Photiou Christos, Cloconi Constantina, Strouthos Iosif
Department of Electrical and Computer Engineering, KIOS Research and Innovation Center of Excellence, University of Cyprus, Nicosia, Cyprus.
German Oncology Center (GOC), Limassol, Cyprus.
J Imaging Inform Med. 2025 Apr;38(2):1137-1146. doi: 10.1007/s10278-024-01241-4. Epub 2024 Sep 4.
Acute radiation dermatitis (ARD) is a common and distressing issue for cancer patients undergoing radiation therapy, leading to significant morbidity. Despite available treatments, ARD remains a distressing issue, necessitating further research to improve prevention and management strategies. Moreover, the lack of biomarkers for early quantitative assessment of ARD impedes progress in this area. This study aims to investigate the detection of ARD using intensity-based and novel features of Optical Coherence Tomography (OCT) images, combined with machine learning. Imaging sessions were conducted twice weekly on twenty-two patients at six neck locations throughout their radiation treatment, with ARD severity graded by an expert oncologist. We compared a traditional feature-based machine learning technique with a deep learning late-fusion approach to classify normal skin vs. ARD using a dataset of 1487 images. The dataset analysis demonstrates that the deep learning approach outperformed traditional machine learning, achieving an accuracy of 88%. These findings offer a promising foundation for future research aimed at developing a quantitative assessment tool to enhance the management of ARD.
急性放射性皮炎(ARD)是接受放射治疗的癌症患者常见且令人苦恼的问题,会导致严重的发病率。尽管有可用的治疗方法,但ARD仍然是一个令人苦恼的问题,需要进一步研究以改进预防和管理策略。此外,缺乏用于ARD早期定量评估的生物标志物阻碍了该领域的进展。本研究旨在结合机器学习,利用光学相干断层扫描(OCT)图像的基于强度和新的特征来研究ARD的检测。在22名患者整个放射治疗期间,每周两次在其颈部六个位置进行成像,由肿瘤专家对ARD严重程度进行分级。我们使用1487张图像的数据集,将传统的基于特征的机器学习技术与深度学习后期融合方法进行比较,以对正常皮肤与ARD进行分类。数据集分析表明,深度学习方法优于传统机器学习,准确率达到88%。这些发现为未来旨在开发定量评估工具以加强ARD管理的研究提供了有希望的基础。