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基于融合特征的混合系统对全切片图像进行分析以实现宫颈癌的早期诊断

Analysis of WSI Images by Hybrid Systems with Fusion Features for Early Diagnosis of Cervical Cancer.

作者信息

Hamdi Mohammed, Senan Ebrahim Mohammed, Awaji Bakri, Olayah Fekry, Jadhav Mukti E, Alalayah Khaled M

机构信息

Department of Computer Science, College of Computer Science and Information Systems, Najran University, Najran 66462, Saudi Arabia.

Department of Artificial Intelligence, Faculty of Computer Science and Information Technology, Alrazi University, Sana'a, Yemen.

出版信息

Diagnostics (Basel). 2023 Jul 31;13(15):2538. doi: 10.3390/diagnostics13152538.

Abstract

Cervical cancer is one of the most common types of malignant tumors in women. In addition, it causes death in the latter stages. Squamous cell carcinoma is the most common and aggressive form of cervical cancer and must be diagnosed early before it progresses to a dangerous stage. Liquid-based cytology (LBC) swabs are best and most commonly used for cervical cancer screening and are converted from glass slides to whole-slide images (WSIs) for computer-assisted analysis. Manual diagnosis by microscopes is limited and prone to manual errors, and tracking all cells is difficult. Therefore, the development of computational techniques is important as diagnosing many samples can be done automatically, quickly, and efficiently, which is beneficial for medical laboratories and medical professionals. This study aims to develop automated WSI image analysis models for early diagnosis of a cervical squamous cell dataset. Several systems have been designed to analyze WSI images and accurately distinguish cervical cancer progression. For all proposed systems, the WSI images were optimized to show the contrast of edges of the low-contrast cells. Then, the cells to be analyzed were segmented and isolated from the rest of the image using the Active Contour Algorithm (ACA). WSI images were diagnosed by a hybrid method between deep learning (ResNet50, VGG19 and GoogLeNet), Random Forest (RF), and Support Vector Machine (SVM) algorithms based on the ACA algorithm. Another hybrid method for diagnosing WSI images by RF and SVM algorithms is based on fused features of deep-learning (DL) models (ResNet50-VGG19, VGG19-GoogLeNet, and ResNet50-GoogLeNet). It is concluded from the systems' performance that the DL models' combined features help significantly improve the performance of the RF and SVM networks. The novelty of this research is the hybrid method that combines the features extracted from deep-learning models (ResNet50-VGG19, VGG19-GoogLeNet, and ResNet50-GoogLeNet) with RF and SVM algorithms for diagnosing WSI images. The results demonstrate that the combined features from deep-learning models significantly improve the performance of RF and SVM. The RF network with fused features of ResNet50-VGG19 achieved an AUC of 98.75%, a sensitivity of 97.4%, an accuracy of 99%, a precision of 99.6%, and a specificity of 99.2%.

摘要

宫颈癌是女性中最常见的恶性肿瘤类型之一。此外,它会在后期导致死亡。鳞状细胞癌是宫颈癌最常见且侵袭性最强的形式,必须在其发展到危险阶段之前尽早诊断。液基细胞学(LBC)拭子是用于宫颈癌筛查的最佳且最常用的方法,并且会将其从载玻片转换为全切片图像(WSI)以进行计算机辅助分析。通过显微镜进行人工诊断存在局限性且容易出现人为错误,并且追踪所有细胞也很困难。因此,计算技术的发展很重要,因为可以自动、快速且高效地诊断许多样本,这对医学实验室和医学专业人员有益。本研究旨在开发用于早期诊断宫颈鳞状细胞数据集的自动化WSI图像分析模型。已经设计了多个系统来分析WSI图像并准确区分宫颈癌的进展情况。对于所有提出的系统,对WSI图像进行了优化,以显示低对比度细胞边缘的对比度。然后,使用活动轮廓算法(ACA)将待分析的细胞从图像的其余部分分割并分离出来。基于ACA算法,通过深度学习(ResNet50、VGG19和GoogLeNet)、随机森林(RF)和支持向量机(SVM)算法之间的混合方法对WSI图像进行诊断。另一种通过RF和SVM算法诊断WSI图像的混合方法是基于深度学习(DL)模型(ResNet50-VGG19、VGG19-GoogLeNet和ResNet50-GoogLeNet)的融合特征。从系统性能得出的结论是,DL模型的组合特征有助于显著提高RF和SVM网络的性能。本研究的新颖之处在于将从深度学习模型(ResNet50-VGG19、VGG19-GoogLeNet和ResNet50-GoogLeNet)中提取的特征与RF和SVM算法相结合用于诊断WSI图像的混合方法。结果表明,深度学习模型的组合特征显著提高了RF和SVM的性能。具有ResNet50-VGG19融合特征的RF网络的曲线下面积(AUC)为98.75%,灵敏度为97.4%,准确率为99%,精确率为99.6%,特异性为99.2%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b348/10416962/e2d1a0e7ccec/diagnostics-13-02538-g001.jpg

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