Development of a Novel Proteomic Risk-Classifier for Prognostication of Patients With Early-Stage Hormone Receptor-Positive Breast Cancer.

IF 3.4 Q2 MEDICINE, RESEARCH & EXPERIMENTAL
Biomarker Insights Pub Date : 2018-07-30 eCollection Date: 2018-01-01 DOI:10.1177/1177271918789100
Charusheila Ramkumar, Ljubomir Buturovic, Sukriti Malpani, Arun Kumar Attuluri, Chetana Basavaraj, Chandra Prakash, Lekshmi Madhav, Dinesh Chandra Doval, Anurag Mehta, Manjiri M Bakre
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引用次数: 19

Abstract

Use of proteomic strategies to identify a risk classifier that estimates probability of distant recurrence in early-stage hormone receptor (HR)-positive breast cancer is relevant to physiological cellular function and therefore to intrinsic tumor biology. We used a 298-sample retrospective training set to develop an immunohistochemistry-based novel risk classifier called CanAssist-Breast (CAB) which combines 5 prognostically relevant biomarkers and 3 clinico-pathological parameters to arrive at probability of distant recurrence within 5 years from diagnosis. Five selected biomarkers, namely, CD44, ABCC4, ABCC11, N-cadherin, and pan-cadherin, were chosen based on their role in tumor metastasis. The chosen biomarkers represent the hallmarks of cancer and are distinct from other proliferation and gene expression-based prognostic signatures. The 3 clinico-pathological parameters integrated into the machine learning-based CAB algorithm are tumor size, tumor grade, and node status. These features are used to calculate a "CAB risk score" that classifies patients into low- or high-risk groups and predicts probability of distant recurrence in 5 years. Independent clinical validation of CAB in a retrospective study comprising 196 patients indicated that distant metastasis-free survival (DMFS) was significantly different in the 2 risk groups. The difference in DMFS between the low- and high-risk categories was 19% in the validation cohort (P = .0002). In multivariate analysis, CAB risk score was the most significant independent predictor of distant recurrence with a hazard ratio of 4.3 (P = .0003). CanAssist-Breast is a precise and unique machine learning-based proteomic risk-classifier that can assist in risk stratification of patients with early-stage HR+ breast cancer.

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一种用于早期激素受体阳性乳腺癌患者预后的新型蛋白质组学风险分类器的开发。
使用蛋白质组学策略来确定风险分类器,以估计早期激素受体(HR)阳性乳腺癌远处复发的概率,这与生理细胞功能相关,因此与内在的肿瘤生物学有关。我们使用298个样本的回顾性训练集来开发一种基于免疫组织化学的新型风险分类器,称为CanAssist-Breast (CAB),该分类器结合了5个预后相关生物标志物和3个临床病理参数,以得出诊断后5年内远处复发的概率。根据其在肿瘤转移中的作用选择5种生物标志物,分别为CD44、ABCC4、ABCC11、N-cadherin和pan-cadherin。所选择的生物标志物代表了癌症的特征,与其他基于增殖和基因表达的预后特征不同。整合到基于机器学习的CAB算法中的3个临床病理参数是肿瘤大小、肿瘤分级和节点状态。这些特征用于计算“CAB风险评分”,将患者分为低或高风险组,并预测5年内远处复发的概率。在一项包含196例患者的回顾性研究中,CAB的独立临床验证表明,两个风险组的远端无转移生存(DMFS)有显著差异。在验证队列中,低风险和高风险类别之间的DMFS差异为19% (P = 0.0002)。在多变量分析中,CAB风险评分是远处复发最显著的独立预测因子,风险比为4.3 (P = .0003)。CanAssist-Breast是一种精确而独特的基于机器学习的蛋白质组学风险分类器,可以帮助早期HR+乳腺癌患者进行风险分层。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biomarker Insights
Biomarker Insights MEDICINE, RESEARCH & EXPERIMENTAL-
CiteScore
6.00
自引率
0.00%
发文量
26
审稿时长
8 weeks
期刊介绍: An open access, peer reviewed electronic journal that covers all aspects of biomarker research and clinical applications.
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