首页> 外文期刊>Frontiers in Bioengineering and Biotechnology >Texture Synthesis Based Thyroid Nodule Detection From Medical Ultrasound Images: Interpreting and Suppressing the Adversarial Effect of In-place Manual Annotation
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Texture Synthesis Based Thyroid Nodule Detection From Medical Ultrasound Images: Interpreting and Suppressing the Adversarial Effect of In-place Manual Annotation

机译:基于纹理合成的基于医学超声图像的甲状腺结节检测:解释和抑制就地手动注释的对抗效果

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Deep learning method have been offering promising solutions for medical image processing, but failing to understand what features in the input image are captured and whether certain artifacts are mistakenly included in the model, thus create crucial problems in generalizability of the model. We targeted a common issue of this kind caused by manual annotations appeared in medical image. These annotations are usually made by the doctors at the spot of medical interest and have adversarial effect on many computer vision AI tasks. We developed an inpainting algorithm to remove the annotations and recover the original images.Besides we applied variational information bottleneck method in order to filter out the unwanted features and enhance the robustness of the model.Our impaiting algorithm is extensively tested in object detection in thyroid ultrasound image data.The mAP (mean average precision, with IoU=0.3) is 27% without the annotation removal. The mAP is 83% if manually removed the annotations using Photoshop and is enhanced to 90% using our inpainting algorithm. Our work can be utilized in future development and evaluation of artificial intelligence models based on medical images with defects.
机译:深度学习方法已经为医学图像处理提供了有希望的解决方案,但不能理解捕获输入图像中的特征以及某些伪像是否被错误地包括在模型中,从而在模型的概括地中产生了重要问题。我们针对了由手动注释引起的常见问题出现在医学图像中。这些注释通常由医生在医疗兴趣点制造,并对许多计算机视觉AI任务产生对抗影响。我们开发了一种删除注释并恢复原始图像的初始化算法。我们应用了变分信息瓶颈方法,以滤除不需要的特征并增强模型的鲁棒性。在甲状超声中的物体检测中,在对象检测中进行广泛测试的鲁棒性。图像数据。地图(平均平均精度,IOU = 0.3)是27%而没有注释拆卸。如果使用Photoshop手动删除注释,则该地图是83%,并使用我们的初始化算法增强至90%。我们的工作可以在未来的发展和评估与缺陷的医学图像的人工智能模型的未来发展和评估。

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