首页> 外文期刊>Karbala International Journal of Modern Science >Two-Dimensional Quantitative Profiling of Cell Morphology with Serous Effusion by Unsupervised Machine Learning Analysis
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Two-Dimensional Quantitative Profiling of Cell Morphology with Serous Effusion by Unsupervised Machine Learning Analysis

机译:无监督机器学习分析,细胞形态的二维定量分析

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Cytological evaluation of serous effusion specimens is an important part of cancer diagnosis. In this study we performed two-dimensional (2D) morphometric features and clustering analysis for development of useful techniques for identification and differentiation of malignant and begin cells in serous effusion specimens extracted from ten patients with clinical symptoms of pleural and peritoneal effusion. Our findings show that the two-dimensional (2D) morphometric features and clustering analysis are useful techniques for identification and differentiation of malignant and begin cells in serous effusion specimens, which can lead to development of new methods for rapid cells profiling in clinical application.
机译:浆液性积液标本的细胞学评估是癌症诊断的重要组成部分。 在这项研究中,我们进行了二维(2D)形态学特征和聚类分析,以便在胸腔胸腔和腹膜积液的临床症状中提取的静脉积液标本中的鉴定和分化中的鉴定和分化的鉴定和分化的鉴定和分化。 我们的研究结果表明,二维(2D)形态学特征和聚类分析是用于鉴定和分化恶性的恶性和分化的有用技术,并且在浆液性积液标本中可以导致开发临床应用中快速细胞的新方法。

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