Unravelling tumour cell diversity and prognostic signatures in cutaneous melanoma through machine learning analysis

Author:

Cheng Wenhao1,Ni Ping2,Wu Hao3,Miao Xiaye4ORCID,Zhao Xiaodong5,Yan Dali6

Affiliation:

1. Department of Dermatology The First Affiliated Hospital of Kangda College of Nanjing Medical University/The First People's Hospital of Lianyungang/The Affiliated Lianyungang Hospital of Xuzhou Medical University Lianyungang China

2. Department of Geriatrics The Third People's Hospital of Kunshan City Kunshan China

3. Department of Oncology The Affiliated Huai'an Hospital of Xuzhou Medical University and the Second People's Hospital of Huai'an Huai'an China

4. Department of Laboratory Medicine Northern Jiangsu People's Hospital Affiliated to Yangzhou University Yangzhou Jiangsu China

5. Department of Hematology The Affiliated Suqian First People's Hospital of Nanjing Medical University Suqian China

6. Department of Traditional Chinese Medicine and Oncology The Affiliated Huai'an Hospital of Xuzhou Medical University and the Second People's Hospital of Huai'an Huai'an China

Abstract

AbstractMelanoma, a highly malignant tumour, presents significant challenges due to its cellular heterogeneity, yet research on this aspect in cutaneous melanoma remains limited. In this study, we utilized single‐cell data from 92,521 cells to explore the tumour cell landscape. Through clustering analysis, we identified six distinct cell clusters and investigated their differentiation and metabolic heterogeneity using multi‐omics approaches. Notably, cytotrace analysis and pseudotime trajectories revealed distinct stages of tumour cell differentiation, which have implications for patient survival. By leveraging markers from these clusters, we developed a tumour cell‐specific machine learning model (TCM). This model not only predicts patient outcomes and responses to immunotherapy, but also distinguishes between genomically stable and unstable tumours and identifies inflamed (‘hot’) versus non‐inflamed (‘cold’) tumours. Intriguingly, the TCM score showed a strong association with TOMM40, which we experimentally validated as an oncogene promoting tumour proliferation, invasion and migration. Overall, our findings introduce a novel biomarker score that aids in selecting melanoma patients for improved prognoses and targeted immunotherapy, thereby guiding clinical treatment decisions.

Publisher

Wiley

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