Sensitive detection of rare disease-associated cell subsets via representation learning

Eirini Arvaniti(SIB Swiss Institute of Bioinformatics), Manfred Claassen(SIB Swiss Institute of Bioinformatics)
Nature Communications
April 6, 2017
Cited by 190Open Access
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Abstract

Rare cell populations play a pivotal role in the initiation and progression of diseases such as cancer. However, the identification of such subpopulations remains a difficult task. This work describes CellCnn, a representation learning approach to detect rare cell subsets associated with disease using high-dimensional single-cell measurements. Using CellCnn, we identify paracrine signalling-, AIDS onset- and rare CMV infection-associated cell subsets in peripheral blood, and extremely rare leukaemic blast populations in minimal residual disease-like situations with frequencies as low as 0.01%.


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