AI+ Doctor™
AP 1101
Redefining Healthcare with AI-Driven Diagnosis- Clinical Intelligence Focus: Designed for medical professionals to integrate AI into patient care and diagnostics
- Data-Driven Decisions: Equips doctors with tools to interpret AI-generated insights for precise treatment planning
- Comprehensive Medical AI Knowledge: Covers AI applications from predictive analytics to medical imaging and virtual health
- Future-Ready Expertise: Empowers healthcare practitioners to lead AI-driven innovations in clinical practice
Why This Certification Matters
At a Glance: Course + Exam Overview
- Instructor-Led: 1 days (live or virtual)
- Self-Paced: 8 hours of content
 
                                             Who Should Enroll?
- Medical Practitioners: Enhance patient care with AI-driven tools for diagnostics, treatment planning, and clinical decision support. 
- Medical Students: Build future-ready skills by learning how AI is transforming modern medicine and clinical workflows. 
- Healthcare Administrators: Leverage AI to improve hospital operations, resource management, and patient service delivery. 
- Clinical Researchers: Apply AI for advanced data analysis, predictive modeling, and evidence-based medical research. 
- Health Tech Enthusiasts: Explore the synergy between AI and healthcare to innovate and contribute to next-gen medical solutions. 
Skills You’ll Gain
- AI & Machine Learning in Healthcare
- Medical Imaging
- Predictive Analytics
- Clinical Decision Support
- NLP for EHRs
- AI-Powered Patient Monitoring
- Data-Driven Diagnosis
- Personalized Treatment
- Ethical & Regulatory Compliance
What You'll Learn
1.1 From Decision Support to Diagnostic Intelligence
1.2 What Makes AI in Medicine Unique?
1.3 Types of Machine Learning in Medicine
1.4 Common Algorithms and What They Do in Healthcare
1.5 Real-World Use Cases Across Medical Specialties
1.6 Debunking Myths About AI in Healthcare
1.7 Real Tools in Use by Clinicians Today
1.8 Hands-on: Medical Imaging Analysis using MediScan AI
2.1 Introduction to Neural Networks: Unlocking the Power of AI
2.2 Convolutional Neural Networks (CNNs) for Visual Data: Seeing with AI’s Eyes
2.3 Image Modalities in Medical AI: AI’s Multi-Modal Vision
2.4 Model Training Workflow: From Data Labeling to Deployment – The AI Lifecycle in Medicine 2.5 Human-AI Collaboration in Diagnosis: The Power of Augmented Intelligence
2.6 FDA-Approved AI Tools in Diagnostic Imaging: Trust and Validation
2.7 Hands-on Activity: Exploring AI-Powered Differential Diagnosis with Symptoma
3.1 Understanding Clinical Data Types – EHRs, Vitals, Lab Results
3.2 Structured vs. Unstructured Data in Medicine
3.3 Role of Dashboards and Visualization in Clinical Decisions
3.4 Pattern Recognition and Signal Detection in Patient Data
3.5 Identifying At-Risk Patients via Trends and AI Scores
3.6 Interactive Activity: AI Assistant for Clinical Note Insights
4.1 Predictive Models for Risk Stratification – Sepsis and Hospital Readmissions
4.2 Logistic Regression, Decision Trees, Ensemble Models
4.3 Real-Time Alerts – Early Warning Systems (MEWS, NEWS)
4.4 Sensitivity vs. Specificity – Metric Choice by Clinical Need
4.5 ICU and ER Use Cases for AI-Triggered Interventions
5.1 Foundations of NLP in Healthcare
5.2 Large Language Models (LLMs) in Medicine
5.3 Prompt Engineering in Clinical Contexts
5.4 Generative AI Use Cases – Summarization, Counselling Scripts, Translation
5.5 Ambient Intelligence: Next-Gen Clinical Documentation
5.6 Limitations & Risks of NLP and Generative AI in Medicine
5.7 Case Study: Transforming Clinical Documentation and Enhancing Patient Care with Nabla Copilot
6.1 Algorithmic Bias – Race, Gender, Socioeconomic Impact
6.2 Explainability and Transparency (SHAP and LIME)
6.3 Validating AI Across Populations
6.4 Regulatory Standards – HIPAA, GDPR, FDA/EMA Compliance
6.5 Drafting Ethical AI Use Policies
6.6 Case Study – Biased Pulse Oximetry Detection
7.1 Core Metrics: Understanding the Basics
7.2 Confusion Matrix & ROC Curve Interpretation
7.3 Metric Matching by Clinical Context
7.4 Interpreting AI Outputs: Enhancing Clinical Decision-Making
7.5 Critical Evaluation of Vendor Claims: Ensuring Reliability and Effectiveness
7.6 Red Flags in Commercial AI Tools: Recognizing and Mitigating Risks
7.7 Checklist: “10 Questions to Ask Before Buying AI Tools”
7.8 Hands-on
8.1 Identifying Department-Specific AI Use Cases
8.2 Mapping AI to Workflows (Pre-diagnosis, Treatment, Follow-up)
8.3 Pilot Planning: Timeline, Data, Feedback Cycles
8.4 Team Roles – Clinical Champion, AI Specialist, IT Admin
8.5 Monitoring AI Errors – Root Cause Analysis
8.6 Change Management in Clinical Teams
8.7 Example: ER Workflow with Triage AI Integration
8.8 Scaling AI Solutions Across the Healthcare System
8.9 Evaluating AI Impact and Performance Post-Deployment
Tools You'll Explore
 
                              Python
 
                              TensorFlow
 
                              Scikit-learn
 
                              Keras
 
                              Hugging Face Transformers
 
                              Jupyter Notebooks
 
                              Tableau
 
                              Matplotlib
 
                              SQL
Prerequisites
- Basic Medical Knowledge: Participants should have foundational knowledge of clinical practices, medical terminology and patient care processes.
- Familiarity with Healthcare Systems: A basic understanding of healthcare systems, including electronic health records (EHRs) and patient workflows will be beneficial.
- Interest in Technology Integration: A keen interest in exploring the intersection of AI and healthcare, along with a willingness to learn about AI applications in medical settings.
- Data Literacy: A basic understanding of data concepts, including data collection, analysis, and interpretation, is recommended for understanding AI models and metrics.
- Problem-Solving Mindset: Ability to approach challenges with a solutions-oriented mindset, especially when evaluating AI systems and adapting them to clinical settings.
Exam Details
Duration
90 minutes
Passing Score
70% (35/50)
Format
50 multiple-choice/multiple-response questions
Delivery Method
Online via proctored exam platform (flexible scheduling)
Exam Blueprint
- What is AI for Doctors? - 9%
- AI in Diagnostics & Imaging - 13%
- Introduction to Fundamental Data Analysis - 13%
- Predictive Analytics & Clinical Decision Support – Empowering Proactive Patient Care - 13%
- NLP and Generative AI in Clinical Use - 13%
- Ethical and Equitable AI Use - 13%
- Evaluating AI Tools in Practice - 13%
- Implementing AI in Clinical Settings - 13%
Choose the Format That Fits Your Schedule
What’s Included (One-Year Subscription + All Updates):
- High-Quality Videos, E-book (PDF & Audio), and Podcasts
- AI Mentor for Personalized Guidance
- Quizzes, Assessments, and Course Resources
- Online Proctored Exam with One Free Retake
- Comprehensive Exam Study Guide
Instructor-Led (Live Virtual/Classroom)
- 1 days of intensive training with live demos
- Real-time Q&A, peer collaboration, and hands-on labs
- Led by AI Certified Trainers and delivered through Authorized Training Partners
Self-Paced Online
- ~8 hours of on-demand video lessons, e-book, podcasts, and interactive labs
- Learn anywhere, anytime, with modular quizzes to track progress
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Get CertifiedFrequently Asked Questions
Yes, this certification equips you with practical skills through real clinical scenarios and hands-on projects. You'll be ready to apply AI tools directly in healthcare settings.
This certification combines clinical context with hands-on AI training, focusing on real-world applications in diagnostics and patient care.
You’ll work on AI diagnostics, image analysis, EHR mining, and predictive models—simulating real clinical challenges for job-ready skills.
This course blends expert lessons, interactive modules, and hands-on projects with real clinical case studies. This ensures practical learning and strong skill retention.
It equips you with in-demand AI skills, real-world healthcare projects, and domain knowledge aligned with current industry job roles.