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Comparison of unsupervised machine-learning methods to identify metabolomic signatures in patients with localized breast cancer

机译:无监督的机器学习方法的比较鉴定局部乳腺癌患者代谢组织的研究

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摘要

Genomics and transcriptomics have led to the widely-used molecular classification of breast cancer (BC). However, heterogeneous biological behaviors persist within breast cancer subtypes. Metabolomics is a rapidly-expanding field of study dedicated to cellular metabolisms affected by the environment. The aim of this study was to compare metabolomic signatures of BC obtained by 5 different unsupervised machine learning (ML) methods. Fifty-two consecutive patients with BC with an indication for adjuvant chemotherapy between 2013 and 2016 were retrospectively included. We performed metabolomic profiling of tumor resection samples using liquid chromatography-mass spectrometry. Here, four hundred and forty-nine identified metabolites were selected for further analysis. Clusters obtained using 5 unsupervised ML methods (PCA k-means, sparse k-means, spectral clustering, SIMLR and k-sparse) were compared in terms of clinical and biological characteristics. With an optimal partitioning parameter k = 3, the five methods identified three prognosis groups of patients (favorable, intermediate, unfavorable) with different clinical and biological profiles. SIMLR and K-sparse methods were the most effective techniques in terms of clustering. In-silico survival analysis revealed a significant difference for 5-year predicted OS between the 3 clusters. Further pathway analysis using the 449 selected metabolites showed significant differences in amino acid and glucose metabolism between BC histologic subtypes. Our results provide proof-of-concept for the use of unsupervised ML metabolomics enabling stratification and personalized management of BC patients. The design of novel computational methods incorporating ML and bioinformatics techniques should make available tools particularly suited to improving the outcome of cancer treatment and reducing cancer-related mortalities.
机译:基因组学和转录组织导致了乳腺癌(BC)的广泛使用的分子分类。然而,异质生物行为持续存在于乳腺癌亚型中。代谢组学是一种迅速扩大的研究领域,致力于受环境影响的细胞代谢。本研究的目的是比较5种不同无监督机器学习(ML)方法获得的BC的代谢签名。回顾性包括在2013年和2016年间BC的52名患有BC的辅助化疗。我们使用液相色谱 - 质谱法对肿瘤切除样品进行了代谢组分析。这里,选择四百四十九个鉴定的代谢物进行进一步分析。在临床和生物学特征方面比较了使用5个无调节ML方法获得的簇(PCA K-MAX,PCA K-MAT,稀疏K型,SIMPLR和K-SPARSES)。具有最佳分配参数k = 3,五种方法确定了具有不同临床和生物谱的患者的三种预后(有利,中间,不利)。 SIMLR和K稀疏方法是聚类方面最有效的技术。在三种簇之间的5年预测OS中,硅存活分析显示出巨大差异。使用449所选代谢物的进一步途径分析显示出BC组织学亚型之间的氨基酸和葡萄糖代谢的显着差异。我们的结果为使用无监督ML代谢组学提供了概念,可实现BC患者的分层和个性化管理。结合ML和生物信息学技术的新型计算方法的设计应使可用的工具特别适合于改善癌症治疗的结果并降低癌症相关的死亡率。

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