HIV RGB: Automated Single-Cell Analysis of HIV-1 Rev-Dependent RNA Nuclear Export and Translation Using Image Processing in KNIME.
Edward L EvansGinger M PocockGabriel EinsdorfRyan T BehrensEllen T A DobsonMarcel WiedenmannChristian BirkholdPaul AhlquistKevin W EliceiriNathan M ShererPublished in: Viruses (2022)
Single-cell imaging has emerged as a powerful means to study viral replication dynamics and identify sites of virus-host interactions. Multivariate aspects of viral replication cycles yield challenges inherent to handling large, complex imaging datasets. Herein, we describe the design and implementation of an automated, imaging-based strategy, "Human Immunodeficiency Virus Red-Green-Blue" (HIV RGB), for deriving comprehensive single-cell measurements of HIV-1 unspliced (US) RNA nuclear export, translation, and bulk changes to viral RNA and protein (HIV-1 Rev and Gag) subcellular distribution over time. Differentially tagged fluorescent viral RNA and protein species are recorded using multicolor long-term (>24 h) time-lapse video microscopy, followed by image processing using a new open-source computational imaging workflow dubbed "Nuclear Ring Segmentation Analysis and Tracking" (NR-SAT) based on ImageJ plugins that have been integrated into the Konstanz Information Miner (KNIME) analytics platform. We describe a typical HIV RGB experimental setup, detail the image acquisition and NR-SAT workflow accompanied by a step-by-step tutorial, and demonstrate a use case wherein we test the effects of perturbing subcellular localization of the Rev protein, which is essential for viral US RNA nuclear export, on the kinetics of HIV-1 late-stage gene regulation. Collectively, HIV RGB represents a powerful platform for single-cell studies of HIV-1 post-transcriptional RNA regulation. Moreover, we discuss how similar NR-SAT-based design principles and open-source tools might be readily adapted to study a broad range of dynamic viral or cellular processes.
Keyphrases
- human immunodeficiency virus
- antiretroviral therapy
- hiv positive
- hiv infected
- hepatitis c virus
- hiv testing
- hiv aids
- single cell
- men who have sex with men
- sars cov
- high resolution
- deep learning
- high throughput
- rna seq
- south africa
- healthcare
- gene expression
- primary care
- machine learning
- mass spectrometry
- quantum dots
- social media
- transcription factor
- health information
- fluorescent probe
- heat shock