Shahzad Ahsan, Mushtaq Abid, Sabeeh Abdul Quddoos, Ghadi Yazeed Yasin, Mushtaq Zohaib, Arif Saad, Ur Rehman Muhammad Zia, Qureshi Muhammad Farrukh, Jamil Faisal
Rural Health Centre, Farooka, Sahiwal, Sargodha 40100, Pakistan.
Department of Computer Science, Al Ain University, Abu Dhabi P.O. Box 112612, United Arab Emirates.
Healthcare (Basel). 2023 May 20;11(10):1493. doi: 10.3390/healthcare11101493.
Fibroids of the uterus are a common benign tumor affecting women of childbearing age. Uterine fibroids (UF) can be effectively treated with earlier identification and diagnosis. Its automated diagnosis from medical images is an area where deep learning (DL)-based algorithms have demonstrated promising results. In this research, we evaluated state-of-the-art DL architectures VGG16, ResNet50, InceptionV3, and our proposed innovative dual-path deep convolutional neural network (DPCNN) architecture for UF detection tasks. Using preprocessing methods including scaling, normalization, and data augmentation, an ultrasound image dataset from Kaggle is prepared for use. After the images are used to train and validate the DL models, the model performance is evaluated using different measures. When compared to existing DL models, our suggested DPCNN architecture achieved the highest accuracy of 99.8 percent. Findings show that pre-trained deep-learning model performance for UF diagnosis from medical images may significantly improve with the application of fine-tuning strategies. In particular, the InceptionV3 model achieved 90% accuracy, with the ResNet50 model achieving 89% accuracy. It should be noted that the VGG16 model was found to have a lower accuracy level of 85%. Our findings show that DL-based methods can be effectively utilized to facilitate automated UF detection from medical images. Further research in this area holds great potential and could lead to the creation of cutting-edge computer-aided diagnosis systems. To further advance the state-of-the-art in medical imaging analysis, the DL community is invited to investigate these lines of research. Although our proposed innovative DPCNN architecture performed best, fine-tuned versions of pre-trained models like InceptionV3 and ResNet50 also delivered strong results. This work lays the foundation for future studies and has the potential to enhance the precision and suitability with which UF is detected.
子宫肌瘤是一种常见的良性肿瘤,影响育龄女性。子宫肌瘤(UF)若能早期识别和诊断,可得到有效治疗。从医学图像中对其进行自动诊断是一个领域,基于深度学习(DL)的算法已在该领域展现出有前景的成果。在本研究中,我们评估了用于UF检测任务的先进DL架构VGG16、ResNet50、InceptionV3以及我们提出的创新双路径深度卷积神经网络(DPCNN)架构。使用包括缩放、归一化和数据增强在内的预处理方法,准备了来自Kaggle的超声图像数据集以供使用。在图像用于训练和验证DL模型后,使用不同指标评估模型性能。与现有DL模型相比,我们建议的DPCNN架构实现了最高99.8%的准确率。研究结果表明,通过应用微调策略,从医学图像中进行UF诊断的预训练深度学习模型性能可能会显著提高。特别是,InceptionV3模型达到了90%的准确率,ResNet50模型达到了89%的准确率。应当指出的是,发现VGG16模型的准确率较低,为85%。我们的研究结果表明,基于DL的方法可有效用于促进从医学图像中自动检测UF。该领域的进一步研究具有巨大潜力,可能会带来前沿计算机辅助诊断系统的创建。为了进一步推动医学成像分析的技术水平,邀请DL社区研究这些研究方向。尽管我们提出的创新DPCNN架构表现最佳,但InceptionV3和ResNet50等预训练模型的微调版本也取得了不错的结果。这项工作为未来的研究奠定了基础,有可能提高检测UF的精度和适用性。