基于人工智能的乳腺Ki67定量免疫组化分析。

IF 1.7 4区 生物学 Q3 BIOLOGY
Open Life Sciences Pub Date : 2024-12-31 eCollection Date: 2024-01-01 DOI:10.1515/biol-2022-1013
Wenhui Wang, Yitang Gong, Bingxian Chen, Hualei Guo, Qiang Wang, Jing Li, Cheng Jin, Kun Gui, Hao Chen
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引用次数: 0

摘要

乳腺癌是一种常见的女性恶性肿瘤。Ki67是细胞增殖的重要生物标志物。通过定量分析,它是诊断乳腺癌恶性程度的重要指标。然而,病理学家在诊断过程中难以准确定量地评估阳性核计数,且耗时费力。在这项工作中,我们采用了基于深度学习方法的乳腺癌中Ki67的定量分析方法。对于乳腺癌的诊断,根据乳腺癌诊断指南,我们首先识别Ki67病理图像的肿瘤区域,忽略图像中的非肿瘤区域。然后,我们在肿瘤区域检测细胞核,确定细胞核的位置信息。然后,我们根据Ki67的表达水平将检测到的细胞核分为阳性和阴性。根据定量分析结果,计数阳性细胞比例。结合以上流程,设计了乳房Ki67定量分析流水线。在验证集上对Ki67定量分析系统进行评价。肿瘤区域分割模型的Dice系数为0.848,核检测模型的Average Precision指数为0.817,核分类模型的准确率为96.66%。此外,在临床独立样本实验中,结果表明所提出的乳腺Ki67定量分析系统与医生的诊断效率有较好的相关性,提高了十倍以上,诊断的整体一致性组内相关系数为0.964。研究表明,我们的乳腺癌Ki67定量分析方法具有较高的临床应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantitative immunohistochemistry analysis of breast Ki67 based on artificial intelligence.

Breast cancer is a common malignant tumor of women. Ki67 is an important biomarker of cell proliferation. With the quantitative analysis, it is an important indicator of malignancy for breast cancer diagnosis. However, it is difficult to accurately and quantitatively evaluate the count of positive nucleus during the diagnosis process of pathologists, and the process is time-consuming and labor-intensive. In this work, we employed a quantitative analysis method of Ki67 in breast cancer based on deep learning approach. For the diagnosis of breast cancer, according to breast cancer diagnosis guideline, we first identified the tumor region of Ki67 pathological image, neglecting the non-tumor region in the image. Then, we detect the nucleus in the tumor region to determine the nucleus location information. After that, we classify the detected nucleuses as positive and negative according to the expression level of Ki67. According to the results of quantitative analysis, the proportion of positive cells is counted. Combining the above process, we design a breast Ki67 quantitative analysis pipeline. The Ki67 quantitative analysis system was assessed on the validation set. The Dice coefficient of the tumor region segmentation model was 0.848, the Average Precision index of the nucleus detection model was 0.817, and the accuracy of the nucleus classification model was 96.66%. Besides, in clinical independent sample experiment, the results show that the proposed breast Ki67 quantitative analysis system achieve excellent correlation with the diagnosis efficiency of doctors improved more than ten times and the overall consistency of diagnosis is intra-group correlation coefficient: 0.964. The research indicates that our quantitative analysis method of Ki67 in breast cancer has high clinical application value.

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来源期刊
CiteScore
2.50
自引率
4.50%
发文量
131
审稿时长
43 weeks
期刊介绍: Open Life Sciences (previously Central European Journal of Biology) is a fast growing peer-reviewed journal, devoted to scholarly research in all areas of life sciences, such as molecular biology, plant science, biotechnology, cell biology, biochemistry, biophysics, microbiology and virology, ecology, differentiation and development, genetics and many others. Open Life Sciences assures top quality of published data through critical peer review and editorial involvement throughout the whole publication process. Thanks to the Open Access model of publishing, it also offers unrestricted access to published articles for all users.
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