Single-cell mapping of combinatorial target antigens for CAR switches using logic gates.
Joonha KwonJunho KangAreum JoKayoung SeoDohyeon AnMert Yakup BaykanJun Hyeong LeeNayoung KimHye Hyeon EumSohyun HwangJi Min LeeWoong-Yang ParkHee-Jung AnHae-Ock LeeJong-Eun ParkJung Kyoon ChoiPublished in: Nature biotechnology (2023)
Identification of optimal target antigens that distinguish cancer cells from normal surrounding tissue cells remains a key challenge in chimeric antigen receptor (CAR) cell therapy for tumors with intratumoral heterogeneity. In this study, we dissected tissue complexity to the level of individual cells through the construction of a single-cell expression atlas that integrates ~1.4 million tumor, tumor-infiltrating normal and reference normal cells from 412 tumors and 12 normal organs. We used a two-step screening method using random forest and convolutional neural networks to select gene pairs that contribute most to discrimination between individual malignant and normal cells. Tumor coverage and specificity are evaluated for the AND, OR and NOT logic gates based on the combinatorial expression pattern of the pairing genes across individual single cells. Single-cell transcriptome-coupled epitope profiling validates the AND, OR and NOT switch targets identified in ovarian cancer and colorectal cancer.
Keyphrases
- single cell
- induced apoptosis
- rna seq
- cell cycle arrest
- poor prognosis
- high throughput
- convolutional neural network
- healthcare
- stem cells
- endoplasmic reticulum stress
- signaling pathway
- cell death
- squamous cell carcinoma
- mass spectrometry
- gene expression
- binding protein
- climate change
- immune response
- oxidative stress
- pi k akt
- dna methylation
- mesenchymal stem cells
- machine learning
- high resolution
- long non coding rna
- copy number
- cell proliferation
- bioinformatics analysis