Mian Shahid, Ball Graham, Hornbuckle Jo, Holding Finn, Carmichael James, Ellis Ian, Ali Selman, Li Geng, McArdle Stephanie, Creaser Colin, Rees Robert
Interdisciplinary Biomedical Research Building, Faculty of Science and Land-based Studies, Nottingham Trent University, Nottingham, UK.
Proteomics. 2003 Sep;3(9):1725-37. doi: 10.1002/pmic.200300526.
An ability to predict the likelihood of cellular response towards particular chemotherapeutic agents based upon protein expression patterns could facilitate the identification of biological molecules with previously undefined roles in the process of chemoresistance/chemosensitivity, and if robust enough these patterns might also be exploited towards the development of novel predictive assays. To ascertain whether proteomic based molecular profiling in conjunction with artificial neural network (ANN) algorithms could be applied towards the specific recognition of phenotypic patterns between either control or drug treated and chemosensitive or chemoresistant cellular populations, a combined approach involving MALDI-TOF matrix-assisted laser desorption/ionization-time of flight mass spectrometry, Ciphergen protein chip technology and ANN algorithms have been applied to specifically identify proteomic 'fingerprints' indicative of treatment regimen for chemosensitive (MCF-7, T47D) and chemoresistant (MCF-7/ADR) breast cancer cell lines following exposure to Doxorubicin or Paclitaxel. The results indicate that proteomic patterns can be identified by ANN algorithms to correctly assign 'class' for treatment regimen (e.g. control/drug treated or chemosensitive/chemoresistant) with a high degree of accuracy using boot-strap statistical validation techniques and that biomarker ion patterns indicative of response/non-response phenotypes are associated with MCF-7 and MCF-7/ADR cells exposed to Doxorubicin. We have also examined the predictive capability of this approach towards MCF-7 and T47D cells to ascertain whether prediction could be made based upon treatment regimen irrespective of cell lineage. Models were identified that could correctly assign class (control or Paclitaxel treatment) for 35/38 samples of an independent dataset. A similar level of predictive capability was also found (> 92%; n = 28) when proteomic patterns derived from the drug resistant cell line MCF-7/ADR were compared against those derived from MCF-7 and T47D as a model system of drug resistant and drug sensitive phenotypes. This approach might offer a potential methodology for predicting the biological behaviour of cancer cells towards particular chemotherapeutics and through protein isolation and sequence identification could result in the identification of biological molecules associated with chemosensitive/chemoresistance tumour phenotypes.
基于蛋白质表达模式预测细胞对特定化疗药物反应可能性的能力,有助于识别在化疗耐药/化疗敏感性过程中具有先前未明确作用的生物分子,并且如果这些模式足够可靠,它们还可能被用于开发新的预测检测方法。为了确定基于蛋白质组学的分子谱分析结合人工神经网络(ANN)算法是否可用于特异性识别对照或药物处理以及化疗敏感或化疗耐药细胞群体之间的表型模式,一种结合基质辅助激光解吸/电离飞行时间质谱(MALDI-TOF)、Ciphergen蛋白质芯片技术和ANN算法的联合方法已被应用于特异性识别指示化疗敏感(MCF-7、T47D)和化疗耐药(MCF-7/ADR)乳腺癌细胞系在暴露于多柔比星或紫杉醇后的治疗方案的蛋白质组“指纹”。结果表明,使用自助统计验证技术,ANN算法可以识别蛋白质组模式,以高度准确地为治疗方案(例如对照/药物处理或化疗敏感/化疗耐药)正确分配“类别”,并且指示反应/无反应表型的生物标志物离子模式与暴露于多柔比星的MCF-7和MCF-7/ADR细胞相关。我们还研究了该方法对MCF-7和T47D细胞的预测能力,以确定是否可以基于治疗方案进行预测,而不考虑细胞系。已确定的模型可以为独立数据集中的35/38个样本正确分配类别(对照或紫杉醇处理)。当将耐药细胞系MCF-7/ADR衍生的蛋白质组模式与作为耐药和药物敏感表型模型系统的MCF-7和T47D衍生的蛋白质组模式进行比较时,也发现了类似水平的预测能力(>92%;n = 28)。这种方法可能为预测癌细胞对特定化疗药物的生物学行为提供一种潜在的方法,并且通过蛋白质分离和序列鉴定可能导致识别与化疗敏感/化疗耐药肿瘤表型相关的生物分子。