Javascript must be enabled to continue!
Novel Gene Signatures Predicting Primary Non-response to Infliximab in Ulcerative Colitis: Development and Validation Combining Random Forest With Artificial Neural Network
View through CrossRef
Background: While infliximab has revolutionized the treatment of ulcerative colitis, primary non-response is difficult to predict, which limits effective disease management. The study aimed to establish a novel genetic model to predict primary non-response to infliximab in patients with ulcerative colitis.Methods: Publicly available mucosal expression profiles of infliximab-treated ulcerative colitis patients (GSE16879, GSE12251) were utilized to identify potential predictive gene panels. The random forest algorithm and artificial neural network were applied to further screen for predictive signatures and establish a model to predict primary non-response to infliximab.Results: A total of 28 downregulated and 2 upregulated differentially expressed genes were identified as predictors. The novel model was successfully established on the basis of the molecular prognostic score system, with a significantly predictive value (AUC = 0.93), and was validated with an independent dataset GSE23597 (AUC = 0.81).Conclusion: Machine learning was used to construct a predictive model based on the molecular prognostic score system. The novel model can predict primary non-response to infliximab in patients with ulcerative colitis, which aids in clinical-decision making.
Title: Novel Gene Signatures Predicting Primary Non-response to Infliximab in Ulcerative Colitis: Development and Validation Combining Random Forest With Artificial Neural Network
Description:
Background: While infliximab has revolutionized the treatment of ulcerative colitis, primary non-response is difficult to predict, which limits effective disease management.
The study aimed to establish a novel genetic model to predict primary non-response to infliximab in patients with ulcerative colitis.
Methods: Publicly available mucosal expression profiles of infliximab-treated ulcerative colitis patients (GSE16879, GSE12251) were utilized to identify potential predictive gene panels.
The random forest algorithm and artificial neural network were applied to further screen for predictive signatures and establish a model to predict primary non-response to infliximab.
Results: A total of 28 downregulated and 2 upregulated differentially expressed genes were identified as predictors.
The novel model was successfully established on the basis of the molecular prognostic score system, with a significantly predictive value (AUC = 0.
93), and was validated with an independent dataset GSE23597 (AUC = 0.
81).
Conclusion: Machine learning was used to construct a predictive model based on the molecular prognostic score system.
The novel model can predict primary non-response to infliximab in patients with ulcerative colitis, which aids in clinical-decision making.
Related Results
Abstract 1809: The role of HyDIFFUZETM in co-formulation with subcutaneous infliximab
Abstract 1809: The role of HyDIFFUZETM in co-formulation with subcutaneous infliximab
Abstract
Background:
Recombinant human Hyaluronidase PH20 (rHuPH20) is an enzyme that degrades subcutaneous (SC) hyaluronan and ...
Inflammatory Bowel Disease Patients Are Frequently Nonadherent to Scheduled Induction and Maintenance Infliximab Therapy: A Canadian Cohort Study
Inflammatory Bowel Disease Patients Are Frequently Nonadherent to Scheduled Induction and Maintenance Infliximab Therapy: A Canadian Cohort Study
BACKGROUND: Adherence to maintenance medication regimens in inflammatory bowel disease patients has traditionally been poor. Although infliximab has demonstrated efficacy in induci...
Therapeutic Drug Monitoring of Infliximab in Iraqi Patients with Moderate to Severe Ulcerative Colitis
Therapeutic Drug Monitoring of Infliximab in Iraqi Patients with Moderate to Severe Ulcerative Colitis
The term "inflammatory bowel disease" refers to a group of gastrointestinal tract inflammatory disorders that are considered idiopathic, chronic, and relapsing. The two primary dis...
Osteopathic Primary Care Treatment Options for Ulcerative Colitis
Osteopathic Primary Care Treatment Options for Ulcerative Colitis
Ulcerative colitis is a multifactorial, chronic inflammatory disease of the bowel that can cause physical, social and emotional injury to the patient. While perhaps not always maki...
Relationship Between Trough Levels of Anti-Infliximab and Serum Biomarkers in Patients With Rheumatoid Arthritis
Relationship Between Trough Levels of Anti-Infliximab and Serum Biomarkers in Patients With Rheumatoid Arthritis
Rheumatoid arthritis is a chronic condition, characterized by the expression of antibody against self-antigens. Inflammatory cell of synovial tissues secreted numerous cytokines, i...
Comparison of PUCAI Score in Mesalazine-Treated Children with Ulcerative Colitis
Comparison of PUCAI Score in Mesalazine-Treated Children with Ulcerative Colitis
Background: Ulcerative colitis is a chronic idiopathic inflammatory bowel disease (IBD) characterized by intestinal inflammation confined to the superficial mucosal layer. Mesalazi...
Comparative Outcomes of Adalimumab and Infliximab Dose Escalation in Inflammatory Bowel Disease Patients Failing First-Line Biologic Treatment
Comparative Outcomes of Adalimumab and Infliximab Dose Escalation in Inflammatory Bowel Disease Patients Failing First-Line Biologic Treatment
Background/Objectives: Dose escalation has been commonly used to achieve and maintain response. We aimed to compare the outcomes of adalimumab or infliximab dose escalation in infl...
Comparison of SB2-Infliximab With Originator-Infliximab in the Measurement of Serum Concentrations: A Short Communication
Comparison of SB2-Infliximab With Originator-Infliximab in the Measurement of Serum Concentrations: A Short Communication
Background:
The optimal use of infliximab depends on the measurement of trough levels with subsequent appropriate dose adjustment. With the introduction of biosimilars,...

