EVALUATION OF AI APPLICATIONS IN HEALTHCARE
Course 3315
2 Hours
$299
AI is reshaping healthcare, but how do you evaluate its value? This course equips healthcare professionals with the skills to assess AI applications for impact, reliability, and compliance, ensuring your organization benefits from the right tools.
Target Audience
- Healthcare administrators and decision-makers
- IT professionals and AI developers in healthcare
- Clinicians exploring AI tools for patient care
- Compliance officers and legal professionals in the healthcare industry
Course Format:
- Live Virtual Lectures: Delivered by experts in healthcare AI and compliance.
- Interactive Activities: Case studies, evaluation exercises, and scenario planning.
- Resources Provided: Evaluation frameworks, compliance checklists, and ROI measurement templates.
Payment Information: We accept credit card payments.
Course Objectives
- Understand criteria for evaluating the effectiveness and reliability of AI applications in healthcare.
- Learn how to assess AI tools for ethical compliance and regulatory standards.
- Develop strategies for measuring the impact and ROI of AI systems.
- Gain insights into real-world use cases and challenges in implementing AI solutions in healthcare.
Course Structure:
Understanding AI in Healthcare
- Overview of AI applications in healthcare: diagnostics, workflows, and patient care.
- Categories of AI tools: predictive analytics, NLP, image analysis, and more.
- Challenges and opportunities in evaluating healthcare AI.
Criteria for Evaluating AI Tools
- Key evaluation metrics: accuracy, sensitivity, specificity, and scalability.
- Assessing usability, integration, and interoperability with existing systems.
- Frameworks for ensuring data quality and reliability.
Ethical and Regulatory Considerations
- Ensuring compliance with HIPAA, FDA, and GDPR requirements.
- Addressing ethical concerns: bias, transparency, and patient safety.
- Building trust with clinicians and patients through responsible AI use.
Measuring Impact and ROI
- Defining key performance indicators (KPIs) for AI in healthcare.
- Techniques for quantifying clinical, operational, and financial impact.
- Real-world examples of AI implementations and their outcomes.
Group Rates Available!
Bring your team and save – perfect for healthcare organizations looking to train multiple leaders.
Discounts available for organizations enrolling 5+ participants.
Class Schedule
Rates below are for each participant.
January 28, 2025
4:00 PM – 6:00 PM EST
AI Applications in Healthcare, Virtual, EST
$299
Class ID: 3315
February 13, 2025
12:00 PM – 2:00 PM EST
AI Applications in Healthcare, Virtual, EST
$299
Class ID: 3315
March 21, 2025
12:00 PM – 2:00 PM EST
AI Applications in Healthcare, Virtual, EST
$299
Class ID: 3315
Frequently Asked Questions
What criteria will I learn to evaluate AI tools?
You’ll explore metrics like accuracy, sensitivity, scalability, usability, and integration, as well as frameworks for assessing data quality and reliability.
Does the course cover compliance with healthcare regulations?
Yes, a dedicated module addresses compliance with HIPAA, FDA, GDPR, and other relevant healthcare regulations.
How will this course help me understand AI’s ROI in healthcare?
The course includes strategies for defining and measuring KPIs, quantifying clinical and operational impact, and evaluating financial returns on AI investments.
Are ethical considerations included in the course?
Absolutely. You’ll learn to address ethical concerns like bias, transparency, patient safety, and trust-building with clinicians and patients.
Will I gain hands-on experience during the course?
Yes, participants will engage in activities like evaluating AI tools, creating compliance checklists, and building ROI measurement frameworks.
Is this course suitable for non-technical professionals?
Yes, the course is designed to be accessible to both technical and non-technical professionals, focusing on practical evaluation and strategic insights.
Does the course include real-world examples?
Yes, you’ll explore case studies of AI successes and failures in healthcare to learn practical lessons for implementation and evaluation.
Will I receive resources to use after the course?
Participants will receive evaluation templates, compliance checklists, and measurement guides for applying course concepts to their organizations.