Cargando…

Clinical parameter-based prediction of DNA methylation classification generates a prediction model of prognosis in patients with juvenile myelomonocytic leukemia

Juvenile myelomonocytic leukemia (JMML) is a rare heterogeneous hematological malignancy of early childhood characterized by causative RAS pathway mutations. Classifying patients with JMML using global DNA methylation profiles is useful for risk stratification. We implemented machine learning algori...

Descripción completa

Detalles Bibliográficos
Autores principales: Imaizumi, Takahiro, Meyer, Julia, Wakamatsu, Manabu, Kitazawa, Hironobu, Murakami, Norihiro, Okuno, Yusuke, Yoshida, Taro, Sajiki, Daichi, Hama, Asahito, Kojima, Seiji, Takahashi, Yoshiyuki, Loh, Mignon, Stieglitz, Elliot, Muramatsu, Hideki
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9427938/
https://www.ncbi.nlm.nih.gov/pubmed/36042365
http://dx.doi.org/10.1038/s41598-022-18733-4
_version_ 1784779006773559296
author Imaizumi, Takahiro
Meyer, Julia
Wakamatsu, Manabu
Kitazawa, Hironobu
Murakami, Norihiro
Okuno, Yusuke
Yoshida, Taro
Sajiki, Daichi
Hama, Asahito
Kojima, Seiji
Takahashi, Yoshiyuki
Loh, Mignon
Stieglitz, Elliot
Muramatsu, Hideki
author_facet Imaizumi, Takahiro
Meyer, Julia
Wakamatsu, Manabu
Kitazawa, Hironobu
Murakami, Norihiro
Okuno, Yusuke
Yoshida, Taro
Sajiki, Daichi
Hama, Asahito
Kojima, Seiji
Takahashi, Yoshiyuki
Loh, Mignon
Stieglitz, Elliot
Muramatsu, Hideki
author_sort Imaizumi, Takahiro
collection PubMed
description Juvenile myelomonocytic leukemia (JMML) is a rare heterogeneous hematological malignancy of early childhood characterized by causative RAS pathway mutations. Classifying patients with JMML using global DNA methylation profiles is useful for risk stratification. We implemented machine learning algorithms (decision tree, support vector machine, and naïve Bayes) to produce a DNA methylation-based classification according to recent international consensus definitions using a well-characterized pooled cohort of patients with JMML (n = 128). DNA methylation was originally categorized into three subgroups: high methylation (HM), intermediate methylation (IM), and low methylation (LM), which is a trichotomized classification. We also dichotomized the subgroups as HM/IM and LM. The decision tree model showed high concordances with 450k-based methylation [82.3% (106/128) for the dichotomized and 83.6% (107/128) for the trichotomized subgroups, respectively]. With an independent cohort (n = 72), we confirmed that these models using both the dichotomized and trichotomized classifications were highly predictive of survival. Our study demonstrates that machine learning algorithms can generate clinical parameter-based models that predict the survival outcomes of patients with JMML and high accuracy. These models enabled us to rapidly and effectively identify candidates for augmented treatment following diagnosis.
format Online
Article
Text
id pubmed-9427938
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Nature Publishing Group UK
record_format MEDLINE/PubMed
spelling pubmed-94279382022-09-01 Clinical parameter-based prediction of DNA methylation classification generates a prediction model of prognosis in patients with juvenile myelomonocytic leukemia Imaizumi, Takahiro Meyer, Julia Wakamatsu, Manabu Kitazawa, Hironobu Murakami, Norihiro Okuno, Yusuke Yoshida, Taro Sajiki, Daichi Hama, Asahito Kojima, Seiji Takahashi, Yoshiyuki Loh, Mignon Stieglitz, Elliot Muramatsu, Hideki Sci Rep Article Juvenile myelomonocytic leukemia (JMML) is a rare heterogeneous hematological malignancy of early childhood characterized by causative RAS pathway mutations. Classifying patients with JMML using global DNA methylation profiles is useful for risk stratification. We implemented machine learning algorithms (decision tree, support vector machine, and naïve Bayes) to produce a DNA methylation-based classification according to recent international consensus definitions using a well-characterized pooled cohort of patients with JMML (n = 128). DNA methylation was originally categorized into three subgroups: high methylation (HM), intermediate methylation (IM), and low methylation (LM), which is a trichotomized classification. We also dichotomized the subgroups as HM/IM and LM. The decision tree model showed high concordances with 450k-based methylation [82.3% (106/128) for the dichotomized and 83.6% (107/128) for the trichotomized subgroups, respectively]. With an independent cohort (n = 72), we confirmed that these models using both the dichotomized and trichotomized classifications were highly predictive of survival. Our study demonstrates that machine learning algorithms can generate clinical parameter-based models that predict the survival outcomes of patients with JMML and high accuracy. These models enabled us to rapidly and effectively identify candidates for augmented treatment following diagnosis. Nature Publishing Group UK 2022-08-30 /pmc/articles/PMC9427938/ /pubmed/36042365 http://dx.doi.org/10.1038/s41598-022-18733-4 Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Imaizumi, Takahiro
Meyer, Julia
Wakamatsu, Manabu
Kitazawa, Hironobu
Murakami, Norihiro
Okuno, Yusuke
Yoshida, Taro
Sajiki, Daichi
Hama, Asahito
Kojima, Seiji
Takahashi, Yoshiyuki
Loh, Mignon
Stieglitz, Elliot
Muramatsu, Hideki
Clinical parameter-based prediction of DNA methylation classification generates a prediction model of prognosis in patients with juvenile myelomonocytic leukemia
title Clinical parameter-based prediction of DNA methylation classification generates a prediction model of prognosis in patients with juvenile myelomonocytic leukemia
title_full Clinical parameter-based prediction of DNA methylation classification generates a prediction model of prognosis in patients with juvenile myelomonocytic leukemia
title_fullStr Clinical parameter-based prediction of DNA methylation classification generates a prediction model of prognosis in patients with juvenile myelomonocytic leukemia
title_full_unstemmed Clinical parameter-based prediction of DNA methylation classification generates a prediction model of prognosis in patients with juvenile myelomonocytic leukemia
title_short Clinical parameter-based prediction of DNA methylation classification generates a prediction model of prognosis in patients with juvenile myelomonocytic leukemia
title_sort clinical parameter-based prediction of dna methylation classification generates a prediction model of prognosis in patients with juvenile myelomonocytic leukemia
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9427938/
https://www.ncbi.nlm.nih.gov/pubmed/36042365
http://dx.doi.org/10.1038/s41598-022-18733-4
work_keys_str_mv AT imaizumitakahiro clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia
AT meyerjulia clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia
AT wakamatsumanabu clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia
AT kitazawahironobu clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia
AT murakaminorihiro clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia
AT okunoyusuke clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia
AT yoshidataro clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia
AT sajikidaichi clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia
AT hamaasahito clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia
AT kojimaseiji clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia
AT takahashiyoshiyuki clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia
AT lohmignon clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia
AT stieglitzelliot clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia
AT muramatsuhideki clinicalparameterbasedpredictionofdnamethylationclassificationgeneratesapredictionmodelofprognosisinpatientswithjuvenilemyelomonocyticleukemia