Virtual flow cytometry of immunostained lymphocytes on microscopic tissue slides:: iHCFlow™ tissue cytometry

被引:9
作者
Cualing, Hernani D. [1 ]
Zhong, Eric
Moscinski, Lynn
机构
[1] Univ S Florida, Coll Med, H Lee Moffitt Canc Ctr & Res Inst, Tampa, FL 33612 USA
[2] IHCFLOW, GreenGreat, NJ USA
关键词
tissue cytometry; cytomics; virtual flow cytometry; immunohistochemistry; image understanding; image analysis; high throughput analysis;
D O I
10.1002/cyto.b.20148
中图分类号
R446 [实验室诊断]; R-33 [实验医学、医学实验];
学科分类号
1001 ;
摘要
Background: A method and approach is developed for fully automated measurements of immunostained lymphocytes in tissue sections by means of digital color microscopy and patent pending advanced cell analysis. The validation data for population statistic measurements of immunostained lymphocytes in tissue sections using tissue cytometry (TC) is presented. The report is the first to describe the conversion of immunohistochemistry (IHC) data to a flow cytometry-like two parameter dot-plot display, hence the technique is also a virtual flow cytometry. We believe this approach is a paradigm shift, as well as novel, and called the system iHCFlow (TM) TC. Seven issues related to technical obstacles to virtual flow cytometry (FC) are identified. Design: Segmentation of a 512 x 474 RGB image and tabular display of statistical results table took 1215 s using proprietary developed algorithms. We used a panel of seven antibodies for validation on 14 cases of mantle cell lymphoma giving percentage positive, total lymphocytes, and staining density. A total of 2,027 image frames with 810,800 cell objects (COBS) were evaluated. Antibodies to CD3, CD4, CD8, Bcl-1, Ki-67, CD20, CD5 were subjected to virtual FC on tissue. The results of TC were compared with manual counts of expert observers and with the results of flow cytometric immunophenotyping of the same specimen. Results: The correlation coefficient and 95% confidence interval by linear regression analysis yielded a high concordance between manual human results (M), FC results, and TC results per antibody, (r = 0.9365 M vs. TC, r = 0.9537 FC vs. TC). The technical issues were resolved and the solutions and results were evaluated and presented. Conclusion: These results suggest the new technology of TC by iHCFIow (TM) could be a clinically valid surrogate for both M and FC analysis when only tissue IHC is available for diagnosis and prognosis. The application for cancer diagnosis, monitoring, and prognosis is for objective, rapid, automated counting of immunostained cells in tissues with percentage results. We report a new paradigm in TC that converts IHC staining of lymphocytes to automated results and a flow cytometry-like report. The dot plot histogram display is familiar, intuitive, informative, and provides the pathologists with an automated tool to rapidly characterize the staining and size distribution of the immunoreactive as well as the negative cell population in the tissue. This systems tool is a major improvement over existing ones and satisfy fully the criteria to perform Cytomics (Ecker and Tarnok, Cytometry A 2005;65:1; Ecker and Steiner, Cytometry A 2004; 59:182-190; Ecker et al., Cytometry A 2004;59:172-181). (c) 2006 Clinical Cytometry Society.
引用
收藏
页码:63 / 76
页数:14
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