Robust and accurate quantification of biomarkers of immune cells in lung cancer micro-environment using deep convolutional neural networks

2019 | journal article; research paper

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​Robust and accurate quantification of biomarkers of immune cells in lung cancer micro-environment using deep convolutional neural networks​
Aprupe, L.; Litjens, G.; Brinker, T. J.; van der Laak, J. & Grabe, N. ​ (2019) 
PeerJ7 art. e6335​.​ DOI: https://doi.org/10.7717/peerj.6335 

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Authors
Aprupe, Lilija; Litjens, Geert; Brinker, Titus J.; van der Laak, Jeroen; Grabe, Niels 
Abstract
Recent years have seen a growing awareness of the role the immune system plays in successful cancer treatment, especially in novel therapies like immunotherapy. The characterization of the immunological composition of tumors and their micro-environment is thus becoming a necessity. In this paper we introduce a deep learning-based immune cell detection and quantification method, which is based on supervised learning, i.e., the input data for training comprises labeled images. Our approach objectively deals with staining variation and staining artifacts in immunohistochemically stained lung cancer tissue and is as precise as humans. This is evidenced by the low cell count difference to humans of 0.033 cells on average. This method, which is based on convolutional neural networks, has the potential to provide a new quantitative basis for research on immunotherapy.
Issue Date
2019
Journal
PeerJ 
ISSN
2167-8359
Language
English

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