A novel molecular classification method for osteosarcoma based on tumor cell differentiation trajectories

Author:

Zhang Hao,Wang Ting,Gong Haiyi,Jiang Runyi,Zhou Wang,Sun Haitao,Huang Runzhi,Wang Yao,Wu Zhipeng,Xu Wei,Li Zhenxi,Huang Quan,Cai Xiaopan,Lin Zaijun,Hu Jinbo,Jia Qi,Ye Chen,Wei Haifeng,Xiao Jianru

Abstract

AbstractSubclassification of tumors based on molecular features may facilitate therapeutic choice and increase the response rate of cancer patients. However, the highly complex cell origin involved in osteosarcoma (OS) limits the utility of traditional bulk RNA sequencing for OS subclassification. Single-cell RNA sequencing (scRNA-seq) holds great promise for identifying cell heterogeneity. However, this technique has rarely been used in the study of tumor subclassification. By analyzing scRNA-seq data for six conventional OS and nine cancellous bone (CB) samples, we identified 29 clusters in OS and CB samples and discovered three differentiation trajectories from the cancer stem cell (CSC)-like subset, which allowed us to classify OS samples into three groups. The classification model was further examined using the TARGET dataset. Each subgroup of OS had different prognoses and possible drug sensitivities, and OS cells in the three differentiation branches showed distinct interactions with other clusters in the OS microenvironment. In addition, we verified the classification model through IHC staining in 138 OS samples, revealing a worse prognosis for Group B patients. Furthermore, we describe the novel transcriptional program of CSCs and highlight the activation of EZH2 in CSCs of OS. These findings provide a novel subclassification method based on scRNA-seq and shed new light on the molecular features of CSCs in OS and may serve as valuable references for precision treatment for and therapeutic development in OS.

Funder

National Natural Science Foundation of China

Publisher

Springer Science and Business Media LLC

Subject

Physiology,Histology,Endocrinology, Diabetes and Metabolism

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