Christoph Kolb

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1paper

1 Paper

IVMar 12, 2024
Input Data Adaptive Learning (IDAL) for Sub-acute Ischemic Stroke Lesion Segmentation

Michael Götz, Christian Weber, Christoph Kolb et al.

In machine learning larger databases are usually associated with higher classification accuracy due to better generalization. This generalization may lead to non-optimal classifiers in some medical applications with highly variable expressions of pathologies. This paper presents a method for learning from a large training base by adaptively selecting optimal training samples for given input data. In this way heterogeneous databases are supported two-fold. First, by being able to deal with sparsely annotated data allows a quick inclusion of new data set and second, by training an input-dependent classifier. The proposed approach is evaluated using the SISS challenge. The proposed algorithm leads to a significant improvement of the classification accuracy.