An annotated fluorescence image dataset for training nuclear segmentation methods

被引:0
作者
Florian Kromp
Eva Bozsaky
Fikret Rifatbegovic
Lukas Fischer
Magdalena Ambros
Maria Berneder
Tamara Weiss
Daria Lazic
Wolfgang Dörr
Allan Hanbury
Klaus Beiske
Peter F. Ambros
Inge M. Ambros
Sabine Taschner-Mandl
机构
[1] Children’s Cancer Research Institute,Tumor biology group
[2] Labdia Labordiagnostik GmbH,ATRAB
[3] Software Competence Center Hagenberg GmbH (SCCH),Applied and Translational Radiobiology, Department of Radiation Oncology
[4] Medical University of Vienna,Department of Pathology
[5] Institute of Information Systems Engineering,Department of Pediatrics
[6] TU Wien,undefined
[7] Complexity Science Hub,undefined
[8] Oslo University Hospital,undefined
[9] Medical University of Vienna,undefined
来源
Scientific Data | / 7卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Fully-automated nuclear image segmentation is the prerequisite to ensure statistically significant, quantitative analyses of tissue preparations,applied in digital pathology or quantitative microscopy. The design of segmentation methods that work independently of the tissue type or preparation is complex, due to variations in nuclear morphology, staining intensity, cell density and nuclei aggregations. Machine learning-based segmentation methods can overcome these challenges, however high quality expert-annotated images are required for training. Currently, the limited number of annotated fluorescence image datasets publicly available do not cover a broad range of tissues and preparations. We present a comprehensive, annotated dataset including tightly aggregated nuclei of multiple tissues for the training of machine learning-based nuclear segmentation algorithms. The proposed dataset covers sample preparation methods frequently used in quantitative immunofluorescence microscopy. We demonstrate the heterogeneity of the dataset with respect to multiple parameters such as magnification, modality, signal-to-noise ratio and diagnosis. Based on a suggested split into training and test sets and additional single-nuclei expert annotations, machine learning-based image segmentation methods can be trained and evaluated.
引用
收藏
相关论文
共 42 条
  • [1] Irshad H(2014)Methods for Nuclei Detection, Segmentation, and Classification in Digital Histopathology: A Review - Current Status and Future Potential IEEE Rev. Biomed. Eng. 7 97-114
  • [2] Veillard A(2016)Imagining the future of bioimage analysis Nat. Biotechnol. 34 1250-1255
  • [3] Roux L(2017)Systems pathology by multiplexed immunohistochemistry and whole-slide digital image analysis Sci. Rep. 7 1-13
  • [4] Racoceanu D(2009)Accuracy and precision in quantitative fluorescence microscopy J. Cell Biol. 185 1135-1148
  • [5] Meijering E(2008)Spatial quantitative analysis of fluorescently labeled nuclearstructures: Problems, methods, pitfalls Chromosome Res. 16 523-562
  • [6] Carpenter AE(2002)Morphologic features of neuroblastoma (Schwannian stroma-poor tumors) in clinically favorable and unfavorable groups Cancer 94 1574-1583
  • [7] Peng H(2009)Histopathological Image Analysis: A Review IEEE Rev. Biomed. Eng. 2 147-171
  • [8] Hamprecht FA(2018)Spatial Organization and Molecular Correlation of TumorInfiltrating Lymphocytes Using Deep Learning on Pathology Images Cell Rep. 23 181-193
  • [9] OlivoMarin JC(2010)Molecular Mapping of Tumor Heterogeneity on Clinical Tissue Specimens with Multiplexed Quantum Dots ACS Nano 4 2755-2765
  • [10] Blom S(2003)Disseminated tumor cells in the bone marrow - Chances and consequences of microscopical detection methods Cancer Lett. 197 29-34