about
FunRich: An open access standalone functional enrichment and interaction network analysis toolPreventing anxiety problems in children with Cool Little Kids Online: study protocol for a randomised controlled trialNew measure of insulin sensitivity predicts cardiovascular disease better than HOMA estimated insulin resistanceJoint estimation of isoform expression and isoform-specific read distribution using multisample RNA-Seq data.A maximum likelihood method for secondary analysis of nested case-control data.Modelling infectious disease transmission with complex exposure pattern and sparse outcome data.Validity of the International Physical Activity Questionnaire and the Singapore Prospective Study Program physical activity questionnaire in a multiethnic urban Asian population.Powerful differential expression analysis incorporating network topology for next-generation sequencing data.Accessory subunits are integral for assembly and function of human mitochondrial complex I.Wood density as a conservation tool: quantification of disturbance and identification of conservation-priority areas in tropical forests.Comparison of data analysis strategies for intent-to-treat analysis in pre-test-post-test designs with substantial dropout rates.Correlating gene and protein expression data using Correlated Factor AnalysisClassification of array CGH data using smoothed logistic regression model.Identification of recurrent regions of Copy-Number Variants across multiple individuals.Baseline factors predictive of serious suicidality at follow-up: findings focussing on age and gender from a community-based studyPatterns of physical activity in different domains and implications for intervention in a multi-ethnic Asian population: a cross-sectional study.The value of reusing prior nested case-control data in new studies with different outcome.Meat consumption and risk of lung cancer among never-smoking women.The ARIC predictive model reliably predicted risk of type II diabetes in Asian populations.Diabetes with hypertension as risk factors for adult dengue hemorrhagic fever in a predominantly dengue serotype 2 epidemic: a case control study.Modified least-variant set normalization for miRNA microarrayAsian primate species richness correlates with rainfallSusceptibility and gene interaction study of the angiotensin II type 1 receptor (AGTR1) gene polymorphisms with non-alcoholic fatty liver disease in a multi-ethnic population.Low level primary blast injury in rodent brain.A randomised controlled trial of a Mediterranean Dietary Intervention for Adults with Non Alcoholic Fatty Liver Disease (MEDINA): study protocol.Effect of season of birth on cord blood IgE and IgE at birth: A systematic review and meta-analysis.Ethnicity modifies the relation between fasting plasma glucose and HbA1c in Indians, Malays and Chinese.Television screen time, but not computer use and reading time, is associated with cardio-metabolic biomarkers in a multiethnic Asian population: a cross-sectional study.Complement component 1, q subcomponent binding protein is a marker for proliferation in breast cancer.Follow-up of mild cognitive impairment and related disorders over four years in adults in their sixties: the PATH Through Life Study.The discovery of human genetic variations and their use as disease markers: past, present and future.Statistical challenges associated with detecting copy number variations with next-generation sequencing.Pregnancy during breast cancer: does a mother's parity status modify an offspring's mortality risk?Temporal variation in Irish suicide rates.C-reactive protein and serum creatinine, but not haemoglobin A1c, are independent predictors of coronary heart disease risk in non-diabetic Chinese.Utility of genetic and non-genetic risk factors in predicting coronary heart disease in Singaporean Chinese.Feasibility of reusing time-matched controls in an overlapping cohort.Diagnosis of diabetes mellitus using HbA1c in Asians: relationship between HbA1c and retinopathy in a multiethnic Asian population.Genomic copy number variations in three Southeast Asian populations.Can body fat distribution, adiponectin levels and inflammation explain differences in insulin resistance between ethnic Chinese, Malays and Asian Indians?
P50
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P50
description
researcher ORCID ID = 0000-0003-3999-7701
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wetenschapper
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name
Agus Salim
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Agus Salim
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Agus Salim
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Agus Salim
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type
label
Agus Salim
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Agus Salim
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Agus Salim
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Agus Salim
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prefLabel
Agus Salim
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Agus Salim
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Agus Salim
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Agus Salim
@nl
P31
P496
0000-0003-3999-7701