组织学图像上的自动癌核分割:深度学习方法的比较研究

IF 2.5 4区 生物学 Q3 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Biotechnology and Bioprocess Engineering Pub Date : 2024-07-04 DOI:10.1007/s12257-024-00130-5
Maratbek T. Gabdullin, Assel Mukasheva, Dina Koishiyeva, Timur Umarov, Alibek Bissembayev, Ki-Sub Kim, Jeong Won Kang
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引用次数: 0

摘要

癌症是影响全球个人最常见的健康问题之一。在生物医学工程领域,癌症诊断的主要方法之一是利用人工智能分析组织结构和细胞核的组织学图像。在这里,我们比较了 15 种深度学习方法的性能,分别是UNet、Deep-UNet、UNet-CBAM、RA-UNet、SA-Unet 和 Nuclei-SegNet 、UNet-VGG2016、UNet-Resnet-101、TransResUNet、Inception-UNet、Att-UNet++ 、FF-UNet、Att-UNet、Res-UNet 和一个新模型 DanNucNet,在五个开放数据集上对不同器官的组织切片进行病理细胞核分割:这些数据集包括:MoNuSeg、CoNSeP、CryoNuSeg、Data Science Bowl 和 NuInsSeg。在对数据进行训练之前,分析了像素强度和颜色分布,并应用了不同的增强技术。结果表明,具有 3457 万个 Deep-UNet 参数的基于 UNet 的模型表现最佳,在 3.13% 到 22.91% 的 Dice 系数方面优于所有模型。在这种情况下,Deep-UNet的实施为从组织学图像中精确提取癌细胞核提供了宝贵的工具,这反过来又将有助于癌症病理学和数字组织学的进一步发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Automatic cancer nuclei segmentation on histological images: comparison study of deep learning methods

Cancer is one of the most common health problems affecting individuals worldwide. In the field of biomedical engineering, one of the main methods for cancer diagnosis is the analysis of histological images of tissue structures and cell nuclei using artificial intelligence. Here, we compared the performance of 15 deep learning methods viz: UNet, Deep-UNet, UNet-CBAM, RA-UNet, SA-Unet and Nuclei-SegNet, UNet-VGG2016, UNet-Resnet-101, TransResUNet, Inception-UNet, Att-UNet++ , FF-UNet, Att-UNet, Res-UNet and a new model, DanNucNet, in pathological nuclei segmentation on tissue slices from different organs on five open datasets: MoNuSeg, CoNSeP, CryoNuSeg, Data Science Bowl, and NuInsSeg. Before training on the data, the pixel intensity and color distribution were analyzed, and different augmentation techniques were applied. The results showed that the UNet-based model with 34.57 million Deep-UNet parameters performed the best, outperforming all models in terms of the Dice coefficient from 3.13 to 22.91%. The implementation of Deep-UNet in this context provides a valuable tool for accurate extraction of cancer cell nuclei from histological images, which in turn will contribute to further developments in cancer pathology and digital histology.

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来源期刊
Biotechnology and Bioprocess Engineering
Biotechnology and Bioprocess Engineering 工程技术-生物工程与应用微生物
CiteScore
5.00
自引率
12.50%
发文量
79
审稿时长
3 months
期刊介绍: Biotechnology and Bioprocess Engineering is an international bimonthly journal published by the Korean Society for Biotechnology and Bioengineering. BBE is devoted to the advancement in science and technology in the wide area of biotechnology, bioengineering, and (bio)medical engineering. This includes but is not limited to applied molecular and cell biology, engineered biocatalysis and biotransformation, metabolic engineering and systems biology, bioseparation and bioprocess engineering, cell culture technology, environmental and food biotechnology, pharmaceutics and biopharmaceutics, biomaterials engineering, nanobiotechnology, and biosensor and bioelectronics.
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