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Biomarker studies & diagnostic tests
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Presentations | ||
18-biomarker-diagnostic: 1
Assessing diagnostic accuracy for three-class classification problems Complutense University of Madrid, Spain Keywords: diagnostic accuracy, power, volume under the ROC surface (VUS), overlap measure (OVL)
Diagnostic testing is an extremely important aspect of medical care. In many situations the diagnostic decisions are not always binary. An early or intermediate disease stage usually occurs as individuals transition from the healthy stage to the fully diseased stage. To summarize a diagnostic test’s overall ability to simultaneously discriminate three diagnostic groups, the volume under the curve (VUS) is one of the most well-known measures which generalizes the notion of the area under the curve (AUC) in the two-class problem.
However, VUS is limited in their ability to fully capture the complexities of some scenarios in the three -class problem as well as AUC in the two-class problem. Pardo and Franco (2025) explored the advantages of the Overlap measures (OVL) over the AUC to assess the accuracy of a medical diagnostic test in the binary case. In this work, extension of this measure has been studied for three-class classification problems. We study methods for estimating OVL for three groups under both parametric and non-parametric frameworks. Furthermore, we propose a testing process for its statistical significance.
The size and power of the proposed methods for testing the utility of biomarkers drawn from normal, lognormal gamma distributions and mixture of them at different sample sizes are evaluated. Most of cases, our proposal is preferred to VUS.
In some situations, VUS tends to perform very poorly, with power values approaching to 0.05. Therefore, VUS would naively lead to rejection of informative biomarkers. However, OVL outperforms VUS in these situations, making it a valuable tool in the biomarker field. References: Pardo, M.C. and Franco-Pereira, A.M. (2025). Overlap measures against ROC summary indices. Statistical Science, in press 18-biomarker-diagnostic: 2
Biological Age Estimation in the Estonian Biobank Based on NMR Metabolomics Data and Phenotype 1Institute of Mathematics and Statistics, University of Tartu, Estonia; 2Institute of Genomics, University of Tartu, Estonia Background With aging populations on the rise, there is increasing interest in studying biological age measures. NMR metabolites, small molecules involved in metabolic pathways detected using NMR spectroscopy, have shown promise in estimating biological age. With now more than 200,000 participants in the Estonian Biobank having NMR blood metabolite data available, we aim to develop a model for predicting all-cause mortality and estimating biological age. A common approach for biological age estimation is regression modelling, where age is used as the dependent variable. This approach produces biological age estimators (aging clocks) that predict an individual's age as precisely as possible. However, this does not imply that individuals with biological age estimate exceeding their chronological age have a higher risk of disease or a shorter lifespan. An alternative approach is to define biological age so that it is directly related to the underlying risk level. We propose such an approach based on a parametric survival model. Methods We develop the model using the first cohort of biobank participants (n=31,359, recruited between 2002 and 2010, mean follow-up 13.3 years, SD 4.4 years). We validate the model using the second cohort of the biobank (n=118,664, recruited from 2018 onwards, mean follow-up 5.2 years, SD 0.7 years). We employ a Cox proportional hazards model with age as a timescale and stepwise selection to identify NMR metabolite biomarkers independently associated with 10-year mortality. We model an individual’s survival probability using a parametric Gompertz distribution with NMR score, prevalent disease, and phenotype as covariates. Finally, we define survival-based biological age as the age where the individual's current survival probability, given their covariate profile, equals the survival probability of an average individual in the cohort. We estimate biological age acceleration (BAA) as the difference between biological and chronological age. Results The NMR score comprises 17 metabolic biomarkers and is highly associated with mortality in both the development and validation cohorts, with HR (per SD of NMR score) of 1.78 (95% CI 1.73–1.83) and 1.79 (95% CI 1.74–1.84), respectively. The survival-based biological age estimate is symmetrically distributed around the chronological age. BAA estimate is a powerful predictor of 5-year survival (C-index 0.762, Cox model with age timescale) in the validation cohort and remains informative for the age group over 70 (C-index 0.673). Conclusion Survival-based biological age estimate based on NMR metabolite score is a more powerful predictor of mortality than the chronological age adjusted by common phenotypic predictors. 18-biomarker-diagnostic: 3
Bézier curve parametric method for approximating ROC curves in the context of multiple clinical decision thresholds 1Imperial College London, United Kingdom; 2University of Leeds, United Kingdom Background / Introduction Receiver Operating Characteristic (ROC) curves are fundamental in clinical decision-making and are widely used to assess diagnostic test performance. However, selecting cut-off points to guide a clinical decision can be challenging. Traditional approaches—such as Youden’s J statistic or clinician judgment—often have limitations, especially when multiple thresholds would have better clinical utility. We propose using the Bézier curve parametric method to fit a curve to diagnostic test data and to determine cut-off points by leveraging on the fitted curve’s shape and its rate of change. Methods We use the RECAP-V1[1] study data to demonstrate the application of the Bézier curve method. RECAP-V1 produced a ROC curve to determine which patients were at hight risk of hospitalisation for COVID-19. Using the non-linear least squares methods, we identified “control” points for optimising the fitting of both cubic and quadratic Bézier curves. These control points were then used to identify candidate cut-off points, which were compared to thresholds derived from expert clinician judgment in RECAP-V1 (Green/Amber-Amber/Red thresholds for risk). Additionally, we examined the Bézier curve’s curvature as an alternative strategy for identifying a single optimal cut-off to compare the use of Bézier to Youden’s method. Sensitivity, specificity, and interval likelihood ratios (ILR) were used as performance metrics. Results The quadratic Bézier approach yielded a Green/Amber threshold with 91% sensitivity (ILR of 0.27), and an Amber/Red threshold with 97% specificity (ILR of 6.66). The cubic method produced similar outcomes, demonstrating the robustness of the approach. When comparing to expert clinical judgement, the Green/Amber threshold showed a similar sensitivity (91% vs. 90%, ILR 0.27 vs 0.16), while the Amber/Red threshold demonstrated higher specificity (97% vs. 90%, ILR 6.66 vs. 6.00). Hence, Bézier-derived thresholds were in close agreement with those selected by clinicians. Curvature-based analysis provided an alternative single cut-off point that closely matched Youden’s J statistic. Conclusion Bézier curve fitting offers a robust method for selecting ROC curve cut-off points, aligning closely with expert clinical judgment. It can aid non experts in the identification of multiple thresholds for clinical decision. For RECAP-V1 it improved sensitivity and specificity hence could have improved clinical decision-making. Future research should explore its applicability across a range of diagnostic models. [1]Espinosa-Gonzalez et al.Remote COVID-19 Assessment in Primary Care(RECAP) risk prediction tool: derivation and real-world validation studies. Lancet Digital Health.2022;4(9):e646–e656.https://doi.org/10.1016/S2589-7500(22)00123-6 18-biomarker-diagnostic: 4
Deriving Cost-effective Neyman-Pearson Classifier with Multiple-Modality Detection Tools Fred Hutchinson Cancer Center, United States of America Background: 18-biomarker-diagnostic: 5
Improving Biomarker Diagnostic Accuracy with the Likelihood Ratio Transformation 1University of Bern, Switzerland; 2University of Edinburgh, Scotland section*{Introduction} emph{Keywords}: {ROC curve, likelihood ratio, biomarkers, regression, generalized additive models.} |