polyconnect:用于生成具有息肉的逼真胃肠道图像的图像绘制

Jan Andre Fagereng, Vajira Lasantha Thambawita, A. Storaas, S. Parasa, T. Lange, P. Halvorsen, M. Riegler
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引用次数: 3

摘要

早期发现下消化道息肉可以预防危及生命的结直肠癌。开发计算机辅助诊断(CAD)系统来检测息肉可以提高检测的准确性和效率,并节省内窥镜专家的时间。在构建CAD系统时,缺乏注释数据是一个常见的挑战。生成合成医疗数据是一个活跃的研究领域,以克服在医疗领域真正的阳性病例相对较少的问题。为了能够有效地训练作为CAD系统核心的机器学习(ML)模型,应该使用大量的数据。在这方面,我们提出了PolypConnect管道,它可以将非息肉图像转换为息肉图像,以增加训练数据集的大小。我们提出了整个管道与定量和定性评估涉及内窥镜医师。使用合成数据和真实数据训练的息肉分割模型与仅使用真实数据训练的模型相比,平均交联(mIOU)提高了5.1%。所有实验的代码都可以在GitHub上获得,以重现结果。
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PolypConnect: Image inpainting for generating realistic gastrointestinal tract images with polyps
Early identification of a polyp in the lower gas-trointestinal (GI) tract can lead to prevention of life-threatening colorectal cancer. Developing computer-aided diagnosis (CAD) systems to detect polyps can improve detection accuracy and efficiency and save the time of the domain experts called endoscopists. Lack of annotated data is a common challenge when building CAD systems. Generating synthetic medical data is an active research area to overcome the problem of having relatively few true positive cases in the medical domain. To be able to efficiently train machine learning (ML) models, which are the core of CAD systems, a considerable amount of data should be used. In this respect, we propose the PolypConnect pipeline, which can convert non-polyp images into polyp images to increase the size of training datasets for training. We present the whole pipeline with quantitative and qualitative evaluations involving endoscopists. The polyp segmentation model trained using synthetic data, and real data shows a 5.1% improvement of mean intersection over union (mIOU), compared to the model trained only using real data. The codes of all the experiments are available on GitHub to reproduce the results.
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