Suppr超能文献

用于研究组织切片中放射性核素分布的图像分析

Image analysis for the study of radionuclide distribution in tissue sections.

作者信息

Humm J L, Macklis R M, Yang Y, Bump K, Chin L M

机构信息

Joint Center for Radiation Therapy, Harvard Medical School, Boston, Massachusetts.

出版信息

J Nucl Med. 1994 Jul;35(7):1217-25.

PMID:8014686
Abstract

UNLABELLED

Tissue section autoradiographs are often prepared to review the precise spatial locations of a radiolabeled molecule relative to cells, such as in the study of radiolabeled antibody distribution. The objective of this work was to develop and evaluate a method to automatically detect both grains and cell nuclei from stained tissue autoradiographs using a microscope and an image analyzer.

METHOD

Using a sequence of morphological image operations, the densely stained regions of the section, representing the cell nuclei are identified first, and then subtracted from the original image. This enables the identification of autoradiographic grains under conditions of variable contrast, by separation of the grains overlapping the cell nuclei from the extracellular spaces, permitting a more accurate and robust automatic segmentation routine.

RESULTS

The accuracy of the method to detect grains has been evaluated at different threshold levels. The highest accuracy obtained was approximately 90%. The accuracy in the detection of cell nuclei was histology-dependent. As examples, we have estimated accuracies of approximately: 86%, 81% and 77% for kidney, EL-4 lymphoma and pneumonocyte sections, respectively.

CONCLUSION

This method was tested using specimens designed to study radiolabeled antibody distribution, but it should be applicable with comparable accuracy to other radiolabeled compounds for which quantitative information on the heterogeneity of distribution is required.

摘要

未标记

组织切片放射自显影片常用于查看放射性标记分子相对于细胞的精确空间位置,比如在放射性标记抗体分布研究中。本研究的目的是开发并评估一种利用显微镜和图像分析仪从染色组织放射自显影片中自动检测颗粒和细胞核的方法。

方法

通过一系列形态学图像操作,首先识别切片中代表细胞核的深染区域,然后从原始图像中减去该区域。这样通过将与细胞核重叠的颗粒与细胞外空间分离,能够在对比度可变的条件下识别放射自显影颗粒,从而实现更准确、更稳健的自动分割程序。

结果

该颗粒检测方法在不同阈值水平下的准确性已得到评估。获得的最高准确率约为90%。细胞核检测的准确率取决于组织学类型。例如,我们估计肾、EL-4淋巴瘤和肺细胞切片的准确率分别约为86%、81%和77%。

结论

该方法使用了旨在研究放射性标记抗体分布的标本进行测试,但对于需要分布异质性定量信息的其他放射性标记化合物,它应以相当的准确性适用。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验