Litcius/Paper detail

Robust inflammatory breast cancer gene signature using nonparametric random forest analysis

Alaa Zare, Lynne‐Marie Postovit, John Maringa Githaka

2021Breast Cancer Research26 citationsDOIOpen Access PDF

Abstract

Inflammatory breast cancer (IBC) is a rare, aggressive cancer found in all the molecular breast cancer subtypes. Despite extensive previous efforts to screen for transcriptional differences between IBC and non-IBC patients, a robust IBC-specific molecular signature has been elusive. We report a novel IBC-specific gene signature (59 genes; G59) that achieves 100% accuracy in discovery and validation samples (45/45 correct classification) and remarkably only misclassified one sample (60/61 correct classification) in an independent dataset. G59 is independent of ER/HER2 status, molecular subtypes and is specific to untreated IBC samples, with most of the genes being enriched for plasma membrane cellular component proteins, interleukin (IL), and chemokine signaling pathways. Our finding suggests the existence of an IBC-specific molecular signature, paving the way for the identification and validation of targetable genomic drivers of IBC.

Topics & Concepts

Breast cancerInflammatory breast cancerGene signatureSurgical oncologyComputational biologyCancerRandom forestGeneMedicineBioinformaticsBiologyOncologyGene expressionInternal medicineGeneticsComputer scienceMachine learningCancer-related molecular mechanisms researchGene expression and cancer classificationBioinformatics and Genomic Networks