triage better than human clinicians
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Can AI Diagnose or Triage Better Than Human Physicians? When it comes to specific, well-identified tasks, the capabilities of AI systems will meet or, in some instances, exceed those of human doctors. For instance, an AI system trained on a massive repository of images has shown remarkable sensitiviRead more
Can AI Diagnose or Triage Better Than Human Physicians?
When it comes to specific, well-identified tasks, the capabilities of AI systems will meet or, in some instances, exceed those of human doctors. For instance, an AI system trained on a massive repository of images has shown remarkable sensitivity in diagnosing diabetic retinopathy, cancers through radiological images, or skin lesions. The reason for the immense success of such a system is its ability to analyze millions of examples.
AI-based solutions can quickly short-list patients in triage conditions based on their symptoms, vitals, past health issues, and other factors. In emergency or telemedicine environments, AI can point out critical patients (e.g., those with possible strokes or sepsis) much faster than the manual process in peak times.
However, medical practice is more than pattern recognition. Clinicians have the ability to add context to pattern recognition. They possess the ability to think ethically, have empathy in their dealings, and be able to infer information that may not be evident from pattern recognition. Artificial systems lack in situations that lie outside their patterns or when people behave unconventionally.
This leads to a situation where the best possible results are obtained when both AI and healthcare professionals collaborate as opposed to competing.
Why ‘Better’ Is Context-Dependent
AI can potentially do better than humans in:
Areas where humans excel over AI are:
What does interpreting patient narratives and social context mean?
In diagnosing
In order to be clinically trustworthy, AI systems must meet certain criteria that have been established by health regulators, authorities, and professionals. These criteria involve metrics that have been specifically defined in the domain.
1. Clinical Accuracy Metrics
These evaluate the frequency at which the correct conclusion is drawn by the AI.
The overall rate of correct predictions
2. Area Under the Curve (AUC-ROC
The Receiver Operating Characteristic (ROC) curve evaluates the ability of an AI model to separate conditions across different threshold values. A high AUC of 1.0 reveals outstanding discriminating capabilities, but an AUC of 0.5 would indicate purely random guessing. For most AI-based medical software, the goal may be to outperform experienced practitioners.
3. Clinical Outcome Metrics
If an AI model is statistically correct but doesn’t lead to an improvement in outcomes, that particular AI model doesn’t have any practical use in
4. Generalizability and Bias Metrics
There could be discrepancies in clinical judgments in the case of failure.
5. Explainability & Transparency
Approvals of Clinical AI by Regulators like the US FDA have recently been focusing on explainability.
6. Workflow and Efficiency Metrics
In triage, in particular, quickness and usability count.
If an AI solution slows down operations or is left untouched by employees, it does no good.
The Current Consensus
Computers designed to recognize patterns may be as good as, if not better than, humans in making diagnoses in narrowly circumscribed tasks if extensive structured datasets are available. But they lack comprehensive clinical reasoning, ethics, and accountabilities.
Care providers, like the UK’s NHS, as well as international organizations, the World Health Organization, for example, have recommended human-in-the-loop systems, where the responsibility lies with the human when AI decisions are involved.
Final Perspective
The AI is “neither better nor worse” compared to human clinicians in a general way. Rather, AI is better at particular tasks in a controlled environment when clinical and outcome criteria are rigorously met. The future role of diagnosis and triage can be found in what has come to be known as collaborative intelligence.
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