2021
DOI: 10.1101/2021.10.22.464548
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ImmuNet: A Segmentation-Free Machine Learning Pipeline for Immune Landscape Phenotyping in Tumors by Muliplex Imaging

Abstract: Tissue specimens taken from primary tumors or metastases contain important information for diagnosis and treatment of cancer patients. Multispectral imaging allows in situ visualization of heterogeneous cell subsets, such as lymphocytes, in tissue samples. Many image processing pipelines first segment cell boundaries and then measure marker expression to assign cell phenotypes. In dense tissue environments such as solid tumors, segmentation-based phenotyping can be inaccurate due to segmentation errors or over… Show more

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Cited by 15 publications
(20 citation statements)
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References 52 publications
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“…Whole slide scans were acquired using x4 magnification and subsequently scanned at x20 magnification for the multispectral regions of interest ( Figure 1B ). Images were first processed using the inForm software (V.2.4.8, Akoya Biosciences, MA, USA, RRID: SCR_019155) for cell and tissue segmentation and then processed through an in-house AI pipeline to phenotype immune cells, which were thereafter analyzed in FlowJo™ (Ashland, OR, USA, RRID: SCR_008520) as previously described ( 35 , 36 ).…”
Section: Methodsmentioning
confidence: 99%
“…Whole slide scans were acquired using x4 magnification and subsequently scanned at x20 magnification for the multispectral regions of interest ( Figure 1B ). Images were first processed using the inForm software (V.2.4.8, Akoya Biosciences, MA, USA, RRID: SCR_019155) for cell and tissue segmentation and then processed through an in-house AI pipeline to phenotype immune cells, which were thereafter analyzed in FlowJo™ (Ashland, OR, USA, RRID: SCR_008520) as previously described ( 35 , 36 ).…”
Section: Methodsmentioning
confidence: 99%
“…Details are described in the ImmuNet preprint. 21 The version of ImmuNet used to detect lymphocytes and the input images/ROIs will be deposited on Zenodo on acceptance of this manuscript.…”
Section: Methodsmentioning
confidence: 99%
“…After tissue segmentation, images and tissue segmentation data were exported from inForm for cell identification and phenotyping by an in-house developed neural network (ImmuNet). 31 Shortly, the neural network identifies TILs based on the expression of the seven IHC markers and predicts for each identified cell which of the markers is expressed (supplementary figure 1E-F). The data generated by the neural network were exported in Flow Cytometry Standard (FCS) files.…”
Section: Methodsmentioning
confidence: 99%