Institute of Genomic and Personalized Medicine, College of Life Science, Huazhong University of Science and Technology, Wuhan, Hubei 430074, China.
Key Laboratory of Molecular Biophysics, Ministry of Education, College of Life Science, Huazhong University of Science and Technology, Wuhan, Hubei 430074, China.
Sci Rep. 2017 Mar 17;7:43265. doi: 10.1038/srep43265.
The morphology of breast tumors is complicated and diagnosis can be difficult. We present here a novel diagnostic model which we validate on both array-based and RNA sequencing platforms which reliably distinguishes this tumor type across multiple cohorts. We also examine how this molecular classification predicts sensitivity to common chemotherapeutics in cell-line based assays. A total of 1845 invasive breast cancer cases in six cohorts were collected, split into discovery and validation cohorts, and a classifier was created and compared to pathological diagnosis, grade and survival. In the validation cohorts the concordance of predicted diagnosis with a pathological diagnosis was 92%, and 97% when inconclusively classified cases were excluded. Tumor-derived cell lines were classified with the model as having predominantly ductal or lobular-like molecular physiologies, and sensitivity of these lines to relevant compounds was analyzed. A diagnostic tool can be created that reliably distinguishes lobular from ductal carcinoma and allows the classification of cell lines on the basis of molecular profiles associated with these tumor types. This tool may assist in improved diagnosis and aid in explorations of the response of lobular type breast tumor models to different compounds.
乳腺肿瘤的形态复杂,诊断困难。我们在此提出了一种新的诊断模型,该模型在基于阵列和 RNA 测序的平台上均得到了验证,可以可靠地区分多种队列中的这种肿瘤类型。我们还研究了这种分子分类如何预测细胞系基于测定对常见化疗药物的敏感性。共收集了六个队列中的 1845 例浸润性乳腺癌病例,分为发现队列和验证队列,并创建了一个分类器,并与病理诊断、分级和生存进行了比较。在验证队列中,预测诊断与病理诊断的一致性为 92%,排除不确定分类病例后为 97%。使用该模型对肿瘤衍生的细胞系进行分类,其具有以导管样或小叶样为主的分子生理学特征,并分析了这些细胞系对相关化合物的敏感性。可以创建一种可靠地区分小叶癌和导管癌的诊断工具,并可以根据与这些肿瘤类型相关的分子谱对细胞系进行分类。该工具可能有助于改善诊断,并有助于探索小叶型乳腺癌模型对不同化合物的反应。