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A prognostic survival model based on metabolism-related gene expression in plasma cell myeloma.

Han-Ying HuangYun WangWei-da WangXiao-Li WeiRobert Peter GaleJin-Yuan LiQian-Yi ZhangLing-Ling ShuLiang LiJuan LiHuan-Xin LinZhi-Wei Liang
Published in: Leukemia (2021)
Accurate survival prediction of persons with plasma cell myeloma (PCM) is challenging. We interrogated clinical and laboratory co-variates and RNA matrices of 1040 subjects with PCM from public datasets in the Gene Expression Omnibus database in training (N = 1) and validation (N = 2) datasets. Genes regulating plasma cell metabolism correlated with survival were identified and seven used to build a metabolic risk score using Lasso Cox regression analyses. The score had robust predictive performance with 5-year survival area under the curve (AUCs): 0.71 (95% confidence interval, 0.65, 0.76), 0.88 (0.67, 1.00) and 0.64 (0.57, 0.70). Subjects in the high-risk training cohort (score > median) had worse 5-year survival compared with those in the low-risk cohort (62% [55, 68%] vs. 85% [80, 90%]; p < 0.001). This was also so for the validation cohorts. A nomogram combining metabolic risk score with Revised International Staging System (R-ISS) score increased survival prediction from an AUC = 0.63 [0.58, 0.69] to an AUC = 0.73 [0.66, 0.78]; p = 0.015. Modelling predictions were confirmed in in vitro tests with PCM cell lines. Our metabolic risk score increases survival prediction accuracy in PCM.
Keyphrases
  • gene expression
  • free survival
  • single cell
  • healthcare
  • dna methylation
  • cell therapy
  • squamous cell carcinoma
  • mass spectrometry
  • bone marrow