TelsNet: temporal lesion network embedding in a transformer model to detect cervical cancer through colposcope images

Lalasa Mukku, Jyothi Thomas
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引用次数: 0

Abstract

Cervical cancer ranks as the fourth most prevalent malignancy among women globally. Timely identification and intervention in cases of cervical cancer hold the potential for achieving complete remission and cure. In this study, we built a deep learning model based on self-attention mechanism using transformer architecture to classify the cervix images to help in diagnosis of cervical cancer. We have used techniques like an enhanced multivariate gaussian mixture model optimized with mexican axolotl algorithm for segmenting the colposcope images prior to the Temporal Lesion Convolution Neural Network (TelsNet) classifying the images. TelsNet is a transformer-based neural network that uses temporal convolutional neural networks to identify cancerous regions in colposcope images. Our experiments show that TelsNet achieved an accuracy of 92.7%, with a sensitivity of 73.4% and a specificity of 82.1%. We compared the performance of our model with various state-of-the-art methods, and our results demonstrate that TelsNet outperformed the other methods. The findings have the potential to significantly simplify the process of detecting and accurately classifying cervical cancers at an early stage, leading to improved rates of remission and better overall outcomes for patients globally.
TelsNet:将时间病变网络嵌入变压器模型,通过阴道镜图像检测宫颈癌
宫颈癌在全球妇女恶性肿瘤发病率中排名第四。及时发现和干预宫颈癌病例有可能实现完全缓解和治愈。在这项研究中,我们利用变压器架构建立了一个基于自我注意机制的深度学习模型,对宫颈图像进行分类,以帮助诊断宫颈癌。在时变卷积神经网络(TelsNet)对图像进行分类之前,我们使用了增强型多变量高斯混合模型等技术,该模型使用墨西哥斧鱼算法进行了优化,用于对阴道镜图像进行分割。TelsNet 是一种基于变压器的神经网络,它使用时序卷积神经网络来识别阴道镜图像中的癌变区域。实验表明,TelsNet 的准确率达到 92.7%,灵敏度为 73.4%,特异度为 82.1%。我们将模型的性能与各种最先进的方法进行了比较,结果表明 TelsNet 的性能优于其他方法。这些发现有可能大大简化宫颈癌早期检测和准确分类的过程,从而提高缓解率,改善全球患者的整体治疗效果。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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