摘要A31:导管原位癌的风险分层:通过表型生物标志物和单细胞分辨率的机器学习分析活原代细胞的预后测试的分析验证

A. Chander, Michael S. Manak, J. Varsanik, B. Hogan, G. Sant, K. Knopf
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引用次数: 0

摘要

很大程度上由于肿瘤的异质性,诊断为乳腺导管原位癌(DCIS)的患者的风险分层仍然是一个重大挑战。DCIS的管理也是一个问题,因为我们希望对患者的肿瘤进行个性化治疗,以避免低风险病变的过度治疗或DCIS治疗不足,从而可能复发或发展为侵袭性癌症。将治疗与疾病的潜在严重程度相匹配,是在这个社会非常关注的时代实施具有成本效益的癌症治疗的关键。本研究的目的是分析验证一种基于表型的精确风险分层工具,该工具能够以超过80%的灵敏度和特异性预测哪些患者会发展为浸润性癌症。利用快速培养原代乳腺活检细胞的新能力,我们提出了一种“片上活检”微流控平台,该平台通过机器视觉量化动态和静态表型生物标志物,通过机器学习算法生成预测性临床评分,以确定DCIS患者是否会经历侵袭性癌症。在一项盲法研究中,收集了47例连续的乳房肿瘤切除或乳房切除术样本,并进行了客观分析,使用机器视觉软件以单细胞分辨率测量了1000种表型生物标志物。生物标志物测量被输入到机器学习算法中,以开发预测统计算法。统计算法能够独立预测手术不良病理特征,如结外延伸、分级、淋巴血管侵袭、淋巴侵袭、小叶原位癌(LCIS)和DCIS,敏感性和特异性均大于90%。其他基于机器学习的算法能够预测DCIS患者是否更有可能发生后续转移,通过测量淋巴血管侵袭和/或淋巴侵袭,曲线下面积(AUC) > 0.85。本研究首次证实了通过活的原代活检细胞预测乳腺癌不良病理特征,为开发一种强大的精确风险分层工具对DCIS进行风险分层提供了基础。此外,所描述的方法及其以高通量方式以单细胞分辨率快速分析原发性乳腺活检组织的能力,为进一步了解乳腺癌肿瘤异质性提供了强大的研究工具,有助于开发个性化治疗方法。将成本效益分析应用于我们的方法将实现提供具有成本效益、以患者为中心和适当的乳腺癌和DCIS护理的三重目标。注:本摘要未在会议上发表。引文格式:Ashok Chander, Michael Manak, Jonathan Varsanik, Brad Hogan, Grannum Sant, Kevin Knopf。导管原位癌的风险分层:通过表型生物标志物和单细胞分辨率的机器学习分析活原代细胞的预后测试的分析验证[摘要]。摘自:AACR特别会议论文集:乳腺癌研究进展;2017年10月7-10日;费城(PA): AACR;中华肿瘤杂志,2018;16(8):1 - 8。
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Abstract A31: Risk stratification of ductal carcinoma in situ: Analytical validation of a prognostic test analyzing live-primary cells via phenotypic biomarkers and machine learning at single-cell resolution
Largely due to tumor heterogeneity, risk stratification of patients diagnosed with ductal carcinoma in situ (DCIS) of the breast remains a significant challenge. Management of DCIS is also problematic as we wish to personalize treatment of a patient’s tumor in order to avoid overtreatment of lower-risk lesions or undertreatment of DCIS that may recur or progress into invasive cancer. Matching treatment to the underlying severity of the illness is key to practicing cost-effective cancer care in an era where this is a very large concern to society. The aim of this study was to analytically validate a precision risk-stratification tool based on phenotype, which is capable of predicting which patients will develop invasive cancer with greater than 80% sensitivity and specificity. Leveraging the novel capability to rapidly culture primary breast biopsy cells, we present a “biopsy-on-a-chip” microfluidic platform that quantifies dynamic and static phenotypic biomarkers via machine vision to generate predictive clinical scores via machine learning algorithms to determine if a DCIS patient will experience invasive cancer. 47 consecutive lumpectomy or mastectomy samples were collected and objectively analyzed in a blinded study, measuring 1000 phenotypic biomarkers with single-cell resolution using machine vision software. Biomarker measurements were input into machine learning algorithms to develop predictive statistical algorithms. Statistical algorithms were able to independently predict surgical adverse pathology features such as extranodal extension, grade, lymphovascular invasion, lymph invasion, lobular carcinoma in situ (LCIS), and DCIS with sensitivities and specificities greater than 90%. Additional machine learning based algorithms were able to predict if DCIS patients were more likely to develop subsequent metastasis as measured by lymphovascular invasion and/or lymphatic invasion with area under the curve (AUC) > 0.85. This study is the first study to demonstrate the prediction of breast cancer adverse pathology features from live primary biopsy cells and provides the basis to develop a powerful precision risk-stratification tool to risk-stratify DCIS. Furthermore, the methodology described and its ability to rapidly analyze primary breast biopsy tissue with single-cell resolution in a high-throughput manner engenders a powerful research tool to further understand tumor heterogeneity in breast cancer towards the development of personalized therapeutics. Applications of cost effectiveness analysis to our methodology will achieve the triple goal of providing cost-effective, patient-centered, and appropriate breast cancer and DCIS care. Note: This abstract was not presented at the conference. Citation Format: Ashok Chander, Michael Manak, Jonathan Varsanik, Brad Hogan, Grannum Sant, Kevin Knopf. Risk stratification of ductal carcinoma in situ: Analytical validation of a prognostic test analyzing live-primary cells via phenotypic biomarkers and machine learning at single-cell resolution [abstract]. In: Proceedings of the AACR Special Conference: Advances in Breast Cancer Research; 2017 Oct 7-10; Hollywood, CA. Philadelphia (PA): AACR; Mol Cancer Res 2018;16(8_Suppl):Abstract nr A31.
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Abstract A30: PELP1 and AIB1 cooperate to promote breast cancer progression in ER+ breast cancer models Abstract A31: Risk stratification of ductal carcinoma in situ: Analytical validation of a prognostic test analyzing live-primary cells via phenotypic biomarkers and machine learning at single-cell resolution Abstract A29: Investigation of RECQL variants in European and African American breast cancer cohorts
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