够重现先前确定的七个生物类别,保留其标记分布的特征,从而保留其临床意义。此外,由于我们的算法构成了新开发的诺丁汉预后指数+ (NPI+)的基础,我们的研究结果表明,这种新的医疗决策工具可以帮助乳腺癌患者实现更量身定制的护理。
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