免疫组织化学图像中的机器学习自动细胞分类和定量。

IF 0.6 4区 生物学 Q4 CELL BIOLOGY
Pikting Cheung, Wei Zhang, Muhammad Shehzad Khan, Irfan Ahmed, Yuanchao Liu, Fraser Hill, Xinyue Li, Condon Lau
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引用次数: 0

摘要

淋巴瘤是一种既影响人类也影响动物的癌症,其发病率显著上升。因此,免疫组织化学(IHC)已成为其分类的重要工具。这促使我们开发了一种创新的数学方法,用于精确量化cd3染色淋巴瘤IHC图像中的免疫阳性和免疫阴性细胞,以及它们的空间分析。我们的方法包括集成一种基于细胞分化数学颜色模型的算法,采用独特的形态侵蚀、算法转换和定制的直方图均衡化来增强特征。改进的局部阈值提高了分类精度。此外,定制的圆形霍夫变换量化细胞计数并评估其空间数据。该算法准确地枚举细胞类型,减少人为干预,并提供组织标本中检测细胞的总数和空间信息。对免疫组化图像样本的评估显示,自动细胞计数的总体准确率为93.98%。自动计数和位置信息由三位病理学专家交叉验证,突出了我们自动化方法的有效性和可靠性。我们的创新框架通过将基于物理的颜色理解与机器学习相结合,提高了IHC图像中淋巴瘤细胞计数的准确性,从而提高了诊断并降低了人为错误的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic cell classification and quantification with machine learning in immunohistochemistry images.

The incidence of lymphoma, a cancer that affects both humans and animals, has witnessed a significant increase. In response, immunohistochemistry (IHC) has become an essential tool for its classification. This prompted us to develop an innovative mathematical methodology for the precise quantification of immunopositive and immunonegative cells, along with their spatial analysis, in CD3-stained lymphoma IHC images. Our approach involves integrating an algorithm based on a mathematical color model for cell differentiation, employing the distinctive morphological erosion, algorithmic transformations, and customized histogram equalization to enhance features. Refined local thresholding enhances classification precision. Additionally, a customized circular Hough transform quantifies cell counts and assesses their spatial data. The algorithms accurately enumerate cell types, reducing human intervention and providing total numbers and spatial information on detected cells within tissue specimens. Evaluation of IHC image samples revealed an overall accuracy of 93.98% for automatic cell counts. The automatic counts and location information were cross-validated by three pathology specialists, highlighting the effectiveness and reliability of our automated approach. Our innovative framework enhances lymphoma cell counting accuracy in IHC images by combining physics-based color understanding with machine learning, thereby improving diagnosis and reducing the risks of human error.

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来源期刊
Journal of Histotechnology
Journal of Histotechnology 生物-细胞生物学
CiteScore
2.60
自引率
9.10%
发文量
30
审稿时长
>12 weeks
期刊介绍: The official journal of the National Society for Histotechnology, Journal of Histotechnology, aims to advance the understanding of complex biological systems and improve patient care by applying histotechniques to diagnose, prevent and treat diseases. Journal of Histotechnology is concerned with educating practitioners and researchers from diverse disciplines about the methods used to prepare tissues and cell types, from all species, for microscopic examination. This is especially relevant to Histotechnicians. Journal of Histotechnology welcomes research addressing new, improved, or traditional techniques for tissue and cell preparation. This includes review articles, original articles, technical notes, case studies, advances in technology, and letters to editors. Topics may include, but are not limited to, discussion of clinical, veterinary, and research histopathology.
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