| Literature DB >> 36006692 |
Norah L Crossnohere1,2, Mohamed Elsaid1, Jonathan Paskett1, Seuli Bose-Brill2, John F P Bridges1.
Abstract
BACKGROUND: Artificial intelligence (AI) is rapidly expanding in medicine despite a lack of consensus on its application and evaluation.Entities:
Keywords: AI; artificial intelligence; effectiveness; engagement; ethics; health care; medicine; reproducibility; translational research; translational science; transparency
Mesh:
Year: 2022 PMID: 36006692 PMCID: PMC9459836 DOI: 10.2196/36823
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 7.076
Summary of frameworks for the use of artificial intelligence (AI) in medicine.
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| Describes general challenges and opportunities associated with the use of AI in medicine | AI developers, clinicians, patients, policymakers | |
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| Describes recommendations on evaluating the suitability of AI applications for clinical settings | Clinicians | |
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| Describes a roadmap for considering ethical aspects of AI with health care applications | AI developers, investigators, clinicians, policymakers | |
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| Describes an evaluation framework for the application of AI in medicine | Investigators, health care organizations | |
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| Describes an approach for assessing published literature using AI for medical diagnoses | Clinicians | |
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| Describes barriers to the implementation of AI in medicine and provides solutions to address them | Health care organizations | |
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| Proposes 20 questions for evaluating the development and use of AI in research (20 reporting items) | Investigators, clinicians, patients, policymakers | |
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| Proposes a comprehensive checklist for the self-assessment and evaluation of medical papers (30 reporting items) | Investigators, editors and peer reviewers | |
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| Provides reporting guidelines for clinical trials evaluating interventions with an AI component (25 core and 15 AI-specific reporting items) | AI developers, investigators | |
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| Provides guidelines and an associated checklist for the reporting of AI research to clinicians (15 reporting items) | Investigators, developers, clinicians | |
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| Provides reporting guidelines for evaluations of early-stage clinical decision support systems developed using AI (10 generic and 17 AI-specific reporting items) | Investigators, clinicians, patients, policymakers | |
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| Provides guidelines for applying and reporting AI model specifications/results in biomedical research (12 reporting items) | AI developers, investigators | |
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| Provides minimum reporting standards for AI in health care (16 reporting items) | AI developers, investigators | |
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| Provides guidelines for clinical trials protocols evaluating interventions with an AI component (25 core and 15 AI-specific reporting items) | AI developers, investigators | |
aPublication associated with a professional organization; AI in Healthcare=National Academy of Medicine; CONSORT-AI=CONSORT Group; DECIDE-AI=DECIDE-AI Expert Group; SPIRIT-AI=SPIRIT Group.
bCONSORT: Consolidated Standards of Reporting Trials.
cCAIR: Clinical AI Research.
dMINIMAR: Minimum Information for Medical AI Reporting.
eSPIRIT: Standard Protocol Items: Recommendations for Interventional Trials.
Coverage of frameworks across content domains and translational stages.
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| AIa in health care | Clinician Checklist | Ethical Considerations | Evaluating AI | Users’ Guide | Reporting and Implementing Interventions | 20 Critical Questions | Comprehensive Checklist | CONSORTb- | CAIRc Checklist | DECIDE-AI | Guidelines for Developing and Reporting | MINIMARd | SPIRITe- | ||
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aAI: artificial intelligence.
bCONSORT: Consolidated Standards for Reporting Trials.
CCAIR: Clinical AI Research.
dMINIMAR: Minimum Information for Medical AI Reporting.
eSPIRIT: Standard Protocol Items: Recommendations for Interventional Trials.
Figure 1Coverage of frameworks across content domains. AI: artificial intelligence; CAIR: Clinical AI Research; CONSORT: Consolidated Standards of Reporting Trials; MINIMAR: Minimum Information for Medical AI Reporting; SPIRIT: Standard Protocol Items: Recommendations for Interventional Trials.
Figure 2Heatmap of the frameworks' coverage across the five stages of translation. Darker boxes indicate areas where more frameworks offered guidance, whereas lighter boxes indicate areas where fewer frameworks offered guidance.