利用levi - unet自动化放疗对癌症患者胃肠道图像进行自动分割

Md. Jafril Alam, Sakib Zaman, P. C. Shill, Sujoy Kar, Md. Azizul Hakim
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引用次数: 1

摘要

胃肠道癌症是世界范围内常见的一种癌症。癌症患者需要放射治疗作为癌症诊断的一部分。为了在受癌症影响的胃肠道中提供治疗,它需要避开胃和肠,因为在这种情况下,胃和肠没有受到癌症的影响。人工避开肠道和胃,将x射线束移向癌细胞是一种费时费力的方法,因此效果不佳。除了这些问题外,患者在手动设置x射线时还会感到不舒服。为了克服这些问题,我们实现了一种基于深度学习的医学图像自动分割方法。levi - unet是一个基于变压器的架构,使用LeVit单元和CNN构建。该系统正确地将图像分为三类:胃、大肠和小肠。我们的研究使用了levi - unet的三个主干:Le vit128、Le vit192、Le vit384。生成并记录验证损失、骰子得分和IOU,以使用三个主干评估所有模型。虽然levitu - unet -384表现良好,但在我们的研究工作中,levitu - unet -192表现最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Gastrointestinal Tract Image Segmentation Of Cancer Patient Using LeVit-UNet To Automate Radiotherapy
Gastrointestinal(GI) tract cancer is a common type of cancer around the world. Cancer patients require radiotherapy as a part of a cancer diagnosis. To provide therapy in the cancer-affected GI tract, it needs to avoid the stomach and bowels because, in this case, the stomach and intestine are not cancer affected. It is ineffective to manually avoid the intestines and stomach and move the X-ray beam toward the cancer cell because it is a time-consuming, labor-intensive mechanism. Besides these issues, a patient feels uncomfortable while repeatedly X-ray beam is set manually. We implemented a deep learning-based automated medical image segmentation method using LeVit-UNet to overcome these issues. LeVit-UNet is a transformer-based architecture built using the Le Vit unit and CNN. The proposed system properly segments images into three classes: stomach, large, and small bowel. Three backbones of LeVit-UNet: Le Vit-128, Le Vit-192, Le Vit-384 were used in our research. Validation loss, dice score, and IOU were generated and recorded to evaluate all models using three backbones. Though Le Vit-UNet-384 performs well, in our research work, LeVit-UNet-192 performed best.
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