Machine Learning for Healthcare Applications. Группа авторов

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Machine Learning for Healthcare Applications - Группа авторов

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dataset to improve disease development strategy and disorder estimate. Informative models by utilizing ML are fused into different human administrations applications. These models commonly separate the gathered data from sensor contraptions and various sources to perceive individual lead norms and clinical conditions of the patient.

      1.6.8 Machine Learning in Outbreak Prediction

      Multiple episode expectation models are broadly utilized by specialists in the ongoing occasions to settle on most fitting choices and execute significant measures to control the flare-up. For instance, specialists are utilizing a portion of the standard models, for example, epidemiological and factual models for forecast of COVID-19. Expectation rising up out of these models end up being less strong and less exact as it includes immense vulnerability and lack of applicable information. As of late, numerous specialists are utilizing ML models to make long haul expectation of this episode. Scientists have demonstrated that AI based models end up being progressively powerful contrasted with the elective models for this flare-up.

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       * Corresponding author: [email protected]

Part 2 MACHINE LEARNING/DEEP LEARNING-BASED MODEL DEVELOPMENT

      A Framework for Health Status Estimation Based on Daily Life Activities Data Using Machine Learning Techniques

       Tene Ramakrishnudu*, T. Sai Prasen and V. Tharun Chakravarthy

       National Institute

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