The fast-growing healthcare big data plays an important role in healthcare service providing. Healthcare big data comprises data from different structured, semi-structured and unstructured sources. These data sources vary in terms of heterogeneity, volume, variety, velocity and value that traditional frameworks, algorithms, tools, and techniques are not fully capable of handling. Therefore, a framework is required that facilitates collection, extraction, storage, classification, processing, and modelling of this vast heterogeneous volume of data. The present paper proposes a healthcare big data framework using voice pathology assessment (VPA) as a case study. In the proposed VPA system, two robust features, MPEG-7 low-level audio and the interlaced derivative pattern (IDP), are used for processing the voice or speech signals. The machine learning algorithms in the form of a support vector machine (SVM), an extreme learning machine (ELM), and a Gaussian mixture model (GMM) are used as the classifier.In the experiments, the proposed VPA system shows its efficiency in terms of accuracy and time requirement. . His research interests include serious games, social media, IoT, cloud and multimedia for healthcare, smart health, and resource provisioning for big data processing on media clouds. He has authored and coauthored around 120 publications including refereed IEEE/ACM/Springer/Elsevier journals, conference papers, books, and book chapters. He has served as a member of the organizing and technical committees of several international conferences and workshops. He has served as co-chair, general chair, workshop chair, publication chair, and TPC for over 12 IEEE and ACM conferences and workshops. Currently, he serves as a co-chair of the 6th IEEE ICME workshop on Multimedia Services