Literature DB >> 32729382

A New Automated Histomorphometric MATLAB Algorithm for Immunohistochemistry Analysis Using Whole Slide Imaging.

Flavia Medeiros Savi1,2, Pawel Mieszczanek1, Sophia Revert1, Marie-Luise Wille1,2,3, Laura Jane Bray1,2.   

Abstract

The use of animal models along with the employment of advanced and sophisticated stereological methods for assessing bone quality combined with the use of statistical methods to evaluate the effectiveness of bone therapies has made it possible to investigate the pathways that regulate bone responses to medical devices. Image analysis of histomorphometric measurements remains a time-consuming task, as the image analysis software currently available does not allow for automated image segmentation. Such a feature is usually obtained by machine learning and with software platforms that provide image-processing tools such as MATLAB. In this study, we introduce a new MATLAB algorithm to quantify immunohistochemically stained critical-sized bone defect samples and compare the results with the commonly available Aperio Image Scope Positive Pixel Count (PPC) algorithm. Bland and Altman analysis and Pearson correlation showed that the measurements acquired with the new MATLAB algorithm were in excellent agreement with the measurements obtained with the Aperio PPC algorithm, and no significant differences were found within the histomorphometric measurements. The ability to segment whole slide images, as well as defining the size and the number of regions of interest to be quantified, makes this MATLAB algorithm a potential histomorphometric tool for obtaining more objective, precise, and reproducible quantitative assessments of entire critical-sized bone defect image data sets in an efficient and manageable workflow.

Keywords:  MATLAB algorithm; critical-sized bone defect; histomorphometry; whole slide imaging

Year:  2020        PMID: 32729382     DOI: 10.1089/ten.TEC.2020.0153

Source DB:  PubMed          Journal:  Tissue Eng Part C Methods        ISSN: 1937-3384            Impact factor:   3.056


  2 in total

1.  Applying deep learning to quantify empty lacunae in histologic sections of osteonecrosis of the femoral head.

Authors:  Elaine Lui; Masahiro Maruyama; Roberto A Guzman; Seyedsina Moeinzadeh; Chi-Chun Pan; Alexa K Pius; Madison S V Quig; Laurel E Wong; Stuart B Goodman; Yunzhi P Yang
Journal:  J Orthop Res       Date:  2021-10-27       Impact factor: 3.102

Review 2.  Hydrogels as Drug Delivery Systems: A Review of Current Characterization and Evaluation Techniques.

Authors:  Margaux Vigata; Christoph Meinert; Dietmar W Hutmacher; Nathalie Bock
Journal:  Pharmaceutics       Date:  2020-12-07       Impact factor: 6.321

  2 in total

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