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Network-based clustering unveils interconnected landscapes of genomic and clinical features across myeloid malignancies
by
Morita, Kiyomi
, Bayer, Fritz
, Kuipers, Jack
, Takahashi, Koichi
, Roncador, Marco
, Beerenwinkel, Niko
, Moffa, Giusi
in
631/67/1990
/ 631/67/69
/ 692/699/67/1990
/ Cancer
/ Classification
/ Cluster Analysis
/ Clustering
/ Cohort Studies
/ Datasets
/ Female
/ Genomics - methods
/ Heterogeneity
/ Humanities and Social Sciences
/ Humans
/ Leukemia
/ Male
/ Malignancy
/ Medical prognosis
/ multidisciplinary
/ Mutation
/ Myelodysplastic syndromes
/ Myeloproliferative Disorders - genetics
/ Patients
/ Prognosis
/ Science
/ Science (multidisciplinary)
/ Subgroups
/ Tumors
2025
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Network-based clustering unveils interconnected landscapes of genomic and clinical features across myeloid malignancies
by
Morita, Kiyomi
, Bayer, Fritz
, Kuipers, Jack
, Takahashi, Koichi
, Roncador, Marco
, Beerenwinkel, Niko
, Moffa, Giusi
in
631/67/1990
/ 631/67/69
/ 692/699/67/1990
/ Cancer
/ Classification
/ Cluster Analysis
/ Clustering
/ Cohort Studies
/ Datasets
/ Female
/ Genomics - methods
/ Heterogeneity
/ Humanities and Social Sciences
/ Humans
/ Leukemia
/ Male
/ Malignancy
/ Medical prognosis
/ multidisciplinary
/ Mutation
/ Myelodysplastic syndromes
/ Myeloproliferative Disorders - genetics
/ Patients
/ Prognosis
/ Science
/ Science (multidisciplinary)
/ Subgroups
/ Tumors
2025
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Network-based clustering unveils interconnected landscapes of genomic and clinical features across myeloid malignancies
by
Morita, Kiyomi
, Bayer, Fritz
, Kuipers, Jack
, Takahashi, Koichi
, Roncador, Marco
, Beerenwinkel, Niko
, Moffa, Giusi
in
631/67/1990
/ 631/67/69
/ 692/699/67/1990
/ Cancer
/ Classification
/ Cluster Analysis
/ Clustering
/ Cohort Studies
/ Datasets
/ Female
/ Genomics - methods
/ Heterogeneity
/ Humanities and Social Sciences
/ Humans
/ Leukemia
/ Male
/ Malignancy
/ Medical prognosis
/ multidisciplinary
/ Mutation
/ Myelodysplastic syndromes
/ Myeloproliferative Disorders - genetics
/ Patients
/ Prognosis
/ Science
/ Science (multidisciplinary)
/ Subgroups
/ Tumors
2025
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Network-based clustering unveils interconnected landscapes of genomic and clinical features across myeloid malignancies
Journal Article
Network-based clustering unveils interconnected landscapes of genomic and clinical features across myeloid malignancies
2025
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Overview
Myeloid malignancies exhibit considerable heterogeneity with overlapping clinical and genetic features among subtypes. We present a data-driven approach that integrates mutational features and clinical covariates at diagnosis within networks of their probabilistic relationships, enabling the discovery of patient subgroups. A key strength is its ability to include presumed causal directions in the edges linking clinical and mutational features, and account for them aptly in the clustering. In a cohort of 1323 patients, we identify subgroups that outperform established risk classifications in prognostic accuracy. Our approach generalises well to unseen cohorts with classification based on our subgroups similarly offering advantages in predicting prognosis. Our findings suggest that mutational patterns are often shared across myeloid malignancies, with distinct subtypes potentially representing evolutionary stages en route to leukemia. With pancancer TCGA data, we observe that our modelling framework extends naturally to other cancer types while still offering improvements in subgroup discovery.
Myeloid malignancies vary significantly in their clinical outcomes and their genetic background. Here, the authors develop a network-based clustering method to predict subgroups of malignancies across disease subtypes.
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