oneHealth - Pioneering Precision Diagnostics for a Brighter Tomorrow

Joel B Koshy

Joel B Koshy

Bengaluru, Karnataka

oneHealth leverages Intel's oneAPI to revolutionize healthcare. Seamlessly combining AI and medical expertise, it delivers accurate and rapid diagnoses for brain tumors, heart disease, and diabetes. Experience cutting-edge technology for precise, timely, and life-changing healthcare solutions. ...learn more

Project status: Under Development

oneAPI, Artificial Intelligence

Intel Technologies
DevCloud, oneAPI, Intel Python

Code Samples [1]

Overview / Usage

The oneHealth project is a cutting-edge web application designed to address critical healthcare challenges by harnessing the capabilities of Intel's oneAPI toolkit. This innovative platform focuses on diagnosing brain tumors, heart disease, and diabetes with unparalleled accuracy and efficiency. By seamlessly integrating oneAPI's powerful features, the oneHealth project aims to transform the way healthcare professionals approach diagnostics, leading to early detection, personalized treatment plans, and improved patient outcomes.

Key Problems Being Solved:

  • Accurate Diagnoses: Leveraging advanced algorithms and machine learning, oneHealth enhances diagnostic accuracy for brain tumors, heart disease, and diabetes, reducing misdiagnoses and ensuring timely intervention.
  • Efficiency: The platform streamlines the diagnostic process, optimizing resource utilization and reducing the time required for accurate assessments, thus contributing to quicker treatment decisions.
  • Personalized Care: By analyzing vast amounts of patient data, oneHealth tailors diagnostic and treatment strategies to individual patients, optimizing healthcare interventions and improving overall patient care.
  • Accessibility: The web-based nature of oneHealth ensures that healthcare professionals can access the platform from anywhere, facilitating seamless collaboration and knowledge sharing.

Methodology / Approach

Methodology for Solving Healthcare Challenges with oneHealth and oneAPI:

The development of the oneHealth web application follows a systematic and innovative approach to address critical healthcare diagnostic challenges. Leveraging the capabilities of Intel's oneAPI toolkit and a combination of advanced technologies, the methodology encompasses various stages:

  1. Problem Identification: Identify key healthcare challenges - brain tumor diagnosis, heart disease assessment, and diabetes detection - requiring accurate and efficient solutions for improved patient care.
  2. Requirement Gathering: Collaborate with medical experts to gather detailed requirements, data specifications, and diagnostic criteria for each condition.
  3. Technology Stack Selection: Choose appropriate technologies to build a robust and efficient solution. This includes React JS for frontend interactivity, Flask for backend processing, oneDNN for optimized neural network operations, oneDAL for data analytics, TensorFlow for deep learning, Intel Jupyter Notebook for collaborative model development, devCloud for scalable compute resources, and devMesh for interdisciplinary collaboration.
  4. Architecture Design: Develop a modular and scalable architecture integrating the chosen technologies. Design the frontend UI/UX with React JS for intuitive user interaction. Design the Flask backend to process data, communicate with frontend components, and interface with diagnostic modules.
  5. Model Development: Utilize TensorFlow to design and train deep learning models tailored to each healthcare challenge. Integrate oneDNN to optimize neural network operations, enhancing model performance.
  6. Data Processing: Employ oneDAL for efficient data processing, transformation, and analysis, ensuring accurate diagnostics based on diverse medical datasets.
  7. Collaborative Development: Utilize Intel Jupyter Notebook for collaborative model development, allowing researchers, data scientists, and healthcare experts to collectively fine-tune models and share insights.
  8. Integration of devCloud: Leverage Intel's devCloud for rapid experimentation and performance optimization, utilizing various hardware accelerators available on the cloud platform.
  9. devMesh Collaboration: Incorporate devMesh to facilitate seamless collaboration among diverse teams, enabling cross-disciplinary knowledge sharing and idea exchange.

Technologies Used

  • Frontend Powered by React JS: The frontend of the oneHealth web application is built using React JS, providing a dynamic and user-friendly interface that allows healthcare professionals to seamlessly interact with diagnostic tools and visualizations.
  • Backend Efficiency with Flask: The backend of oneHealth is developed using Flask, a micro web framework in Python. Flask enables efficient data processing, model inference, and communication between the frontend and various diagnostic components.
  • oneDNN Integration: Leveraging Intel's Deep Neural Network Library (oneDNN), oneHealth optimizes neural network operations, enhancing the efficiency and speed of processing data for brain tumor, heart disease, and diabetes diagnostics.
  • oneDAL Utilization: Incorporating Intel's Data Analytics Library (oneDAL), oneHealth gains advanced data processing capabilities, enabling efficient analysis and interpretation of diverse medical datasets, contributing to accurate diagnoses.
  • TensorFlow Implementation: By integrating TensorFlow, one of the most widely used deep learning frameworks, oneHealth harnesses its robust capabilities for training and deploying intricate neural network models, fostering precise disease detection.
  • Intel Jupyter Notebook: The utilization of Intel Jupyter Notebook provides a collaborative and interactive environment for healthcare professionals and data scientists to collaborate, visualize data, develop models, and share insights, streamlining the diagnostic workflow.
  • devCloud Integration: With the integration of Intel's devCloud, oneHealth gains access to scalable compute resources, allowing for rapid experimentation and optimization of algorithms, expediting the development of advanced diagnostic models.
  • devMesh Collaboration: Incorporating devMesh into the platform promotes seamless collaboration among researchers, developers, and healthcare practitioners, enabling the exchange of ideas, best practices, and insights to enhance diagnostic accuracy and innovation.

Repository

https://github.com/HemantDutta/oneHealth

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