Zhang Gong, Chen Weixiang, Wang Zizheng, Wang Fei, Liu Rong, Feng Jianjiang
Faculty of Hepato-Biliary-Pancreatic Surgery, the First Medical Center of Chinese People's Liberation Army (PLA) General Hospital, Beijing, China.
Department of Automation, Tsinghua University, Beijing, China.
Front Oncol. 2023 Sep 19;13:1181270. doi: 10.3389/fonc.2023.1181270. eCollection 2023.
Pancreatic cystic neoplasms are increasingly diagnosed with the development of medical imaging technology and people's self-care awareness. However, two of their sub-types, serous cystic neoplasms (SCN) and mucinous cystic neoplasms (MCN), are often misclassified from each other. Because SCN is primarily benign and MCN has a high rate of malignant transformation. Distinguishing SCN and MCN is challenging and essential.
MRIs have many different modalities, complete with SCN and MCN diagnosis information. With the help of an artificial intelligence-based algorithm, we aimed to propose a multi-modal hybrid deep learning network that can efficiently diagnose SCN and MCN using multi-modality MRIs.
A cross-modal feature fusion structure was innovatively designed, combining features of seven modalities to realize the classification of SCN and MCN. 69 Patients with multi-modalities of MRIs were included, and experiments showed performances of every modality.
The proposed method with the optimized settings outperformed all other techniques and human radiologists with high accuracy of 75.07% and an AUC of 82.77%. Besides, the proposed disentanglement method outperformed other fusion methods, and delayed contrast-enhanced T1-weighted MRIs proved most valuable in diagnosing SCN and MCN.
Through the use of a contemporary artificial intelligence algorithm, physicians can attain high performance in the complex challenge of diagnosing SCN and MCN, surpassing human radiologists to a significant degree.
随着医学成像技术的发展和人们自我保健意识的提高,胰腺囊性肿瘤的诊断越来越多。然而,它们的两种亚型,浆液性囊性肿瘤(SCN)和黏液性囊性肿瘤(MCN),常常被相互误诊。因为SCN主要是良性的,而MCN有较高的恶性转化率。区分SCN和MCN具有挑战性但至关重要。
MRI有许多不同的模态,包含SCN和MCN的诊断信息。借助基于人工智能的算法,我们旨在提出一种多模态混合深度学习网络,该网络能够使用多模态MRI高效诊断SCN和MCN。
创新性地设计了一种跨模态特征融合结构,结合七种模态的特征来实现SCN和MCN的分类。纳入了69例具有多模态MRI的患者,并展示了每种模态的实验性能。
所提出的经过优化设置的方法在准确性和曲线下面积方面均优于所有其他技术和人类放射科医生,准确率高达75.07%,曲线下面积为82.77%。此外,所提出的解缠方法优于其他融合方法,延迟对比增强T1加权MRI在诊断SCN和MCN方面被证明最有价值。
通过使用当代人工智能算法,医生在诊断SCN和MCN这一复杂挑战中能够获得高性能,在很大程度上超过人类放射科医生。