Rusu-Both Roxana, Socaci Marius-Cristian, Palagos Adrian-Ionuț, Buzoianu Corina, Avram Camelia, Vălean Honoriu, Chira Romeo-Ioan
Automation Department, Technical University of Cluj-Napoca, 400114 Cluj-Napoca, Romania.
AIMed Soft Solution S.R.L., 400505 Cluj-Napoca, Romania.
J Clin Med. 2025 Mar 8;14(6):1828. doi: 10.3390/jcm14061828.
: Even with today's advancements, cancer still represents a major cause of mortality worldwide. One important aspect of cancer progression that has a big impact on diagnosis, prognosis, and treatment plans is accurate lymph node metastasis evaluation. However, regardless of the imaging method used, this process is challenging and time-consuming. This research aimed to develop and validate an automatic detection and segmentation system for superficial lymph node evaluation based on multimodal ultrasound images, such as traditional B-mode, Doppler, and elastography, using deep learning techniques. : The suggested approach incorporated a Mask R-CNN architecture designed specifically for the detection and segmentation of lymph nodes. The pipeline first involved noise reduction preprocessing, after which morphological and textural feature segmentation and analysis were performed. Vascularity and stiffness parameters were further examined in Doppler and elastography pictures. Metrics, including accuracy, mean average precision (mAP), and dice coefficient, were used to assess the system's performance during training and validation on a carefully selected dataset of annotated ultrasound pictures. : During testing, the Mask R-CNN model showed an accuracy of 92.56%, a COCO AP score of 60.7 and a validation score of 64. Furter on, to improve diagnostic capabilities, Doppler and elastography data were added. This allowed for improved performance across several types of ultrasound images and provided thorough insights into the morphology, vascularity, and stiffness of lymph nodes. : This paper offers a novel use of deep learning for automated lymph node assessment in ultrasound imaging. This system offers a dependable tool for doctors to evaluate lymph node metastases efficiently by fusing sophisticated segmentation techniques with multimodal image processing. It has the potential to greatly enhance patient outcomes and diagnostic accuracy.
即便有了如今的技术进步,癌症仍是全球主要的致死原因之一。癌症进展的一个重要方面,即准确评估淋巴结转移情况,对癌症的诊断、预后及治疗方案有着重大影响。然而,无论采用何种成像方法,这一过程都颇具挑战性且耗时。本研究旨在运用深度学习技术,开发并验证一种基于多模态超声图像(如传统B超、多普勒超声和弹性成像)的浅表淋巴结评估自动检测与分割系统。
所提出的方法采用了专门为淋巴结检测与分割设计的Mask R-CNN架构。该流程首先进行降噪预处理,之后进行形态学和纹理特征分割与分析。在多普勒超声和弹性成像图像中进一步检查血管和硬度参数。在精心挑选的带注释超声图像数据集上进行训练和验证时,使用包括准确率、平均精度均值(mAP)和骰子系数等指标来评估系统性能。
在测试过程中,Mask R-CNN模型的准确率为92.56%,COCO AP分数为60.7,验证分数为64。此外,为提高诊断能力,加入了多普勒超声和弹性成像数据。这使得在几种类型的超声图像上性能得到提升,并能深入了解淋巴结的形态、血管和硬度。
本文展示了深度学习在超声成像中自动评估淋巴结方面的新应用。该系统通过将复杂的分割技术与多模态图像处理相结合,为医生高效评估淋巴结转移提供了可靠工具。它有潜力极大地改善患者治疗效果和诊断准确性。