Integration of molecular features with clinical information for predicting outcomes for neuroblastoma patients

Abstract Background Neuroblastoma is one of the most common types of pediatric cancer. In current neuroblastoma prognosis, patients can be stratified into high- and low-risk groups. Generally, more than 90% of the patients in the low-risk group will survive, while less than 50% for those with the hi...

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Main Authors: Yatong Han, Xiufen Ye, Chao Wang, Yusong Liu, Siyuan Zhang, Weixing Feng, Kun Huang, Jie Zhang
Format: Article
Language:English
Published: BMC 2019-08-01
Series:Biology Direct
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13062-019-0244-y
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spelling doaj-a8612c4fe8414c15a403017d431e99d12020-11-25T03:44:39ZengBMCBiology Direct1745-61502019-08-0114111610.1186/s13062-019-0244-yIntegration of molecular features with clinical information for predicting outcomes for neuroblastoma patientsYatong Han0Xiufen Ye1Chao Wang2Yusong Liu3Siyuan Zhang4Weixing Feng5Kun Huang6Jie Zhang7Department of Automation, Harbin Engineering UniversityDepartment of Automation, Harbin Engineering UniversityThermo Fisher ScientificDepartment of Automation, Harbin Engineering UniversityDepartment of Automation, Harbin Engineering UniversityDepartment of Automation, Harbin Engineering UniversityDepartment of Medicine, Indiana University School of MedicineDepartment of Medical and Molecular Genetics, Indiana University School of MedicineAbstract Background Neuroblastoma is one of the most common types of pediatric cancer. In current neuroblastoma prognosis, patients can be stratified into high- and low-risk groups. Generally, more than 90% of the patients in the low-risk group will survive, while less than 50% for those with the high-risk disease will survive. Since the so-called “high-risk” patients still contain patients with mixed good and poor outcomes, more refined stratification needs to be established so that for the patients with poor outcome, they can receive prompt and individualized treatment to improve their long-term survival rate, while the patients with good outcome can avoid unnecessary over treatment. Methods We first mined co-expressed gene modules from microarray and RNA-seq data of neuroblastoma samples using the weighted network mining algorithm lmQCM, and summarize the resulted modules into eigengenes. Then patient similarity weight matrix was constructed with module eigengenes using two different approaches. At the last step, a consensus clustering method called Molecular Regularized Consensus Patient Stratification (MRCPS) was applied to aggregate both clinical information (clinical stage and clinical risk level) and multiple eigengene data for refined patient stratification. Results The integrative method MRCPS demonstrated superior performance to clinical staging or transcriptomic features alone for the NB cohort stratification. It successfully identified the worst prognosis group from the clinical high-risk group, with less than 40% survived in the first 50 months of diagnosis. It also identified highly differentially expressed genes between best prognosis group and worst prognosis group, which can be potential gene biomarkers for clinical testing. Conclusions To address the need for better prognosis and facilitate personalized treatment on neuroblastoma, we modified the recently developed bioinformatics workflow MRCPS for refined patient prognosis. It integrates clinical information and molecular features such as gene co-expression for prognosis. This clustering workflow is flexible, allowing the integration of both categorical and numerical data. The results demonstrate the power of survival prognosis with this integrative analysis workflow, with superior prognostic performance to only using transcriptomic data or clinical staging/risk information alone. Reviewers This article was reviewed by Lan Hu, Haibo Liu, Julie Zhu and Aleksandra Gruca.http://link.springer.com/article/10.1186/s13062-019-0244-yNeuroblastoma prognosisSurvival time predictionGene co-expression networkConsensus clusteringlmQCM
collection DOAJ
language English
format Article
sources DOAJ
author Yatong Han
Xiufen Ye
Chao Wang
Yusong Liu
Siyuan Zhang
Weixing Feng
Kun Huang
Jie Zhang
spellingShingle Yatong Han
Xiufen Ye
Chao Wang
Yusong Liu
Siyuan Zhang
Weixing Feng
Kun Huang
Jie Zhang
Integration of molecular features with clinical information for predicting outcomes for neuroblastoma patients
Biology Direct
Neuroblastoma prognosis
Survival time prediction
Gene co-expression network
Consensus clustering
lmQCM
author_facet Yatong Han
Xiufen Ye
Chao Wang
Yusong Liu
Siyuan Zhang
Weixing Feng
Kun Huang
Jie Zhang
author_sort Yatong Han
title Integration of molecular features with clinical information for predicting outcomes for neuroblastoma patients
title_short Integration of molecular features with clinical information for predicting outcomes for neuroblastoma patients
title_full Integration of molecular features with clinical information for predicting outcomes for neuroblastoma patients
title_fullStr Integration of molecular features with clinical information for predicting outcomes for neuroblastoma patients
title_full_unstemmed Integration of molecular features with clinical information for predicting outcomes for neuroblastoma patients
title_sort integration of molecular features with clinical information for predicting outcomes for neuroblastoma patients
publisher BMC
series Biology Direct
issn 1745-6150
publishDate 2019-08-01
description Abstract Background Neuroblastoma is one of the most common types of pediatric cancer. In current neuroblastoma prognosis, patients can be stratified into high- and low-risk groups. Generally, more than 90% of the patients in the low-risk group will survive, while less than 50% for those with the high-risk disease will survive. Since the so-called “high-risk” patients still contain patients with mixed good and poor outcomes, more refined stratification needs to be established so that for the patients with poor outcome, they can receive prompt and individualized treatment to improve their long-term survival rate, while the patients with good outcome can avoid unnecessary over treatment. Methods We first mined co-expressed gene modules from microarray and RNA-seq data of neuroblastoma samples using the weighted network mining algorithm lmQCM, and summarize the resulted modules into eigengenes. Then patient similarity weight matrix was constructed with module eigengenes using two different approaches. At the last step, a consensus clustering method called Molecular Regularized Consensus Patient Stratification (MRCPS) was applied to aggregate both clinical information (clinical stage and clinical risk level) and multiple eigengene data for refined patient stratification. Results The integrative method MRCPS demonstrated superior performance to clinical staging or transcriptomic features alone for the NB cohort stratification. It successfully identified the worst prognosis group from the clinical high-risk group, with less than 40% survived in the first 50 months of diagnosis. It also identified highly differentially expressed genes between best prognosis group and worst prognosis group, which can be potential gene biomarkers for clinical testing. Conclusions To address the need for better prognosis and facilitate personalized treatment on neuroblastoma, we modified the recently developed bioinformatics workflow MRCPS for refined patient prognosis. It integrates clinical information and molecular features such as gene co-expression for prognosis. This clustering workflow is flexible, allowing the integration of both categorical and numerical data. The results demonstrate the power of survival prognosis with this integrative analysis workflow, with superior prognostic performance to only using transcriptomic data or clinical staging/risk information alone. Reviewers This article was reviewed by Lan Hu, Haibo Liu, Julie Zhu and Aleksandra Gruca.
topic Neuroblastoma prognosis
Survival time prediction
Gene co-expression network
Consensus clustering
lmQCM
url http://link.springer.com/article/10.1186/s13062-019-0244-y
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