Fan Li1,2, Kan Li3, Cai Li1, Sheng Luo1,2. 1. Department of Biostatistics and Bioinformatics, Duke University School of Medicine, Durham, NC, USA. 2. Duke Clinical Research Institute, Durham, NC, USA. 3. Merck Research Lab, Merck & Co, North Wales, PA, USA.
Abstract
BACKGROUND: Huntington's disease (HD) has gradually become a public health threat, and there is a growing interest in developing prognostic models to predict the time for HD diagnosis. OBJECTIVE: This study aims to develop a novel prognostic model that leverages multiple longitudinal biomarkers to inform the risk of HD. METHODS: The multivariate functional principal component analysis was used to summarize the essential information from multiple longitudinal markers and to obtain a set of prognostic scores. The prognostic scores were used as predictors in a Cox model to predict the right-censored time to diagnosis. We used cross-validation to determine the best model in PREDICT-HD (n = 1,039) and ENROLL-HD (n = 1,776); external validation was carried out in ENROLL-HD. RESULTS: We considered six commonly measured longitudinal biomarkers in PREDICT-HD and ENROLL-HD (Total Motor Score, Symbol Digit Modalities Test, Stroop Word Test, Stroop Color Test, Stroop Interference Test, and Total Functional Capacity). The prognostic model utilizing these longitudinal biomarkers significantly improved the predictive performance over the model with baseline biomarker information. A new prognostic index was computed using the proposed model, and can be dynamically updated over time as new biomarker measurements become available. CONCLUSION: Longitudinal measurements of commonly measured clinical biomarkers substantially improve the risk prediction of Huntington's disease diagnosis. Calculation of the prognostic index informs the patient's risk category and facilitates patient selection in future clinical trials.
BACKGROUND:Huntington's disease (HD) has gradually become a public health threat, and there is a growing interest in developing prognostic models to predict the time for HD diagnosis. OBJECTIVE: This study aims to develop a novel prognostic model that leverages multiple longitudinal biomarkers to inform the risk of HD. METHODS: The multivariate functional principal component analysis was used to summarize the essential information from multiple longitudinal markers and to obtain a set of prognostic scores. The prognostic scores were used as predictors in a Cox model to predict the right-censored time to diagnosis. We used cross-validation to determine the best model in PREDICT-HD (n = 1,039) and ENROLL-HD (n = 1,776); external validation was carried out in ENROLL-HD. RESULTS: We considered six commonly measured longitudinal biomarkers in PREDICT-HD and ENROLL-HD (Total Motor Score, Symbol Digit Modalities Test, Stroop Word Test, Stroop Color Test, Stroop Interference Test, and Total Functional Capacity). The prognostic model utilizing these longitudinal biomarkers significantly improved the predictive performance over the model with baseline biomarker information. A new prognostic index was computed using the proposed model, and can be dynamically updated over time as new biomarker measurements become available. CONCLUSION: Longitudinal measurements of commonly measured clinical biomarkers substantially improve the risk prediction of Huntington's disease diagnosis. Calculation of the prognostic index informs the patient's risk category and facilitates patient selection in future clinical trials.
Entities:
Keywords:
Cognitive disorders; Huntington’s disease; cross validation; functional principal component analysis; motor diagnosis; risk prediction
Authors: Jane S Paulsen; Jeffrey D Long; Christopher A Ross; Deborah L Harrington; Cheryl J Erwin; Janet K Williams; Holly James Westervelt; Hans J Johnson; Elizabeth H Aylward; Ying Zhang; H Jeremy Bockholt; Roger A Barker Journal: Lancet Neurol Date: 2014-11-03 Impact factor: 44.182
Authors: Jane S Paulsen; Michael Hayden; Julie C Stout; Douglas R Langbehn; Elizabeth Aylward; Christopher A Ross; Mark Guttman; Martha Nance; Karl Kieburtz; David Oakes; Ira Shoulson; Elise Kayson; Shannon Johnson; Elizabeth Penziner Journal: Arch Neurol Date: 2006-06
Authors: Jeffrey D Long; James A Mills; Blair R Leavitt; Alexandra Durr; Raymund A Roos; Julie C Stout; Ralf Reilmann; Bernhard Landwehrmeyer; Sarah Gregory; Rachael I Scahill; Douglas R Langbehn; Sarah J Tabrizi Journal: JAMA Neurol Date: 2017-11-01 Impact factor: 18.302