Alikarami Moslem, Faraj Tola Abdulsattar, Hama Nabaz Hamarashid, Hosseini Amineh Sadat, Habibi Paria, Samiei Mosleh Iman, Alavi Mehran, Kashani Mostafa, Aminnezhad Sargol
Research and Development Center, Dina Pharmed Exir Salamat Co, 574768 R.No., Tehran, Iran.
Department of Medical Analysis, Faculty of Applied Science, Tishk International University, Erbil, Iraq.
Eur J Surg Oncol. 2025 Sep;51(9):110188. doi: 10.1016/j.ejso.2025.110188. Epub 2025 May 22.
OCT (Optical Coherence Tomography) functions as a high-resolution non-invasive imaging technology that serves multiple applications within ophthalmology and cardiology and dermatology as well as oncology. The adoption of OCT technology showed major diagnostic progress but medical professionals still face obstacles in complex picture interpretation as well as inconsistent accuracy rates. The implementation of Artificial Intelligence (AI) systems that use machine learning (ML) and deep learning (DL) functions has enabled OCT to analyze images automatically while offering better diagnostic precision.
The study investigates medical sector applications of OCT technology and scrutinizes how AI facilitates improved clinical performance of OCT. Research conducted on peer-reviewed studies analyzed how AI improves OCT technology by enabling automatic disease detection and real-time image modification and clinical support functions.
The medical field underwent a revolutionary change due to OCT technology that enables improved detection of diseases alongside better patient healing outcomes for retinal conditions and cardiovascular problems and epithelial cancer cases. Real-time surgical oncology decision-making occurs through AI by improving both OCT classification of diseases and detection of tumor margins simultaneously. Convolutional neural networks under artificial intelligence control exhibit strong ability to detect normal and abnormal tissues thus enabling earlier cancer detection with improved medical treatment accuracy. Solving active problems with two main issues stands as the key requirement for progress as clinicians work with uncertain model validity and incomplete dataset similarities in clinical settings.
Clinical procedures benefit from important improvements when OCT networks integrate AI command systems in their operations. Future research demands model optimization for AI technology together with the solution of dataset biases and better implementation in medical settings. AI integration with OCT technology points to substantial potential for healthcare detection developments as well as treatment solutions for individual patients in cancer medicine.
光学相干断层扫描(OCT)是一种高分辨率非侵入性成像技术,在眼科、心脏病学、皮肤病学以及肿瘤学等领域有多种应用。OCT技术的应用取得了重大诊断进展,但医学专业人员在复杂图像解读以及准确率不一致方面仍面临障碍。采用具有机器学习(ML)和深度学习(DL)功能的人工智能(AI)系统,使OCT能够自动分析图像,同时提供更高的诊断精度。
本研究调查了OCT技术在医疗领域的应用,并审视了AI如何促进OCT临床性能的提升。对同行评审研究进行的分析探讨了AI如何通过实现疾病自动检测、实时图像修正和临床支持功能来改进OCT技术。
由于OCT技术,医学领域发生了革命性变化,该技术能够更好地检测疾病,同时为视网膜疾病、心血管问题和上皮癌病例带来更好的患者治疗效果。通过AI同时改进疾病的OCT分类和肿瘤边缘检测,可实现实时肿瘤手术决策。在人工智能控制下的卷积神经网络具有强大的正常和异常组织检测能力,从而能够更早地检测癌症并提高医疗治疗准确性。解决两个主要问题的现有问题是取得进展的关键要求,因为临床医生在临床环境中面临模型有效性不确定和数据集相似性不完整的问题。
当OCT网络在其操作中集成AI指挥系统时,临床程序将受益于重要改进。未来的研究需要对AI技术进行模型优化,同时解决数据集偏差问题,并在医疗环境中更好地实施。AI与OCT技术的整合为医疗检测发展以及癌症医学中个体患者的治疗解决方案带来了巨大潜力。