Russell H. Morgan Department of Radiology and Radiological Science, Johns Hopkins University School of Medicine, Baltimore, MD, USA.
Department of Surgery, Johns Hopkins University School of Medicine, Baltimore, MD, USA.
Abdom Radiol (NY). 2022 Dec;47(12):4139-4150. doi: 10.1007/s00261-022-03663-6. Epub 2022 Sep 13.
A wide array of benign and malignant lesions of the pancreas can be cystic and these cystic lesions can have overlapping imaging appearances. The purpose of this study is to compare the diagnostic accuracy of a radiomics-based pancreatic cyst classifier to an experienced academic radiologist.
In this IRB-approved retrospective single-institution study, patients with surgically resected pancreatic cysts who underwent preoperative abdominal CT from 2003 to 2016 were identified. Pancreatic cyst(s) and background pancreas were manually segmented, and 488 radiomics features were extracted. Random forest classification based on radiomics features, age, and gender was evaluated with fourfold cross-validation. An academic radiologist blinded to the final pathologic diagnosis reviewed each case and provided the most likely diagnosis.
214 patients were included (64 intraductal papillary mucinous neoplasms, 33 mucinous cystic neoplasms, 60 serous cystadenomas, 24 solid pseudopapillary neoplasms, and 33 cystic neuroendocrine tumors). The radiomics-based machine learning approach showed AUC of 0.940 in pancreatic cyst classification, compared with AUC of 0.895 for the radiologist.
Radiomics-based machine learning achieved equivalent performance as an experienced academic radiologist in the classification of pancreatic cysts. The high diagnostic accuracy can potentially maximize the efficiency of healthcare utilization by maximizing detection of high-risk lesions.
胰腺的许多良性和恶性病变可以是囊性的,这些囊性病变的影像学表现可能有重叠。本研究的目的是比较基于放射组学的胰腺囊肿分类器与经验丰富的学术放射科医生的诊断准确性。
在这项经过机构审查委员会批准的回顾性单中心研究中,确定了 2003 年至 2016 年间接受术前腹部 CT 检查并接受手术切除胰腺囊肿的患者。手动分割胰腺囊肿和背景胰腺,并提取 488 个放射组学特征。基于放射组学特征、年龄和性别进行的随机森林分类,采用四重交叉验证进行评估。一名对最终病理诊断不知情的学术放射科医生对每个病例进行了回顾,并提供了最可能的诊断。
共纳入 214 例患者(64 例导管内乳头状黏液性肿瘤、33 例黏液性囊腺瘤、60 例浆液性囊腺瘤、24 例实性假乳头状瘤和 33 例囊性神经内分泌肿瘤)。基于放射组学的机器学习方法在胰腺囊肿分类中的 AUC 为 0.940,而放射科医生的 AUC 为 0.895。
基于放射组学的机器学习在胰腺囊肿的分类中达到了与经验丰富的学术放射科医生相当的性能。这种高诊断准确性可以通过最大限度地提高高危病变的检出率,最大限度地提高医疗保健的利用效率。