Multivariable modeling of biomarker data from the phase 1 Foundation for the NIH Osteoarthritis Biomarkers Consortium

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Standard

Multivariable modeling of biomarker data from the phase 1 Foundation for the NIH Osteoarthritis Biomarkers Consortium. / Hunter, David J; Deveza, Leticia A; Collins, Jamie E; Losina, Elena; Nevitt, Michael C; Roemer, Frank W; Guermazi, Ali; Bowes, Michael A; Dam, Erik B; Eckstein, Felix; Lynch, John A; Katz, Jeffrey N; Kwoh, C Kent; Hoffmann, Steve; Kraus, Virginia B.

In: Arthritis Care & Research, Vol. 74, No. 7, 2022, p. 1142-1153.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Hunter, DJ, Deveza, LA, Collins, JE, Losina, E, Nevitt, MC, Roemer, FW, Guermazi, A, Bowes, MA, Dam, EB, Eckstein, F, Lynch, JA, Katz, JN, Kwoh, CK, Hoffmann, S & Kraus, VB 2022, 'Multivariable modeling of biomarker data from the phase 1 Foundation for the NIH Osteoarthritis Biomarkers Consortium', Arthritis Care & Research, vol. 74, no. 7, pp. 1142-1153. https://doi.org/10.1002/acr.24557

APA

Hunter, D. J., Deveza, L. A., Collins, J. E., Losina, E., Nevitt, M. C., Roemer, F. W., Guermazi, A., Bowes, M. A., Dam, E. B., Eckstein, F., Lynch, J. A., Katz, J. N., Kwoh, C. K., Hoffmann, S., & Kraus, V. B. (2022). Multivariable modeling of biomarker data from the phase 1 Foundation for the NIH Osteoarthritis Biomarkers Consortium. Arthritis Care & Research, 74(7), 1142-1153. https://doi.org/10.1002/acr.24557

Vancouver

Hunter DJ, Deveza LA, Collins JE, Losina E, Nevitt MC, Roemer FW et al. Multivariable modeling of biomarker data from the phase 1 Foundation for the NIH Osteoarthritis Biomarkers Consortium. Arthritis Care & Research. 2022;74(7):1142-1153. https://doi.org/10.1002/acr.24557

Author

Hunter, David J ; Deveza, Leticia A ; Collins, Jamie E ; Losina, Elena ; Nevitt, Michael C ; Roemer, Frank W ; Guermazi, Ali ; Bowes, Michael A ; Dam, Erik B ; Eckstein, Felix ; Lynch, John A ; Katz, Jeffrey N ; Kwoh, C Kent ; Hoffmann, Steve ; Kraus, Virginia B. / Multivariable modeling of biomarker data from the phase 1 Foundation for the NIH Osteoarthritis Biomarkers Consortium. In: Arthritis Care & Research. 2022 ; Vol. 74, No. 7. pp. 1142-1153.

Bibtex

@article{f355b1deba464a63971c1eb257fde3e6,
title = "Multivariable modeling of biomarker data from the phase 1 Foundation for the NIH Osteoarthritis Biomarkers Consortium",
abstract = "OBJECTIVE: To determine the optimal combination of imaging and biochemical biomarkers to predict knee osteoarthritis (OA) progression.METHODS: Nested case-control study from the FNIH OA Biomarkers Consortium of participants with Kellgren-Lawrence grade 1-3 and complete biomarker data (n=539 to 550). Cases were knees with radiographic and pain progression between 24-48 months from baseline. Radiographic progression only was assessed in secondary analyses. Biomarkers (baseline and 24-month changes) with p<0.10 in univariate analysis were selected, including MRI (quantitative (Q) cartilage thickness and volume; semi-quantitative (SQ) MRI markers; bone shape and area; Q meniscal volume), radiographic (trabecular bone texture (TBT)), and serum and/or urine biochemical markers. Multivariable logistic regression models were built using three different step-wise selection methods (complex vs. parsimonious models).RESULTS: Among baseline biomarkers, the number of locations affected by osteophytes (SQ), Q central medial femoral and central lateral femoral cartilage thickness, patellar bone shape, and SQ Hoffa-synovitis predicted progression in most models (C-statistics 0.641-0.671). 24-month changes in SQ MRI markers (effusion-synovitis, meniscal morphology, and cartilage damage), Q central medial femoral cartilage thickness, Q medial tibial cartilage volume, Q lateral patellofemoral bone area, horizontal TBT (intercept term), and urine NTX-I predicted progression in most models (C-statistics 0.680-0.724). A different combination of imaging and biochemical biomarkers (baseline and 24-month change) predicted radiographic progression only, with higher C-statistics (0.716-0.832).CONCLUSION: This study highlights the combination of biomarkers with potential prognostic utility in OA disease-modifying trials. Properly qualified, these biomarkers could be used to enrich future trials with participants likely to progress.",
author = "Hunter, {David J} and Deveza, {Leticia A} and Collins, {Jamie E} and Elena Losina and Nevitt, {Michael C} and Roemer, {Frank W} and Ali Guermazi and Bowes, {Michael A} and Dam, {Erik B} and Felix Eckstein and Lynch, {John A} and Katz, {Jeffrey N} and Kwoh, {C Kent} and Steve Hoffmann and Kraus, {Virginia B}",
note = "This article is protected by copyright. All rights reserved.",
year = "2022",
doi = "10.1002/acr.24557",
language = "English",
volume = "74",
pages = "1142--1153",
journal = "Arthritis Care & Research",
issn = "2151-464X",
publisher = "Wiley",
number = "7",

}

RIS

TY - JOUR

T1 - Multivariable modeling of biomarker data from the phase 1 Foundation for the NIH Osteoarthritis Biomarkers Consortium

AU - Hunter, David J

AU - Deveza, Leticia A

AU - Collins, Jamie E

AU - Losina, Elena

AU - Nevitt, Michael C

AU - Roemer, Frank W

AU - Guermazi, Ali

AU - Bowes, Michael A

AU - Dam, Erik B

AU - Eckstein, Felix

AU - Lynch, John A

AU - Katz, Jeffrey N

AU - Kwoh, C Kent

AU - Hoffmann, Steve

AU - Kraus, Virginia B

N1 - This article is protected by copyright. All rights reserved.

PY - 2022

Y1 - 2022

N2 - OBJECTIVE: To determine the optimal combination of imaging and biochemical biomarkers to predict knee osteoarthritis (OA) progression.METHODS: Nested case-control study from the FNIH OA Biomarkers Consortium of participants with Kellgren-Lawrence grade 1-3 and complete biomarker data (n=539 to 550). Cases were knees with radiographic and pain progression between 24-48 months from baseline. Radiographic progression only was assessed in secondary analyses. Biomarkers (baseline and 24-month changes) with p<0.10 in univariate analysis were selected, including MRI (quantitative (Q) cartilage thickness and volume; semi-quantitative (SQ) MRI markers; bone shape and area; Q meniscal volume), radiographic (trabecular bone texture (TBT)), and serum and/or urine biochemical markers. Multivariable logistic regression models were built using three different step-wise selection methods (complex vs. parsimonious models).RESULTS: Among baseline biomarkers, the number of locations affected by osteophytes (SQ), Q central medial femoral and central lateral femoral cartilage thickness, patellar bone shape, and SQ Hoffa-synovitis predicted progression in most models (C-statistics 0.641-0.671). 24-month changes in SQ MRI markers (effusion-synovitis, meniscal morphology, and cartilage damage), Q central medial femoral cartilage thickness, Q medial tibial cartilage volume, Q lateral patellofemoral bone area, horizontal TBT (intercept term), and urine NTX-I predicted progression in most models (C-statistics 0.680-0.724). A different combination of imaging and biochemical biomarkers (baseline and 24-month change) predicted radiographic progression only, with higher C-statistics (0.716-0.832).CONCLUSION: This study highlights the combination of biomarkers with potential prognostic utility in OA disease-modifying trials. Properly qualified, these biomarkers could be used to enrich future trials with participants likely to progress.

AB - OBJECTIVE: To determine the optimal combination of imaging and biochemical biomarkers to predict knee osteoarthritis (OA) progression.METHODS: Nested case-control study from the FNIH OA Biomarkers Consortium of participants with Kellgren-Lawrence grade 1-3 and complete biomarker data (n=539 to 550). Cases were knees with radiographic and pain progression between 24-48 months from baseline. Radiographic progression only was assessed in secondary analyses. Biomarkers (baseline and 24-month changes) with p<0.10 in univariate analysis were selected, including MRI (quantitative (Q) cartilage thickness and volume; semi-quantitative (SQ) MRI markers; bone shape and area; Q meniscal volume), radiographic (trabecular bone texture (TBT)), and serum and/or urine biochemical markers. Multivariable logistic regression models were built using three different step-wise selection methods (complex vs. parsimonious models).RESULTS: Among baseline biomarkers, the number of locations affected by osteophytes (SQ), Q central medial femoral and central lateral femoral cartilage thickness, patellar bone shape, and SQ Hoffa-synovitis predicted progression in most models (C-statistics 0.641-0.671). 24-month changes in SQ MRI markers (effusion-synovitis, meniscal morphology, and cartilage damage), Q central medial femoral cartilage thickness, Q medial tibial cartilage volume, Q lateral patellofemoral bone area, horizontal TBT (intercept term), and urine NTX-I predicted progression in most models (C-statistics 0.680-0.724). A different combination of imaging and biochemical biomarkers (baseline and 24-month change) predicted radiographic progression only, with higher C-statistics (0.716-0.832).CONCLUSION: This study highlights the combination of biomarkers with potential prognostic utility in OA disease-modifying trials. Properly qualified, these biomarkers could be used to enrich future trials with participants likely to progress.

U2 - 10.1002/acr.24557

DO - 10.1002/acr.24557

M3 - Journal article

C2 - 33421361

VL - 74

SP - 1142

EP - 1153

JO - Arthritis Care & Research

JF - Arthritis Care & Research

SN - 2151-464X

IS - 7

ER -

ID: 255209488