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Quantifying chromosomal copy number alterations in breast ductal carcinoma in situ: A deep learning based approach

机译:量化乳腺导管癌的染色体拷贝数变化:一种基于深度学习的方法

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Genomic instability, as measured by chromosomal copy number alterations (CNAs), is associated with progression of ductal carcinoma in situ (DCIS) to invasive breast carcinoma (IBC), and is, therefore, a potential prognostic marker. In this work, we develop a novel image analysis pipeline that utilizes a cascade of biologically salient deep learning models to identify malignant epithelial cells and quantify CNAs. Our automatic approach measures CNAs with a high degree of agreement with those observed by human examiners and performs multiple times faster. It greatly increases the number of cells measured, compared to conventional clinical approaches, and allows for rigorous statistical analysis of specimens. This makes the approach suitable for clinical utility and large-scale studies, not only for breast cancer but also for other types of diseases.
机译:通过染色体拷贝数改变(CNA)进行测量的基因组不稳定性与导管原位癌(DCIS)演变为浸润性乳腺癌(IBC)有关,因此是潜在的预后标志物。在这项工作中,我们开发了一种新颖的图像分析管道,该管道利用了一系列生物显着的深度学习模型来识别恶性上皮细胞并量化CNA。我们的自动方法可以与CNA高度一致地测量CNA,并与人类检查员所观察到的一致,并且执行速度要快好几倍。与传统的临床方法相比,它大大增加了所测量的细胞数量,并允许对标本进行严格的统计分析。这使得该方法不仅适用于乳腺癌而且适用于其他类型的疾病,适用于临床应用和大规模研究。

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