Katharina Schmidt
Leibniz University of Hanover
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Featured researches published by Katharina Schmidt.
BMC Medical Informatics and Decision Making | 2016
Frédéric Pauer; Katharina Schmidt; Ana Babac; Kathrin Damm; Martin Frank; J.-Matthias Graf von der Schulenburg
BackgroundThe Analytic Hierarchy Process (AHP) is increasingly used to measure patient priorities. Studies have shown that there are several different approaches to data acquisition and data aggregation. The aim of this study was to measure the information needs of patients having a rare disease and to analyze the effects of these different AHP approaches. The ranking of information needs is then used to display information categories on a web-based information portal about rare diseases according to the patient’s priorities.MethodsThe information needs of patients suffering from rare diseases were identified by an Internet research study and a preliminary qualitative study. Hence, we designed a three-level hierarchy containing 13 criteria. For data acquisition, the differences in outcomes were investigated using individual versus group judgements separately. Furthermore, we analyzed the different effects when using the median and arithmetic and geometric means for data aggregation. A consistency ratio ≤0.2 was determined to represent an acceptable consistency level.ResultsForty individual and three group judgements were collected from patients suffering from a rare disease and their close relatives. The consistency ratio of 31 individual and three group judgements was acceptable and thus these judgements were included in the study. To a large extent, the local ranks for individual and group judgements were similar. Interestingly, group judgements were in a significantly smaller range than individual judgements. According to our data, the ranks of the criteria differed slightly according to the data aggregation method used.ConclusionsIt is important to explain and justify the choice of an appropriate method for data acquisition because response behaviors differ according to the method. We conclude that researchers should select a suitable method based on the thematic perspective or investigated topics in the study. Because the arithmetic mean is very vulnerable to outliers, the geometric mean and the median seem to be acceptable alternatives for data aggregation. Overall, using the AHP to identify patient priorities and enhance the user-friendliness of information websites offers an important contribution to medical informatics.
Patient Preference and Adherence | 2017
Katharina Schmidt; Kathrin Damm; Arndt Vogel; Heiko Golpon; Michael P. Manns; Tobias Welte; Johann-Matthias Graf von der Schulenburg
Objectives There is increasing interest in studies that examine patient preferences to measure health-related outcomes. Understanding patients’ preferences can improve the treatment process and is particularly relevant for oncology. In this study, we aimed to identify the subgroup-specific treatment preferences of German patients with lung cancer (LC) or colorectal cancer (CRC). Methods Six discrete choice experiment (DCE) attributes were established on the basis of a systematic literature review and qualitative interviews. The DCE analyses comprised generalized linear mixed-effects model and latent class mixed logit model. Results The study cohort comprised 310 patients (194 with LC, 108 with CRC, 8 with both types of cancer) with a median age of 63 (SD =10.66) years. The generalized linear mixed-effects model showed a significant (P<0.05) degree of association for all of the tested attributes. “Strongly increased life expectancy” was the attribute given the greatest weight by all patient groups. Using latent class mixed logit model analysis, we identified three classes of patients. Patients who were better informed tended to prefer a more balanced relationship between length and health-related quality of life (HRQoL) than those who were less informed. Class 2 (LC patients with low HRQoL who had undergone surgery) gave a very strong weighting to increased length of life. We deduced from Class 3 patients that those with a relatively good life expectancy (CRC compared with LC) gave a greater weight to moderate effects on HRQoL than to a longer life. Conclusion Overall survival was the most important attribute of therapy for patients with LC or CRC. Differences in treatment preferences between subgroups should be considered in regard to treatment and development of guidelines. Patients’ preferences were not affected by sex or age, but were affected by the cancer type, HRQoL, surgery status, and the main source of information on the disease.
BMC Medical Informatics and Decision Making | 2015
Katharina Schmidt; Ines Aumann; Ines Hollander; Kathrin Damm; J.-Matthias Graf von der Schulenburg
Health Economics Review | 2016
Katharina Schmidt; Ana Babac; Frédéric Pauer; Kathrin Damm; Johann-Matthias Graf von der Schulenburg
European Journal of Public Health | 2015
Katharina Schmidt; Kathrin Damm; Jm von der Schulenburg
Zeitschrift für Evidenz, Fortbildung und Qualität im Gesundheitswesen | 2018
Heidrun Lingner; Katharina Schmidt; Ines Aumann-Suslin; M Wittmann; Michael Schuler; K Schultz
Pharmacogenomics and Personalized Medicine | 2018
Marika Plöthner; Katharina Schmidt; Clarissa Schips; Kathrin Damm
Pneumologie | 2017
Ines Aumann; Katharina Schmidt; Kathrin Damm; Heike Buhr-Schinner; J van der Meyden; K Schultz; Heidrun Lingner
Gesundheitsökonomie und Qualitätsmanagement (2017) | 2017
Katharina Schmidt; Ole Marten; Christina Kühne; Jan Zeidler; Martin Frank
Gesundheitsökonomie & Qualitätsmanagement | 2017
Axel C. Mühlbacher; Anika Kaczynski; Katharina Schmidt; Charalabos-Markos Dintsios