Along with increasing amounts of big data sources and increasing computer performance, real-world evidence from such sources likewise gains in importance. While this mostly applies to population averaged results from analyses based on the all available data, it is also possible to conduct so-called personalized analyses based on a data subset whose observations resemble a particular patient for whom a decision is to be made. Claims data from statutory health insurance companies could provide necessary information for such personalized analyses. To derive treatment recommendations from them for a particular patient in everyday care, an automated, reproducible and efficiently programmed workflow would be required. We introduce the R-package S...
Precision medicine is an emerging concept of medicine which aims at refining the perception of dise...
Background and objectives: There is an increasing interest to use real-world data to illustrate how ...
Making complex medical decisions is becoming an increasingly challenging task due to the growing amo...
Clinical phenotyping techniques provide clinicians and clinical researchers with important insight i...
Abstract Background Clinical risk prediction models (CRPMs) use patient characteristics to estimate ...
Clinical outcome prediction normally employs static, one-size-fits-all models that perform well for ...
Clinical outcome prediction normally employs static, one-size-fits-all models that perform well for ...
Clinical outcome prediction normally employs static, one-size-fits-all models that perform well for ...
We introduce profile matching, a multivariate matching method for randomized experiments and observa...
Evidence-based medicine is the most prevalent paradigm adopted by physicians. Clinical practice guid...
Abstract—Patient data can be present in clinical notes, lab results, genomic data sources, environme...
The rapid adoption of electronic health records (EHR) provides a comprehensive source for explorator...
Background Clinical outcome prediction normally employs static, one-size-fits-all models that perfor...
The purpose of clinical trials is to explore whether a medical treatment is safe and effective for h...
Personalized medicine has the potential to revolutionize how healthcare is provided. The aim of pers...
Precision medicine is an emerging concept of medicine which aims at refining the perception of dise...
Background and objectives: There is an increasing interest to use real-world data to illustrate how ...
Making complex medical decisions is becoming an increasingly challenging task due to the growing amo...
Clinical phenotyping techniques provide clinicians and clinical researchers with important insight i...
Abstract Background Clinical risk prediction models (CRPMs) use patient characteristics to estimate ...
Clinical outcome prediction normally employs static, one-size-fits-all models that perform well for ...
Clinical outcome prediction normally employs static, one-size-fits-all models that perform well for ...
Clinical outcome prediction normally employs static, one-size-fits-all models that perform well for ...
We introduce profile matching, a multivariate matching method for randomized experiments and observa...
Evidence-based medicine is the most prevalent paradigm adopted by physicians. Clinical practice guid...
Abstract—Patient data can be present in clinical notes, lab results, genomic data sources, environme...
The rapid adoption of electronic health records (EHR) provides a comprehensive source for explorator...
Background Clinical outcome prediction normally employs static, one-size-fits-all models that perfor...
The purpose of clinical trials is to explore whether a medical treatment is safe and effective for h...
Personalized medicine has the potential to revolutionize how healthcare is provided. The aim of pers...
Precision medicine is an emerging concept of medicine which aims at refining the perception of dise...
Background and objectives: There is an increasing interest to use real-world data to illustrate how ...
Making complex medical decisions is becoming an increasingly challenging task due to the growing amo...