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

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作者
Oliver Schoppe
Chenchen Pan
Javier Coronel
Hongcheng Mai
Zhouyi Rong
Mihail Ivilinov Todorov
Annemarie Müskes
Fernando Navarro
Hongwei Li
Ali Ertürk
Bjoern H. Menze
机构
[1] Technical University of Munich,Department of Informatics
[2] Technical University of Munich,Center for Translational Cancer Research (TranslaTUM), Klinikum rechts der Isar
[3] Helmholtz Zentrum München,Institute for Tissue Engineering and Regenerative Medicine (iTERM)
[4] University Hospital,Institute for Stroke and Dementia Research (ISD)
[5] Graduate School of Systemic Neurosciences (GSN),Berlin
[6] Charité,Brandenburg Center for Regenerative Therapies
[7] Universitätsmedizin Berlin,Institute for Advanced Study, Department of Informatics
[8] Munich Cluster for Systems Neurology (SyNergy),Department of Quantitative Biomedicine
[9] Technical University of Munich,undefined
[10] University of Zurich,undefined
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摘要
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.
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