Background: External validation of prognostic models is necessary to assess the accuracy and generalizability of the model to new patients. If models are validated in a setting in which competing... Show moreBackground: External validation of prognostic models is necessary to assess the accuracy and generalizability of the model to new patients. If models are validated in a setting in which competing events occur, these competing risks should be accounted for when comparing predicted risks to observed outcomes. Methods: We discuss existing measures of calibration and discrimination that incorporate competing events for time-to-event models. These methods are illustrated using a clinical-data example concerning the prediction of kidney failure in a population with advanced chronic kidney disease (CKD), using the guideline-recommended Kidney Failure Risk Equation (KFRE). The KFRE was developed using Cox regression in a diverse population of CKD patients and has been proposed for use in patients with advanced CKD in whom death is a frequent competing event. Results: When validating the 5-year KFRE with methods that account for competing events, it becomes apparent that the 5-year KFRE considerably overestimates the real-world risk of kidney failure. The absolute overestimation was 10%age points on average and 29%age points in older high-risk patients. Conclusions: It is crucial that competing events are accounted for during external validation to provide a more reliable assessment the performance of a model in clinical settings in which competing risks occur. Show less
Pavlou, M.; Qu, C.; Omar, R.Z.; Seaman, S.R.; Steyerberg, E.W.; White, I.R.; Ambler, G. 2021
Risk-prediction models for health outcomes are used in practice as part of clinical decision-making, and it is essential that their performance be externally validated. An important aspect in the... Show moreRisk-prediction models for health outcomes are used in practice as part of clinical decision-making, and it is essential that their performance be externally validated. An important aspect in the design of a validation study is choosing an adequate sample size. In this paper, we investigate the sample size requirements for validation studies with binary outcomes to estimate measures of predictive performance (C-statistic for discrimination and calibration slope and calibration in the large). We aim for sufficient precision in the estimated measures. In addition, we investigate the sample size to achieve sufficient power to detect a difference from a target value. Under normality assumptions on the distribution of the linear predictor, we obtain simple estimators for sample size calculations based on the measures above. Simulation studies show that the estimators perform well for common values of the C-statistic and outcome prevalence when the linear predictor is marginally Normal. Their performance deteriorates only slightly when the normality assumptions are violated. We also propose estimators which do not require normality assumptions but require specification of the marginal distribution of the linear predictor and require the use of numerical integration. These estimators were also seen to perform very well under marginal normality. Our sample size equations require a specified standard error (SE) and the anticipated C-statistic and outcome prevalence. The sample size requirement varies according to the prognostic strength of the model, outcome prevalence, choice of the performance measure and study objective. For example, to achieve an SE < 0.025 for the C-statistic, 60-170 events are required if the true C-statistic and outcome prevalence are between 0.64-0.85 and 0.05-0.3, respectively. For the calibration slope and calibration in the large, achieving SE < 0.15 would require 40-280 and 50-100 events, respectively. Our estimators may also be used for survival outcomes when the proportion of censored observations is high. Show less
Background: Most risk assessment models for type 2 diabetes (T2DM) have been developed in Caucasians and Asians; little is known about their performance in other ethnic groups.Objective(s): We... Show moreBackground: Most risk assessment models for type 2 diabetes (T2DM) have been developed in Caucasians and Asians; little is known about their performance in other ethnic groups.Objective(s): We aimed to identify existing models for the risk of prevalent or undiagnosed T2DM and externally validate them in a multi-ethnic population currently living in the Netherlands.Methods: A literature search to identify risk assessment models for prevalent or undiagnosed T2DM was performed in PubMed until December 2017. We validated these models in 4,547 Dutch, 3,035 South Asian Surinamese, 4,119 African Surinamese, 2,326 Ghanaian, 3,598 Turkish, and 3,894 Moroccan origin participants from the HELIUS (Healthy Life in an Urban Setting) cohort study performed in Amsterdam. Model performance was assessed in terms of discrimination (C-statistic) and calibration (Hosmer-Lemeshow test). We identified 25 studies containing 29 models for prevalent or undiagnosed T2DM. C-statistics varied between 0.77-0.92 in Dutch, 0.66-0.83 in South Asian Surinamese, 0.70-0.82 in African Surinamese, 0.61-0.81 in Ghanaian, 0.69-0.86 in Turkish, and 0.69-0.87 in the Moroccan populations. The C-statistics were generally lower among the South Asian Surinamese, African Surinamese, and Ghanaian populations and highest among the Dutch. Calibration was poor (Hosmer-Lemeshow p < 0.05) for all models except one.Conclusions: Generally, risk models for prevalent or undiagnosed T2DM show moderate to good discriminatory ability in different ethnic populations living in the Netherlands, but poor calibration. Therefore, these models should be recalibrated before use in clinical practice and should be adapted to the situation of the population they are intended to be used in. Show less
Indian Buddhist literary sources contain both systematic and casual rejections of, broadly speaking, the caste system and caste discrimination. However, they also provide ample evidence for,... Show moreIndian Buddhist literary sources contain both systematic and casual rejections of, broadly speaking, the caste system and caste discrimination. However, they also provide ample evidence for, possibly subconscious, discriminatory attitudes toward outcastes, prototypically caṇḍālas. The rhetoric found in Indian Buddhist literature regarding caṇḍālas is examined in this paper. Show less
Uveal melanoma (UM) is fatal in -50% of patients as a result of disseminated disease. This study aims to externally validate the Liverpool Uveal Melanoma Prognosticator Online V3 (LUMPO3) to... Show moreUveal melanoma (UM) is fatal in -50% of patients as a result of disseminated disease. This study aims to externally validate the Liverpool Uveal Melanoma Prognosticator Online V3 (LUMPO3) to determine its reliability in predicting survival after treatment for choroidal melanoma when utilizing external data from other ocular oncology centers. Anonymized data of 1836 UM patients from seven international ocular oncology centers were analyzed with LUMPO3 to predict the 10-year survival for each patient in each external dataset. The analysts were masked to the patient outcomes. Model predictions were sent to an independent statistician to evaluate LUMPO3's performance using discrimination and calibration methods. LUMPO3's ability to discriminate between UM patients who died of metastatic UM and those who were still alive was fair-to-good, with C-statistics ranging from 0.64 to 0.85 at year 1. The pooled estimate for all external centers was 0.72 (95% confidence interval: 0.68 to 0.75). Agreement between observed and predicted survival probabilities was generally good given differences in case mix and survival rates between different centers. Despite the differences between the international cohorts of patients with primary UM, LUMPO3 is a valuable tool for predicting all-cause mortality in this disease when using data from external centers. Show less
The GDPR aims to control the risks associated with the processing of personal data. It requires measures to minimise these risks and gives data subjects certain powers, such as the rights to be... Show moreThe GDPR aims to control the risks associated with the processing of personal data. It requires measures to minimise these risks and gives data subjects certain powers, such as the rights to be informed and to be forgotten. Big data is a relatively new technology, giving the controllers of data the power to permanently observe the users of digital services. Therefore this thesis answers the question whether the GDPR is suited to avert the risks and power shifts associated with big data. To answer this question, the GDPR is compared to earlier EU legislation associated with technological risks and power shifts. Additionally, the suitability of the GDPR’s anti-discrimination provisions are evaluated for the prevention of algorithmic discrimination. Results: The GDPR is not based on any discernible analysis of the risks of big data. Methods from EU environmental protection law and consumer protection law, aimed at technological risks and power shifts, were not applied. This can make evaluation of the GDPR’s effectiveness more difficult and could stand in the way of developing a coherent body of case law. The conclusion proposes a number of guidelines for the decision of court cases and points for evaluating the GDPR. Show less
Luijken, K.; Groenwold, R.H.H.; Calster, B. van; Steyerberg, E.W.; Smeden, M. van 2019
Discrimination is often used to increase public perceptions of group distinctiveness. The current research studied the effectiveness of third party helping as an alternative, more benign strategy... Show moreDiscrimination is often used to increase public perceptions of group distinctiveness. The current research studied the effectiveness of third party helping as an alternative, more benign strategy to this end. Across four studies, we examined whether helping a third party can position the helping group as more distinct from, or more similar to, a comparison group, depending on the nature of the comparison group’s relationship with the third party. Results from three studies showed that third party helping was as effective as discrimination of the comparison group, but third party helping elicited a more positive public image of the group compared with discrimination. Study 4 provided evidence for the spontaneous use of third party helping in response to distinctiveness threat. These findings extend insights from classic balance theories and research on strategic intergroup helping to the domain of intergroup differentiation, and highlight a benign strategy to achieve positive group distinctiveness. Show less