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Norbert Krautenbacher
Norbert Krautenbacher
ARAG Health Insurance
Verified email at arag.de
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Year
Prediction of overall survival for patients with metastatic castration-resistant prostate cancer: development of a prognostic model through a crowdsourced challenge with open …
J Guinney, T Wang, TD Laajala, KK Winner, JC Bare, EC Neto, SA Khan, ...
The Lancet Oncology 18 (1), 132-142, 2017
1672017
A strategy for high‐dimensional multivariable analysis classifies childhood asthma phenotypes from genetic, immunological, and environmental factors
N Krautenbacher, N Flach, A Böck, K Laubhahn, M Laimighofer, FJ Theis, ...
Allergy 74 (7), 1364-1373, 2019
312019
Asthma in farm children is more determined by genetic polymorphisms and in non‐farm children by environmental factors
N Krautenbacher, M Kabesch, E Horak, C Braun‐Fahrländer, J Genuneit, ...
Pediatric allergy and immunology 32 (2), 295-304, 2021
232021
A DREAM challenge to build prediction models for short-term discontinuation of docetaxel in metastatic castration-resistant prostate cancer
F Seyednasrollah, DC Koestler, T Wang, SR Piccolo, R Vega, R Greiner, ...
JCO clinical cancer informatics 1, 1-15, 2017
212017
Correcting classifiers for sample selection bias in two‐phase case‐control studies
N Krautenbacher, FJ Theis, C Fuchs
Computational and mathematical methods in medicine 2017 (1), 7847531, 2017
212017
Minimization and estimation of the variance of prediction errors for cross-validation designs
M Fuchs, N Krautenbacher
Journal of Statistical Theory and Practice 10, 420-443, 2016
92016
Three general concepts to improve risk prediction: good data, wisdom of the crowd, recalibration
I Kondofersky, M Laimighofer, C Kurz, N Krautenbacher, JF Söllner, ...
F1000Research 5, 2671, 2016
32016
Learning on complex, biased, and big data: disease risk prediction in epidemiological studies and genomic medicine on the example of childhood asthma
N Krautenbacher
Technische Universität München, 2018
22018
wisdom of the crowd, recalibration [version 1; referees: 2
I Kondofersky, M Laimighofer, C Kurz, N Krautenbacher, JF Söllner, ...
Institute for Cancer, 2016
2016
Three general concepts to improve risk prediction: good data, wisdom of the crowd, recalibration [version 1; referees: awaiting
I Kondofersky, M Laimighofer, C Kurz, N Krautenbacher, JF Söllner, ...
2016
A variance decomposition and a Central Limit Theorem for empirical losses associated with resampling designs
M Fuchs, N Krautenbacher
2014
Efficient Computation of Unconditional Error Rate Estimators for Learning Algorithms and an Application to a Biomedical Data Set
N Krautenbacher
2014
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