Abstract

Background: As chemical signals of hormones, neuropeptides are essential to regulate cell growth by interacting with their receptors to achieve cell communications in cancer tissues. Previously, neuropeptide transcriptome analysis was limited to tissue-based bulk expression levels. The molecular mechanisms of neuropeptides and their receptors at the single-cell level remain unclear. We conducted a systematic single-cell transcriptome data integration analysis to clarify the similarities and variations of neuropeptide-mediated cell communication between various malignancies. Methods: Based on the single-cell expression information in 72 cancer datasets across 24 cancer types, we characterized actively expressed neuropeptides and receptors as having log values of the quantitative transcripts per million ≥ 1. Then, we created the putative cell-to-cell communication network for each dataset by using the known interaction of those actively expressed neuropeptides and receptors. To focus on the stable cell communication events, we identified neuropeptide and downstream receptors whose interactions were detected in more than half of all conceivable cell-cell interactions (square of the total cell population) in a dataset. Results: Focusing on those actively expressed neuropeptides and receptors, we built over 76 million cell-to-cell communications across 70 cancer datasets. Then the stable cell communication analyses were applied to each dataset, and about 14 million stable cell-to-cell communications could be detected based on 16 neuropeptides and 23 receptors. Further functional analysis indicates these 39 genes could regulate blood pressure and are significantly associated with patients’ survival among over ten thousand The Cancer Genome Atlas (TCGA)pan-cancer samples. By zooming in lung cancer-specific clinical features, we discovered the 39 genes appeared to be enriched in the patients with smoking. In skin cancer, they may differ in the patients with the distinct histological subtype and molecular drivers. Conclusions: At the single-cell level, stable cell communications across cancer types demonstrated some common and distinct neuropeptide-receptor patterns, which could be helpful in determining the status of neuropeptide-based cell communication and developing a peptide-based therapy strategy.

Highlights

  • Malignant tumors seriously threaten human life and health and currently still maintain a high morbidity and mortality rate worldwide

  • Our findings revealed the first comprehensive neuropeptide single-cell interaction map and 39 valuable biomarker genes that can be exploited to detect cancer prevalence and progression at the single-cell level

  • We may examine how active neuropeptide-initiated communications are by identifying a set of stably expressed neuropeptide-receptor couples whose expression levels and communication broadness should not vary considerably under different experimental settings

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Summary

Introduction

Malignant tumors seriously threaten human life and health and currently still maintain a high morbidity and mortality rate worldwide. According to worldwide statistics in 2020, there will be approximately 19.3 million new cancer cases and approximately. Radiotherapy and chemotherapy combined with surgery can reduce cancer mortality, existing anti-tumor drugs can kill tumor cells while having more significant side effects on normal cells. Developing new anti-tumor drugs with low toxicity and side effects is important to reduce the recurrent rate and improve the survival rate. As chemical signals of hormones, neuropeptides are essential to regulate cell growth by interacting with their receptors to achieve cell communications in cancer tissues. Neuropeptide transcriptome analysis was limited to tissue-based bulk expression levels. The molecular mechanisms of neuropeptides and their receptors at the single-cell level remain unclear. We conducted a systematic single-cell transcriptome data integration analysis to clarify the similarities and variations of neuropeptide-mediated cell communication between various malignancies

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