Integrating audiological datasets via federated merging of Auditory Profiles
Samira Saak, Dirk Oetting, Birger Kollmeier, Mareike Buhl

TL;DR
This paper presents a method to merge audiological patient profiles from multiple datasets using similarity measures, enhancing the understanding of hearing loss patterns while maintaining clinical relevance.
Contribution
It introduces a novel AP merging pipeline that combines profiles from different datasets based on feature similarity, improving population analysis.
Findings
Merged APs provide distinct, detailed patient profiles.
Classification performance is satisfactory across combined profiles.
Best results achieved with combined audiological measures.
Abstract
Audiological datasets contain valuable knowledge about hearing loss in patients, which can be uncovered using data-driven, federated learning techniques. Our previous approach summarized patient information from one audiological dataset into distinct Auditory Profiles (APs). To obtain a better estimate of the audiological patient population, however, patient patterns must be analyzed across multiple, separated datasets, and finally, be integrated into a combined set of APs. This study aimed at extending the existing profile generation pipeline with an AP merging step, enabling the combination of APs from different datasets based on their similarity across audiological measures. The 13 previously generated APs (NA=595) were merged with 31 newly generated APs from a second dataset (NB=1272) using a similarity score derived from the overlapping densities of common features across the two…
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Taxonomy
TopicsMusic and Audio Processing · Speech and Audio Processing · Music Technology and Sound Studies
