An Accelerated Pipeline for Multi-label Renal Pathology Image Segmentation at the Whole Slide Image Level.

IF 1 4区 经济学 Q3 ECONOMICS
Econometric Theory Pub Date : 2023-02-01 Epub Date: 2023-04-06 DOI:10.1117/12.2653651
Haoju Leng, Ruining Deng, Zuhayr Asad, R Michael Womick, Haichun Yang, Lipeng Wan, Yuankai Huo
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引用次数: 0

Abstract

Deep-learning techniques have been used widely to alleviate the labour-intensive and time-consuming manual annotation required for pixel-level tissue characterization. Our previous study introduced an efficient single dynamic network - Omni-Seg - that achieved multi-class multi-scale pathological segmentation with less computational complexity. However, the patch-wise segmentation paradigm still applies to Omni-Seg, and the pipeline is time-consuming when providing segmentation for Whole Slide Images (WSIs). In this paper, we propose an enhanced version of the Omni-Seg pipeline in order to reduce the repetitive computing processes and utilize a GPU to accelerate the model's prediction for both better model performance and faster speed. Our proposed method's innovative contribution is two-fold: (1) a Docker is released for an end-to-end slide-wise multi-tissue segmentation for WSIs; and (2) the pipeline is deployed on a GPU to accelerate the prediction, achieving better segmentation quality in less time. The proposed accelerated implementation reduced the average processing time (at the testing stage) on a standard needle biopsy WSI from 2.3 hours to 22 minutes, using 35 WSIs from the Kidney Tissue Atlas (KPMP) Datasets. The source code and the Docker have been made publicly available at https://github.com/ddrrnn123/Omni-Seg.

全切片图像级多标签肾脏病理图像分割的加速管道。
深度学习技术已被广泛用于减轻像素级组织特征描述所需的劳动密集型和耗时的人工标注。我们之前的研究引入了一种高效的单一动态网络--Omni-Seg,它能以较低的计算复杂度实现多类多尺度病理分割。然而,Omni-Seg 仍采用片段式分割范式,在为整张切片图像(WSI)提供分割时,该管道非常耗时。在本文中,我们提出了 Omni-Seg 管道的增强版,以减少重复计算过程,并利用 GPU 加速模型预测,从而获得更好的模型性能和更快的速度。我们提出的方法有两方面的创新贡献:(1)为 WSI 的端到端滑动式多组织分割发布了一个 Docker;(2)在 GPU 上部署管道以加速预测,从而在更短的时间内获得更好的分割质量。利用肾组织图集(KPMP)数据集中的 35 个 WSI,拟议的加速实现将标准针刺活检 WSI 的平均处理时间(测试阶段)从 2.3 小时缩短到 22 分钟。源代码和 Docker 已在 https://github.com/ddrrnn123/Omni-Seg 上公开发布。
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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来源期刊
Econometric Theory
Econometric Theory MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-STATISTICS & PROBABILITY
CiteScore
1.90
自引率
0.00%
发文量
52
审稿时长
>12 weeks
期刊介绍: Since its inception, Econometric Theory has aimed to endow econometrics with an innovative journal dedicated to advance theoretical research in econometrics. It provides a centralized professional outlet for original theoretical contributions in all of the major areas of econometrics, and all fields of research in econometric theory fall within the scope of ET. In addition, ET fosters the multidisciplinary features of econometrics that extend beyond economics. Particularly welcome are articles that promote original econometric research in relation to mathematical finance, stochastic processes, statistics, and probability theory, as well as computationally intensive areas of economics such as modern industrial organization and dynamic macroeconomics.
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