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Visual analytics for concept exploration in subspaces of patient groups (CROSBI ID 276410)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Hund, Michael ; Böhm, Dominic ; Sturm, Werner ; Sedlmair, Michael ; Schreck, Tobias ; Ullrich, Torsten ; Keim, Daniel A. ; Majnaric, Ljiljana ; Holzinger, Andreas Visual analytics for concept exploration in subspaces of patient groups // Brain informatics, 3 (2016), 4; 233-247. doi: 10.1007/s40708-016-0043-5

Podaci o odgovornosti

Hund, Michael ; Böhm, Dominic ; Sturm, Werner ; Sedlmair, Michael ; Schreck, Tobias ; Ullrich, Torsten ; Keim, Daniel A. ; Majnaric, Ljiljana ; Holzinger, Andreas

engleski

Visual analytics for concept exploration in subspaces of patient groups

Medical doctors and researchers in bio-medicine are increasingly confronted with complex patient data, posing new and difficult analysis challenges. These data are often comprising high- dimensional descriptions of patient conditions and measurements on the success of certain therapies. An important analysis question in such data is to compare and correlate patient conditions and therapy results along with combinations of dimensions. As the number of dimensions is often very large, one needs to map them to a smaller number of relevant dimensions to be more amenable for expert analysis. This is because irrelevant, redundant, and conflicting dimensions can negatively affect effectiveness and efficiency of the analytic process (the so- called curse of dimensionality). However, the possible mappings from high- to low-dimensional spaces are ambiguous. For example, the similarity between patients may change by considering different combinations of relevant dimensions (subspaces). We demonstrate the potential of subspace analysis for the interpretation of highdimensional medical data. Specifically, we present SubVIS, an interactive tool to visually explore subspace clusters from different perspectives, introduce a novel analysis workflow, and discuss future directions for high- dimensional (medical) data analysis and its visual exploration. We apply the presented workflow to a real-world dataset from the medical domain and show its usefulness with a domain expert evaluation.

Knowledge discovery and exploration Visual analytics Subspace clustering Subspace analysis Subspace exploration and comparison

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Podaci o izdanju

3 (4)

2016.

233-247

objavljeno

2198-4018

2198-4026

10.1007/s40708-016-0043-5

Povezanost rada

nije evidentirano

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