Department of Genetics, Cell Biology and Development, University of Minnesota, Minneapolis, MN, USA.
School of Statistics, University of Minnesota, Minneapolis, MN, USA.
Leukemia. 2016 May;30(5):1094-102. doi: 10.1038/leu.2015.361. Epub 2015 Dec 29.
Multiple myeloma (MM) is characterized by significant genetic diversity at subclonal levels that have a defining role in the heterogeneity of tumor progression, clinical aggressiveness and drug sensitivity. Although genome profiling studies have demonstrated heterogeneity in subclonal architecture that may ultimately lead to relapse, a gene expression-based prediction program that can identify, distinguish and quantify drug response in sub-populations within a bulk population of myeloma cells is lacking. In this study, we performed targeted transcriptome analysis on 528 pre-treatment single cells from 11 myeloma cell lines and 418 single cells from 8 drug-naïve MM patients, followed by intensive bioinformatics and statistical analysis for prediction of proteasome inhibitor sensitivity in individual cells. Using our previously reported drug response gene expression profile signature at the single-cell level, we developed an R Statistical analysis package available at https://github.com/bvnlabSCATTome, SCATTome (single-cell analysis of targeted transcriptome), that restructures the data obtained from Fluidigm single-cell quantitative real-time-PCR analysis run, filters missing data, performs scaling of filtered data, builds classification models and predicts drug response of individual cells based on targeted transcriptome using an assortment of machine learning methods. Application of SCATT should contribute to clinically relevant analysis of intratumor heterogeneity, and better inform drug choices based on subclonal cellular responses.
多发性骨髓瘤(MM)的特征是亚克隆水平存在显著的遗传多样性,这些多样性在肿瘤进展、临床侵袭性和药物敏感性的异质性中具有决定性作用。尽管基因组分析研究已经证明了亚克隆结构的异质性可能最终导致复发,但缺乏一种基于基因表达的预测程序,可以识别、区分和量化骨髓瘤细胞群体中亚群的药物反应。在这项研究中,我们对 11 个骨髓瘤细胞系的 528 个预处理单细胞和 8 个初治 MM 患者的 418 个单细胞进行了靶向转录组分析,随后进行了密集的生物信息学和统计学分析,以预测个体细胞中蛋白酶体抑制剂的敏感性。使用我们之前在单细胞水平报告的药物反应基因表达特征,我们开发了一个可在 https://github.com/bvnlabSCATTome 上获得的 R 统计分析包,即 SCATTome(靶向转录组的单细胞分析),它重新构建了从 Fluidigm 单细胞定量实时 PCR 分析运行中获得的数据,过滤缺失数据,对过滤后的数据进行缩放,构建分类模型,并基于靶向转录组使用各种机器学习方法预测个体细胞的药物反应。SCATT 的应用应该有助于对肿瘤内异质性进行临床相关分析,并根据亚克隆细胞反应更好地告知药物选择。