Background: Neuroblastoma is a heterogeneous disease with diverse clinical outcomes. Current risk group models require improvement as patients within the same risk group can still show variable prognosis. Recently collected genome-wide datasets provide opportunities to infer neuroblastoma subtypes in a more unified way. Within this context, data integration is critical as different molecular characteristics can contain complementary signals. To this end, we utilized the genomic datasets available for the SEQC cohort patients to develop supervised and unsupervised models that can predict disease prognosis. Results: Our supervised model trained on the SEQC cohort can accurately predict overall survival and event-free survival profiles of p...
High-risk neuroblastoma is a very aggressive disease, with excessive tumor growth and poor outcomes....
PURPOSE: To develop a gene expression–based classifier for neuroblastoma patients that reliably pred...
Abstract Background Modern experimental techniques deliver data sets containing profiles of tens of ...
Background: Neuroblastoma is a heterogeneous disease with diverse clinical outcomes. Current risk gr...
Background: Neuroblastoma is a heterogeneous disease with diverse clinical outcomes. Current risk gr...
Abstract Background Neuroblastoma is a heterogeneous disease with diverse clinical outcomes. Current...
BACKGROUND: Neuroblastoma is one of the most common types of pediatric cancer. In current neurobl...
Abstract Background More than 90% of neuroblastoma patients are cured in the low-risk group while on...
High-risk neuroblastoma is a very aggressive disease, with excessive tumor growth and poor outcomes....
Background More accurate prognostic assessment of patients with neuroblastoma is required to better ...
High-risk neuroblastoma is a very aggressive disease, with excessive tumor growth and poor outcomes....
High-risk neuroblastoma is a very aggressive disease, with excessive tumor growth and poor outcomes....
Background More accurate prognostic assessment of patients with neuroblastoma is required to better ...
High-risk neuroblastoma is a very aggressive disease, with excessive tumor growth and poor outcomes....
PURPOSE: To develop a gene expression–based classifier for neuroblastoma patients that reliably pred...
High-risk neuroblastoma is a very aggressive disease, with excessive tumor growth and poor outcomes....
PURPOSE: To develop a gene expression–based classifier for neuroblastoma patients that reliably pred...
Abstract Background Modern experimental techniques deliver data sets containing profiles of tens of ...
Background: Neuroblastoma is a heterogeneous disease with diverse clinical outcomes. Current risk gr...
Background: Neuroblastoma is a heterogeneous disease with diverse clinical outcomes. Current risk gr...
Abstract Background Neuroblastoma is a heterogeneous disease with diverse clinical outcomes. Current...
BACKGROUND: Neuroblastoma is one of the most common types of pediatric cancer. In current neurobl...
Abstract Background More than 90% of neuroblastoma patients are cured in the low-risk group while on...
High-risk neuroblastoma is a very aggressive disease, with excessive tumor growth and poor outcomes....
Background More accurate prognostic assessment of patients with neuroblastoma is required to better ...
High-risk neuroblastoma is a very aggressive disease, with excessive tumor growth and poor outcomes....
High-risk neuroblastoma is a very aggressive disease, with excessive tumor growth and poor outcomes....
Background More accurate prognostic assessment of patients with neuroblastoma is required to better ...
High-risk neuroblastoma is a very aggressive disease, with excessive tumor growth and poor outcomes....
PURPOSE: To develop a gene expression–based classifier for neuroblastoma patients that reliably pred...
High-risk neuroblastoma is a very aggressive disease, with excessive tumor growth and poor outcomes....
PURPOSE: To develop a gene expression–based classifier for neuroblastoma patients that reliably pred...
Abstract Background Modern experimental techniques deliver data sets containing profiles of tens of ...