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Deciphering protein signatures using color, morphological and topological analysis of immunohistochemically stained human tissues

机译:使用免疫组织化学染色的人体组织的颜色,形态和拓扑分析来解密蛋白质标记

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Images of tissue specimens enable evidence-based study of disease susceptibility and stratification. Moreover, staining technologies empower the evidencing of molecular expression patterns by multicolor visualization, thus enabling personalized disease treatment and prevention. However, translating molecular expression imaging into direct health benefits has been slow. Two major factors contribute to that. On the one hand, disease susceptibility and progression is a complex, multifactorial molecular process. Diseases, such as cancer, exhibit cellular heterogeneity, impeding the differentiation between diverse grades or types of cell formations. On the other hand, the relative quantification of the stained tissue selected features is ambiguous, tedious and time consuming, prone to clerical error, leading to intra- and inter-observer variability and low throughput. Image analysis of digital histopathology images is a fast-developing and exciting area of disease research that aims to address the above limitations. We have developed a computational framework that extracts unique signatures using color, morphological and topological information and allows the combination thereof. The integration of the above information enables diagnosis of disease with AUC as high as 0.97. Multiple staining show significant improvement with respect to most proteins, and an AUC as high as 0.99.
机译:组织标本的图像使得能够对疾病的易感性和分层进行基于证据的研究。此外,染色技术可通过多色可视化来证明分子表达模式,从而实现个性化的疾病治疗和预防。然而,将分子表达成像转化为直接的健康益处一直很慢。有两个主要因素促成这一点。一方面,疾病的易感性和进展是一个复杂的,多因素的分子过程。诸如癌症之类的疾病表现出细胞异质性,阻碍了不同等级或类型的细胞形成之间的区分。另一方面,所选择的染色组织特征的相对定量是模棱两可的,繁琐且耗时的,容易产生笔误,导致观察者之间和观察者之间的可变性和低通量。数字组织病理学图像的图像分析是疾病研究的一个快速发展且令人兴奋的领域,旨在解决上述局限性。我们已经开发出一种计算框架,可以使用颜色,形态和拓扑信息提取独特的特征并允许其组合。综合以上信息,可以诊断出AUC高达0.97的疾病。多次染色显示,相对于大多数蛋白质而言,显着改善,AUC高达0.99。

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