A novel computational analysis of heterogeneity in breast tissue

S. Maskery, Yonghong Zhang, R. Jordan, Hai Hu, C. Shriver, J. Hooke, M. Liebman
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引用次数: 1

Abstract

Breast cancer presents as part of a heterogeneous mix of breast disease pathologies whose biological origins are poorly understood. A systematic and quantitative study of heterogeneity in breast tissue would enable us to characterize the disease states present, and use that characterization to guide further research into the complex pathologic associations within breast tissue and between patients. Initially we focus on characterizing the co-occurrence of breast pathology-related diagnoses. In particular, this abstract presents our initial results from characterizing the co-occurrence of double and triple diagnoses. We will expand this analysis to co-occurrence of larger diagnosis sets. Additionally, we plan to analyze co-occurrence with other types of patient information, including: socio-economic status, family history, lifestyle choices, co-morbidity with other diseases, and many other factors hypothesized to contribute to an increased risk for developing breast cancer.
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一种新的乳腺组织异质性计算分析
乳腺癌是多种乳腺疾病病理学的一部分,其生物学起源尚不清楚。对乳腺组织异质性的系统和定量研究将使我们能够描述当前的疾病状态,并利用这种特征来指导对乳腺组织内部和患者之间复杂病理关联的进一步研究。最初,我们的重点是表征乳房病理相关诊断的共同发生。特别是,这个摘要提出了我们的初步结果,从特征的双重和三重诊断。我们将把这种分析扩展到更大的诊断集的共现。此外,我们计划分析与其他类型的患者信息的共发病情况,包括:社会经济地位、家族史、生活方式选择、与其他疾病的共发病,以及许多其他可能导致乳腺癌风险增加的因素。
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