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A combined radiomics and cyst fluid inflammatory markers model to predict preoperative risk in pancreatic cystic lesions

机译:放射线和囊肿液炎症标志物组合模型可预测胰腺囊性病变的术前风险

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This paper contributes to the burgeoning field of surgical data science. Specifically, multi-modal integration of relevant patient data is used to determine who should undergo a complex pancreatic resection. Intraductal papillary mutinous neoplasms (IPMNs) represent cystic precursor lesions of pancreatic cancer with varying risk for malignancy. We combine radiomic analysis of diagnostic computed tomography (CT) with protein markers extracted from the cyst fluid to create a unified prediction model to identify high-risk IPMNs. Patients with high-risk IPMN would be sent for resection, whereas patients with low-risk cystic lesions would be spared an invasive procedure. We extracted radiomic features from CT scans and combined this with cyst-fluid markers. The cyst fluid model yielded an area under the curve (AUC) of 0.74. Adding the QI model improved performance with an AUC of 0.88. Radiomic analysis of routinely acquired CT scans combined with cyst fluid inflammatory markers provides accurate prediction of risk of pancreatic cancer progression.
机译:本文为新兴的外科数据科学领域做出了贡献。具体而言,相关患者数据的多模式整合用于确定谁应该进行复杂的胰腺切除术。导管内乳头状乳头状肿瘤(IPMN)代表胰腺癌的囊性前体病变,具有不同的恶性风险。我们将诊断性计算机断层扫描(CT)的放射线分析与从囊肿液中提取的蛋白质标记物相结合,以创建统一的预测模型来识别高危IPMN。 IPMN高危患者将被送去切除,而低风险囊性病变的患者将无需进行侵入性手术。我们从CT扫描中提取了放射学特征,并将其与囊液标记物相结合。囊液模型产生的曲线下面积(AUC)为0.74。添加QI模型可改善性能,且AUC为0.88。常规获取的CT扫描结合囊肿液炎症标记物的放射线分析可准确预测胰腺癌进展的风险。

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