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Diagnostic ability of artificial intelligence using deep learning analysis of cyst fluid in differentiating malignant from benign pancreatic cystic lesions

机译:囊肿液深度学习分析在区分良性胰腺囊性病变中的人工智能诊断能力

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摘要

The diagnosis of pancreatic cystic lesions remains challenging. This study aimed to investigate the diagnostic ability of carcinoembryonic antigen (CEA), cytology, and artificial intelligence (AI) by deep learning using cyst fluid in differentiating malignant from benign cystic lesions. We retrospectively reviewed 85 patients who underwent pancreatic cyst fluid analysis of surgical specimens or endoscopic ultrasound-guided fine-needle aspiration specimens. AI using deep learning was used to construct a diagnostic algorithm. CEA, carbohydrate antigen 19-9, carbohydrate antigen 125, amylase in the cyst fluid, sex, cyst location, connection of the pancreatic duct and cyst, type of cyst, and cytology were keyed into the AI algorithm, and the malignant predictive value of the output was calculated. Area under receiver-operating characteristics curves for the diagnostic ability of malignant cystic lesions were 0.719 (CEA), 0.739 (cytology), and 0.966 (AI). In the diagnostic ability of malignant cystic lesions, sensitivity, specificity, and accuracy of AI were 95.7%, 91.9%, and 92.9%, respectively. AI sensitivity was higher than that of CEA (60.9%, p = 0.021) and cytology (47.8%, p = 0.001). AI accuracy was also higher than CEA (71.8%, p < 0.001) and cytology (85.9%, p = 0.210). AI may improve the diagnostic ability in differentiating malignant from benign pancreatic cystic lesions.
机译:胰腺囊性病变的诊断仍然具有挑战性。这项研究旨在通过使用囊液进​​行深度学习来区分癌性囊性病变和恶性囊性病变,从而研究癌胚抗原(CEA),细胞学和人工智能(AI)的诊断能力。我们回顾性分析了85例行外科手术标本或内镜超声引导下细针抽吸标本进行胰囊液分析的患者。使用深度学习的AI来构建诊断算法。 CEA,糖类抗原19-9,糖类抗原125,囊肿液中的淀粉酶,性别,囊肿位置,胰管与囊肿的连接,囊肿的类型和细胞学均已纳入AI算法,并且其恶性预测价值计算输出。接受者操作特征曲线下对恶性囊性病变诊断能力的面积分别为0.719(CEA),0.739(细胞学)和0.966(AI)。在恶性囊性病变的诊断能力中,AI的敏感性,特异性和准确性分别为95.7%,91.9%和92.9%。 AI敏感性高于CEA(60.9%,p = 0.021)和细胞学检查(47.8%,p = 0.001)。 AI准确性也高于CEA(71.8%,p <0.001)和细胞学检查(85.9%,p = 0.210)。 AI可以提高区分恶性和良性胰腺囊性病变的诊断能力。

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