Physician Resistance: Causes and Solutions
Article #12 in Medical ML for Ukrainian Doctors Series
By Oleh Ivchenko | Researcher, ONPU | Stabilarity Hub | February 8, 2026
๐ Key Questions Addressed
- What psychological, professional, and structural factors drive physician resistance to medical AI?
- How does familiarity with AI influence physician attitudes?
- What evidence-based approaches successfully transform resistance into engagement?
Context: Why This Matters for Ukrainian Healthcare
Understanding physician resistance isn’t optionalโit’s essential. Globally, despite over $66 billion invested in healthcare AI, adoption remains stubbornly low. For ScanLab and Ukrainian healthcare modernization, converting physician skepticism into informed engagement will determine success.
The Resistance Spectrum: From Skepticism to Fear
“`mermaid
graph LR
A[Skepticism
Mild] –> B[Reluctance
B –> C[Anxiety
C –> D[Resistance
D –> E[Fear
“`
The Root Causes: Intrinsic and Extrinsic Factors
Intrinsic Factors (Professional Identity)
Extrinsic Factors (Patient Care & Systems)
The Liability Paradox: Damned If You Do, Damned If You Don’t
โ๏ธ The Dilemma
| Follow AI (AI wrong) | โ Potential liability for blind algorithmic following |
| Override AI (physician wrong) | โ Potential liability for ignoring decision support |
| Fail to use AI | โ Future liability as AI becomes standard of care |
“IT staff reported being asked by worried physicians about what would happen if they diverged from the CDSS recommendation (and struggled to answer, as the legal framework is unclear).”
โ Oxford Medical Law Review, 2023
The Familiarity Factor: Experience Transforms Attitudes
A landmark 2025 JMIR study (498 physicians) revealed the most important finding:
+91%
Higher enthusiasm (familiar vs. unfamiliar)
+59%
Lower skepticism (familiar vs. unfamiliar)
What Works: Evidence-Based Solutions
1. Early Physician Engagement
2. Prioritize Explainable AI
โ Explainable AI
- Physician can see why AI flagged finding
- Can challenge basis for decisions
- Higher liability comfort
- Enables learning, not just following
โ Black Box AI
- Cannot review reasoning
- Blind acceptance or rejection
- Lower trust
- Harder to explain to patients
3. Address the Psychological Progression
The Chief Physician Effect: Leadership Matters
๐ Unexpected Finding
Chief physicians showed significantly lower skepticism than residents (p=.01)
Strategic Implication: Engage chief physicians as AI champions. Their endorsement carries weight with junior staff.
Conclusions
โ Experience > Demographics
Familiarity with AI predicts acceptance; age and specialty do not
๐ Early Engagement
Involve physicians from selection through monitoring
โ๏ธ Clarify Liability
Undefined liability creates a chilling effect on adoption
๐ Explainability Matters
Prioritize tools where physicians can see reasoning
Questions Answered
โ What drives physician resistance?
Professional autonomy threat (67%), liability uncertainty (63%), deskilling concerns (54%), and patient relationship impacts (52%).
โ How does familiarity influence attitudes?
Physicians familiar with AI show 91% higher enthusiasm and 59% lower skepticism. Age and specialty have no significant effect.
โ What approaches work?
Early engagement, explainable AI tools, hands-on training, addressing the psychological progression, and engaging senior physicians as champions.
Next in Series: Article #13 – The 2007-2012 Golden Age (Ancient IT)
Series: Medical ML for Ukrainian Doctors | Stabilarity Hub Research Initiative
Author: Oleh Ivchenko | ONPU Researcher | Stabilarity Hub
