Baştuğ Betül Tiryaki, Güneri Gürkan, Yıldırım Mehmet Süleyman, Çorbacı Kadir, Dandıl Emre
Department of Radiology, Medical Faculty, Bilecik Şeyh Edebali University, Bilecik 11230, Türkiye.
Department of General Surgery, Medical Faculty, Bilecik Şeyh Edebali University, Bilecik 11230, Türkiye.
J Clin Med. 2024 Oct 2;13(19):5893. doi: 10.3390/jcm13195893.
The accurate segmentation of the appendix with well-defined boundaries is critical for diagnosing conditions such as acute appendicitis. The manual identification of the appendix is time-consuming and highly dependent on the expertise of the radiologist. In this study, we propose a fully automated approach to the detection of the appendix using deep learning architecture based on the U-Net with specific training parameters in CT scans. The proposed U-Net architecture is trained on an annotated original dataset of abdominal CT scans to segment the appendix efficiently and with high performance. In addition, to extend the training set, data augmentation techniques are applied for the created dataset. In experimental studies, the proposed U-Net model is implemented using hyperparameter optimization and the performance of the model is evaluated using key metrics to measure diagnostic reliability. The trained U-Net model achieved the segmentation performance for the detection of the appendix in CT slices with a Dice Similarity Coefficient (DSC), Volumetric Overlap Error (VOE), Average Symmetric Surface Distance (ASSD), Hausdorff Distance 95 (HD95), Precision (PRE) and Recall (REC) of 85.94%, 23.29%, 1.24 mm, 5.43 mm, 86.83% and 86.62%, respectively. Moreover, our model outperforms other methods by leveraging the U-Net's ability to capture spatial context through encoder-decoder structures and skip connections, providing a correct segmentation output. The proposed U-Net model showed reliable performance in segmenting the appendix region, with some limitations in cases where the appendix was close to other structures. These improvements highlight the potential of deep learning to significantly improve clinical outcomes in appendix detection.
准确分割边界清晰的阑尾对于诊断急性阑尾炎等病症至关重要。人工识别阑尾既耗时又高度依赖放射科医生的专业知识。在本研究中,我们提出了一种基于U-Net深度学习架构并带有特定训练参数的全自动阑尾检测方法,用于CT扫描。所提出的U-Net架构在腹部CT扫描的带注释原始数据集上进行训练,以高效且高性能地分割阑尾。此外,为了扩展训练集,对创建的数据集应用了数据增强技术。在实验研究中,所提出的U-Net模型通过超参数优化来实现,并使用关键指标评估模型性能以衡量诊断可靠性。训练后的U-Net模型在CT切片中检测阑尾时,其Dice相似系数(DSC)、体积重叠误差(VOE)、平均对称表面距离(ASSD)、95%豪斯多夫距离(HD95)、精度(PRE)和召回率(REC)分别达到了85.94%、23.29%、1.24毫米、5.43毫米、86.83%和86.62%。此外,我们的模型通过利用U-Net通过编码器-解码器结构和跳跃连接捕获空间上下文的能力,优于其他方法,提供了正确的分割输出。所提出的U-Net模型在分割阑尾区域时表现出可靠的性能,但在阑尾靠近其他结构的情况下存在一些局限性。这些改进突出了深度学习在显著改善阑尾检测临床结果方面的潜力。