In this
paper, we proposed an algorithmic solution for combining several biomarkers into a panel using the ICBT method based on an iterative combination of biomarkers and thresholds. We demonstrated that the definition of an optimal panel through exhaustive search is feasible with current computers. Unlike the 10% increments adopted by Reynolds et al. [17], the set of cut-offs to be tested is selected from the local extremum points on the ROC curve. This guarantees an optimal classification, and is better suited to the non-normally distributed data commonly found in clinical studies, where the last increments may not be as significant as the first ones. Panels created with this methodology are robust and easy to understand, even to users with little mathematical background. They provide efficient classification when compared with MK-2206 classic methods. We also proposed an approach to reduce the complexity and increase the speed of the search for larger data sets with random forest, efficiently
limiting information loss. Finally, we showed how to apply the method to answer a real clinical question that was the outcome prediction for 113 patients following an aneurysmal subarachnoid haemorrhage. Further validation studies NVP-AUY922 ic50 will be necessary to show whether the ICBT algorithm performs better than classic methods. We could nonetheless show that the classification power of the resulting panel is superior to that of single biomarkers. However, to be strictly validated these findings need to be replicated in larger, independent cohorts of patients. This step is often omitted in biomarker research. This omission turns out to be even more critical with panels of biomarkers which are more prone to over-fitting the data. Despite the application of cross-validation, proper validation studies with external cohorts of patients will be required to strengthen the conclusions reached through tools G protein-coupled receptor kinase such as PanelomiX before the validity of these results will be trusted by researchers. The study analyzes 8 biomarkers, however they were all discovered using univariate approaches and some of them were relatively highly correlated
[20]. Multivariate discovery approaches [31] are beyond the scope of this paper, but they could potentially highlight more interesting combinations of biomarkers. In the clinics, a panel of biomarkers would be employed similarly to a single biomarker. The only difference is that several measurements must be performed to reach a result. This has been demonstrated as feasible using point-of-care test (POCT) units [32] and [33]. However, POCT often lack good biomarker targets, and tool like PanelomiX could hopefully help improving this situation. Future prospects include the application of this workflow to data sets with more biomarkers, for instance coming from gene or protein microarrays or single reaction monitoring experiments.