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Quantification of CT Images for the Classification of High-and Low- Risk Pancreatic Cysts

机译:用于高和低风险胰囊肿分类的CT图像的定量

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Pancreatic cancer is the most lethal cancer with an overall 5-year survival rate of 7%~1 due to the late stage at diagnosis and the ineffectiveness of current therapeutic strategies. Given the poor prognosis, early detection at a pre-cancerous stage is the best tool for preventing this disease. Intraductal papillary mucinous neoplasms (IPMN), cystic tumors of the pancreas, represent the only radiographically identifiable precursor lesion of pancreatic cancer and are known to evolve stepwise from low-to-high-grade dysplasia before progressing into an invasive carcinoma. Observation is usually recommended for low-risk (low- and intermediate-grade dysplasia) patients, while high-risk (high-grade dysplasia and invasive carcinoma) patients undergo resection; hence, patient selection is critically important in the management of pancreatic cysts.2 Radiologists use standard criteria such as main pancreatic duct size, cyst size, or presence of a solid enhancing component in the cyst to optimally select patients for surgery.3 However, these findings are subject to a radiologist's interpretation and have been shown to be inconsistent with regards to the presence of a mural nodule or solid component.~4 We propose objective classification of risk groups based on quantitative imaging features extracted from CT scans. We apply new features that represent the solid component (i.e. areas of high intensity) within the cyst and extract standard texture features. An adaptive boost classifier~5 achieves the best performance with area under receiver operating characteristic curve (AUC) of 0.73 and accuracy of 77.3% for texture features. The random forest classifier achieves the best performance with AUC of 0.71 and accuracy of 70.8% with the solid component features.
机译:胰腺癌是最致命的癌症,总体致命癌症为期7%〜1,由于诊断后期和当前治疗策略的无效性。鉴于预后差,预先癌症阶段的早期检测是预防这种疾病的最佳工具。内部乳头状粘膜肿瘤(IPMN),胰腺的囊性肿瘤,代表胰腺癌的唯一射线照片识别前体病变,并且已知在进展到侵入性癌之前从低高级发育不良逐步演变。通常建议对低风险(低和中等性发育不良)患者进行观察,而高风险(高级发育性和侵入性癌)患者进行切除;因此,患者选择在胰腺囊肿的管理中至关重要.2放射科医师使用诸如主要胰腺导管尺寸,囊肿大小或固体增强组分的标准标准,以最佳地为手术选择患者。然而,这些结果经过放射科医师的解释,并且已被证明对存在壁状结节或固体组分的存在不一致。〜4我们提出了基于从CT扫描提取的定量成像特征的风险群体的客观分类。我们应用了囊肿内的固体组分(即高强度区域)的新功能,并提取标准纹理特征。自适应升压分类器〜5实现了0.73的接收器操作特性曲线(AUC)下面积的最佳性能,精度为77.3%,用于纹理特征。随机林分类器可实现0.71的AUC,精度为70.8%,具有固体部件特征。

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