Department of Pathology, The University of Texas MD Anderson Cancer Center, Houston, Texas, United States of America.
PLoS One. 2012;7(5):e36383. doi: 10.1371/journal.pone.0036383. Epub 2012 May 8.
Small sample sizes used in previous studies result in a lack of overlap between the reported gene signatures for prediction of chemotherapy response. Although morphologic features, especially tumor nuclear morphology, are important for cancer grading, little research has been reported on quantitatively correlating cellular morphology with chemotherapy response, especially in a large data set. In this study, we have used a large population of patients to identify molecular and morphologic signatures associated with chemotherapy response in serous ovarian carcinoma.
METHODOLOGY/PRINCIPAL FINDINGS: A gene expression model that predicts response to chemotherapy is developed and validated using a large-scale data set consisting of 493 samples from The Cancer Genome Atlas (TCGA) and 244 samples from an Australian report. An identified 227-gene signature achieves an overall predictive accuracy of greater than 85% with a sensitivity of approximately 95% and specificity of approximately 70%. The gene signature significantly distinguishes between patients with unfavorable versus favorable prognosis, when applied to either an independent data set (P = 0.04) or an external validation set (P<0.0001). In parallel, we present the production of a tumor nuclear image profile generated from 253 sample slides by characterizing patients with nuclear features (such as size, elongation, and roundness) in incremental bins, and we identify a morphologic signature that demonstrates a strong association with chemotherapy response in serous ovarian carcinoma.
A gene signature discovered on a large data set provides robustness in accurately predicting chemotherapy response in serous ovarian carcinoma. The combination of the molecular and morphologic signatures yields a new understanding of potential mechanisms involved in drug resistance.
以往研究中使用的小样本量导致报道的化疗反应预测基因特征之间缺乏重叠。尽管形态特征,特别是肿瘤核形态,对癌症分级很重要,但很少有研究报道定量地将细胞形态与化疗反应相关联,尤其是在大数据集中。在这项研究中,我们使用了大量患者的样本,以确定与浆液性卵巢癌化疗反应相关的分子和形态特征。
方法/主要发现:使用由来自癌症基因组图谱(TCGA)的 493 个样本和来自澳大利亚报告的 244 个样本组成的大规模数据集,开发并验证了一种预测化疗反应的基因表达模型。确定的 227 个基因特征的总体预测准确性大于 85%,灵敏度约为 95%,特异性约为 70%。当应用于独立数据集(P=0.04)或外部验证集(P<0.0001)时,该基因特征显著区分了预后不良与预后良好的患者。同时,我们提出了一种从 253 个样本切片生成的肿瘤核图像特征的产生方法,通过对具有核特征(如大小、伸长和圆形度)的患者进行增量分箱来描述特征,并确定了一种形态特征,该特征与浆液性卵巢癌的化疗反应具有很强的相关性。
从大数据集中发现的基因特征可准确预测浆液性卵巢癌的化疗反应,具有稳健性。分子和形态特征的结合为药物耐药性涉及的潜在机制提供了新的认识。