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AI for Good-Innovate for Impact



                      data collection from the country's partnered hospital/medical college. The collected data from
                      primary sources will be analyzed, and a deep learning-based AI architecture will be constructed
                      for data training and testing. A detailed description of how the data collection and model
                      development phases will be carried out is provided here.

                      The data collection phase will contain the following working steps:
                      1.   Expand data sources: We will collaborate with hospitals to collect data on a larger and
                           more diverse population of newborns, including data from different ethnicities, gestational
                           ages, and birth complications. This process will also explore collecting data from pre-birth
                           stages (fetal heart rate, maternal health data) to identify potential risk factors.
                      2.   Simulate data variations: Further, we will develop methods to simulate variations in
                           crying sounds due to background noise, microphone quality, and different recording
                           environments.

                      The model development phase will contain the following working steps:
                      1.   Advanced AI models: The development phase will try to implement deep learning
                           architectures like convolutional neural networks (CNNs) and recurrent neural networks
                           (RNNs) to analyze and handle sequential data like cry sounds. It will also explore transfer
                           learning by leveraging pre-trained models on similar audio classification tasks. Moreover,
                           for global accessibility, it will explore methods for developing low-cost and low-power
                           solutions that can be used in resource-limited settings. In addition, we will focus on the
                           integration of generative AI (GenAI) model development, depending on the outcome of
                           the initial stage of model development.

                      46�3  Use case Requirement


                      •    REQ-01: It is critical that the solution must provide an AI-powered tool for analyzing
                           newborns' cries via smartphones, accessible in resource-limited settings, and deployable
                           without specialized equipment, ensuring continuous data collection for AI model training
                           with minimal internet dependency.
                      •    REQ-02: It is critical that the solution must have a user-friendly interface suitable for
                           healthcare professionals, designed to integrate seamlessly with existing healthcare
                           systems, and address barriers to adoption, such as smartphone functionality and internet
                           access.
                      •    REQ-03: It is critical that the solution should support ongoing research and development,
                           be scalable and adaptable to diverse populations, and contribute to the UN Sustainable
                           Development Goal 3 by improving health outcomes for at-risk newborns.





























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