Automated nuclei detection in serous effusion cytology based on machine learning

Elif Baykal, Hulya Dogan, M. Ekinci, M. Erçin, S. Ersoz
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引用次数: 7

Abstract

Serous effusions are common in clinical practice and they are frequently encountered specimen type in cytopathological assessment. Since this assessment is subjective, time-consuming and cause intra- and inter-observer variability, the need for an automated system is arised. Identification of the cancer cells in serous effusion cytology allows for the early diagnosis of the cancer and also the staging, prognosis and monitoring these cells. The detection of cell nuclei is seen as the corner stone for diagnostic purposes in automatic analysis of cytopathological images. Nuclei detection also yield the following automated microscopy applications, such as cell counting, segmentation and classification. In this paper, machine learning based Viola-Jones object detection approach is used to detect the cell nuclei locations in serous cytology images. When the method has been tested on number of serous cytology images, the obtained results show that this method has high nuclei detection performance.
浆液细胞学中基于机器学习的细胞核自动检测
浆液性积液在临床实践中是常见的,也是细胞病理学评估中经常遇到的标本类型。由于这种评估是主观的、耗时的,并且会导致观察者内部和观察者之间的变化,因此需要一个自动化的系统。浆液积液细胞学中癌细胞的识别有助于癌症的早期诊断、分期、预后和监测这些细胞。细胞核的检测被视为细胞病理图像自动分析诊断目的的基石。核检测也产生以下自动显微镜应用,如细胞计数,分割和分类。本文采用基于机器学习的Viola-Jones目标检测方法检测浆液细胞学图像中的细胞核位置。对大量浆液细胞学图像进行了测试,结果表明该方法具有较高的核检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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