Rangwani Shiva, Ardeshna Devarshi R, Rodgers Brandon, Melnychuk Jared, Turner Ronald, Culp Stacey, Chao Wei-Lun, Krishna Somashekar G
Department of Internal Medicine, Ohio State University Wexner Medical Center, Columbus, OH 43210, USA.
College of Medicine, The Ohio State University, Columbus, OH 43210, USA.
Biomimetics (Basel). 2022 Jun 14;7(2):79. doi: 10.3390/biomimetics7020079.
The rate of incidentally detected pancreatic cystic lesions (PCLs) has increased over the past decade and was recently reported at 8%. These lesions pose a unique challenge, as each subtype of PCL carries a different risk of malignant transformation, ranging from 0% (pancreatic pseudocyst) to 34-68% (main duct intraductal papillary mucinous neoplasm). It is imperative to correctly risk-stratify the malignant potential of these lesions in order to provide the correct care course for the patient, ranging from monitoring to surgical intervention. Even with the multiplicity of guidelines (i.e., the American Gastroenterology Association guidelines and Fukuoka/International Consensus guidelines) and multitude of diagnostic information, risk stratification of PCLs falls short. Studies have reported that 25-64% of patients undergoing PCL resection have pancreatic cysts with no malignant potential, and up to 78% of mucin-producing cysts resected harbor no malignant potential on pathological evaluation. Clinicians are now incorporating artificial intelligence technology to aid in the management of these difficult lesions. This review article focuses on advancements in artificial intelligence within digital pathomics, radiomics, and genomics as they apply to the diagnosis and risk stratification of PCLs.
在过去十年中,偶然发现的胰腺囊性病变(PCL)的发生率有所上升,最近报告的发生率为8%。这些病变带来了独特的挑战,因为PCL的每个亚型发生恶性转化的风险不同,范围从0%(胰腺假性囊肿)到34 - 68%(主胰管内乳头状黏液性肿瘤)。为了给患者提供从监测到手术干预的正确治疗方案,对这些病变的恶性潜能进行正确的风险分层至关重要。尽管有多种指南(即美国胃肠病学会指南和福冈/国际共识指南)以及大量的诊断信息,但PCL的风险分层仍存在不足。研究报告称,接受PCL切除的患者中有25 - 64%的胰腺囊肿没有恶性潜能,在病理评估中,高达78%的黏液生成性囊肿切除后没有恶性潜能。临床医生现在正在采用人工智能技术来辅助管理这些棘手的病变。这篇综述文章重点介绍了数字病理学、放射组学和基因组学中的人工智能进展,以及它们在PCL诊断和风险分层中的应用。