Decision making mini-series - episode 3 - Bias In this episode we discuss the complexities of decision-making in veterinary medicine, focusing on biases that can impact clinical reasoning and client communication. We look at how biases can lead to misdiagnosis, affect treatment choices, influence client trust and ultimately impact on animal welfare. We consider some of the more common biases, such as confirmation bias, anchoring bias, and availability bias, and emphasizes the importance of recognizing and mitigating these biases to improve diagnostic accuracy and patient safety. As usual, we have more resources on this topic at Vet Your Decisions In a future episode we're going to look at our favourite text books on animal welfare and decision making. I'm currently reading Veterinary Controversies and Ethical Dilemmas | Provocative Reflection (there are so many topics in here!) and it would be great if you could suggest your favourite books in this area. A couple of the authors in this text book Tanya Stephens and Sean Wensley very kindly supported the The Animal Welfare Conversation podcast in the early days. If you've not listened to them yet then you can catch up here. We hope you will join The Animal Welfare Conversation: Sign up to the podcast mailing list Animal Welfare Conversations Sign up to Vet Your Decisions mailing list Vet Your Decisions: Essential Vet Advice for Pet Owners (scroll to the bottom of the home page).
No persons identified in this episode.
This episode hasn't been transcribed yet
Help us prioritize this episode for transcription by upvoting it.
Popular episodes get transcribed faster
Other recent transcribed episodes
Transcribed and ready to explore now
#2425 - Ethan Hawke
11 Dec 2025
The Joe Rogan Experience
SpaceX Said to Pursue 2026 IPO
10 Dec 2025
Bloomberg Tech
Don’t Call It a Comeback
10 Dec 2025
Motley Fool Money
Japan Claims AGI, Pentagon Adopts Gemini, and MIT Designs New Medicines
10 Dec 2025
The Daily AI Show
Eric Larsen on the emergence and potential of AI in healthcare
10 Dec 2025
McKinsey on Healthcare
What it will take for AI to scale (energy, compute, talent)
10 Dec 2025
Azeem Azhar's Exponential View