Saheb Shaik Khasim, Sreenivasarao Devavarapu
Sreenidhi Institute of Science and Technology, Hyderabad, India.
Abdom Radiol (NY). 2025 Apr;50(4):1831-1859. doi: 10.1007/s00261-024-04633-w. Epub 2024 Oct 24.
An adnexal mass, also known as a pelvic mass, is a growth that develops in or near the uterus, ovaries, fallopian tubes, and supporting tissues. For women suspected of having ovarian cancer, timely and accurate detection of a malignant pelvic mass is crucial for effective triage, referral, and follow-up therapy. While various deep learning techniques have been proposed for identifying pelvic masses, current methods are often not accurate enough and can be computationally intensive. To address these issues, this manuscript introduces an optimized Siamese circle-inspired neural network with deep linear graph attention (SCINN-DLGN) model designed for pelvic mass classification. The SCINN-DLGN model is intended to classify pelvic masses into three categories: benign, malignant, and healthy. Initially, real-time MRI pelvic mass images undergo pre-processing using semantic-aware structure-preserving median morpho-filtering to enhance image quality. Following this, the region of interest (ROI) within the pelvic mass images is segmented using an EfficientNet-based U-Net framework, which reduces noise and improves the accuracy of segmentation. The segmented images are then analysed using the SCINN-DLGN model, which extracts geometric features from the ROI. These features are classified into benign, malignant, or healthy categories using a deep clustering algorithm integrated into the linear graph attention model. The proposed system is implemented on a Python platform, and its performance is evaluated using real-time MRI pelvic mass datasets. The SCINN-DLGN model achieves an impressive 99.9% accuracy and 99.8% recall, demonstrating superior efficiency compared to existing methods and highlighting its potential for further advancement in the field.
附件包块,也称为盆腔包块,是在子宫、卵巢、输卵管及支持组织内或其附近生长的肿物。对于疑似患有卵巢癌的女性,及时、准确地检测出恶性盆腔包块对于有效的分诊、转诊及后续治疗至关重要。虽然已经提出了各种深度学习技术来识别盆腔包块,但目前的方法往往不够准确,且计算量较大。为了解决这些问题,本文介绍了一种优化的受暹罗圆启发的带有深度线性图注意力的神经网络(SCINN-DLGN)模型,用于盆腔包块分类。SCINN-DLGN模型旨在将盆腔包块分为三类:良性、恶性和健康。首先,使用语义感知结构保留中值形态滤波对实时MRI盆腔包块图像进行预处理,以提高图像质量。在此之后,使用基于EfficientNet的U-Net框架对盆腔包块图像中的感兴趣区域(ROI)进行分割,该框架可减少噪声并提高分割精度。然后使用SCINN-DLGN模型对分割后的图像进行分析,该模型从ROI中提取几何特征。使用集成到线性图注意力模型中的深度聚类算法将这些特征分类为良性、恶性或健康类别。所提出的系统在Python平台上实现,并使用实时MRI盆腔包块数据集对其性能进行评估。SCINN-DLGN模型实现了令人印象深刻的99.9%的准确率和99.8%的召回率,与现有方法相比显示出卓越的效率,并突出了其在该领域进一步发展的潜力。