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Co-Occurrence Analysis for Discovery of Novel Breast Cancer Pathology Patterns

机译:共现分析发现新型乳腺癌病理模式

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To discover novel patterns in pathology co-occurrence, we have developed algorithms to analyze and visualize pathology co-occurrence. With access to a database of pathology reports, collected under a single protocol and reviewed by a single pathologist, we can conduct an analysis greater in its scope than previous studies looking at breast pathology co-occurrence. Because this data set is unique, specialized methods for pathology co-occurrence analysis and visualization are developed. Primary analysis is through a co-occurrence score based on the Jaccard coefficient. Density maps are used to visualize global co-occurrence. When our co-occurrence analysis is applied to a population stratified by menopausal status, we can successfully identify statistically significant differences in pathology co-occurrence patterns between premenopausal and postmenopausal women. Genomic and proteomic experiments are planned to discover biological mechanisms that may underpin differences seen in pathology patterns between populations.
机译:为了发现病理共存的新模式,我们开发了分析和可视化病理共存的算法。通过访问以单一方案收集并由一名病理学家审查的病理报告数据库,我们可以进行比以前研究乳腺病理共存的研究更大的分析范围。由于此数据集是唯一的,因此开发了用于病理共现分析和可视化的专用方法。主要分析是通过基于雅卡德系数的共现分数进行的。密度图用于可视化全局共现。当我们的同现分析应用于按绝经状态分层的人群时,我们可以成功地确定绝经前和绝经后妇女在病理同现模式上的统计学显着差异。计划进行基因组和蛋白质组学实验,以发现可能支持种群间病理模式差异的生物学机制。

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