Hoarseness is a common symptom of multiple laryngeal diseases such as inflammation, paralysis, neurologic disease, or laryngeal cancer. Many patients with these diseases are not diagnosed with the correct underlying cause of the hoarseness early enough. Therefore, healthcare providers need better methods to screen for and evaluate different types of hoarseness. Currently, a combination of tools are used to evaluate voice disorders in specialty clinics such as patient history, perceptual voice evaluation, and laryngoscopy. We want to better understand how providers with different medical backgrounds evaluate patients with voice complaints. We are most interested in seeing how history, perceptual voice evaluation, and laryngoscopy impact decision-making and diagnosis. In addition, our group has developed a machine learning algorithm that analyzes voice to detect the presence or absence of a laryngeal mass. We want to see if this algorithm could be clinically useful for generalist providers. To address these questions, a group of clinician evaluators including general practitioners, otolaryngologists, and speech language pathologists, will be recruited remotely. Subjects will be asked to complete an electronic questionnaire with patient case scenarios, asking them to evaluate hoarse voice samples and laryngoscopy exams, with and without case history. For perceptual voice sample evaluations, clinician performance will be compared to the algorithm’s classification of whether a hoarse voice is from someone with a laryngeal mass. From there we will see if clinician detection of laryngeal masses from voice could be improved with this algorithm. If the algorithm has better performance than clinicians, then it may be clinically useful as a screening tool in the future. Our results will help us understand how evaluations for hoarseness are done and can be improved.