https://www.selleckchem.com/products/adt-007.html Lateral osteotomies via this approach addressed the nasal bony pyramid in all ten (100%) cadavers. The swinging door technique enabled correction of the caudal septum in six (60%) cadavers. Several rhinoplasty techniques can be successfully performed on cadavers via the sublabial approach and we hope this work can be translated to human subjects. Several rhinoplasty techniques can be successfully performed on cadavers via the sublabial approach and we hope this work can be translated to human subjects. This study aimed to maximise the ability of stimulus-frequency otoacoustic emissions (SFOAEs) to predict hearing status and thresholds based on machine-learning models. SFOAE data and audiometric thresholds were collected at octave frequencies from 0.5 to 8 kHz. Support vector machine, k-nearest neighbour, back propagation neural network, decision tree, and random forest algorithms were used to build classification models for status identification and to develop regression models for threshold prediction. About 230 ears with normal hearing and 737 ears with sensorineural hearing loss. All classification models yielded areas under the receiver operating characteristic curve of 0.926-0.994 at 0.5-8 kHz, superior to the previous SFOAE study. The regression models produced lower standard errors (8.1-12.2 dB, mean absolute errors 5.53-8.97 dB) as compared to those for distortion-product and transient-evoked otoacoustic emissions previously reported (8.6-19.2 dB). SFOAEs using machine-learning approaches offer promising tools for the prediction of hearing capabilities, at least at 0.5-4 kHz. Future research may focus on further improvements in accuracy and reductions in test time to improve clinical utility. SFOAEs using machine-learning approaches offer promising tools for the prediction of hearing capabilities, at least at 0.5-4 kHz. Future research may focus on further improvements in accuracy and reductions in test time