Center for Complexity and Biosystems, Department of Physics, University of Milan, Via Celoria 16, 20133 Milano, Italy.
Center for Complexity and Biosystems, Department of Physics, University of Milan, Via Celoria 16, 20133 Milano, Italy; CNR - Consiglio Nazionale delle Ricerche, Istituto di Chimica della Materia Condensata e di Tecnologie per l'Energia, via R. Cozzi 53, 20125 Milano, Italy.
Cell Syst. 2021 May 19;12(5):457-462.e4. doi: 10.1016/j.cels.2021.04.007. Epub 2021 May 6.
Predicting the metastasis risk in patients with a primary breast cancer tumor is of fundamental importance to decide the best therapeutic strategy in the framework of personalized medicine. Here, we present ARIADNE, a general algorithmic strategy to assess the risk of metastasis from transcriptomic data of patients with triple-negative breast cancer, a subtype of breast cancer with poorer prognosis with respect to the other subtypes. ARIADNE identifies hybrid epithelial/mesenchymal phenotypes by mapping gene expression data into the states of a Boolean network model of the epithelial-mesenchymal pathway. Using this mapping, it is possible to stratify patients according to their prognosis, as we show by validating the strategy with three independent cohorts of triple-negative breast cancer patients. Our strategy provides a prognostic tool that could be applied to other biologically relevant pathways, in order to estimate the metastatic risk for other breast cancer subtypes or other tumor types. A record of this paper's transparent peer review process is included in the supplemental information.
预测原发性乳腺癌患者的转移风险对于在个性化医疗框架内决定最佳治疗策略至关重要。在这里,我们提出了 ARIADNE,这是一种从三阴性乳腺癌(一种预后比其他亚型差的乳腺癌亚型)患者的转录组数据评估转移风险的通用算法策略。ARIADNE 通过将基因表达数据映射到上皮-间充质途径的布尔网络模型的状态来识别混合上皮/间充质表型。通过使用这种映射,我们可以根据患者的预后对其进行分层,正如我们通过对三阴性乳腺癌患者的三个独立队列进行验证策略所证明的那样。我们的策略提供了一种预后工具,可应用于其他生物学上相关的途径,以估计其他乳腺癌亚型或其他肿瘤类型的转移风险。本文的透明同行评审过程记录包含在补充信息中。