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Development and validation of a real-time artificial intelligence-assisted system for detecting early gastric cancer: A multicentre retrospective diagnostic study

机译:检测早期胃癌实时人工智能辅助系统的开发与验证:多期一位回顾性诊断研究

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Background We aimed to develop and validate a real-time deep convolutional neural networks (DCNNs) system for detecting early gastric cancer (EGC). Methods All 45,240 endoscopic images from 1364 patients were divided into a training dataset (35823 images from 1085 patients) and a validation dataset (9417 images from 279 patients). Another 1514 images from three other hospitals were used as external validation. We compared the diagnostic performance of the DCNN system with endoscopists, and then evaluated the performance of endoscopists with or without referring to the system. Thereafter, we evaluated the diagnostic ability of the DCNN system in video streams. The accuracy, sensitivity, specificity, positive predictive value, negative predictive value and Cohen's kappa coefficient were measured to assess the detection performance. Finding The DCNN system showed good performance in EGC detection in validation datasets, with accuracy (85.1%–91.2%), sensitivity (85.9%–95.5%), specificity (81.7%–90.3%), and AUC (0.887–0.940). The DCNN system showed better diagnostic performance than endoscopists and improved the performance of endoscopists. The DCNN system was able to process oesophagogastroduodenoscopy (OGD) video streams to detect EGC lesions in real time. Interpretation We developed a real-time DCNN system for EGC detection with high accuracy and stability. Multicentre prospective validation is needed to acquire high-level evidence for its clinical application. Funding This work was supported by the National Natural Science Foundation of China (grant nos. 81672935 and 81871947), Jiangsu Clinical Medical Center of Digestive System Diseases and Gastrointestinal Cancer (grant no. YXZXB2016002), and Nanjing Science and Technology Development Foundation (grant no. 2017sb332019).
机译:背景技术我们旨在开发和验证一种用于检测早期胃癌(EGC)的实时深度卷积神经网络(DCNNS)系统。方法方法将来自1364名患者的所有45,240名内窥镜图像分为训练数据集(来自1085名患者的35823张图片)和验证数据集(来自279名患者的9417张图片)。另外1514只其他医院的图像被用作外部验证。我们将DCNN系统与内窥镜师进行了比较了DCNN系统的诊断性能,然后评估了具有或不参考系统的内窥镜师的性能。此后,我们评估了DCNN系统在视频流中的诊断能力。测量了准确性,灵敏度,特异性,阳性预测值,否定预测值和科纳的Kappa系数,以评估检测性能。找到DCNN系统在验证数据集中的EGC检测中显示出良好的性能,精度(85.1%-91.2%),灵敏度(85.9%-95.5%),特异性(81.7%-90.3%)和AUC(0.887-0.940)。 DCNN系统表现出比内窥镜师更好的诊断性能,并改善了内窥镜师的性能。 DCNN系统能够处理Oesophagogartroduodenoce(OGD)视频流以实时检测EGC病变。解释我们开发了一种实时DCNN系统,用于高精度和稳定性的EGC检测。需要多中心的前瞻性验证来获得其临床应用的高级证据。中国国家自然科学基金(授予No.81672935和81871935和81871947),消化系统疾病和胃肠癌(Grant No.yxzxb2016002)和南京科技发展基金会(澳门州)科技发展基金会(Grant No.21672935和81871947)得到了资金。2017SB332019)。

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