利用基于统计滤波器的新型卷积神经网络进行组织分类

IF 0.8 4区 农林科学 Q4 ANATOMY & MORPHOLOGY Anatomia Histologia Embryologia Pub Date : 2024-06-13 DOI:10.1111/ahe.13073
Nejat Ünlükal, Erkan Ülker, Merve Solmaz, Kübra Uyar, Şakir Taşdemir
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引用次数: 0

摘要

深度网络在文献中一直备受关注,并已在最近的现实世界应用中得以解决。卷积神经网络(CNN)具有特征提取滤波器,因此被认为是一种准确、高效、值得信赖的深度学习技术,可用于解决基于图像的挑战。性能卓越的 CNN 即使在各种应用中都能产生良好的结果,但对计算能力的要求也很高。这是因为大量参数限制了它们在性能较低的中央处理器上重复使用的能力。为了解决这些限制,我们提出了一种用于图像分类的基于统计滤波器的新型 CNN(HistStatCNN)。设计的 CNN 模型的卷积核是通过连续统计方法初始化的。我们在新型组织病理学数据集和各种组织病理学基准数据集上评估了所提出的滤波器初始化方法的性能。为了证明统计滤波器的效率,在分类任务中将三个独特的参数集和一个统计滤波器混合参数集应用于设计的 CNN 模型。结果显示,GoogleNet、ResNet18、ResNet50 和 ResNet101 模型的准确率分别为 85.56%、85.24%、83.59% 和 83.79%。在组织学数据分类任务中,HistStatCNN 的准确率提高了 87.13%。此外,通过在各种组织病理学基准数据集上进行测试,证明了所提出的滤波器生成方法的性能,提高了平均准确率。实验结果验证了所提出的统计滤波器能通过更简单的 CNN 模型提高网络性能。
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Histological tissue classification with a novel statistical filter-based convolutional neural network

Deep networks have been of considerable interest in literature and have enabled the solution of recent real-world applications. Due to filters that offer feature extraction, Convolutional Neural Network (CNN) is recognized as an accurate, efficient and trustworthy deep learning technique for the solution of image-based challenges. The high-performing CNNs are computationally demanding even if they produce good results in a variety of applications. This is because a large number of parameters limit their ability to be reused on central processing units with low performance. To address these limitations, we suggest a novel statistical filter-based CNN (HistStatCNN) for image classification. The convolution kernels of the designed CNN model were initialized by continuous statistical methods. The performance of the proposed filter initialization approach was evaluated on a novel histological dataset and various histopathological benchmark datasets. To prove the efficiency of statistical filters, three unique parameter sets and a mixed parameter set of statistical filters were applied to the designed CNN model for the classification task. According to the results, the accuracy of GoogleNet, ResNet18, ResNet50 and ResNet101 models were 85.56%, 85.24%, 83.59% and 83.79%, respectively. The accuracy was improved by 87.13% by HistStatCNN for the histological data classification task. Moreover, the performance of the proposed filter generation approach was proved by testing on various histopathological benchmark datasets, increasing average accuracy rates. Experimental results validate that the proposed statistical filters enhance the performance of the network with more simple CNN models.

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来源期刊
Anatomia Histologia Embryologia
Anatomia Histologia Embryologia ANATOMY & MORPHOLOGY-VETERINARY SCIENCES
CiteScore
1.90
自引率
11.10%
发文量
115
审稿时长
18-36 weeks
期刊介绍: Anatomia, Histologia, Embryologia is a premier international forum for the latest research on descriptive, applied and clinical anatomy, histology, embryology, and related fields. Special emphasis is placed on the links between animal morphology and veterinary and experimental medicine, consequently studies on clinically relevant species will be given priority. The editors welcome papers on medical imaging and anatomical techniques. The journal is of vital interest to clinicians, zoologists, obstetricians, and researchers working in biotechnology. Contributions include reviews, original research articles, short communications and book reviews.
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