Biomedical image segmentation is one of the fastest growing fields which has seen extensive automation through the use of Artificial Intelligence. This has enabled widespread adoption of accurate techniques to expedite the screening and diagnostic processes which would otherwise take several days to finalize. In this paper, we present an end-to-end pipeline to segment lungs from chest X-ray images, training the neural network model on the Japanese Society of Radiological Technology (JSRT) dataset, using UNet to enable faster processing of initial screening for various lung disorders. The pipeline developed can be readily used by medical centers with just the provision of X-Ray images as input. The model will perform the preprocessing, and provide a segmented image as the final output. It is expected that this will drastically reduce the manual effort involved and lead to greater accessibility in resource-constrained locations.
翻译:生物医学图象分割是增长最快的领域之一,通过人工智能,实现了广泛的自动化,从而能够广泛采用准确技术,加快筛选和诊断过程,否则需要数天才能完成;在本文件中,我们展示了从胸腔X光图像中截取肺部的端到端管道,对日本放射技术学会神经网络数据集模型进行了培训,利用UNet能够更快地处理各种肺病的初步检查;开发的输油管可以随时供医疗中心使用,只提供X射线图像作为投入;该模型将进行预处理,作为最后产出提供片段图像;预计这将大大减少所涉人工工作,并导致资源限制地点更容易进入。