Detection of Incidental Esophageal Cancers on Chest CT by Deep Learning

食管癌 医学 食管 放射科 卷积神经网络 深度学习 人工智能 癌症 内科学 计算机科学
作者
He Sui,Ruhang Ma,Lizhu Lin,Yaozong Gao,Wenhai Zhang,Zhanhao Mo
出处
期刊:Frontiers in Oncology [Frontiers Media SA]
卷期号:11 被引量:12
标识
DOI:10.3389/fonc.2021.700210
摘要

To develop a deep learning-based model using esophageal thickness to detect esophageal cancer from unenhanced chest CT images.We retrospectively identified 141 patients with esophageal cancer and 273 patients negative for esophageal cancer (at the time of imaging) for model training. Unenhanced chest CT images were collected and used to build a convolutional neural network (CNN) model for diagnosing esophageal cancer. The CNN is a VB-Net segmentation network that segments the esophagus and automatically quantifies the thickness of the esophageal wall and detect positions of esophageal lesions. To validate this model, 52 false negatives and 48 normal cases were collected further as the second dataset. The average performance of three radiologists and that of the same radiologists aided by the model were compared.The sensitivity and specificity of the esophageal cancer detection model were 88.8% and 90.9%, respectively, for the validation dataset set. Of the 52 missed esophageal cancer cases and the 48 normal cases, the sensitivity, specificity, and accuracy of the deep learning esophageal cancer detection model were 69%, 61%, and 65%, respectively. The independent results of the radiologists had a sensitivity of 25%, 31%, and 27%; specificity of 78%, 75%, and 75%; and accuracy of 53%, 54%, and 53%. With the aid of the model, the results of the radiologists were improved to a sensitivity of 77%, 81%, and 75%; specificity of 75%, 74%, and 74%; and accuracy of 76%, 77%, and 75%, respectively.Deep learning-based model can effectively detect esophageal cancer in unenhanced chest CT scans to improve the incidental detection of esophageal cancer.
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