Identify and counteract cognitive biases in medical decision-making through systematic error analysis, structured diagnostic flows, and contextual algorithm application.
npx clawhub@latest install clinical-diagnostic-reasoningClinical Diagnostic Reasoning is a structured skill for physicians and clinical educators that identifies and counteracts cognitive biases in medical decision-making. It provides systematic flows for diagnosis, error analysis, and patient communication — addressing the root cause of most medical errors: predictable thinking patterns rather than knowledge gaps. Install it to bring deliberate, bias-aware reasoning into clinical practice, case review, and teaching.
A step-by-step decision tree guides clinicians from initial presentation through differential diagnosis, algorithm application, and a mandatory bias check — ensuring cognitive errors are caught before they affect patient care.
Explicitly checks for the six most common diagnostic biases: anchoring, satisfaction of search, availability error, attribution error, commission bias, and algorithm rigidity — with targeted countermeasures for each.
A dedicated flow separates thinking errors from knowledge gaps in post-error review, identifies which bias operated, and extracts a generalizable lesson applicable to future cases.
Guides clinicians to present equivalent risk/benefit information in multiple framings (positive, negative, absolute, relative) so that framing choices do not unintentionally bias patient decisions.
Concrete example phrases contrast how novices and experts articulate the same clinical situation — useful for self-assessment, feedback, and teaching clinical reasoning skills.
Six major cognitive anti-patterns are described with typical novice behaviour, expert countermeasures, and the career timeline along which expert recognition usually develops.
When a patient's findings don't fit neatly into a single diagnosis, the diagnostic reasoning flow prompts the clinician to check for premature closure, missed coexisting conditions, and anchoring to an initial impression.
After a diagnostic mistake, the error analysis flow helps identify whether the root cause was a knowledge deficit or a cognitive bias, and produces a concrete lesson to prevent recurrence.
Educators can use the anti-pattern library and expert-vs-novice markers to structure case discussions, highlight where trainees' reasoning diverges from expert patterns, and make cognitive biases explicit and teachable.
Before discussing treatment options with a patient, the communication flow checks whether the planned framing of risks and benefits is balanced, and prompts presentation of multiple equivalent framings to support genuine informed consent.
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