Early detection of precancerous cysts or neoplasms, i.e., Intraductal Papillary Mucosal Neoplasms (IPMN), in pancreas is a challenging and complex task, and it may lead to a more favourable outcome. Once detected, grading IPMNs accurately is also necessary, since low-risk IPMNs can be under surveillance program, while high-risk IPMNs have to be surgically resected before they turn into cancer. Current standards (Fukuoka and others) for IPMN classification show significant intra- and inter-operator variability, beside being error-prone, making a proper diagnosis unreliable. The established progress in artificial intelligence, through the deep learning paradigm, may provide a key tool for an effective support to medical decision for pancreatic cancer. In this work, we follow this trend, by proposing a novel AI-based IPMN classifier that leverages the recent success of transformer networks in generalizing across a wide variety of tasks, including vision ones. We specifically show that our transformer-based model exploits pre-training better than standard convolutional neural networks, thus supporting the sought architectural universalism of transformers in vision, including the medical image domain and it allows for a better interpretation of the obtained results.
翻译:早期检测先天性囊肿或肿瘤,即胰腺内皮囊肿或肿瘤(IPMN)是一项艰巨而复杂的任务,可能导致更有利的结果。一旦检测发现,准确分级IPMN也是必要的,因为低风险IPMN可以接受监视方案,而高风险IPMN在变成癌症之前必须用外科再切除。IPMN分类的现行标准(Fukooka等)表明,内部和间操作者之间的差异很大,除了容易出错之外,还使适当的诊断不可靠。人工智能的既定进展,通过深层次学习模式,可以提供一种关键工具,有效支持对肿瘤的医学决策。在这项工作中,我们遵循这一趋势,提出一个新的基于AI的IPMN分类,利用最近变压网络的成功,在广泛的任务中推广,包括愿景。我们具体表明,我们的变压模型利用了培训前的模型,利用了更好的医学模型,包括标准化的变压式图像网络,从而使得它获得更好的革命性图像网络得到更好的支持。