Abstract

Maintaining a high quality of conversation between doctors and patients is essential in telehealth services, where efficient and competent communication is important to promote patient health. Assessing the quality of medical conversations is often handled based on a human auditory-perceptual evaluation. Typically, trained experts are needed for such tasks, as they follow systematic evaluation criteria. However, the daily rapid increase of consultations makes the evaluation process inefficient and impractical. This paper investigates the automation of the quality assessment process of patient–doctor voice-based conversations in a telehealth service using a deep-learning-based classification model. For this, the data consist of audio recordings obtained from Altibbi. Altibbi is a digital health platform that provides telemedicine and telehealth services in the Middle East and North Africa (MENA). The objective is to assist Altibbi’s operations team in the evaluation of the provided consultations in an automated manner. The proposed model is developed using three sets of features: features extracted from the signal level, the transcript level, and the signal and transcript levels. At the signal level, various statistical and spectral information is calculated to characterize the spectral envelope of the speech recordings. At the transcript level, a pre-trained embedding model is utilized to encompass the semantic and contextual features of the textual information. Additionally, the hybrid of the signal and transcript levels is explored and analyzed. The designed classification model relies on stacked layers of deep neural networks and convolutional neural networks. Evaluation results show that the model achieved a higher level of precision when compared with the manual evaluation approach followed by Altibbi’s operations team.

Highlights

  • Providing a high quality of service in telehealth is a leading cause of success and a prime objective for clinicians and providers of telemedicine

  • This subsection analyzes the results of the prediction of the quality of consultations based solely on the spectral features

  • This paper presented a deep learning approach for assessing the quality of medical consultations based on recordings stored and labeled by the Altibbi company

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Summary

Introduction

Providing a high quality of service in telehealth is a leading cause of success and a prime objective for clinicians and providers of telemedicine. Quantifying the quality of medical services in the case of recorded consultations is not easy In such situations, the recordings contain the voices of the doctor and the patient, where they might be speaking in different dialects of the language. This section gives a brief description of the theories and algorithms needed to implement the automatic quality approach as presented in the remaining sections It demonstrates the extracted spectral features (including the spectrogram, MFCCs, and the zerocrossing rate), the process of Amazon transcription for retrieving the consultation transcriptions, and the concepts behind the deep forward neural networks and the convolution neural networks.

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