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Mitotic Cell Recognition with Hidden Markov Models

机译:隐马尔可夫模型的有丝分裂细胞识别

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This work describes a method for detecting mitotic cells in time-lapse microscopy images of live cells. The image sequences are from the Large Scale Digital Cell Analysis System (LSDCAS) at the University of Iowa. LSDCAS is an automated microscope system capable of monitoring 1000 microscope fields over time intervals of up to one month. Manual analysis of the image sequences can be extremely time consuming. This work is part of a larger project to automate the image sequence analysis. A three-step approach is used. In the first step, potential mitotic cells are located in the image sequences. In the second step, object border segmentation is performed with the watershed algorithm. Objects in adjacent frames are grouped into object sequences for classification. In the third step, the image sequences are converted to feature vector sequences. The feature vectors contain spatial and temporal information. Hidden Markov Models (HMMs) are used to classify the feature vector sequences into dead cells, cell edges, and dividing cells. Discrete and continuous HMMs were trained with over 200 sequences. The discrete HMM recognition rates were 62% for dead cells, 77% for cell edges, and 75% for dividing cells. The continuous HMM results were 68%, 88% and 77%.
机译:这项工作描述了一种在活细胞的延时显微镜图像中检测有丝分裂细胞的方法。图像序列来自爱荷华大学的大规模数字细胞分析系统(LSDCAS)。 LSDCAS是一种自动显微镜系统,能够在长达一个月的时间间隔内监视1000个显微镜视野。手动分析图像序列会非常耗时。这项工作是一个较大的项目的一部分,该项目使图像序列分析自动化。使用了三步方法。第一步,将潜在的有丝分裂细胞置于图像序列中。第二步,使用分水岭算法执行对象边界分割。相邻帧中的对象被分组为对象序列以进行分类。在第三步骤中,将图像序列转换为特征向量序列。特征向量包含空间和时间信息。隐马尔可夫模型(HMM)用于将特征向量序列分类为死细胞,细胞边缘和分裂细胞。离散和连续HMM训练了200多个序列。死细胞的离散HMM识别率为62%,细胞边缘为77%,分裂细胞为75%。连续HMM结果分别为68%,88%和77%。

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