A methodology for comprehensive breast cancer Ki67 labeling index with intra-tumor heterogeneity appraisal based on hexagonal tiling of digital image analysis data

被引:0
作者
Benoit Plancoulaine
Aida Laurinaviciene
Paulette Herlin
Justinas Besusparis
Raimundas Meskauskas
Indra Baltrusaityte
Yasir Iqbal
Arvydas Laurinavicius
机构
[1] University Caen Normandy,Path
[2] Vilnius University,Image/BioTiCla
[3] Affiliate of Vilnius University Hospital Santariskiu Clinics,Department of Pathology, Forensic Medicine and Pharmacology, Faculty of Medicine
来源
Virchows Archiv | 2015年 / 467卷
关键词
Breast cancer; Immunohistochemistry; Digital pathology; Automated image analysis; Ki67; Heterogeneity;
D O I
暂无
中图分类号
学科分类号
摘要
Digital image analysis (DIA) enables higher accuracy, reproducibility, and capacity to enumerate cell populations by immunohistochemistry; however, the most unique benefits may be obtained by evaluating the spatial distribution and intra-tissue variance of markers. The proliferative activity of breast cancer tissue, estimated by the Ki67 labeling index (Ki67 LI), is a prognostic and predictive biomarker requiring robust measurement methodologies. We performed DIA on whole-slide images (WSI) of 302 surgically removed Ki67-stained breast cancer specimens; the tumour classifier algorithm was used to automatically detect tumour tissue but was not trained to distinguish between invasive and non-invasive carcinoma cells. The WSI DIA-generated data were subsampled by hexagonal tiling (HexT). Distribution and texture parameters were compared to conventional WSI DIA and pathology report data. Factor analysis of the data set, including total numbers of tumor cells, the Ki67 LI and Ki67 distribution, and texture indicators, extracted 4 factors, identified as entropy, proliferation, bimodality, and cellularity. The factor scores were further utilized in cluster analysis, outlining subcategories of heterogeneous tumors with predominant entropy, bimodality, or both at different levels of proliferative activity. The methodology also allowed the visualization of Ki67 LI heterogeneity in tumors and the automated detection and quantitative evaluation of Ki67 hotspots, based on the upper quintile of the HexT data, conceptualized as the “Pareto hotspot”. We conclude that systematic subsampling of DIA-generated data into HexT enables comprehensive Ki67 LI analysis that reflects aspects of intra-tumor heterogeneity and may serve as a methodology to improve digital immunohistochemistry in general.
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页码:711 / 722
页数:11
相关论文
共 129 条
  • [11] Shao Z(1996)Cellular sociology of proliferating tumor cells in invasive ductal breast cancer Anal Quant Cytol Histol 18 191-441
  • [12] Malpica A(2012)Evaluating tumor heterogeneity in immunohistochemistry-stained breast cancer tissue Lab Investig 92 1342-359
  • [13] Voorhorst F(2014)Automated selection of hotspots (ASH): enhanced automated segmentation and adaptive step finding for Ki67 hotspot detection in adrenal cortical cancer Diagn Pathol 9 216-94
  • [14] Baak JP(2014)A novel model for Ki67 assessment in breast cancer Diagn Pathol 9 118-1222
  • [15] Laurinavicius A(2010)Intratumoral heterogeneity of immunohistochemical marker expression in breast carcinoma: a tissue microarray-based study Appl Immunohistochem Mol Morphol 18 433-410
  • [16] Plancoulaine B(2015)Mapping spatial heterogeneity in the tumor microenvironment: a new era for digital pathology Lab Investig 206 347-392
  • [17] Laurinaviciene A(2007)Rectangular and hexagonal grids used for observation, experiment and simulation in ecology Ecol Model 64 83-1250
  • [18] Herlin P(2012)Trends in spatial statistics Prof Geogr 4 1213-621
  • [19] Meskauskas R(1995)Geometric transformations on the hexagonal grid IEEE Trans Image Process 19 403-38
  • [20] Baltrusaityte I(1991)Pathological prognostic factors in breast cancer I The Value of Histological Grade in Breast Cancer: Experience from a Large Study with Long-Term Follow-up Histopathology 16 369-287