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基于深度学习的全身体积小鼠扫描中多器官分割。

Deep learning-enabled multi-organ segmentation in whole-body mouse scans.

机构信息

Department of Informatics, Technical University of Munich, Munich, Germany.

Center for Translational Cancer Research (TranslaTUM), Klinikum rechts der Isar, Technical University of Munich, Munich, Germany.

出版信息

Nat Commun. 2020 Nov 6;11(1):5626. doi: 10.1038/s41467-020-19449-7.

DOI:10.1038/s41467-020-19449-7
PMID:33159057
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7648799/
Abstract

Whole-body imaging of mice is a key source of information for research. Organ segmentation is a prerequisite for quantitative analysis but is a tedious and error-prone task if done manually. Here, we present a deep learning solution called AIMOS that automatically segments major organs (brain, lungs, heart, liver, kidneys, spleen, bladder, stomach, intestine) and the skeleton in less than a second, orders of magnitude faster than prior algorithms. AIMOS matches or exceeds the segmentation quality of state-of-the-art approaches and of human experts. We exemplify direct applicability for biomedical research for localizing cancer metastases. Furthermore, we show that expert annotations are subject to human error and bias. As a consequence, we show that at least two independently created annotations are needed to assess model performance. Importantly, AIMOS addresses the issue of human bias by identifying the regions where humans are most likely to disagree, and thereby localizes and quantifies this uncertainty for improved downstream analysis. In summary, AIMOS is a powerful open-source tool to increase scalability, reduce bias, and foster reproducibility in many areas of biomedical research.

摘要

小鼠全身成像技术是研究的重要信息来源。器官分割是进行定量分析的前提条件,但如果手动进行,这将是一项繁琐且容易出错的任务。在这里,我们提出了一种名为 AIMOS 的深度学习解决方案,它可以在不到一秒的时间内自动分割大脑、肺、心脏、肝脏、肾脏、脾脏、膀胱、胃、肠和骨骼等主要器官,比之前的算法快几个数量级。AIMOS 的分割质量与最先进的方法和人类专家相当或超过。我们举例说明了它在癌症转移定位等生物医学研究中的直接适用性。此外,我们还表明,专家注释存在人为错误和偏见。因此,我们表明至少需要两个独立创建的注释来评估模型性能。重要的是,AIMOS 通过识别出人类最有可能产生分歧的区域,解决了人为偏见的问题,从而定位并量化了这种不确定性,以提高下游分析的准确性。总之,AIMOS 是一种强大的开源工具,可以在生物医学研究的许多领域提高可扩展性、减少偏差并促进可重复性。

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