Enhancing pap smear image classification: integrating transfer learning and attention mechanisms for improved detection of cervical abnormalities.

IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Biomedical Physics & Engineering Express Pub Date : 2024-09-30 DOI:10.1088/2057-1976/ad7bc0
Tamanna Sood, Padmavati Khandnor, Rajesh Bhatia
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引用次数: 0

Abstract

Cervical cancer remains a major global health challenge, accounting for significant morbidity and mortality among women. Early detection through screening, such as Pap smear tests, is crucial for effective treatment and improved patient outcomes. However, traditional manual analysis of Pap smear images is labor-intensive, subject to human error, and requires extensive expertise. To address these challenges, automated approaches using deep learning techniques have been increasingly explored, offering the potential for enhanced diagnostic accuracy and efficiency. This research focuses on improving cervical cancer detection from Pap smear images using advanced deep-learning techniques. Specifically, we aim to enhance classification performance by leveraging Transfer Learning (TL) combined with an attention mechanism, supplemented by effective preprocessing techniques. Our preprocessing pipeline includes image normalization, resizing, and the application of Histogram of Oriented Gradients (HOG), all of which contribute to better feature extraction and improved model performance. The dataset used in this study is the Mendeley Liquid-Based Cytology (LBC) dataset, which provides a comprehensive collection of cervical cytology images annotated by expert cytopathologists. Initial experiments with the ResNet model on raw data yielded an accuracy of 63.95%. However, by applying our preprocessing techniques and integrating an attention mechanism, the accuracy of the ResNet model increased dramatically to 96.74%. Further, the Xception model, known for its superior feature extraction capabilities, achieved the best performance with an accuracy of 98.95%, along with high precision (0.97), recall (0.99), and F1-Score (0.98) on preprocessed data with an attention mechanism. These results underscore the effectiveness of combining preprocessing techniques, TL, and attention mechanisms to significantly enhance the performance of automated cervical cancer detection systems. Our findings demonstrate the potential of these advanced techniques to provide reliable, accurate, and efficient diagnostic tools, which could greatly benefit clinical practice and improve patient outcomes in cervical cancer screening.

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增强子宫颈抹片图像分类:整合迁移学习和注意力机制以改进宫颈异常的检测。
宫颈癌仍然是全球健康面临的一项重大挑战,在妇女中的发病率和死亡率都很高。通过巴氏涂片检测等筛查手段及早发现宫颈癌对有效治疗和改善患者预后至关重要。然而,传统的巴氏涂片图像人工分析耗费大量人力,容易出现人为错误,而且需要丰富的专业知识。为了应对这些挑战,人们越来越多地探索使用深度学习技术的自动化方法,为提高诊断准确性和效率提供了可能。这项研究的重点是利用先进的深度学习技术改进从巴氏涂片图像中检测宫颈癌的方法。具体来说,我们旨在利用迁移学习(TL)结合注意力机制,辅以有效的预处理技术来提高分类性能。我们的预处理管道包括图像归一化、大小调整和定向梯度直方图(HOG)的应用,所有这些都有助于更好地提取特征和提高模型性能。本研究使用的数据集是 Mendeley 液基细胞学(LBC)数据集,该数据集提供了由细胞病理专家注释的全面的宫颈细胞学图像。使用 ResNet 模型对原始数据进行的初步实验得出的准确率为 63.95%。然而,通过应用我们的预处理技术和整合注意力机制,ResNet 模型的准确率大幅提高到 96.74%。此外,以其卓越的特征提取能力而著称的 Xception 模型在带有注意力机制的预处理数据上取得了 98.95% 的准确率,以及较高的精确度(0.97)、召回率(0.99)和 F1 分数(0.98),表现最佳。这些结果凸显了将预处理技术、TL 和注意力机制结合在一起,显著提高宫颈癌自动检测系统性能的有效性。我们的研究结果表明,这些先进技术有潜力提供可靠、准确和高效的诊断工具,这将大大有利于临床实践,并改善宫颈癌筛查中患者的预后。
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来源期刊
Biomedical Physics & Engineering Express
Biomedical Physics & Engineering Express RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
2.80
自引率
0.00%
发文量
153
期刊介绍: BPEX is an inclusive, international, multidisciplinary journal devoted to publishing new research on any application of physics and/or engineering in medicine and/or biology. Characterized by a broad geographical coverage and a fast-track peer-review process, relevant topics include all aspects of biophysics, medical physics and biomedical engineering. Papers that are almost entirely clinical or biological in their focus are not suitable. The journal has an emphasis on publishing interdisciplinary work and bringing research fields together, encompassing experimental, theoretical and computational work.
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