Imputation of missing values for cochlear implant candidate audiometric data and potential applications.
Cole PavelchekAndrew P MichelsonAmit WaliaAmanda OrtmannJacques HerzogCraig A BuchmanMatthew A ShewPublished in: PloS one (2023)
Precision medicine will inevitably play an integral role in the future of hearing healthcare. These methods are data dependent, and rigorously validated imputation models are a key tool for maximizing datasets. Using the largest CI audiogram dataset to-date, we demonstrate that in a real-world scenario MICE can safely impute missing data for the vast majority (>99%) of audiograms with RMSE well below a clinically significant threshold of 10dB. Evaluation across a range of dataset sizes and sparsity distributions suggests a high degree of generalizability to future applications.