Back

Serum metabolic signatures are associated with anti-drug antibody development in rheumatoid arthritis patients treated with adalimumab

Pretorius, T.; Oppong, A. E.; ABIRISK consortium, ; Donnes, P.; Manson, J. J.; Jury, E. C.

2025-08-26 rheumatology
10.1101/2025.08.22.25334214
Show abstract

ObjectivesDevelopment of anti-drug antibodies (ADAs) is a barrier to long-term efficacy of biologic therapies in rheumatoid arthritis (RA), but no biomarkers exist to predict ADA formation. This study explored the potential of serum metabolomics to predict development of ADAs to adalimumab in patients with RA. MethodsSerum from patients with RA (n=47), treatment naive for tumour necrosis factor-alpha inhibitor therapy, were collected before, Month(M)1 and M12 following initiation of adalimumab therapy as standard of care. Sera were tested for ADAs and patients were stratified according to M12 ADA status (ADA-positive n=21; ADA-negative n=26). Serum metabolomics was performed using a NMR-based platform. Metabolomic and clinical data were analysed using machine learning (ML) to develop a signature associated with ADA development. ResultsML analysis of baseline serum metabolomics and clinical data identified a signature that distinguished patients according to their future M12 ADA status (ADA-positive/ADA-negative) prior to first adalimumab treatment (area under the receiver operator curve, AUC-ROC=0.78), which out-performed clinical parameters alone (AUC-ROC=0.78). Metabolites related to cholesterol transport including large high and very low-density lipoproteins (L-HDL/VLDL) and small low density-lipoprotein (S-LDL) and clinical markers body mass index (BMI) and erythrocyte sedimentation rate were top discriminating features. Patients stratified as ADA-positive/ADA-negative at baseline also had different serum metabolic responses to adalimumab at M1 and M12. Finally, a putative predictive score for future ADA status was generated comprising L-HDL, L-LDL, extra-large VLDL subsets and BMI. ConclusionThese results support the potential of serum metabolomics as a predictive tool for immunogenicity risk in RA. Graphical abstract O_FIG O_LINKSMALLFIG WIDTH=200 HEIGHT=108 SRC="FIGDIR/small/25334214v2_ufig1.gif" ALT="Figure 1"> View larger version (35K): org.highwire.dtl.DTLVardef@c749e4org.highwire.dtl.DTLVardef@1c41e49org.highwire.dtl.DTLVardef@a083f2org.highwire.dtl.DTLVardef@369fdc_HPS_FORMAT_FIGEXP M_FIG C_FIG Key messagesO_LIMachine learning models identified serum metabolomic signatures associated with future treatment immunogenicity. C_LIO_LILipid-related metabolites suggest changes in lipid metabolism could influence ADA susceptibility. C_LI

Matching journals

The top 5 journals account for 50% of the predicted probability mass.

1
Arthritis & Rheumatology
based on 21 papers
Top 0.3%
15.9%
2
Metabolites
based on 10 papers
Top 0.1%
13.7%
3
Annals of the Rheumatic Diseases
based on 23 papers
Top 0.4%
9.0%
4
Rheumatology
based on 21 papers
Top 0.4%
7.8%
5
Scientific Reports
based on 701 papers
Top 38%
4.8%
50% of probability mass above
6
RMD Open
based on 11 papers
Top 0.3%
4.6%
7
Frontiers in Immunology
based on 140 papers
Top 2%
4.6%
8
eBioMedicine
based on 82 papers
Top 0.4%
3.0%
9
Biomedicines
based on 21 papers
Top 0.7%
2.5%
10
Journal of Personalized Medicine
based on 17 papers
Top 0.3%
2.5%
11
PLOS ONE
based on 1737 papers
Top 84%
2.4%
12
Nature Communications
based on 483 papers
Top 26%
2.4%
13
Frontiers in Medicine
based on 99 papers
Top 8%
2.4%
14
Arteriosclerosis, Thrombosis, and Vascular Biology
based on 11 papers
Top 0.9%
2.4%
15
The Lancet Rheumatology
based on 11 papers
Top 0.3%
1.9%
16
Clinical Immunology
based on 12 papers
Top 0.8%
1.4%
17
Genome Medicine
based on 56 papers
Top 5%
1.4%
18
Genome Biology
based on 14 papers
Top 0.8%
1.4%
19
International Journal of Molecular Sciences
based on 39 papers
Top 2%
1.4%
20
JCI Insight
based on 63 papers
Top 4%
1.4%
21
Viruses
based on 79 papers
Top 4%
1.2%
22
Cell Reports Medicine
based on 49 papers
Top 5%
0.8%
23
Advanced Science
based on 12 papers
Top 2%
0.8%
24
Clinical Epigenetics
based on 21 papers
Top 2%
0.7%
25
Frontiers in Genetics
based on 32 papers
Top 6%
0.7%