Valizadeh Parya, Jannatdoust Payam, Pahlevan-Fallahy Mohammad-Taha, Hassankhani Amir, Amoukhteh Melika, Bagherieh Sara, Ghadimi Delaram J, Gholamrezanezhad Ali
School of Medicine, Tehran University of Medical Sciences, Tehran, Iran.
Department of Radiology, Keck School of Medicine, University of Southern California (USC), 1441 Eastlake Ave Ste 2315, Los Angeles, CA, 90089, USA.
Neuroradiology. 2025 Feb;67(2):449-467. doi: 10.1007/s00234-024-03485-x. Epub 2024 Nov 11.
Head and neck cancers are the seventh most common globally, with lymph node metastasis (LNM) being a critical prognostic factor, significantly reducing survival rates. Traditional imaging methods have limitations in accurately diagnosing LNM. This meta-analysis aims to estimate the diagnostic accuracy of Artificial Intelligence (AI) models in detecting LNM in head and neck cancers.
A systematic search was performed on four databases, looking for studies reporting the diagnostic accuracy of AI models in detecting LNM in head and neck cancers. Methodological quality was assessed using the METRICS tool and meta-analysis was performed using bivariate model in R environment.
23 articles met the inclusion criteria. Due to the absence of external validation in most studies, all analyses were confined to internal validation sets. The meta-analysis revealed a pooled AUC of 91% for CT-based radiomics, 84% for MRI-based radiomics, and 92% for PET/CT-based radiomics. Sensitivity and specificity were highest for PET/CT-based models. The pooled AUC was 92% for deep learning models and 91% for hand-crafted radiomics models. Models based on lymph node features had a pooled AUC of 92%, while those based on primary tumor features had an AUC of 89%. No significant differences were found between deep learning and hand-crafted radiomics models or between lymph node and primary tumor feature-based models.
Radiomics and deep learning models exhibit promising accuracy in diagnosing LNM in head and neck cancers, particularly with PET/CT. Future research should prioritize multicenter studies with external validation to confirm these results and enhance clinical applicability.
头颈癌是全球第七大常见癌症,淋巴结转移(LNM)是一个关键的预后因素,会显著降低生存率。传统成像方法在准确诊断LNM方面存在局限性。本荟萃分析旨在评估人工智能(AI)模型对头颈癌淋巴结转移的诊断准确性。
对四个数据库进行系统检索,寻找报告AI模型对头颈癌淋巴结转移诊断准确性的研究。使用METRICS工具评估方法学质量,并在R环境中使用双变量模型进行荟萃分析。
23篇文章符合纳入标准。由于大多数研究缺乏外部验证,所有分析均局限于内部验证集。荟萃分析显示,基于CT的放射组学的汇总AUC为91%,基于MRI的放射组学为84%,基于PET/CT的放射组学为92%。基于PET/CT的模型的敏感性和特异性最高。深度学习模型的汇总AUC为92%,手工制作的放射组学模型为91%。基于淋巴结特征的模型的汇总AUC为92%,而基于原发肿瘤特征的模型的AUC为89%。深度学习模型与手工制作的放射组学模型之间或基于淋巴结和原发肿瘤特征的模型之间未发现显著差异。
放射组学和深度学习模型在诊断头颈癌淋巴结转移方面显示出有前景的准确性,特别是使用PET/CT时。未来的研究应优先进行具有外部验证的多中心研究,以证实这些结果并提高临床适用性。