Petsiou D-P, Spinos D, Martinos A, Muzaffar J, Garas G, Georgalas C
Department of Otolaryngology - Head and Neck Surgery, National and Kapodistrian University of Athens, School of Medicine, Athens, Greece.
Department of Cancer and Genomics, School of Medicine, University of Birmingham, Birmingham, United Kingdom.
Rhinology. 2025 May 19. doi: 10.4193/Rhin25.044.
Sinonasal pathology can be complex and requires a systematic and meticulous approach. Artificial Intelligence (AI) has the potential to improve diagnostic accuracy and efficiency in sinonasal imaging, but its clinical applicability remains an area of ongoing research. This systematic review evaluates the methodologies and clinical relevance of AI in detecting sinonasal pathology through radiological imaging.
Key search terms included "artificial intelligence," "deep learning," "machine learning," "neural network," and "paranasal sinuses,". Abstract and full-text screening was conducted using predefined inclusion and exclusion criteria. Data were extracted on study design, AI architectures used (e.g., Convolutional Neural Networks (CNN), Machine Learning classifiers), and clinical characteristics, such as imaging modality (e.g., Computed Tomography (CT), Magnetic Resonance Imaging (MRI)).
A total of 53 studies were analyzed, with 85% retrospective, 68% single-center, and 92.5% using internal databases. CT was the most common imaging modality (60.4%), and chronic rhinosinusitis without nasal polyposis (CRSsNP) was the most studied condition (34.0%). Forty-one studies employed neural networks, with classification as the most frequent AI task (35.8%). Key performance metrics included Area Under the Curve (AUC), accuracy, sensitivity, specificity, precision, and F1-score. Quality assessment based on CONSORT-AI yielded a mean score of 16.0 ± 2.
AI shows promise in improving sinonasal imaging interpretation. However, as existing research is predominantly retrospective and single-center, further studies are needed to evaluate AI's generalizability and applicability. More research is also required to explore AI's role in treatment planning and post-treatment prediction for clinical integration.
鼻窦病理学可能很复杂,需要系统且细致的方法。人工智能(AI)有潜力提高鼻窦成像的诊断准确性和效率,但其临床适用性仍是一个正在研究的领域。本系统评价通过放射学成像评估AI在检测鼻窦病理学方面的方法和临床相关性。
关键检索词包括“人工智能”“深度学习”“机器学习”“神经网络”和“鼻窦”。使用预定义的纳入和排除标准进行摘要和全文筛选。提取关于研究设计、使用的AI架构(如卷积神经网络(CNN)、机器学习分类器)以及临床特征(如图像模态(如计算机断层扫描(CT)、磁共振成像(MRI)))的数据。
共分析了53项研究,其中85%为回顾性研究,68%为单中心研究,92.5%使用内部数据库。CT是最常见的成像模态(60.4%),无鼻息肉的慢性鼻窦炎(CRSsNP)是研究最多的疾病(34.0%)。41项研究采用了神经网络,分类是最常见的AI任务(35.8%)。关键性能指标包括曲线下面积(AUC)、准确性、敏感性、特异性、精确性和F1分数。基于CONSORT-AI的质量评估平均得分为16.0±2。
AI在改善鼻窦成像解读方面显示出前景。然而,由于现有研究主要是回顾性和单中心的,需要进一步研究来评估AI的普遍性和适用性。还需要更多研究来探索AI在治疗计划和治疗后预测以实现临床整合方面所起的作用。