Metabolomics profile and machine learning prediction of treatment responses in immune thrombocytopenia: A prospective cohort study

Author:

Li Yang12ORCID,Sun Ting12ORCID,Chen Jia12ORCID,Liu Xiaofan12,Fu Rongfeng12ORCID,Xue Feng12ORCID,Liu Wei12ORCID,Ju Mankai12,Dai Xinyue12,Li Huiyuan12,Wang Wentian12ORCID,Chi Ying12,Li Ting12,Shao Shuai12,Yang Renchi12,Chen Yunfei12ORCID,Zhang Lei123ORCID

Affiliation:

1. State Key Laboratory of Experimental Hematology, National Clinical Research Center for Blood Diseases, Haihe Laboratory of Cell Ecosystem, Institute of Hematology & Blood Diseases Hospital, Chinese Academy of Medical Sciences & Peking Union Medical College, Tianjin Key Laboratory of Gene Therapy for Blood Diseases, CAMS Key Laboratory of Gene Therapy for Blood Diseases Tianjin China

2. Tianjin Institutes of Health Science Tianjin China

3. School of Population Medicine and Public Health, Chinese Academy of Medical Sciences & Peking Union Medical College Beijing China

Abstract

SummaryImmune thrombocytopenia (ITP) is an autoimmune disease characterized by antibody‐mediated platelet destruction and impaired platelet production. The mechanisms underlying ITP and biomarkers predicting the response of drug treatments are elusive. We performed a metabolomic profiling of bone marrow biopsy samples collected from ITP patients admission in a prospective study of the National Longitudinal Cohort of Hematological Diseases. Machine learning algorithms were conducted to discover novel biomarkers to predict ITP patient treatment responses. From the bone marrow biopsies of 91 ITP patients, we quantified a total of 4494 metabolites, including 1456 metabolites in the positive mode and 3038 metabolites in the negative mode. Metabolic patterns varied significantly between groups of newly diagnosed and chronic ITP, with a total of 876 differential metabolites involved in 181 unique metabolic pathways. Enrichment factors and p‐values revealed the top metabolically enriched pathways to be sphingolipid metabolism, the sphingolipid signalling pathway, ubiquinone and other terpenoid–quinone biosynthesis, thiamine metabolism, tryptophan metabolism and cofactors biosynthesis, the phospholipase D signalling pathway and the phosphatidylinositol signalling system. Based on patient responses to five treatment options, we screened several metabolites using the Boruta algorithm and ranked their importance using the random forest algorithm. Lipids and their metabolism, including long‐chain fatty acids, oxidized lipids, glycerophospholipids, phosphatidylcholine and phosphatidylethanolamine biosynthesis, helped differentiate drug treatment responses. In conclusion, this study revealed metabolic alterations associated with ITP in bone marrow supernatants and a potential biomarker predicting the response to ITP.

Funder

National Natural Science Foundation of China

National Key Research and Development Program of China

Publisher

Wiley

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