2023
DOI: 10.1186/s13045-023-01494-6
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Advances in single-cell RNA sequencing and its applications in cancer research

Dezhi Huang,
Naya Ma,
Xinlei Li
et al.

Abstract: Cancers are a group of heterogeneous diseases characterized by the acquisition of functional capabilities during the transition from a normal to a neoplastic state. Powerful experimental and computational tools can be applied to elucidate the mechanisms of occurrence, progression, metastasis, and drug resistance; however, challenges remain. Bulk RNA sequencing techniques only reflect the average gene expression in a sample, making it difficult to understand tumor heterogeneity and the tumor microenvironment. T… Show more

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Cited by 33 publications
(14 citation statements)
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“…Commonly used approaches include: microdroplet-based (ie, 10× Genomics and Dropseq), micromanipulation (ie, CEL-seq and MATQ-seq), or FACS (MARs-seq and FLASH-seq). 43 RNA is then extracted from each cell, cDNA synthesized and amplified for library construction. Libraries are then sequenced and data are computationally analyzed using a reference genome that aligns to the sequenced cDNA.…”
Section: Single-cell Rna Sequencingmentioning
confidence: 99%
“…Commonly used approaches include: microdroplet-based (ie, 10× Genomics and Dropseq), micromanipulation (ie, CEL-seq and MATQ-seq), or FACS (MARs-seq and FLASH-seq). 43 RNA is then extracted from each cell, cDNA synthesized and amplified for library construction. Libraries are then sequenced and data are computationally analyzed using a reference genome that aligns to the sequenced cDNA.…”
Section: Single-cell Rna Sequencingmentioning
confidence: 99%
“…To tackle the challenges of tumor heterogeneity, single-cell techniques have emerged, facilitating personalized treatment based on the specific heterogeneity of the tumor. Single-cell RNA-seq has proven successful in dissecting tumor heterogeneity and microenvironment with unparalleled resolution in both solid tumors and hematological malignancies such as leukemia and lymphoma [251] . For example, scRNA-seq has been utilized to identify drug-tolerant cell populations in NSCLC tumors, as well as quiescent stem-like cells that contribute to chemoresistance and poor outcomes in AML.…”
Section: Overview Of Each Signature and Future Directions In Multiomicsmentioning
confidence: 99%
“…Clinical imaging modalities, such as metabolic PET with radiolabeled tracers ( 18 F, 11 C) and MRI/MRS, allow to capture inter– and intratumor heterogeneity among patients with low (∼4.5 mm) spatial resolution (Plathow and Weber, 2008). Recently evolved methods of single-cell sequencing deliver comprehensive information about the metabolic landscape of a tumor with a resolution up to 55–100 µm based on the expression of the metabolic genes, but these approaches are rather complex, laborious and not widely available (Evers et al, 2019; Huang et al, 2023).…”
Section: Introductionmentioning
confidence: 99%