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Published in: Discover Oncology 1/2023

Open Access 01-12-2023 | SCLC | Research

SDH mutations, as potential predictor of chemotherapy prognosis in small cell lung cancer patients

Authors: Ran Zeng, Xiaoyun Fan, Jin Yang, Chen Fang, Jieyi Li, Wei Wen, Jing Liu, Mengchen Lv, Xiangran Feng, XiaoKai Zhao, Hongjie Yu, Yuhuan Zhang, Xianwen Sun, Zhiyao Bao, Jun Zhou, Lei Ni, Xiaofei Wang, Qijian Cheng, Beili Gao, Ziying Gong, Daoyun Zhang, Yuchao Dong, Yi Xiang

Published in: Discover Oncology | Issue 1/2023

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Abstract

Purpose

Small cell lung cancer (SCLC) is an aggressive and rapidly progressive malignant tumor characterized by a poor prognosis. Chemotherapy remains the primary treatment in clinical practice; however, reliable biomarkers for predicting chemotherapy outcomes are scarce.

Methods

In this study, 78 SCLC patients were stratified into “good” or “poor” prognosis cohorts based on their overall survival (OS) following surgery and chemotherapeutic treatment. Next-generation sequencing was employed to analyze the mutation status of 315 tumorigenesis-associated genes in tumor tissues obtained from the patients. The random forest (RF) method, validated by the support vector machine (SVM), was utilized to identify single nucleotide mutations (SNVs) with predictive power. To verify the prognosis effect of SNVs, samples from the cbioportal database were utilized.

Results

The SVM and RF methods confirmed that 20 genes positively contributed to prognosis prediction, displaying an area under the validation curve with a value of 0.89. In the corresponding OS analysis, all patients with SDH, STAT3 and PDCD1LG2 mutations were in the poor prognosis cohort (15/15, 100%). Analysis of public databases further confirms that SDH mutations are significantly associated with worse OS.

Conclusion

Our results provide a potential stratification of chemotherapy prognosis in SCLC patients, and have certain guiding significance for subsequent precise targeted therapy.
Appendix
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Metadata
Title
SDH mutations, as potential predictor of chemotherapy prognosis in small cell lung cancer patients
Authors
Ran Zeng
Xiaoyun Fan
Jin Yang
Chen Fang
Jieyi Li
Wei Wen
Jing Liu
Mengchen Lv
Xiangran Feng
XiaoKai Zhao
Hongjie Yu
Yuhuan Zhang
Xianwen Sun
Zhiyao Bao
Jun Zhou
Lei Ni
Xiaofei Wang
Qijian Cheng
Beili Gao
Ziying Gong
Daoyun Zhang
Yuchao Dong
Yi Xiang
Publication date
01-12-2023
Publisher
Springer US
Published in
Discover Oncology / Issue 1/2023
Print ISSN: 1868-8497
Electronic ISSN: 2730-6011
DOI
https://doi.org/10.1007/s12672-023-00685-4

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