Frontiers in Oncology (Jun 2022)

A Novel Prognostic Scoring Model for Myelodysplastic Syndrome Patients With SF3B1 Mutation

  • Liya Ma,
  • Bin Liang,
  • Huixian Hu,
  • Wenli Yang,
  • Shengyun Lin,
  • Lihong Cao,
  • Kongfei Li,
  • Yuemin Kuang,
  • Lihong Shou,
  • Weimei Jin,
  • Jianping Lan,
  • Xingnong Ye,
  • Xingnong Ye,
  • Jing Le,
  • Huyi Lei,
  • Jiaping Fu,
  • Ying Lin,
  • Wenhua Jiang,
  • Zhiying Zheng,
  • Songfu Jiang,
  • Lijuan Fu,
  • Chuanyong Su,
  • XiuFeng Yin,
  • Lixia Liu,
  • Jiayue Qin,
  • Jie Jin,
  • Shenxian Qian,
  • Guifang Ouyang,
  • Hongyan Tong

DOI
https://doi.org/10.3389/fonc.2022.905490
Journal volume & issue
Vol. 12

Abstract

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The outcomes of myelodysplastic syndrome (MDS) patients with SF3B1 mutation, despite identified as a favorable prognostic biomarker, are variable. To comprehend the heterogeneity in clinical characteristics and outcomes, we reviewed 140 MDS patients with SF3B1 mutation in Zhejiang province of China. Seventy-three (52.1%) patients diagnosed as MDS with ring sideroblasts (MDS-RS) following the 2016 World Health Organization (WHO) classification and 118 (84.3%) patients belonged to lower risk following the revised International Prognostic Scoring System (IPSS-R). Although clonal hematopoiesis-associated mutations containing TET2, ASXL1 and DNMT3A were the most frequent co-mutant genes in these patients, RUNX1, EZH2, NF1 and KRAS/NRAS mutations had significant effects on overall survival (OS). Based on that we developed a risk scoring model as IPSS-R×0.4+RUNX1×1.1+EZH2×0.6+RAS×0.9+NF1×1.6. Patients were categorized into two subgroups: low-risk (L-R, score <= 1.4) group and high risk (H-R, score > 1.4) group. The 3-year OS for the L-R and H-R groups was 91.88% (95% CI, 83.27%-100%) and 38.14% (95% CI, 24.08%-60.40%), respectively (P<0.001). This proposed model distinctly outperformed the widely used IPSS-R. In summary, we constructed and validated a personalized prediction model of MDS patients with SF3B1 mutation that can better predict the survival of these patients.

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