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The AI and Big Data Analytics in Healthcare in Istanbul is a forward-focused training course designed to help healthcare professionals harness intelligent data solutions.

Istanbul

Fees: 8900
From: 29-06-2026
To: 10-07-2026

AI and Big Data Analytics in Healthcare

Course Overview

The digital transformation of healthcare is driven by the integration of artificial intelligence (AI) and big data analytics. These technologies enable providers to deliver personalized care, predict health trends, reduce operational costs, and improve diagnostic accuracy.

This course covers AI algorithms, big data frameworks, healthcare informatics, predictive analytics, and ethical considerations. Participants will gain practical skills in applying AI and data-driven insights to healthcare delivery, research, and management.

At EuroQuest International Training, the program combines scientific knowledge, analytical techniques, and real-world case studies, preparing participants to implement AI and big data solutions effectively in healthcare contexts.

Key Benefits of Attending

  • Master AI and big data frameworks applied to healthcare

  • Use predictive analytics to enhance patient outcomes

  • Optimize hospital operations with data-driven strategies

  • Apply machine learning to diagnostics and treatment planning

  • Address ethical, regulatory, and privacy considerations in healthcare analytics

Why Attend

This course empowers professionals to harness AI and big data for healthcare innovation, improving efficiency, accuracy, and decision-making across clinical and operational domains.

Course Methodology

  • Expert-led lectures on AI and healthcare data frameworks

  • Case studies of big data applications in clinical practice

  • Hands-on workshops with healthcare datasets and AI tools

  • Group projects on predictive modeling and decision support

  • Interactive discussions on ethics, governance, and patient data

Course Objectives

By the end of this ten-day training course, participants will be able to:

  • Understand AI and big data concepts in healthcare

  • Collect, process, and analyze healthcare data effectively

  • Apply machine learning techniques to medical datasets

  • Build predictive models for diagnosis and treatment outcomes

  • Optimize resource allocation and operational efficiency in hospitals

  • Ensure compliance with data privacy and healthcare regulations

  • Evaluate the impact of AI and big data on patient safety and outcomes

  • Integrate AI tools into clinical decision-making workflows

  • Use visualization tools for healthcare data reporting

  • Identify challenges and limitations in healthcare analytics

  • Develop strategies for digital health transformation

  • Design frameworks for sustainable AI implementation in healthcare

Target Audience

  • Healthcare administrators and executives

  • Clinical researchers and data scientists

  • Health informatics and IT professionals

  • Medical practitioners interested in AI applications

  • Policy makers and healthcare regulators

Target Competencies

  • AI and machine learning in healthcare

  • Big data analytics and predictive modeling

  • Healthcare informatics and digital health tools

  • Data governance and privacy compliance

  • Clinical and operational decision-making support

  • Risk assessment and healthcare performance analysis

  • Strategic implementation of digital health technologies

Course Outline

Unit 1: Introduction to AI and Big Data in Healthcare

  • Overview of AI and big data concepts

  • The role of data in modern healthcare

  • Case studies of AI-driven healthcare innovations

  • Global trends and adoption challenges

Unit 2: Healthcare Data Sources and Management

  • Electronic Health Records (EHRs)

  • Medical imaging and sensor data

  • Genomic and personalized health data

  • Data integration challenges

Unit 3: Big Data Frameworks in Healthcare

  • Hadoop, Spark, and cloud platforms for healthcare data

  • Data pipelines and storage solutions

  • Real-time data processing in hospitals

  • Practical data management exercises

Unit 4: AI and Machine Learning Applications

  • Supervised and unsupervised learning in medicine

  • Natural Language Processing (NLP) for clinical notes

  • AI in medical imaging and diagnostics

  • Case study exercises

Unit 5: Predictive Analytics in Healthcare

  • Risk stratification and predictive modeling

  • Disease outbreak prediction

  • Patient outcome forecasting

  • Hands-on predictive analytics workshop

Unit 6: Clinical Decision Support Systems

  • AI-driven treatment recommendations

  • Integration into hospital workflows

  • Evaluating effectiveness and adoption

  • Case study: AI in clinical decision support

Unit 7: Operational Analytics in Healthcare

  • Optimizing hospital resource allocation

  • Reducing wait times and improving efficiency

  • Supply chain and logistics analytics

  • Practical exercises in operational data

Unit 8: Data Visualization and Reporting

  • Building dashboards for healthcare monitoring

  • Visualizing patient outcomes and system performance

  • Communicating findings to clinicians and executives

  • Practical visualization workshop

Unit 9: Ethics, Privacy, and Data Security

  • Patient privacy and data protection laws

  • HIPAA, GDPR, and healthcare compliance

  • Ethical considerations of AI in healthcare

  • Case studies of ethical dilemmas

Unit 10: Genomics and Personalized Medicine

  • AI applications in genomic data analysis

  • Precision medicine and tailored treatments

  • Integrating genetics with clinical practice

  • Future of genomics-driven healthcare

Unit 11: Digital Health and Future Trends

  • Telemedicine and remote monitoring

  • Wearables and IoT in healthcare

  • Future of AI-powered healthcare delivery

  • Case studies on emerging trends

Unit 12: Capstone Healthcare Analytics Project

  • Group-based project on AI and healthcare data

  • Developing predictive or operational models

  • Presenting findings to stakeholders

  • Action roadmap for real-world implementation

Closing Call to Action

Join this ten-day training course to master AI and big data analytics in healthcare, empowering yourself to enhance patient outcomes, optimize operations, and lead digital health transformation.

AI and Big Data Analytics in Healthcare

The AI and Big Data Analytics in Healthcare Training Courses in Istanbul provide healthcare professionals, data specialists, researchers, and decision-makers with an advanced understanding of how artificial intelligence and large-scale data analytics are transforming modern healthcare systems. These programs focus on the integration of machine learning, predictive analytics, clinical data interpretation, and digital health technologies to improve patient outcomes, streamline operations, and enhance evidence-based medical decision-making.

Participants explore the foundations of AI in healthcare, including algorithmic modeling, data structuring, pattern recognition, and real-time diagnostic support. The courses also examine the role of big data analytics in aggregating, organizing, and analyzing large datasets such as electronic health records, imaging databases, genomic profiles, and patient monitoring systems. Attendees learn to utilize analytical insights to optimize clinical workflows, support research, enable preventive care strategies, and reduce medical errors.

These healthcare AI and data analytics training programs in Istanbul emphasize practical application through case studies, hands-on exercises, and demonstrations of digital health platforms. Participants gain exposure to key topics such as clinical decision support systems, health informatics infrastructure, predictive health models, telemedicine integration, and data privacy and ethics. The curriculum is structured to support strategic thinking as well as operational implementation, allowing professionals to lead digital transformation initiatives within hospitals, research centers, and healthcare organizations.

Attending these training courses in Istanbul provides a valuable opportunity to engage with global experts and peers in a dynamic setting where healthcare innovation continues to grow. The collaborative learning environment enables participants to share perspectives, analyze emerging trends, and understand best practices in applying AI-driven analytics. Upon completion, participants will be equipped with the technical knowledge, analytical competencies, and strategic leadership skills needed to harness AI and big data effectively—enhancing patient care, operational efficiency, and sustainable innovation across healthcare systems worldwide.