人工智能驱动显微镜:使用显微图像进行乳腺组织预后的前沿方法。

IF 2 3区 工程技术 Q2 ANATOMY & MORPHOLOGY Microscopy Research and Technique Pub Date : 2025-01-02 DOI:10.1002/jemt.24788
Tariq Mahmood, Tanzila Saba, Shaha Al-Otaibi, Noor Ayesha, Ahmed S Almasoud
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引用次数: 0

摘要

显微成像通过描述定量的细胞形态和组织大小来辅助疾病诊断。然而,这些图像的高空间分辨率对人工定量评估提出了重大挑战。本项目建议使用计算机辅助分析方法来解决这些挑战,实现快速准确的临床诊断、病程分析和预后预测。本研究引入了先进的深度学习框架,如挤压-激发和扩张密集卷积块,以解决量化小而复杂的乳腺癌组织的复杂性,并满足病理图像分析的实时性要求。我们提出的框架集成了密集卷积网络(DenseNet)和注意力机制,增强了快速准确的临床评估能力。这些多分类模型利用轻量级的多尺度特征提取、动态区域关注、子区域分类和区域正则化损失函数,促进了显微图像中乳腺病变的精确预测和分割。本研究将采用迁移学习范式和数据增强方法来进一步增强模型的学习能力,防止过拟合。我们建议采用预先训练的架构(如VGGNet-19、ResNet152V2、EfficientNetV2-B1和DenseNet-121)进行微调,用SPP层和相关的BN层修改每个模型最后块中的最终池化层。该研究使用标记和未标记的数据进行组织显微图像分析,增强了模型的鲁棒性和分类能力。该方法减少了与传统方法相关的成本和时间,减轻了计算病理学中数据标记的负担。目标是提供一个复杂的,有效的定量病理图像分析解决方案,改善临床结果和推进计算领域。该模型经过显微镜乳腺图像数据集的训练、验证和测试,对良恶性二级分类的识别准确率为99.6%,对8种乳腺亚型分类的识别准确率为99.4%。与现有方法相比,我们提出的方法有了实质性的改进,现有方法通常报告乳腺癌亚型分类的准确率较低,在85%到94%之间。这种高水平的准确性强调了我们的方法提供可靠诊断支持的潜力,提高了临床决策的准确性。
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AI-Driven Microscopy: Cutting-Edge Approach for Breast Tissue Prognosis Using Microscopic Images.

Microscopic imaging aids disease diagnosis by describing quantitative cell morphology and tissue size. However, the high spatial resolution of these images poses significant challenges for manual quantitative evaluation. This project proposes using computer-aided analysis methods to address these challenges, enabling rapid and precise clinical diagnosis, course analysis, and prognostic prediction. This research introduces advanced deep learning frameworks such as squeeze-and-excitation and dilated dense convolution blocks to tackle the complexities of quantifying small and intricate breast cancer tissues and meeting the real-time requirements of pathological image analysis. Our proposed framework integrates a dense convolutional network (DenseNet) with an attention mechanism, enhancing the capability for rapid and accurate clinical assessments. These multi-classification models facilitate the precise prediction and segmentation of breast lesions in microscopic images by leveraging lightweight multi-scale feature extraction, dynamic region attention, sub-region classification, and regional regularization loss functions. This research will employ transfer learning paradigms and data enhancement methods to enhance the models' learning further and prevent overfitting. We propose the fine-tuning employing pre-trained architectures such as VGGNet-19, ResNet152V2, EfficientNetV2-B1, and DenseNet-121, modifying the final pooling layer in each model's last block with an SPP layer and associated BN layer. The study uses labeled and unlabeled data for tissue microscopic image analysis, enhancing models' robust features and classification abilities. This method reduces the costs and time associated with traditional methods, alleviating the burden of data labeling in computational pathology. The goal is to provide a sophisticated, efficient quantitative pathological image analysis solution, improving clinical outcomes and advancing the computational field. The model, trained, validated, and tested on a microscope breast image dataset, achieved recognition accuracy of 99.6% for benign and malignant secondary classification and 99.4% for eight breast subtypes classification. Our proposed approach demonstrates substantial improvement compared to existing methods, which generally report lower accuracies for breast subtype classification ranging between 85% and 94%. This high level of accuracy underscores the potential of our approach to provide reliable diagnostic support, enhancing precision in clinical decision-making.

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来源期刊
Microscopy Research and Technique
Microscopy Research and Technique 医学-解剖学与形态学
CiteScore
5.30
自引率
20.00%
发文量
233
审稿时长
4.7 months
期刊介绍: Microscopy Research and Technique (MRT) publishes articles on all aspects of advanced microscopy original architecture and methodologies with applications in the biological, clinical, chemical, and materials sciences. Original basic and applied research as well as technical papers dealing with the various subsets of microscopy are encouraged. MRT is the right form for those developing new microscopy methods or using the microscope to answer key questions in basic and applied research.
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