Herdiantoputri R R, Komura D, Ochi M, Fukawa Y, Oba K, Tsuchiya M, Kikuchi Y, Matsuyama Y, Ushiku T, Ikeda T, Ishikawa S
Department of Oral Pathology, Graduate School of Medical and Dental Sciences, Tokyo Medical and Dental University, Tokyo, Japan.
Department of Preventive Medicine, Graduate School of Medicine, The University of Tokyo, Tokyo, Japan.
J Dent Res. 2025 May 4;104(11):220345251329042. doi: 10.1177/00220345251329042.
The limited number of specialists and diseases' long-tail distribution create challenges in diagnosing oral tumors. Health care facilities with sole practicing pathologists face difficulties when encountering the rare cases. Such specialists may lack prior exposure to uncommon presentations, needing external reference materials to formulate accurate diagnoses. An image search or content-based image retrieval (CBIR) system may help diagnose rare tumors by providing histologically similar reference images, thus reducing the pathologists' workload. However, the effectiveness of CBIR systems in aiding pathologists' diagnoses through interactive use has not been evaluated. We conducted a remote evaluation in a near-clinical environment using Luigi-Oral, an interactive patch-based CBIR system that uses deep learning to diagnose oral tumors. The database comprised 54,676 image patches at multiple magnifications from 603 cases across 85 oral tumor categories. We recruited 15 general pathologists and 13 oral pathologists with varied experience to evaluate 10 retrospective test cases from 2 institutions using this dedicated system. At top-1 and top-3 differential diagnoses, the overall diagnostic accuracy among the 2 groups was significantly higher with Luigi-Oral than without (12.05% and 21.61% increase, = 0.002 and < 0.001, respectively). Improvements were more evident for tumor cases in which the category was underrepresented in the database, benefiting novice and experienced pathologists. Misdiagnoses using Luigi-Oral could be due to inappropriate query input, poor retrieval performance in cases with a rare morphologic type, the difficulty of diagnosis without elaborate clinical information, or the system's inability to retrieve accurate categories with convincing images. This study proves the clinical usability of an interactive CBIR system and highlights areas for improvement to ensure adequate assistance for pathologists, which potentially reduces pathologists' workload and provides accessible specialist-level histopathology diagnosis.
专科医生数量有限以及疾病的长尾分布给口腔肿瘤的诊断带来了挑战。仅有执业病理学家的医疗机构在遇到罕见病例时会面临困难。这类专科医生可能缺乏对不常见表现的接触,需要外部参考资料来做出准确诊断。图像搜索或基于内容的图像检索(CBIR)系统或许能通过提供组织学上相似的参考图像来帮助诊断罕见肿瘤,从而减轻病理学家的工作量。然而,CBIR系统通过交互式使用辅助病理学家诊断的有效性尚未得到评估。我们在接近临床的环境中使用Luigi-Oral进行了一项远程评估,Luigi-Oral是一个基于补丁的交互式CBIR系统,利用深度学习诊断口腔肿瘤。该数据库包含来自85种口腔肿瘤类别的603个病例的54676张不同放大倍数的图像补丁。我们招募了15名普通病理学家和13名经验各异的口腔病理学家,使用这个专用系统对来自2个机构的10个回顾性测试病例进行评估。在 top-1和top-3鉴别诊断中,使用Luigi-Oral时两组的总体诊断准确率显著高于不使用时(分别提高了12.05%和21.61%,P = 0.002和P < 0.001)。对于数据库中类别代表性不足的肿瘤病例,改进更为明显,这对新手和经验丰富的病理学家都有帮助。使用Luigi-Oral出现误诊可能是由于查询输入不当、罕见形态类型病例的检索性能不佳、缺乏详尽临床信息时诊断困难,或者系统无法通过有说服力的图像检索到准确类别。本研究证明了交互式CBIR系统的临床可用性,并突出了需要改进的领域,以确保为病理学家提供充分的帮助,这有可能减轻病理学家的工作量,并提供可及的专家级组织病理学诊断。