Nuclei spotting for computational pathology in microscopic images

Abdul Basit Syed, Samabia Tehsin, Sumaira Kausar
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Abstract

Identification and classification of nuclei from microscopy is vital to new pharmaceutical developments. Biologist lacks a robust and efficient way to detect nuclei to natural variation in their appearances as well as differences in image capturing methods. Identification and classification of nuclei from microscopy images is considered as a complex task. A successful implementation will aid researchers immensely in their fight to find pharmaceutical solutions to medical crises while saving both valuable research time and funding. In this study, we employed a modified U-Net a deep learning based approach for nuclei detection where we computed 0.78 value of IOU (intersection over union) on BBBC038v1 dataset.  
显微图像中计算病理学的核点
从显微镜下鉴定和分类细胞核对新药开发至关重要。生物学家缺乏一种强大而有效的方法来检测细胞核在外观上的自然变化以及图像捕获方法的差异。从显微镜图像中识别和分类细胞核被认为是一项复杂的任务。成功的实施将极大地帮助研究人员为医疗危机寻找药物解决方案,同时节省宝贵的研究时间和资金。在本研究中,我们采用一种改进的U-Net深度学习方法进行核检测,在BBBC038v1数据集上计算了0.78的IOU(交集/联合)值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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