Building AI Tools: Doctor-Driven AI Model

Building AI Tools: Doctor-Driven AI Model

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A badge with ribbon in color black No CME/CPD credits | An analog clock in color black 1 hour | A black calendar with white triangle in center that has a black exclamation point in the middle 12 May 2027 

Overview

About

Artificial intelligence (AI) is rapidly transforming healthcare, offering new opportunities to improve diagnostic accuracy, streamline workflows, and enhance patient outcomes. However, the true potential of AI can only be realized when clinicians are actively involved in its development and application.

This course, offered for physicians in Thailand, is designed to empower doctors with the knowledge and perspective needed to actively participate in the creation and implementation of AI-driven solutions. Rather than remaining as passive users, healthcare professionals will learn how to shape AI tools that are clinically relevant, ethical, and aligned with real-world practice.

Through this module, physicians will gain insights into the fundamentals of AI, understand how clinical data can be leveraged responsibly, and explore practical examples of AI integration in healthcare settings. Emphasis is placed on bridging the gap between technological capabilities and clinical expertise, ensuring that AI solutions are both safe and effective.

By the end of the course, participants will be better equipped to collaborate with developers, contribute to AI-driven innovation, and lead the adoption of intelligent tools that support better clinical decision-making and quality of care in their daily practice.

Speaker:

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Dr. Atul Tiwari
Add. Nodal Officer (AI/ML), DME, Rajashtan
Asso. Professor, Pathology, GMC Chittorgarh

Keywords: healthcare ai, ai for doctors, clinical ai tools healthcare, digital health innovation, ai medical training for doctors

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Indian College of Artificial Intelligence in Medicine (ICAIM)

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