Optimizing Telemedicine Flow Across Imbalanced Multiple Classes with different Arabic Dialects
Metadatos
Mostrar el registro completo del ítemAutor
Alomari, AlaaEditorial
Universidad de Granada
Departamento
Universidad de Granada. Programa de Doctorado en Tecnologías de la Información y la ComunicaciónMateria
Lengua árabe Arabic language Telemedicina Telemedicine Digital health Deep learning Machine learning Computer-aided diagnosis systems Feature extraction Natural language processing Healthcare Word embedding Asistencia sanitaria
Fecha
2024Fecha lectura
2024-02-01Referencia bibliográfica
Alomari, Alaa. Optimizing Telemedicine Flow Across Imbalanced Multiple Classes with different Arabic Dialects. Granada: Universidad de Granada, 2024. [https://hdl.handle.net/10481/89857]
Patrocinador
Tesis Univ. Granada.Resumen
This compendium focuses on various aspects of improving medical diagnosis, recommendation
generation, symptom identification, quality assessment of telemedicine consultations, and
specialty detection in the Arabic language. These studies aim to enhance healthcare services
and patient-doctor interactions in the context of telemedicine.
The first set of papers addresses the development of intelligent systems for medical diagnosis
and decision support. These systems utilize machine learning algorithms trained on large
datasets of patient questions and structured symptoms where all data sets obtained from Altibbi
Telemedicine databases. By combining different modalities and employing various feature representation
techniques and classifiers, these systems demonstrate promising predictive abilities
and accuracy in predicting patient conditions.
Another set of papers focuses on natural language processing (NLP) applications in telemedicine,
particularly in generating medical recommendations and analyzing healthcare-related text. Deep
learning-based models are developed to simplify the process of writing medical recommendations
in Arabic. These models achieve impressive results in next word prediction and show
potential for improving service satisfaction and patient-doctor interactions.
Additionally, one of the researches has been conducted on word embedding models specifically
designed for medical and healthcare applications in the Arabic language. By training
neural-based word embedding models on large datasets of medical consultations and questions,
these studies demonstrate the effectiveness of Word2Vec and fastText models in capturing the
semantics of text, thereby improving the performance of healthcare NLP-based applications.
Furthermore, deep learning approaches are explored for automated question classification
and symptom identification from unstructured medical consultations. By utilizing deep neural
networks and domain-specific word embedding models, these studies achieve high accuracy
rates in classifying medical questions into medical specialities and identifying symptoms from
Arabic texts, thereby assisting doctors in the diagnosis process and improving the efficiency
and accuracy of telemedicine consultations.
Lastly, the research delves into the automation of quality assessment in voice-based telemedicine
consultations and specialty detection in highly imbalanced multiclass datasets. Deep learning
models, combined with statistical and spectral information, are developed to assess the quality
of patient-doctor conversations and detect the correct medical specialty for each question. Various
techniques, such as oversampling and keyword identification, are employed to improve the
performance of specialty detection, which has implications for customizing consultation flows
and minimizing the doctor’s effort in addressing the correct specialty. Overall, these research papers contribute to advancing telemedicine services in the Arabic
context by leveraging machine learning, deep learning, and NLP techniques to enhance medical
diagnosis, recommendation generation, symptom identification, quality assessment, and
specialty detection.





