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Diagnosis using deep-learning artificial intelligence based on the endocytoscopic observation of the esophagus

机译:基于食道内胶质观察的深度学习人工智能诊断

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Background and aimsThe endocytoscopic system (ECS) helps in virtual realization of histology and can aid in confirming histological diagnosis in vivo. We propose replacing biopsy-based histology for esophageal squamous cell carcinoma (ESCC) by using the ECS. We applied deep-learning artificial intelligence (AI) to analyse ECS images of the esophagus to determine whether AI can support endoscopists for the replacement of biopsy-based histology.MethodsA convolutional neural network-based AI was constructed based on GoogLeNet and trained using 4715 ECS images of the esophagus (1141 malignant and 3574 non-malignant images). To evaluate the diagnostic accuracy of the AI, an independent test set of 1520 ECS images, collected from 55 consecutive patients (27 ESCCs and 28 benign esophageal lesions) were examined.ResultsOn the basis of the receiver-operating characteristic curve analysis, the areas under the curve of the total images, higher magnification pictures, and lower magnification pictures were 0.85, 0.90, and 0.72, respectively. The AI correctly diagnosed 25 of the 27 ESCC cases, with an overall sensitivity of 92.6%. Twenty-five of the 28 non-cancerous lesions were diagnosed as non-malignant, with a specificity of 89.3% and an overall accuracy of 90.9%. Two cases of malignant lesions, misdiagnosed as non-malignant by the AI, were correctly diagnosed as malignant by the endoscopist. Among the 3 cases of non-cancerous lesions diagnosed as malignant by the AI, 2 were of radiation-related esophagitis and one was of gastroesophageal reflux disease.ConclusionAI is expected to support endoscopists in diagnosing ESCC based on ECS images without biopsy-based histological reference.
机译:背景和Aimsthe内吞透镜系统(ECS)有助于虚拟实现组织学,可以帮助确认体内组织学诊断。我们提出通过使用ECS来替代食管鳞状细胞癌(ESCC)的活组织检查组织学。我们应用深学习人工智能(AI)分析ECS图像的食道图像,以确定AI是否可以支持替代活组织检查的组织学的内窥镜师。基于Googlenet构建了基于Googlenet的基于卷积神经网络的AI,并使用4715 EC进行培训食道的图像(1141恶性和3574个非恶性图像)。为了评估AI的诊断准确性,从连续55名患者(27ESCCS和28个良性食管病变中收集的1520个ECS图像的独立测试组。评估了接收器操作特征曲线分析的基础,区域总图像的曲线,更高的放大镜和较低的放大镜图像分别为0.85,0.90和0.72。 AI正确诊断出27例ESCC病例中的25例,整体敏感性为92.6%。 28例非癌变病变中的28例被诊断为非恶性,特异性为89.3%,总精度为90.9%。两种恶性病变病例,被AI不恶性误诊,被内窥镜手正确被诊断为恶性。在诊断为恶性的3例非癌变病例中,2例具有辐射相关的食管炎,并且一种是胃食管反流性疾病。预期结论的是基于ECS图像诊断ESCC的内窥镜,没有基于活组织检查的组织学参考。

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