| Literature DB >> 30835256 |
Terisse A Brocato1, Ursa Brown-Glaberman2, Zhihui Wang3,4, Reed G Selwyn5,6, Colin M Wilson6, Edward F Wyckoff7, Lesley C Lomo8, Jennifer L Saline6, Anupama Hooda-Nehra9,10, Renata Pasqualini9,11, Wadih Arap9,10, C Jeffrey Brinker1,7,12,13, Vittorio Cristini3,4,14.
Abstract
In clinical breast cancer intervention, selection of the optimal treatment protocol based on predictive biomarkers remains an elusive goal. Here, we present a modeling tool to predict the likelihood of breast cancer response to neoadjuvant chemotherapy using patient specific tumor vasculature biomarkers. A semi-automated analysis was implemented and performed on 3990 histological images from 48 patients, with 10-208 images analyzed for each patient. We applied a histology-based model to resected primary breast cancer tumors (n = 30), and then evaluated a cohort of patients (n = 18) undergoing neoadjuvant chemotherapy, collecting pre- and post-treatment pathology specimens and MRI data. We found that core biopsy samples can be used with acceptable accuracy (r = 0.76) to determine histological parameters representative of the whole tissue region. Analysis of model histology parameters obtained from tumor vasculature measurements, specifically diffusion distance divided by radius of drug source (L/rb) and blood volume fraction (BVF), provides a statistically significant separation of patients obtaining a pathologic complete response (pCR) from those that do not (Student's t-test; P < 0.05). With this model, it is feasible to evaluate primary breast tumor vasculature biomarkers in a patient specific manner, thereby allowing a precision approach to breast cancer treatment.Entities:
Keywords: Breast cancer; Oncology
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Year: 2019 PMID: 30835256 PMCID: PMC6538356 DOI: 10.1172/jci.insight.126518
Source DB: PubMed Journal: JCI Insight ISSN: 2379-3708