Quantitative image analysis pipeline for detecting circulating hybrid cells in immunofluorescence images with human-level accuracy.
Robert T HeussnerRiley M WhalenAshley AndersonHeather TheisonJoseph BaikSummer GibbsMelissa H WongYoung Hwan ChangPublished in: Cytometry. Part A : the journal of the International Society for Analytical Cytology (2024)
Circulating hybrid cells (CHCs) are a newly discovered, tumor-derived cell population found in the peripheral blood of cancer patients and are thought to contribute to tumor metastasis. However, identifying CHCs by immunofluorescence (IF) imaging of patient peripheral blood mononuclear cells (PBMCs) is a time-consuming and subjective process that currently relies on manual annotation by laboratory technicians. Additionally, while IF is relatively easy to apply to tissue sections, its application to PBMC smears presents challenges due to the presence of biological and technical artifacts. To address these challenges, we present a robust image analysis pipeline to automate the detection and analysis of CHCs in IF images. The pipeline incorporates quality control to optimize specimen preparation protocols and remove unwanted artifacts, leverages a β-variational autoencoder (VAE) to learn meaningful latent representations of single-cell images, and employs a support vector machine (SVM) classifier to achieve human-level CHC detection. We created a rigorously labeled IF CHC data set including nine patients and two disease sites with the assistance of 10 annotators to evaluate the pipeline. We examined annotator variation and bias in CHC detection and provided guidelines to optimize the accuracy of CHC annotation. We found that all annotators agreed on CHC identification for only 65% of the cells in the data set and had a tendency to underestimate CHC counts for regions of interest (ROIs) containing relatively large amounts of cells (>50,000) when using the conventional enumeration method. On the other hand, our proposed approach is unbiased to ROI size. The SVM classifier trained on the β-VAE embeddings achieved an F1 score of 0.80, matching the average performance of human annotators. Our pipeline enables researchers to explore the role of CHCs in cancer progression and assess their potential as a clinical biomarker for metastasis. Further, we demonstrate that the pipeline can identify discrete cellular phenotypes among PBMCs, highlighting its utility beyond CHCs.
Keyphrases
- induced apoptosis
- cell cycle arrest
- single cell
- endothelial cells
- deep learning
- peripheral blood
- convolutional neural network
- quality control
- chronic kidney disease
- end stage renal disease
- ejection fraction
- physical activity
- rna seq
- signaling pathway
- induced pluripotent stem cells
- mass spectrometry
- oxidative stress
- cell death
- squamous cell carcinoma
- electronic health record
- stem cells
- climate change
- high throughput
- risk assessment
- machine learning
- cell proliferation
- real time pcr
- bone marrow
- high intensity
- data analysis
- sleep quality
- patient reported outcomes
- quantum dots
- tandem mass spectrometry
- human health