Literature DB >> 16550739

Automated nuclear segmentation in the determination of the Ki-67 labeling index in meningiomas.

Y J Kim1, B F M Romeike, J Uszkoreit, W Feiden.   

Abstract

OBJECTIVE: Assessing the Ki-67 labeling index (LI) is laborious and time consuming. Therefore, an automated computer-based method was developed, which is able to identify and analyze immunolabeled and hematoxylin-stained nuclei in digital images of routine immunohistochemical slides.
MATERIAL AND METHODS: The method is based on a plugin for the public domain image analysis software ImageJ, which runs on every operating system (free download at http://rsb.info.nih.gov/ij/). Percentage of Ki-67 immunostained nuclei were determined in 5 high power fields (x40) of immunostained slides (DAB detection technique, hematoxylin counterstain) of 20 Grade I, 20 Grade II, and 10 Grade III meningiomas conventionally by two independent investigators and automatically, respectively. The time effort was measured for each counting procedure.
RESULTS: Enumerating conventionally or automatically did not reveal any significant differences in the mean labeling indices. Ki-67 LIs discriminated sufficiently between meningiomas of Grade I (median 1.7% Investigator 1 and 1.5% Investigator 2 vs. 1.5% automatically), Grade II (7.6%, 8% vs. 7.3%), and Grade III meningiomas (22%, 21% vs. 22%). The computer-based results correlated very closely with those obtained by manual counting (correlation coefficient = 0.98). The mean time effort for counting procedure per image was 374 s (130 s-435 s) for the conventional and 11 s (7 s-12 s) for the automated method.
CONCLUSIONS: The described method can reliably assess the Ki-67 LI much faster than conventional enumerating. The computerized method has the advantages of objectivity, accuracy, repeatability, and ease of use. There is no request for special stains nor special image acquiring systems. The plugin can be downloaded at the "Morphometrie" section of http://www.uniklinikum-saarland.de/neuropathologie.

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Year:  2006        PMID: 16550739

Source DB:  PubMed          Journal:  Clin Neuropathol        ISSN: 0722-5091            Impact factor:   1.368


  13 in total

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9.  Laboratory Computer Performance in a Digital Pathology Environment: Outcomes from a Single Institution.

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10.  Automated recognition of cell phenotypes in histology images based on membrane- and nuclei-targeting biomarkers.

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