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      A Smartphone-Based Skin Disease Classification Using MobileNet CNN

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          Abstract

          The MobileNet model was used by applying transfer learning on the 7 skin diseases to create a skin disease classification system on Android application. The proponents gathered a total of 3,406 images and it is considered as imbalanced dataset because of the unequal number of images on its classes. Using different sampling method and preprocessing of input data was explored to further improved the accuracy of the MobileNet. Using under-sampling method and the default preprocessing of input data achieved an 84.28% accuracy. While, using imbalanced dataset and default preprocessing of input data achieved a 93.6% accuracy. Then, researchers explored oversampling the dataset and the model attained a 91.8% accuracy. Lastly, by using oversampling technique and data augmentation on preprocessing the input data provide a 94.4% accuracy and this model was deployed on the developed Android application.

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          The inevitable application of big data to health care.

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            Adapting to Artificial Intelligence

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              Big data for health.

              This paper provides an overview of recent developments in big data in the context of biomedical and health informatics. It outlines the key characteristics of big data and how medical and health informatics, translational bioinformatics, sensor informatics, and imaging informatics will benefit from an integrated approach of piecing together different aspects of personalized information from a diverse range of data sources, both structured and unstructured, covering genomics, proteomics, metabolomics, as well as imaging, clinical diagnosis, and long-term continuous physiological sensing of an individual. It is expected that recent advances in big data will expand our knowledge for testing new hypotheses about disease management from diagnosis to prevention to personalized treatment. The rise of big data, however, also raises challenges in terms of privacy, security, data ownership, data stewardship, and governance. This paper discusses some of the existing activities and future opportunities related to big data for health, outlining some of the key underlying issues that need to be tackled.
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                Author and article information

                Journal
                13 November 2019
                Article
                10.30534/ijatcse/2019/116852019
                1911.07929
                5891a201-5d30-43c9-90a7-e829e593499d

                http://creativecommons.org/licenses/by/4.0/

                History
                Custom metadata
                International Journal of Advanced Trends in Computer Science and Engineering (2019) 2632-2637
                cs.CV cs.CY cs.LG eess.IV stat.ML

                Computer vision & Pattern recognition,Applied computer science,Machine learning,Artificial intelligence,Electrical engineering

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