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Exonic expression profiling of breast cancer and benign lesions: a retrospective analysis.

机译:乳腺癌和良性病变的外显子表达谱:回顾性分析。

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BACKGROUND: Gene-expression arrays have generated molecular predictors of relapse and drug sensitivity in breast cancer. We aimed to identify exons differently expressed in malignant and benign breast lesions and to generate a molecular classifier for breast-cancer diagnosis. METHODS: 165 breast samples were obtained by fine-needle aspiration. Complementary DNA was hybridised on splice array. A nearest centroid prediction rule was developed to classify lesions as malignant or benign on a training set, and its performance was assessed on an independent validation set. A two-way ANOVA model identified probe sets with differential expression in malignant and benign lesions while adjusting for scan dates. FINDINGS: 120 breast cancers and 45 benign lesions were included in the study. A molecular classifier for breast-cancer diagnosis with 1228 probe sets was generated from the training set (n=94). This signature accurately classified all samples (100% accuracy, 95% CI 96-100%). In the validation set (n=71),the molecular predictor accurately classified 68 of 71 tumours (96%, 88-99%). When the 165 samples were taken into account, 37 858 exon probe sets (5.4%) and 3733 genes (7.0%) were differently expressed in malignant and benign lesions (threshold: adjusted p<0.05). Genes involved in spliceosome assembly were significantly overexpressed in malignant disease (permutation p=0.002). In the same population of 165 samples, 956 exon probe sets presented both higher intensity and higher splice index in breast cancer than in benign lesions, although located on unchanged genes. INTERPRETATION: Many exons are differently expressed by breast cancer and benign lesions, and alternative transcripts contribute to the molecular characteristics of breast malignancy. Development of molecular classifiers for breast-cancer diagnosis with fine-needle aspiration should be possible.
机译:背景:基因表达阵列已产生乳腺癌复发和药物敏感性的分子预测因子。我们旨在鉴定在恶性和良性乳腺病变中表达不同的外显子,并生成用于乳腺癌诊断的分子分类器。方法:通过细针抽吸获得165份乳房样品。互补DNA在剪接阵列上杂交。在训练集上制定了最接近的质心预测规则,以将病变分类为恶性或良性,并在独立的验证集上评估了其表现。双向ANOVA模型可在调整扫描日期的同时确定在恶性和良性病变中差异表达的探针组。研究结果:120例乳腺癌和45例良性病变被纳入研究。从训练集中生成了带有1228个探针组的乳腺癌诊断分子分类器(n = 94)。此签名对所有样品进行了准确分类(准确度为100%,95%CI 96-100%)。在验证组(n = 71)中,分子预测因子准确分类了71个肿瘤中的68个(96%,88-99%)。当考虑165个样本时,在恶性和良性病变中37 858个外显子探针组(5.4%)和3733个基因(7.0%)的表达不同(阈值:调整后的p <0.05)。参与剪接体组装的基因在恶性疾病中显着过表达(排列p = 0.002)。在相同的165个样本人群中,尽管位于不变的基因上,但956个外显子探针组与良性病变相比,乳腺癌的强度和剪接指数更高。解释:许多外显子在乳腺癌和良性病变中的表达方式不同,另外的转录本也有助于乳腺癌的分子特征。应当开发用于细针穿刺的乳腺癌诊断的分子分类器。

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