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肿瘤蛋白质组分析可预测乳腺癌对化疗的敏感性。

Tumor proteomic profiling predicts the susceptibility of breast cancer to chemotherapy.

作者信息

He Jianbo, Shen Dejun, Chung Debra U, Saxton Romaine E, Whitelegge Julian P, Faull Kym F, Chang Helena R

机构信息

Department of Surgery, Gonda/UCLA Breast Cancer Research Laboratory, University of California at Los Angeles, Los Angeles, CA 90095, USA.

出版信息

Int J Oncol. 2009 Oct;35(4):683-92. doi: 10.3892/ijo_00000380.

Abstract

Chemotherapy is often used for breast cancer treatment, but individual outcome varies widely. We hypothesized that tumor proteomic profiles obtained prior to chemotherapy may predict the individual tumor response to treatment. The goal of our study was to explore feasibility of using proteomic profiling to preselect patients for an effective chemotherapeutic regimen. Tumors from 52 patients with T2-T4 breast cancer were prospectively collected before neoadjuvant chemotherapy, and were analyzed using surface-enhanced laser desorption ionization/time of flight (SELDI) mass spectrometry. Mass spectral profiles were obtained from tumors with various sensitivities to chemotherapy. Both non-supervised hierarchical clustering and supervised neural network-based classification approaches were employed to compare the profiles. The first two thirds of the enrolled cases (35) were allocated to a training set to select peaks characteristic of resistant tumors. The candidate peaks were used to develop a predicting rule to evaluate the remaining 17 specimens in the validation set. In the training set, the most prominent differences were found between drug resistant and drug susceptible tumors by non-supervised hierarchical clustering. In the validation set, the supervised classification with the K nearest neighbor (KNN) model correctly classified most tumor responses with an accuracy rate of 92.3% [100% of resistant tumors (4/4), and 84.6% of the tumors with favorable response (11/13)]. In the entire group, a single peak at m/z 16,906 correctly separated 88.9% of the tumors with pathologically complete response, and 91.7% of the resistant tumors. The data suggest that breast cancer protein biomarkers may be used to pre-select patients for optimal chemotherapeutic treatment.

摘要

化疗常用于乳腺癌治疗,但个体治疗效果差异很大。我们推测化疗前获得的肿瘤蛋白质组图谱可能预测个体肿瘤对治疗的反应。我们研究的目的是探索使用蛋白质组分析来预先选择患者进行有效化疗方案的可行性。前瞻性收集了52例T2 - T4期乳腺癌患者在新辅助化疗前的肿瘤,并使用表面增强激光解吸电离/飞行时间(SELDI)质谱进行分析。从对化疗具有不同敏感性的肿瘤中获得质谱图谱。采用非监督层次聚类和基于监督神经网络的分类方法来比较图谱。将入组病例的前三分之二(35例)分配到训练集,以选择耐药肿瘤的特征峰。候选峰用于制定预测规则,以评估验证集中其余的17个样本。在训练集中,通过非监督层次聚类发现耐药和敏感肿瘤之间存在最显著的差异。在验证集中,使用K最近邻(KNN)模型的监督分类正确分类了大多数肿瘤反应,准确率为92.3%[耐药肿瘤的100%(4/4),以及反应良好肿瘤的84.6%(11/13)]。在整个组中,质荷比为16,906处的单个峰正确区分了88.9%的病理完全缓解肿瘤和91.7%的耐药肿瘤。数据表明,乳腺癌蛋白质生物标志物可用于预先选择患者进行最佳化疗治疗。

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