首页> 外文会议>SPIE Conference on Computer-Aided Diagnosis >2.5D CNN Model for Detecting Lung Disease Using Weak Supervision
【24h】

2.5D CNN Model for Detecting Lung Disease Using Weak Supervision

机译:2.5D使用弱监管检测肺病的CNN模型

获取原文

摘要

Our goal is to develop a 2.5D CNN model to detect multiple diseases in multiple organs in CT scans. In this study we investigated detection of 4 common diseases in the lungs, which are atelectasis, edema, pneumonia and nodule. Most existing algorithms for computer-aided diagnosis (CAD) of CT use 2D models for the axial slices. Our hypothesis is that by using information from all of the three views (coronal, sagittal and axial), we may achieve a better classification result, because some diseases may be more obvious from a different view or from the combination of multi-views. Our data consisted of 1089 CT scans, which contains 288 normal cases, 224 atelectasis cases, 156 edema cases, 225 pneumonia cases and 196 nodule cases. The cases were selected from approximately 5,000 chest CTs from Duke University Health System, and case-level labels were automatically extracted by simple rule-based filtering of the unstructured text from the radiology report. Each of these 5 categories excluded the others, which indicates that cases from each category will have either only one of the four diseases or no disease. To create 2.5D volume patches, we combined together three channels representing parallel slices in each of the three intersecting, orthogonal directions, resulting in sparsely sampled cubes of 20.2 x 20.2 x 20.2 mm. For each CT scan, the volume containing the lungs was identified with thresholding, and 30 patches were randomly sampled within that volume. Then three 3-channel images in each patch representing those 3 different directions were entered into 3 independent CNN paths separately, which were finally fused by a fully connected layer. We used a 4 fold cross-validation and evaluated our results using receiver operating characteristic (ROC) area under the curve (AUC). We achieved an average AUC of 0.891 for classifying normal vs. atelectasis disease, 0.940 for edema disease, 0.869 for pneumonia disease and 0.784 for nodule disease. We also implemented a train-val
机译:我们的目标是开发2.5D CNN模型,以检测CT扫描中多个器官中的多种疾病。在这项研究中,我们研究了肺部4种常见疾病的检测,这是肺部,水肿,肺炎和结节。 CT的计算机辅助诊断(CAD)的大多数现有算法使用2D模型的轴向切片。我们的假设是,通过使用三种视图中所有的信息(冠状,矢状和轴向),我们可以实现更好的分类结果,因为某些疾病可能从不同的视图或多视图的组合中更加明显。我们的数据由1089cc扫描组成,其中含有288例正常情况,224例,156例水肿病例,225例肺炎病例和196例结核病例。这些案例选自Duke University Health系统的约5,000 CTTS,通过从放射学报告的简单规则的过滤,自动提取案例级标签。这5个类别中的每一个都不包括其他类别,这表明每个类别的病例只有四种疾病或没有疾病。要创建2.5D卷补丁,我们将三个通道组合在一起,表示三个交叉,正交方向中的每一个的平行切片,导致稀疏采样的多维数据集20.2 x 20.2 x 20.2 mm。对于每个CT扫描,含有肺的体积用阈值化鉴定,并在该体积内随机取样30个贴剂。然后分别地将表示那些3个不同方向的每个贴片中的三个3通道图像分开地输入了3个独立的CNN路径。最后由完全连接的层融合。我们使用了4个倍数交叉验证,并在曲线(AUC)下的接收器操作特征(ROC)区域进行评估。我们达到了0.891的平均AUC,用于分类正常与ATELECTASIS疾病,0.940针对水肿病,0.869用于肺炎病,结核病0.784。我们还实施了火车瓦

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号