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  3. A Personalized Prediction Model for Outcomes after Allogeneic Hematopoietic Cell Transplant in Patients with Myelodysplastic Syndromes.
 

A Personalized Prediction Model for Outcomes after Allogeneic Hematopoietic Cell Transplant in Patients with Myelodysplastic Syndromes.

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BORIS DOI
10.7892/boris.146348
Publisher DOI
10.1016/j.bbmt.2020.08.003
PubMed ID
32781289
Description
Allogeneic hematopoietic stem cell transplantation (HCT) remains the only potentially curative option for myelodysplastic syndromes (MDS). Mortality after HCT is high, with deaths related to relapse or transplant-related complications. Thus, identifying patients who may or may not benefit from HCT is clinically important. We identified 1514 patients with MDS enrolled in the Center for International Blood and Marrow Transplant Research Registry and had their peripheral blood samples sequenced for the presence of 129 commonly mutated genes in myeloid malignancies. A random survival forest algorithm was used to build the model, and the accuracy of the proposed model was assessed by concordance index. The median age of the entire cohort was 59 years. The most commonly mutated genes were ASXL1(20%), TP53 (19%), DNMT3A (15%), and TET2 (12%). The algorithm identified the following variables prior to HCT that impacted overall survival: age, TP53 mutations, absolute neutrophils count, cytogenetics per International Prognostic Scoring System-Revised, Karnofsky performance status, conditioning regimen, donor age, WBC count, hemoglobin, diagnosis of therapy-related MDS, peripheral blast percentage, mutations in RAS pathway, JAK2 mutation, number of mutations/sample, ZRSR2, and CUX1 mutations. Different variables impacted the risk of relapse post-transplant. The new model can provide survival probability at different time points that are specific (personalized) for a given patient based on the clinical and mutational variables that are listed above. The outcomes' probability at different time points may aid physicians and patients in their decision regarding HCT.
Date of Publication
2020-11
Publication Type
Article
Subject(s)
600 Technology > 610 Medicine & health
Keyword(s)
Genomic biomarkers MDS Mutations
Language(s)
en
Contributor(s)
Nazha, Aziz
Hu, Zhen-Huan
Wang, Tao
Lindsley, R Coleman
Abdel-Azim, Hisham
Aljurf, Mahmoud
Bacher, Vera Ulrike
Universitätsklinik für Hämatologie und Hämatologisches Zentrallabor
Bashey, Asad
Cahn, Jean-Yves
Cerny, Jan
Copelan, Edward
DeFilipp, Zachariah
Diaz, Miguel Angel
Farhadfar, Nosha
Gadalla, Shahinaz M
Gale, Robert Peter
George, Biju
Gergis, Usama
Grunwald, Michael R
Hamilton, Betty
Hashmi, Shahrukh
Hildebrandt, Gerhard C
Inamoto, Yoshihiro
Kalaycio, Matt
Kamble, Rammurti T
Kharfan-Dabaja, Mohamed A
Lazarus, Hillard M
Liesveld, Jane L
Litzow, Mark R
Majhail, Navneet S
Murthy, Hemant S
Nathan, Sunita
Nishihori, Taiga
Pawarode, Attaphol
Rizzieri, David
Sabloff, Mitchell
Savani, Bipin N
Schachter, Levanto
Schouten, Harry C
Seo, Sachiko
Shah, Nirav N
Solh, Melhem
Valcárcel, David
Vij, Ravi
Warlick, Erica
Wirk, Baldeep
Wood, William A
Yared, Jean A
Alyea, Edwin
Popat, Uday
Sobecks, Ronald M
Scott, Bart L
Nakamura, Ryotaro
Saber, Wael
Additional Credits
Universitätsklinik für Hämatologie und Hämatologisches Zentrallabor
Series
Biology of blood and marrow transplantation
Publisher
Elsevier
ISSN
1083-8791
Access(Rights)
restricted
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