AI as a Business Partner: Validating My Healthcare App Idea using GPT-4o
Posted March 23, 2025 by Gowri Shankar ‐ 4 min read
Like every over-caffeinated founder with a “revolutionary” idea, I thought I was onto something BIG... saving doctors from the never-ending doom of paperwork. I mean, they signed up to save lives, not to moonlight as data entry clerks, right? So, with the confidence of someone who just watched a TED Talk, I got to work. AI-powered documentation assistant? Easy. A few late nights, gallons of coffee, and some speech-to-text magic later, I had a prototype. The feedback? “Oh wow, this is cool!” Doctors were intrigued. I was pumped. Was I the next Elon of healthcare tech? Then reality hit harder than a Monday morning. The initial hype faded, and the real question loomed: “Cool, but… will anyone actually use this?” Enter AI: not as my usual pair-programming buddy, but as my brutally honest business partner. No sugarcoating. No participation trophies. Just tough love and even tougher questions.
This blog is part of an ongoing series exploring how I’m integrating AI into different aspects of my work. Previously, I shared how AI became my pair programmer, helping me debug complex issues like profile picture uploads. Now, I’m shifting gears to showcase AI as a business partner, pushing me to validate and refine my healthcare app idea. Stay tuned as I continue to uncover more ways AI is shaping my journey! 🚀 Refer other blogs here,Note: You can also listen to the podcast experience of this blog in Spotify.
The Problem Statement
Doctors lead incredibly demanding lives. Their primary focus should be patient care, yet they spend an overwhelming amount of time on documentation. Every consultation, diagnosis, and prescription requires detailed notes, often cutting into the time they could be spending with patients.
Existing solutions either lacked accuracy, required too much manual correction, or didn’t integrate well into their workflow. I believed AI could bridge this gap, but I needed more than belief… I needed validation.
My First Attempt: A Quick Prototype
With enthusiasm, I hacked together a proof of concept. The idea was straightforward:
Use speech-to-text for real-time transcription.
Translate into different languages for global accessibility.
Generate lip-synced video summaries for better engagement.
It looked promising. I shared it with a few doctors, and their initial reactions were positive. But as I probed deeper, I noticed a shift. The feedback turned into hesitation,
“This is cool, but would I actually use it in a clinical setting?”
“It’s helpful, but does it integrate into my workflow?”
“How do you ensure accuracy? Even a minor mistake in documentation could be critical.”
That’s when it hit me: A cool prototype isn’t enough. I needed a real-world validation process.
AI as My Business Consultant
I turned to AI, not to write code, but to challenge my assumptions. I structured my interaction like a Generative Adversarial Network (GAN):
I was the Generator, coming up with ideas, solutions, and execution plans.
AI was the Adversary, interrogating me with tough questions, playing devil’s advocate, and pushing me to refine my thinking.
I prompted the AI to interview me like an investor or a skeptical stakeholder. No sugarcoating. No easy answers. Just hard questions designed to break my idea apart.
The Tough Questions AI Asked Me
Over several days, AI put me through a brutal, yet insightful, validation process. Here are the 10 toughest questions it asked:
Value Proposition: Does this actually reduce doctors’ workload without introducing new complexities?
Real-World Impact: Beyond the initial excitement, what makes this sustainable in a clinical setting?
User Adoption: Doctors are time-strapped. How do you ensure they integrate this into their practice without frustration?
Privacy & Security: Healthcare data is sensitive. How do you handle HIPAA and GDPR compliance?
Scalability: Hospitals and clinics have different workflows. Can this adapt?
AI Accuracy: Can the AI guarantee error-free transcription? What happens when it makes a mistake?
Regulatory Compliance: What regulatory approvals are required before this can even be deployed?
Cost vs. Benefit: Will hospitals and private practitioners pay for this? How do you prove the ROI?
Competitive Advantage: What makes this better than existing medical dictation and documentation tools?
Future Expansion: How does this evolve beyond documentation? Can it become an AI assistant for doctors?
Breakthroughs & Realizations
By the time I was done, I had a mix of breakthroughs and brutal reality checks.
Breakthrough: AI helped me pinpoint the exact pain points doctors face beyond just documentation.
Reality Check: Privacy and compliance were way more complex than I initially thought. It wasn’t just about tech—it was about trust and regulations.
Breakthrough: I refined the go-to-market strategy, shifting focus to specific medical specialties where documentation pain was highest.
Reality Check: The AI forced me to confront user adoption friction. If the tool wasn’t seamless, doctors simply wouldn’t use it.
Conclusion
AI didn’t just validate my idea… it refined and strengthened it.
Instead of moving forward blindly, I came out with a clearer, more actionable strategy. AI pushed me to think like an investor, a product manager, and a user… all at the same time.
And this is just the beginning. In the next blog, I’ll explore another role AI can play… not just as a business consultant, but as a go-to-market strategist and then AI as my design consultant. Stay tuned! 🚀