11 results on '"Michael E. Weinblatt"'
Search Results
2. Prevalence and predictors for sustained remission in rheumatoid arthritis
- Author
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Jung Yoon Choe, Nancy A. Shadick, Shin-Seok Lee, Michael E. Weinblatt, Kazuki Yoshida, Michelle L. Frits, Soo Kyung Cho, Yoon Kyoung Sung, Femke H M Prince, Simon M. Helfgott, Daniel H. Solomon, Jisoo Lee, Dae Hyun Yoo, Sang Cheol Bae, Hye Soon Lee, and Pediatrics
- Subjects
Male ,medicine.medical_specialty ,Science ,Arthritis ,Arthritis, Rheumatoid ,03 medical and health sciences ,0302 clinical medicine ,Internal medicine ,Republic of Korea ,Prevalence ,medicine ,Humans ,Prospective Studies ,030212 general & internal medicine ,Prospective cohort study ,Aged ,030203 arthritis & rheumatology ,Multidisciplinary ,business.industry ,Remission Induction ,Correction ,Odds ratio ,Middle Aged ,medicine.disease ,Rheumatology ,Confidence interval ,Clinical trial ,Rheumatoid arthritis ,Cohort ,Medicine ,Female ,business ,Follow-Up Studies - Abstract
textabstractObjective Remission is a key goal in managing rheumatoid arthritis (RA), with sustained remission as the preferred sequelae of short-term remission. However little is known about the predictors of sustained remission for patients reaching remission. Using two independent cohorts, we aimed to evaluate the prevalence and predictors for sustained remission. Methods The study cohort consisted of subjects with RA from the Brigham and Women’s Hospital Rheumatoid Arthritis Sequential Study (BRASS) and the Korean Observational Study Network for Arthritis (KORONA). We analyzed subjects who reached remission in 2009 with follow up data for two consecutive years. Remission was defined by the Disease Activity Score 28- (DAS28-CRP) of less than 2.6. Sustained remission was defined as three consecutive annual visits in remission. Predictors for sustained remission were identified by multivariate logistic regression analysis. Results A total of 465 subjects were in remission in 2009. Sustained remission was achieved by 53 of 92 (57.5%) in BRASS and by 198 of 373 (53.1%) in KORONA. In multivariate analyses, baseline predictors of sustained remission were: disease duration less than 5 years [odds ratio (OR) 1.96, 95% confidence interval (95% CI) 1.08–3.58], Modified Health Assessment Questionnaire (MHAQ) score of 0 (OR 1.80, 95% CI 1.18–2.74), and non-use of oral glucocorticoid (OR 1.58, 95% CI 1.01–2.47). Conclusion More than half of RA subjects in remission in 2009 remained in remission through 2011. Short disease duration, no disability, and non-use of oral glucocorticoid at baseline were associated with sustained remission.
- Published
- 2019
- Full Text
- View/download PDF
3. Conceptual model for the health technology assessment of current and novel interventions in rheumatoid arthritis
- Author
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Mark Stevenson, Suzanne M M Verstappen, Michael E. Weinblatt, Annelies Boonen, Maureen P.M.H. Rutten-van Mölken, Kaleb Michaud, Evo Alemao, Maiwenn Al, RS: CAPHRI - R3 - Functioning, Participating and Rehabilitation, Interne Geneeskunde, MUMC+: MA Reumatologie (9), Health Economics (HE), and Health Technology Assessment (HTA)
- Subjects
Technology Assessment, Biomedical ,Process management ,Economics ,Epidemiology ,Computer science ,Economic Models ,Cost-Benefit Analysis ,Social Sciences ,lcsh:Medicine ,DISEASE-ACTIVITY ,Arthritis, Rheumatoid ,Database and Informatics Methods ,0302 clinical medicine ,Medicine and Health Sciences ,SERIOUS INFECTIONS ,030212 general & internal medicine ,Database Searching ,lcsh:Science ,media_common ,Multidisciplinary ,Health technology ,TREATMENT STRATEGIES ,Cost-effectiveness analysis ,COLLEGE-OF-RHEUMATOLOGY ,Models, Economic ,Systematic review ,Economic model ,Research Article ,Death Rates ,Process (engineering) ,METHOTREXATE MONOTHERAPY ,media_common.quotation_subject ,Immunology ,MEDLINE ,Rheumatoid Arthritis ,COST-EFFECTIVENESS ANALYSIS ,Disease Surveillance ,AMERICAN-COLLEGE ,Research and Analysis Methods ,Autoimmune Diseases ,03 medical and health sciences ,Pharmacoeconomics ,Health Economics ,Rheumatology ,Population Metrics ,RAPID RADIOGRAPHIC PROGRESSION ,Humans ,Expert Testimony ,030203 arthritis & rheumatology ,Treatment Guidelines ,Health Care Policy ,Population Biology ,Arthritis ,lcsh:R ,Biology and Life Sciences ,Economic Analysis ,Health Care ,EXTRAARTICULAR MANIFESTATIONS ,MODIFYING ANTIRHEUMATIC DRUGS ,Conceptual model ,Clinical Immunology ,lcsh:Q ,Clinical Medicine - Abstract
The objective of this study was to evaluate current approaches to economic modeling in rheumatoid arthritis (RA) and propose a new conceptual model for evaluation of the cost-effectiveness of RA interventions. We followed recommendations from the International Society of Pharmacoeconomics and Outcomes Research-Society of Medical Decision Making (ISPOR-SMDM) Modeling Good Research Practices Task Force-2. The process involved scoping the decision problem by a working group and drafting a preliminary cost-effectiveness model framework. A systematic literature review (SLR) of existing decision-analytic models was performed and analysis of an RA registry was conducted to inform the structure of the draft conceptual model. Finally, an expert panel was convened to seek input on the draft conceptual model. The proposed conceptual model consists of three separate modules: 1) patient characteristic module, 2) treatment module, and 3) outcome module. Consistent with the scope, the conceptual model proposed six changes to current economic models in RA. These changes proposed are to: 1) use composite measures of disease activity to evaluate treatment response as well as disease progression (at least two measures should be considered, one as the base case and one as a sensitivity analysis); 2) conduct utility mapping based on disease activity measures; 3) incorporate subgroups based on guideline-recommended prognostic factors; 4) integrate realistic treatment patterns based on clinical practice/registry datasets; 5) assimilate outcomes that are not joint related (extra-articular outcomes); and 6) assess mortality based on disease activity. We proposed a conceptual model that incorporates the current understanding of clinical and real-world evidence in RA, as well as of existing modeling assumptions. The proposed model framework was reviewed with experts and could serve as a foundation for developing future cost-effectiveness models in RA.
- Published
- 2018
- Full Text
- View/download PDF
4. Development of a multi-biomarker disease activity test for rheumatoid arthritis
- Author
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Michael E. Weinblatt, Dustin Smith, David Chernoff, Yijing Shen, Nicholas Knowlton, John P. Carulli, Lyndal K. Hesterberg, Nancy A. Shadick, Kathryn A. Swan, Saroja Ramanujan, Guy Cavet, Douglas J. Haney, Christopher Sutton, Michael Centola, Jeffrey R. Curtis, Peter C. Taylor, and Mary Turner
- Subjects
Oncology ,lcsh:Medicine ,Arthritis ,Gene Expression ,Autoimmunity ,Severity of Illness Index ,Arthritis, Rheumatoid ,Engineering ,Pathology ,lcsh:Science ,Multidisciplinary ,biology ,Middle Aged ,C-Reactive Protein ,Rheumatoid arthritis ,Biomarker (medicine) ,Cytokines ,Medicine ,Female ,Algorithms ,Research Article ,Biotechnology ,Test Evaluation ,Adult ,medicine.medical_specialty ,Drugs and Devices ,Immunology ,Bioengineering ,Rheumatoid Arthritis ,Autoimmune Diseases ,Medical Devices ,Rheumatology ,Diagnostic Medicine ,Internal medicine ,Severity of illness ,medicine ,Humans ,Biology ,Aged ,Models, Statistical ,Receiver operating characteristic ,business.industry ,Gene Expression Profiling ,lcsh:R ,C-reactive protein ,medicine.disease ,Clinical trial ,ROC Curve ,Immune System ,Multiple comparisons problem ,biology.protein ,lcsh:Q ,Clinical Immunology ,business ,Biomarkers ,General Pathology - Abstract
Background Disease activity measurement is a key component of rheumatoid arthritis (RA) management. Biomarkers that capture the complex and heterogeneous biology of RA have the potential to complement clinical disease activity assessment. Objectives To develop a multi-biomarker disease activity (MBDA) test for rheumatoid arthritis. Methods Candidate serum protein biomarkers were selected from extensive literature screens, bioinformatics databases, mRNA expression and protein microarray data. Quantitative assays were identified and optimized for measuring candidate biomarkers in RA patient sera. Biomarkers with qualifying assays were prioritized in a series of studies based on their correlations to RA clinical disease activity (e.g. the Disease Activity Score 28-C-Reactive Protein [DAS28-CRP], a validated metric commonly used in clinical trials) and their contributions to multivariate models. Prioritized biomarkers were used to train an algorithm to measure disease activity, assessed by correlation to DAS and area under the receiver operating characteristic curve for classification of low vs. moderate/high disease activity. The effect of comorbidities on the MBDA score was evaluated using linear models with adjustment for multiple hypothesis testing. Results 130 candidate biomarkers were tested in feasibility studies and 25 were selected for algorithm training. Multi-biomarker statistical models outperformed individual biomarkers at estimating disease activity. Biomarker-based scores were significantly correlated with DAS28-CRP and could discriminate patients with low vs. moderate/high clinical disease activity. Such scores were also able to track changes in DAS28-CRP and were significantly associated with both joint inflammation measured by ultrasound and damage progression measured by radiography. The final MBDA algorithm uses 12 biomarkers to generate an MBDA score between 1 and 100. No significant effects on the MBDA score were found for common comorbidities. Conclusion We followed a stepwise approach to develop a quantitative serum-based measure of RA disease activity, based on 12-biomarkers, which was consistently associated with clinical disease activity levels.
- Published
- 2012
5. PTPN22.6, a dominant negative isoform of PTPN22 and potential biomarker of rheumatoid arthritis
- Author
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Christine Iannaccone, Hui-Hsin Chang, I-Cheng Ho, Nancy A. Shadick, Bing Lu, Shi-Chuen Miaw, Manuela Cernadas, Tzong-Shyuan Tai, and Michael E. Weinblatt
- Subjects
endocrine system diseases ,T-Lymphocytes ,lcsh:Medicine ,Protein tyrosine phosphatase ,Lymphocyte Activation ,Arthritis, Rheumatoid ,0302 clinical medicine ,immune system diseases ,Pathology ,Protein Isoforms ,Luciferases ,skin and connective tissue diseases ,lcsh:Science ,0303 health sciences ,Multidisciplinary ,medicine.anatomical_structure ,Rheumatoid arthritis ,Medicine ,Biomarker (medicine) ,Research Article ,musculoskeletal diseases ,DNA, Complementary ,T cell ,Blotting, Western ,Immunology ,Phosphatase ,Mutation, Missense ,Enzyme-Linked Immunosorbent Assay ,Single-nucleotide polymorphism ,Biology ,Real-Time Polymerase Chain Reaction ,Models, Biological ,Polymorphism, Single Nucleotide ,Autoimmune Diseases ,PTPN22 ,03 medical and health sciences ,Rheumatology ,Diagnostic Medicine ,Cell Line, Tumor ,Genetics ,medicine ,Humans ,Immunoprecipitation ,DNA Primers ,030304 developmental biology ,T-cell receptor ,lcsh:R ,Immunity ,Protein Tyrosine Phosphatase, Non-Receptor Type 22 ,medicine.disease ,Molecular biology ,eye diseases ,Alternative Splicing ,Leukocytes, Mononuclear ,Linear Models ,Clinical Immunology ,lcsh:Q ,Biomarkers ,General Pathology ,030215 immunology - Abstract
PTPN22 is a tyrosine phosphatase and functions as a damper of TCR signals. A C-to-T single nucleotide polymorphism (SNP) located at position 1858 of human PTPN22 cDNA and converting an arginine (R620) to tryptophan (W620) confers the highest risk of rheumatoid arthritis among non-HLA genetic variations that are known to be associated with this disease. The effect of the R-to-W conversion on the phosphatase activity of PTPN22 protein and the impact of the minor T allele of the C1858T SNP on the activation of T cells has remained controversial. In addition, how the overall activity of PTPN22 is regulated and how the R-to-W conversion contributes to rheumatoid arthritis is still poorly understood. Here we report the identification of an alternative splice form of human PTPN22, namely PTPN22.6. It lacks the nearly entire phosphatase domain and can function as a dominant negative isoform of the full length PTPN22. Although conversion of R620 to W620 in the context of PTPN22.1 attenuated T cell activation, expression of the tryptophan variant of PTPN22.6 reciprocally led to hyperactivation of human T cells. More importantly, the level of PTPN22.6 in peripheral blood correlates with disease activity of rheumatoid arthritis. Our data depict a model that can reconcile the conflicting observations on the functional impact of the C1858T SNP and also suggest that PTPN22.6 is a novel biomarker of rheumatoid arthritis.
- Published
- 2012
6. Automatic Prediction of Rheumatoid Arthritis Disease Activity from the Electronic Medical Records
- Author
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Chen Lin, Nancy A. Shadick, Raul Natanael Guzman Perez, Elizabeth W. Karlson, Michael E. Weinblatt, Helena Canhão, Robert M. Plenge, Dmitriy Dligach, Yuanyuan Shen, Timothy A. Miller, Guergana Savova, and Pei Chen
- Subjects
Support Vector Machine ,Heredity ,Text Mining ,Epidemiology ,lcsh:Medicine ,computer.software_genre ,Bioinformatics ,Disease Informatics ,Arthritis, Rheumatoid ,0302 clinical medicine ,Data Mining ,Electronic Health Records ,Medicine ,lcsh:Science ,0303 health sciences ,Multidisciplinary ,Applied Mathematics ,Medical record ,Statistics ,Unified Medical Language System ,Genomics ,Phenotypes ,Antirheumatic Agents ,Disease Progression ,Algorithms ,Natural language processing ,Research Article ,Feature vector ,Rheumatoid Arthritis ,Feature selection ,Biostatistics ,Autoimmune Diseases ,03 medical and health sciences ,Genomic Medicine ,Rheumatology ,Artificial Intelligence ,Genetics ,Humans ,Statistical Methods ,Biology ,Natural Language Processing ,030304 developmental biology ,030203 arthritis & rheumatology ,Receiver operating characteristic ,business.industry ,Document classification ,lcsh:R ,Computational Biology ,Support vector machine ,ROC Curve ,Test set ,Computer Science ,lcsh:Q ,Clinical Immunology ,Artificial intelligence ,Pharmacogenomics ,business ,computer ,Mathematics - Abstract
Objective We aimed to mine the data in the Electronic Medical Record to automatically discover patients' Rheumatoid Arthritis disease activity at discrete rheumatology clinic visits. We cast the problem as a document classification task where the feature space includes concepts from the clinical narrative and lab values as stored in the Electronic Medical Record. Materials and Methods The Training Set consisted of 2792 clinical notes and associated lab values. Test Set 1 included 1749 clinical notes and associated lab values. Test Set 2 included 344 clinical notes for which there were no associated lab values. The Apache clinical Text Analysis and Knowledge Extraction System was used to analyze the text and transform it into informative features to be combined with relevant lab values. Results Experiments over a range of machine learning algorithms and features were conducted. The best performing combination was linear kernel Support Vector Machines with Unified Medical Language System Concept Unique Identifier features with feature selection and lab values. The Area Under the Receiver Operating Characteristic Curve (AUC) is 0.831 (σ = 0.0317), statistically significant as compared to two baselines (AUC = 0.758, σ = 0.0291). Algorithms demonstrated superior performance on cases clinically defined as extreme categories of disease activity (Remission and High) compared to those defined as intermediate categories (Moderate and Low) and included laboratory data on inflammatory markers. Conclusion Automatic Rheumatoid Arthritis disease activity discovery from Electronic Medical Record data is a learnable task approximating human performance. As a result, this approach might have several research applications, such as the identification of patients for genome-wide pharmacogenetic studies that require large sample sizes with precise definitions of disease activity and response to therapies.
- Published
- 2013
- Full Text
- View/download PDF
7. Prevalence and predictors for sustained remission in rheumatoid arthritis.
- Author
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Yoon-Kyoung Sung, Kazuki Yoshida, Femke H M Prince, Michelle L Frits, Soo-Kyung Cho, Jung-Yoon Choe, Hye-Soon Lee, Jisoo Lee, Shin-Seok Lee, Dae-Hyun Yoo, Simon M Helfgott, Nancy A Shadick, Michael E Weinblatt, Daniel H Solomon, and Sang-Cheol Bae
- Subjects
Medicine ,Science - Abstract
ObjectiveRemission is a key goal in managing rheumatoid arthritis (RA), with sustained remission as the preferred sequelae of short-term remission. However little is known about the predictors of sustained remission for patients reaching remission. Using two independent cohorts, we aimed to evaluate the prevalence and predictors for sustained remission.MethodsThe study cohort consisted of subjects with RA from the Brigham and Women's Hospital Rheumatoid Arthritis Sequential Study (BRASS) and the Korean Observational Study Network for Arthritis (KORONA). We analyzed subjects who reached remission in 2009 with follow up data for two consecutive years. Remission was defined by the Disease Activity Score 28- (DAS28-CRP) of less than 2.6. Sustained remission was defined as three consecutive annual visits in remission. Predictors for sustained remission were identified by multivariate logistic regression analysis.ResultsA total of 465 subjects were in remission in 2009. Sustained remission was achieved by 53 of 92 (57.5%) in BRASS and by 198 of 373 (53.1%) in KORONA. In multivariate analyses, baseline predictors of sustained remission were: disease duration less than 5 years [odds ratio (OR) 1.96, 95% confidence interval (95% CI) 1.08-3.58], Modified Health Assessment Questionnaire (MHAQ) score of 0 (OR 1.80, 95% CI 1.18-2.74), and non-use of oral glucocorticoid (OR 1.58, 95% CI 1.01-2.47).ConclusionMore than half of RA subjects in remission in 2009 remained in remission through 2011. Short disease duration, no disability, and non-use of oral glucocorticoid at baseline were associated with sustained remission.
- Published
- 2019
- Full Text
- View/download PDF
8. Genetic associations with radiological damage in rheumatoid arthritis: Meta-analysis of seven genome-wide association studies of 2,775 cases.
- Author
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Matthew Traylor, Rachel Knevel, Jing Cui, John Taylor, Westra Harm-Jan, Philip G Conaghan, Andrew P Cope, Charles Curtis, Paul Emery, Stephen Newhouse, Hamel Patel, Sophia Steer, Peter Gregersen, Nancy A Shadick, Michael E Weinblatt, Annette Van Der Helm-van Mil, Jennifer H Barrett, Ann W Morgan, Cathryn M Lewis, and Ian C Scott
- Subjects
Medicine ,Science - Abstract
BackgroundPrevious studies of radiological damage in rheumatoid arthritis (RA) have used candidate-gene approaches, or evaluated single genome-wide association studies (GWAS). We undertook the first meta-analysis of GWAS of RA radiological damage to: (1) identify novel genetic loci for this trait; and (2) test previously validated variants.MethodsSeven GWAS (2,775 RA cases, of a range of ancestries) were combined in a meta-analysis. Radiological damage was assessed using modified Larsen scores, Sharp van Der Heijde scores, and erosive status. Single nucleotide polymophsim (SNP) associations with radiological damage were tested at a single time-point using regression models. Primary analyses included age and disease duration as covariates. Secondary analyses also included rheumatoid factor (RF). Meta-analyses were undertaken in trans-ethnic and European-only cases.ResultsIn the trans-ethnic primary meta-analysis, one SNP (rs112112734) in close proximity to HLA-DRB1, and strong linkage disequilibrium with the shared-epitope, attained genome-wide significance (P = 4.2x10-8). In the secondary analysis (adjusting for RF) the association was less significant (P = 1.7x10-6). In both trans-ethnic primary and secondary meta-analyses 14 regions contained SNPs with associations reaching PConclusionsOur meta-analysis confirms the known association between the HLA-DRB1 shared epitope and RA radiological damage. The lack of replication of previously validated non-HLA markers highlights a requirement for further research to deliver clinically-useful prognostic genetic markers.
- Published
- 2019
- Full Text
- View/download PDF
9. Correction: Prevalence and predictors for sustained remission in rheumatoid arthritis.
- Author
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Yoon-Kyoung Sung, Kazuki Yoshida, Femke H M Prince, Michelle L Frits, Soo-Kyung Cho, Jung-Yoon Choe, Hye-Soon Lee, Jisoo Lee, Shin-Seok Lee, Dae-Hyun Yoo, Simon M Helfgott, Nancy A Shadick, Michael E Weinblatt, Daniel H Solomon, and Sang-Cheol Bae
- Subjects
Medicine ,Science - Abstract
[This corrects the article DOI: 10.1371/journal.pone.0214981.].
- Published
- 2019
- Full Text
- View/download PDF
10. Conceptual model for the health technology assessment of current and novel interventions in rheumatoid arthritis.
- Author
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Evo Alemao, Maiwenn J Al, Annelies A Boonen, Matthew D Stevenson, Suzanne M M Verstappen, Kaleb Michaud, Michael E Weinblatt, and Maureen P M H Rutten-van Mölken
- Subjects
Medicine ,Science - Abstract
The objective of this study was to evaluate current approaches to economic modeling in rheumatoid arthritis (RA) and propose a new conceptual model for evaluation of the cost-effectiveness of RA interventions. We followed recommendations from the International Society of Pharmacoeconomics and Outcomes Research-Society of Medical Decision Making (ISPOR-SMDM) Modeling Good Research Practices Task Force-2. The process involved scoping the decision problem by a working group and drafting a preliminary cost-effectiveness model framework. A systematic literature review (SLR) of existing decision-analytic models was performed and analysis of an RA registry was conducted to inform the structure of the draft conceptual model. Finally, an expert panel was convened to seek input on the draft conceptual model. The proposed conceptual model consists of three separate modules: 1) patient characteristic module, 2) treatment module, and 3) outcome module. Consistent with the scope, the conceptual model proposed six changes to current economic models in RA. These changes proposed are to: 1) use composite measures of disease activity to evaluate treatment response as well as disease progression (at least two measures should be considered, one as the base case and one as a sensitivity analysis); 2) conduct utility mapping based on disease activity measures; 3) incorporate subgroups based on guideline-recommended prognostic factors; 4) integrate realistic treatment patterns based on clinical practice/registry datasets; 5) assimilate outcomes that are not joint related (extra-articular outcomes); and 6) assess mortality based on disease activity. We proposed a conceptual model that incorporates the current understanding of clinical and real-world evidence in RA, as well as of existing modeling assumptions. The proposed model framework was reviewed with experts and could serve as a foundation for developing future cost-effectiveness models in RA.
- Published
- 2018
- Full Text
- View/download PDF
11. Development of a multi-biomarker disease activity test for rheumatoid arthritis.
- Author
-
Michael Centola, Guy Cavet, Yijing Shen, Saroja Ramanujan, Nicholas Knowlton, Kathryn A Swan, Mary Turner, Chris Sutton, Dustin R Smith, Douglas J Haney, David Chernoff, Lyndal K Hesterberg, John P Carulli, Peter C Taylor, Nancy A Shadick, Michael E Weinblatt, and Jeffrey R Curtis
- Subjects
Medicine ,Science - Abstract
BACKGROUND: Disease activity measurement is a key component of rheumatoid arthritis (RA) management. Biomarkers that capture the complex and heterogeneous biology of RA have the potential to complement clinical disease activity assessment. OBJECTIVES: To develop a multi-biomarker disease activity (MBDA) test for rheumatoid arthritis. METHODS: Candidate serum protein biomarkers were selected from extensive literature screens, bioinformatics databases, mRNA expression and protein microarray data. Quantitative assays were identified and optimized for measuring candidate biomarkers in RA patient sera. Biomarkers with qualifying assays were prioritized in a series of studies based on their correlations to RA clinical disease activity (e.g. the Disease Activity Score 28-C-Reactive Protein [DAS28-CRP], a validated metric commonly used in clinical trials) and their contributions to multivariate models. Prioritized biomarkers were used to train an algorithm to measure disease activity, assessed by correlation to DAS and area under the receiver operating characteristic curve for classification of low vs. moderate/high disease activity. The effect of comorbidities on the MBDA score was evaluated using linear models with adjustment for multiple hypothesis testing. RESULTS: 130 candidate biomarkers were tested in feasibility studies and 25 were selected for algorithm training. Multi-biomarker statistical models outperformed individual biomarkers at estimating disease activity. Biomarker-based scores were significantly correlated with DAS28-CRP and could discriminate patients with low vs. moderate/high clinical disease activity. Such scores were also able to track changes in DAS28-CRP and were significantly associated with both joint inflammation measured by ultrasound and damage progression measured by radiography. The final MBDA algorithm uses 12 biomarkers to generate an MBDA score between 1 and 100. No significant effects on the MBDA score were found for common comorbidities. CONCLUSION: We followed a stepwise approach to develop a quantitative serum-based measure of RA disease activity, based on 12-biomarkers, which was consistently associated with clinical disease activity levels.
- Published
- 2013
- Full Text
- View/download PDF
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