使用内镜USG、CT和MRI的多模式人工智能来区分浆液性和粘液性囊性肿瘤。

IF 1.3 Q3 MEDICINE, GENERAL & INTERNAL
Cureus Pub Date : 2025-06-08 eCollection Date: 2025-06-01 DOI:10.7759/cureus.85547
Katsushi Seza, Katsunobu Tawada, Akitoshi Kobayashi, Kazuyoshi Nakamura
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引用次数: 0

摘要

浆液性囊性肿瘤(SCN)和黏液性囊性肿瘤(MCN)在单一成像模式下通常表现出相似的成像特征。区分SCN和MCN通常需要使用多种成像技术,包括计算机断层扫描(CT)、磁共振成像(MRI)和内窥镜超声检查(EUS)。最近的研究表明,人工智能(AI)可以通过单模态成像有效区分SCN和MCN。尽管取得了这些进步,但人工智能的诊断性能尚未达到最佳水平。本研究比较了人工智能在使用多模态成像和单模态成像对SCN和MCN进行分类方面的功效。目的是评估人工智能利用EUS、CT和MRI多模态成像对这两种类型胰腺囊肿进行分类的有效性。方法:作为一项多中心研究的一部分,我们回顾性收集了25例手术确诊的SCN患者和24例手术确诊的MCN患者的数据。影像学采用四种方式:EUS、早期腹部CT增强、t2加权MRI和磁共振胰腺造影。每个肿瘤每个模态获得四张图像。利用数据增强技术,每个模态最终得到39,200张图像的数据集。采用带有ResNet的AI模型将囊肿分类为SCN或MCN,并结合临床特征和成像模式(单、双、三、四种模式)的组合。将分类结果与5名有10年以上经验的胃肠病学家的分类结果进行比较。比较是基于三个性能指标:敏感性、特异性和准确性。结果采用单一成像方式的人工智能的敏感性、特异性和准确性分别为87.0%、92.7%和90.8%。结合两种成像方式可提高灵敏度、特异性和准确性,分别为95.3%、95.1%和94.9%。在三种模式下,人工智能的灵敏度为96.0%,特异性为99.0%,准确率为97.0%。最终,采用所有四种成像方式使AI达到98.0%的灵敏度,100%的特异性和99.0%的准确性。相比之下,使用所有四种方式的专家获得了78.0%的敏感性,82.0%的特异性和81.0%的准确性。人工智能模型在所有指标上的表现都优于专家。每增加一种成像模式,性能都会持续增强,使用三种和四种模式的人工智能明显优于单模态成像人工智能。结论与单模态成像人工智能和经验丰富的人类专家相比,多模态成像人工智能在SCN和MCN分类方面具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal Artificial Intelligence Using Endoscopic USG, CT, and MRI to Differentiate Between Serous and Mucinous Cystic Neoplasms.

Introduction Serous cystic neoplasms (SCN) and mucinous cystic neoplasms (MCN) often exhibit similar imaging features when evaluated with a single imaging modality. Differentiating between SCN and MCN typically necessitates the utilization of multiple imaging techniques, including computed tomography (CT), magnetic resonance imaging (MRI), and endoscopic ultrasonography (EUS). Recent research indicates that artificial intelligence (AI) can effectively distinguish between SCN and MCN using single-modal imaging. Despite these advancements, the diagnostic performance of AI has not yet reached an optimal level. This study compares the efficacy of AI in classifying SCN and MCN using multimodal imaging versus single-modal imaging. The objective was to assess the effectiveness of AI utilizing multimodal imaging with EUS, CT, and MRI to classify these two types of pancreatic cysts. Methods We retrospectively gathered data from 25 patients with surgically confirmed SCN and 24 patients with surgically confirmed MCN as part of a multicenter study. Imaging was conducted using four modalities: EUS, early-phase contrast-enhanced abdominal CT, T2-weighted MRI, and magnetic resonance pancreatography. Four images per modality were obtained for each tumor. Data augmentation techniques were utilized, resulting in a final dataset of 39,200 images per modality. An AI model with ResNet was employed to categorize the cysts as SCN or MCN, incorporating clinical features and combinations of imaging modalities (single, double, triple, and all four modalities). The classification outcomes were compared with those of five experienced gastroenterologists with over 10 years of experience. The comparison is based on three performance metrics: sensitivity, specificity, and accuracy. Results For AI utilizing a single imaging modality, the sensitivity, specificity, and accuracy were 87.0%, 92.7%, and 90.8%, respectively. Combining two imaging modalities improved the sensitivity, specificity, and accuracy to 95.3%, 95.1%, and 94.9%. With three modalities, AI achieved a sensitivity of 96.0%, a specificity of 99.0%, and an accuracy of 97.0%. Ultimately, employing all four imaging modalities resulted in AI achieving 98.0% sensitivity, 100% specificity, and 99.0% accuracy. In contrast, experts utilizing all four modalities attained a sensitivity of 78.0%, specificity of 82.0%, and accuracy of 81.0%. The AI models consistently outperformed the experts across all metrics. A continuous enhancement in performance was observed with each additional imaging modality, with AI utilizing three and four modalities significantly surpassing single-modal imaging AI. Conclusion AI utilizing multimodal imaging offers better performance compared to both single-modal imaging AI and experienced human experts in classifying SCN and MCN.

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