胚胎组织有丝分裂的自动检测

P. Siva, G. Brodland, David A Clausi
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引用次数: 7

摘要

有丝分裂的特征对于理解早期胚胎的发育机制是重要的。在癌症研究中,另一种有丝分裂感兴趣的情况是,组织在有丝分裂表征之前用造影剂染色;这种干预可能会导致活胚胎的非典型发育。一种新的图像处理算法,不依赖于使用造影剂来检测胚胎组织中的有丝分裂。与以前使用静止图像的方法不同,这里提出的算法使用延时图像的时间信息来跟踪胚胎组织的变形,然后使用跟踪区域的强度变化来识别有丝分裂的位置。在由20幅图像组成的100分钟图像序列中,该算法成功地检测到95个有丝分裂中的81个。算法的性能采用几何平均度量82%来计算。由于没有已知的其他方法来计算活组织中的有丝分裂,因此无法与目前的结果进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Detection of Mitosis in Embryonic Tissues
Characterization of mitosis is important for understanding the mechanisms of development in early stage embryos. In studies of cancer, another situation in which mitosis is of interest, the tissue is stained with contrast agents before mitosis characterization; an intervention that could lead to atypical development in live embryos. A new image processing algorithm that does not rely on the use of contrast agents was developed to detect mitosis in embryonic tissue. Unlike previous approaches that uses still images, the algorithm presented here uses temporal information from time-lapse images to track the deformation of the embryonic tissue and then uses changes in intensity at tracked regions to identify the locations of mitosis. On a one hundred minute image sequence, consisting of twenty images, the algorithm successfully detected eighty-one out of the ninety-five mitosis. The performance of the algorithm is calculated using the geometric mean measure as 82%. Since no other method to count mitoses in live tissues is known, comparisons with the present results could not be made.
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